data science thesis projects

Research Topics & Ideas: Data Science

50 Topic Ideas To Kickstart Your Research Project

Research topics and ideas about data science and big data analytics

If you’re just starting out exploring data science-related topics for your dissertation, thesis or research project, you’ve come to the right place. In this post, we’ll help kickstart your research by providing a hearty list of data science and analytics-related research ideas , including examples from recent studies.

PS – This is just the start…

We know it’s exciting to run through a list of research topics, but please keep in mind that this list is just a starting point . These topic ideas provided here are intentionally broad and generic , so keep in mind that you will need to develop them further. Nevertheless, they should inspire some ideas for your project.

To develop a suitable research topic, you’ll need to identify a clear and convincing research gap , and a viable plan to fill that gap. If this sounds foreign to you, check out our free research topic webinar that explores how to find and refine a high-quality research topic, from scratch. Alternatively, consider our 1-on-1 coaching service .

Research topic idea mega list

Data Science-Related Research Topics

  • Developing machine learning models for real-time fraud detection in online transactions.
  • The use of big data analytics in predicting and managing urban traffic flow.
  • Investigating the effectiveness of data mining techniques in identifying early signs of mental health issues from social media usage.
  • The application of predictive analytics in personalizing cancer treatment plans.
  • Analyzing consumer behavior through big data to enhance retail marketing strategies.
  • The role of data science in optimizing renewable energy generation from wind farms.
  • Developing natural language processing algorithms for real-time news aggregation and summarization.
  • The application of big data in monitoring and predicting epidemic outbreaks.
  • Investigating the use of machine learning in automating credit scoring for microfinance.
  • The role of data analytics in improving patient care in telemedicine.
  • Developing AI-driven models for predictive maintenance in the manufacturing industry.
  • The use of big data analytics in enhancing cybersecurity threat intelligence.
  • Investigating the impact of sentiment analysis on brand reputation management.
  • The application of data science in optimizing logistics and supply chain operations.
  • Developing deep learning techniques for image recognition in medical diagnostics.
  • The role of big data in analyzing climate change impacts on agricultural productivity.
  • Investigating the use of data analytics in optimizing energy consumption in smart buildings.
  • The application of machine learning in detecting plagiarism in academic works.
  • Analyzing social media data for trends in political opinion and electoral predictions.
  • The role of big data in enhancing sports performance analytics.
  • Developing data-driven strategies for effective water resource management.
  • The use of big data in improving customer experience in the banking sector.
  • Investigating the application of data science in fraud detection in insurance claims.
  • The role of predictive analytics in financial market risk assessment.
  • Developing AI models for early detection of network vulnerabilities.

Research topic evaluator

Data Science Research Ideas (Continued)

  • The application of big data in public transportation systems for route optimization.
  • Investigating the impact of big data analytics on e-commerce recommendation systems.
  • The use of data mining techniques in understanding consumer preferences in the entertainment industry.
  • Developing predictive models for real estate pricing and market trends.
  • The role of big data in tracking and managing environmental pollution.
  • Investigating the use of data analytics in improving airline operational efficiency.
  • The application of machine learning in optimizing pharmaceutical drug discovery.
  • Analyzing online customer reviews to inform product development in the tech industry.
  • The role of data science in crime prediction and prevention strategies.
  • Developing models for analyzing financial time series data for investment strategies.
  • The use of big data in assessing the impact of educational policies on student performance.
  • Investigating the effectiveness of data visualization techniques in business reporting.
  • The application of data analytics in human resource management and talent acquisition.
  • Developing algorithms for anomaly detection in network traffic data.
  • The role of machine learning in enhancing personalized online learning experiences.
  • Investigating the use of big data in urban planning and smart city development.
  • The application of predictive analytics in weather forecasting and disaster management.
  • Analyzing consumer data to drive innovations in the automotive industry.
  • The role of data science in optimizing content delivery networks for streaming services.
  • Developing machine learning models for automated text classification in legal documents.
  • The use of big data in tracking global supply chain disruptions.
  • Investigating the application of data analytics in personalized nutrition and fitness.
  • The role of big data in enhancing the accuracy of geological surveying for natural resource exploration.
  • Developing predictive models for customer churn in the telecommunications industry.
  • The application of data science in optimizing advertisement placement and reach.

Recent Data Science-Related Studies

While the ideas we’ve presented above are a decent starting point for finding a research topic, they are fairly generic and non-specific. So, it helps to look at actual studies in the data science and analytics space to see how this all comes together in practice.

Below, we’ve included a selection of recent studies to help refine your thinking. These are actual studies,  so they can provide some useful insight as to what a research topic looks like in practice.

  • Data Science in Healthcare: COVID-19 and Beyond (Hulsen, 2022)
  • Auto-ML Web-application for Automated Machine Learning Algorithm Training and evaluation (Mukherjee & Rao, 2022)
  • Survey on Statistics and ML in Data Science and Effect in Businesses (Reddy et al., 2022)
  • Visualization in Data Science VDS @ KDD 2022 (Plant et al., 2022)
  • An Essay on How Data Science Can Strengthen Business (Santos, 2023)
  • A Deep study of Data science related problems, application and machine learning algorithms utilized in Data science (Ranjani et al., 2022)
  • You Teach WHAT in Your Data Science Course?!? (Posner & Kerby-Helm, 2022)
  • Statistical Analysis for the Traffic Police Activity: Nashville, Tennessee, USA (Tufail & Gul, 2022)
  • Data Management and Visual Information Processing in Financial Organization using Machine Learning (Balamurugan et al., 2022)
  • A Proposal of an Interactive Web Application Tool QuickViz: To Automate Exploratory Data Analysis (Pitroda, 2022)
  • Applications of Data Science in Respective Engineering Domains (Rasool & Chaudhary, 2022)
  • Jupyter Notebooks for Introducing Data Science to Novice Users (Fruchart et al., 2022)
  • Towards a Systematic Review of Data Science Programs: Themes, Courses, and Ethics (Nellore & Zimmer, 2022)
  • Application of data science and bioinformatics in healthcare technologies (Veeranki & Varshney, 2022)
  • TAPS Responsibility Matrix: A tool for responsible data science by design (Urovi et al., 2023)
  • Data Detectives: A Data Science Program for Middle Grade Learners (Thompson & Irgens, 2022)
  • MACHINE LEARNING FOR NON-MAJORS: A WHITE BOX APPROACH (Mike & Hazzan, 2022)
  • COMPONENTS OF DATA SCIENCE AND ITS APPLICATIONS (Paul et al., 2022)
  • Analysis on the Application of Data Science in Business Analytics (Wang, 2022)

As you can see, these research topics are a lot more focused than the generic topic ideas we presented earlier. So, for you to develop a high-quality research topic, you’ll need to get specific and laser-focused on a specific context with specific variables of interest.  In the video below, we explore some other important things you’ll need to consider when crafting your research topic.

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If you’re still unsure about how to find a quality research topic, check out our Research Topic Kickstarter service, which is the perfect starting point for developing a unique, well-justified research topic.

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10 Best Research and Thesis Topic Ideas for Data Science in 2022

These research and thesis topics for data science will ensure more knowledge and skills for both students and scholars.

As businesses seek to employ data to boost digital and industrial transformation, companies across the globe are looking for skilled and talented data professionals who can leverage the meaningful insights extracted from the data to enhance business productivity and help reach company objectives successfully. Recently, data science has turned into a lucrative career option. Nowadays, universities and institutes are offering various data science and big data courses to prepare students to achieve success in the tech industry. The best course of action to amplify the robustness of a resume is to participate or take up different data science projects. In this article, we have listed 10 such research and thesis topic ideas to take up as data science projects in 2022.

  • Handling practical video analytics in a distributed cloud:  With increased dependency on the internet, sharing videos has become a mode of data and information exchange. The role of the implementation of the Internet of Things (IoT), telecom infrastructure, and operators is huge in generating insights from video analytics. In this perspective, several questions need to be answered, like the efficiency of the existing analytics systems, the changes about to take place if real-time analytics are integrated, and others.
  • Smart healthcare systems using big data analytics: Big data analytics plays a significant role in making healthcare more efficient, accessible, and cost-effective. Big data analytics enhances the operational efficiency of smart healthcare providers by providing real-time analytics. It enhances the capabilities of the intelligent systems by using short-span data-driven insights, but there are still distinct challenges that are yet to be addressed in this field.
  • Identifying fake news using real-time analytics:  The circulation of fake news has become a pressing issue in the modern era. The data gathered from social media networks might seem legit, but sometimes they are not. The sources that provide the data are unauthenticated most of the time, which makes it a crucial issue to be addressed.
  • TOP 10 DATA SCIENCE JOB SKILLS THAT WILL BE ON HIGH DEMAND IN 2022
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  • Secure federated learning with real-world applications : Federated learning is a technique that trains an algorithm across multiple decentralized edge devices and servers. This technique can be adopted to build models locally, but if this technique can be deployed at scale or not, across multiple platforms with high-level security is still obscure.
  • Big data analytics and its impact on marketing strategy : The advent of data science and big data analytics has entirely redefined the marketing industry. It has helped enterprises by offering valuable insights into their existing and future customers. But several issues like the existence of surplus data, integrating complex data into customers' journeys, and complete data privacy are some of the branches that are still untrodden and need immediate attention.
  • Impact of big data on business decision-making: Present studies signify that big data has transformed the way managers and business leaders make critical decisions concerning the growth and development of the business. It allows them to access objective data and analyse the market environments, enabling companies to adapt rapidly and make decisions faster. Working on this topic will help students understand the present market and business conditions and help them analyse new solutions.
  • Implementing big data to understand consumer behaviour : In understanding consumer behaviour, big data is used to analyse the data points depicting a consumer's journey after buying a product. Data gives a clearer picture in understanding specific scenarios. This topic will help understand the problems that businesses face in utilizing the insights and develop new strategies in the future to generate more ROI.
  • Applications of big data to predict future demand and forecasting : Predictive analytics in data science has emerged as an integral part of decision-making and demand forecasting. Working on this topic will enable the students to determine the significance of the high-quality historical data analysis and the factors that drive higher demand in consumers.
  • The importance of data exploration over data analysis : Exploration enables a deeper understanding of the dataset, making it easier to navigate and use the data later. Intelligent analysts must understand and explore the differences between data exploration and analysis and use them according to specific needs to fulfill organizational requirements.
  • Data science and software engineering : Software engineering and development are a major part of data science. Skilled data professionals should learn and explore the possibilities of the various technical and software skills for performing critical AI and big data tasks.

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Top 100 Data Science Project Ideas For Final Year

data science project ideas for final year

Are you a final year student diving into the world of data science, seeking inspiration for your final project? Look no further! In this blog, we’ll explore a variety of engaging and practical data science project ideas for final year that are perfect for showcasing your skills and creativity. Whether you’re interested in analyzing data trends, building machine learning models, or delving into natural language processing, we’ve got you covered. Let’s dive in!

What is Data Science?

Table of Contents

Data science is a multidisciplinary field that combines various techniques, algorithms, and tools to extract insights and knowledge from structured and unstructured data. At its core, data science involves the use of statistical analysis, machine learning, data mining, and data visualization to uncover patterns, trends, and correlations within datasets.

In simpler terms, data science is about turning raw data into actionable insights. It involves collecting, cleaning, and organizing data, analyzing it to identify meaningful patterns or relationships, and using those insights to make informed decisions or predictions.

Data science encompasses a wide range of applications across industries and domains, including but not limited to:

  • Business: Analyzing customer behavior, optimizing marketing strategies, and improving operational efficiency.
  • Healthcare: Predicting patient outcomes, diagnosing diseases, and personalized medicine.
  • Finance: Fraud detection, risk management, and algorithmic trading.
  • Technology: Natural language processing, image recognition, and recommendation systems.
  • Environmental Science: Climate modeling, predicting natural disasters, and analyzing environmental data.

In summary, data science is a powerful discipline that leverages data-driven approaches to solve complex problems, drive innovation, and generate value in various fields and industries.

It plays a crucial role in today’s data-driven world, enabling organizations to make better decisions, improve processes, and create new opportunities for growth and development.

How to Select Data Science Project Ideas For Final Year?

Selecting the right data science project idea for your final year is crucial as it can shape your learning experience, showcase your skills to potential employers, and contribute to solving real-world problems. Here’s a step-by-step guide on how to select data science project ideas for your final year:

  • Understand Your Interests and Strengths

Reflect on your interests within the field of data science. Are you passionate about healthcare, finance, social media, or environmental issues? Consider your strengths as well. 

Are you proficient in programming languages like Python or R? Do you have experience with statistical analysis, machine learning, or data visualization? Identifying your interests and strengths will help narrow down project ideas that align with your skills and passions.

  • Consider the Impact

Think about the impact you want your project to have. Do you aim to address a specific problem or challenge in society, industry, or academia?

Consider the potential beneficiaries of your project and how it can contribute to positive change. Projects with a clear and measurable impact are often more compelling and rewarding.

  • Assess Data Availability

Check the availability of relevant datasets for your project idea. Are there publicly available datasets that you can use for analysis? Can you collect data through web scraping, APIs, or surveys?

Ensure that the data you plan to work with is reliable, relevant, and adequately sized to support your analysis and modeling efforts.

  • Define Clear Objectives

Clearly define the objectives of your project. What do you aim to accomplish? Are you exploring trends, building predictive models, or developing new algorithms?

Establishing clear objectives will guide your project’s scope, methodology, and evaluation criteria.

  • Explore Project Feasibility

Evaluate the feasibility of your project idea given the resources and time constraints of your final year.

Consider factors such as data availability, computational requirements, and the complexity of the techniques you plan to use. Choose a project idea that is challenging yet achievable within your timeframe and resources.

  • Seek Inspiration and Guidance

Look for inspiration from existing data science projects, research papers, and industry case studies. Attend workshops, conferences, or webinars related to data science to stay updated on emerging trends and technologies.

Seek guidance from your professors, mentors, or industry professionals who can provide valuable insights and feedback on your project ideas.

  • Brainstorm and Refine

Brainstorm multiple project ideas and refine them based on feedback, feasibility, and alignment with your interests and goals.

Consider interdisciplinary approaches that combine data science with other fields such as healthcare, finance, or environmental science. Iterate on your ideas until you find one that excites you and meets the criteria outlined above.

  • Plan for Iterative Development

Recognize that data science projects often involve iterative development and refinement.

Plan to iterate on your project as you gather new insights, experiment with different techniques, and incorporate feedback from stakeholders. Embrace the iterative process as an opportunity for continuous learning and improvement.

By following these steps, you can select a data science project idea for your final year that is engaging, impactful, and aligned with your interests and aspirations. Remember to stay curious, persistent, and open to exploring new ideas throughout your project journey.

Exploratory Data Analysis Projects

  • Analysis of demographic trends using census data
  • Social media sentiment analysis
  • Customer segmentation for marketing strategies
  • Stock market trend analysis
  • Crime rates and patterns in urban areas

Machine Learning Projects

  • Healthcare outcome prediction
  • Fraud detection in financial transactions
  • E-commerce recommendation systems
  • Housing price prediction
  • Sentiment analysis for product reviews

Natural Language Processing (NLP) Projects

  • Text summarization for news articles
  • Topic modeling for large text datasets
  • Named Entity Recognition (NER) for extracting entities from text
  • Social media comment sentiment analysis
  • Language translation tools for multilingual communication

Big Data Projects

  • IoT data analysis
  • Real-time analytics for streaming data
  • Recommendation systems using big data platforms
  • Social network data analysis
  • Predictive maintenance for industrial equipment

Data Visualization Projects

  • Interactive COVID-19 dashboard
  • Geographic information system (GIS) for spatial data analysis
  • Network visualization for social media connections
  • Time-series analysis for financial data
  • Climate change data visualization

Healthcare Projects

  • Disease outbreak prediction
  • Patient readmission rate prediction
  • Drug effectiveness analysis
  • Medical image classification
  • Electronic health record analysis

Finance Projects

  • Stock price prediction
  • Credit risk assessment
  • Portfolio optimization
  • Fraud detection in banking transactions
  • Financial market trend analysis

Marketing Projects

  • Customer churn prediction
  • Market segmentation analysis
  • Brand sentiment analysis
  • Ad campaign optimization
  • Social media influencer identification

E-commerce Projects

  • Product recommendation systems
  • Customer lifetime value prediction
  • Market basket analysis
  • Price elasticity modeling
  • User behavior analysis

Education Projects

  • Student performance prediction
  • Dropout rate analysis
  • Personalized learning recommendation systems
  • Educational resource allocation optimization
  • Student sentiment analysis

Environmental Projects

  • Air quality prediction
  • Climate change impact analysis
  • Wildlife conservation modeling
  • Water quality monitoring
  • Renewable energy forecasting

Social Media Projects

  • Trend detection
  • Fake news detection
  • Influencer identification
  • Social network analysis
  • Hashtag sentiment analysis

Retail Projects

  • Inventory management optimization
  • Demand forecasting
  • Customer segmentation for targeted marketing
  • Price optimization

Telecommunications Projects

  • Network performance optimization
  • Fraud detection
  • Call volume forecasting
  • Subscriber segmentation analysis

Supply Chain Projects

  • Inventory optimization
  • Supplier risk assessment
  • Route optimization
  • Supply chain network analysis

Automotive Projects

  • Predictive maintenance for vehicles
  • Traffic congestion prediction
  • Vehicle defect detection
  • Autonomous vehicle behavior analysis
  • Fleet management optimization

Energy Projects

  • Predictive maintenance for equipment
  • Energy consumption forecasting
  • Renewable energy optimization
  • Grid stability analysis
  • Demand response optimization

Agriculture Projects

  • Crop yield prediction
  • Pest detection
  • Soil quality analysis
  • Irrigation optimization
  • Farm management systems

Human Resources Projects

  • Employee churn prediction
  • Performance appraisal analysis
  • Diversity and inclusion analysis
  • Recruitment optimization
  • Employee sentiment analysis

Travel and Hospitality Projects

  • Demand forecasting for hotel bookings
  • Customer sentiment analysis for reviews
  • Pricing strategy optimization
  • Personalized travel recommendations
  • Destination popularity prediction

Embarking on data science projects in their final year presents students with an excellent opportunity to apply their skills, gain practical experience, and make a tangible impact.

Whether it’s exploring demographic trends, building predictive models, or visualizing complex datasets, these projects offer a platform for innovation and learning.

By undertaking these data science project ideas for final year, final year students can hone their data science skills and prepare themselves for a successful career in this rapidly evolving field.

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37 Research Topics In Data Science To Stay On Top Of

Stewart Kaplan

  • February 22, 2024

As a data scientist, staying on top of the latest research in your field is essential.

The data science landscape changes rapidly, and new techniques and tools are constantly being developed.

To keep up with the competition, you need to be aware of the latest trends and topics in data science research.

In this article, we will provide an overview of 37 hot research topics in data science.

We will discuss each topic in detail, including its significance and potential applications.

These topics could be an idea for a thesis or simply topics you can research independently.

Stay tuned – this is one blog post you don’t want to miss!

37 Research Topics in Data Science

1.) predictive modeling.

Predictive modeling is a significant portion of data science and a topic you must be aware of.

Simply put, it is the process of using historical data to build models that can predict future outcomes.

Predictive modeling has many applications, from marketing and sales to financial forecasting and risk management.

As businesses increasingly rely on data to make decisions, predictive modeling is becoming more and more important.

While it can be complex, predictive modeling is a powerful tool that gives businesses a competitive advantage.

predictive modeling

2.) Big Data Analytics

These days, it seems like everyone is talking about big data.

And with good reason – organizations of all sizes are sitting on mountains of data, and they’re increasingly turning to data scientists to help them make sense of it all.

But what exactly is big data? And what does it mean for data science?

Simply put, big data is a term used to describe datasets that are too large and complex for traditional data processing techniques.

Big data typically refers to datasets of a few terabytes or more.

But size isn’t the only defining characteristic – big data is also characterized by its high Velocity (the speed at which data is generated), Variety (the different types of data), and Volume (the amount of the information).

Given the enormity of big data, it’s not surprising that organizations are struggling to make sense of it all.

That’s where data science comes in.

Data scientists use various methods to wrangle big data, including distributed computing and other decentralized technologies.

With the help of data science, organizations are beginning to unlock the hidden value in their big data.

By harnessing the power of big data analytics, they can improve their decision-making, better understand their customers, and develop new products and services.

3.) Auto Machine Learning

Auto machine learning is a research topic in data science concerned with developing algorithms that can automatically learn from data without intervention.

This area of research is vital because it allows data scientists to automate the process of writing code for every dataset.

This allows us to focus on other tasks, such as model selection and validation.

Auto machine learning algorithms can learn from data in a hands-off way for the data scientist – while still providing incredible insights.

This makes them a valuable tool for data scientists who either don’t have the skills to do their own analysis or are struggling.

Auto Machine Learning

4.) Text Mining

Text mining is a research topic in data science that deals with text data extraction.

This area of research is important because it allows us to get as much information as possible from the vast amount of text data available today.

Text mining techniques can extract information from text data, such as keywords, sentiments, and relationships.

This information can be used for various purposes, such as model building and predictive analytics.

5.) Natural Language Processing

Natural language processing is a data science research topic that analyzes human language data.

This area of research is important because it allows us to understand and make sense of the vast amount of text data available today.

Natural language processing techniques can build predictive and interactive models from any language data.

Natural Language processing is pretty broad, and recent advances like GPT-3 have pushed this topic to the forefront.

natural language processing

6.) Recommender Systems

Recommender systems are an exciting topic in data science because they allow us to make better products, services, and content recommendations.

Businesses can better understand their customers and their needs by using recommender systems.

This, in turn, allows them to develop better products and services that meet the needs of their customers.

Recommender systems are also used to recommend content to users.

This can be done on an individual level or at a group level.

Think about Netflix, for example, always knowing what you want to watch!

Recommender systems are a valuable tool for businesses and users alike.

7.) Deep Learning

Deep learning is a research topic in data science that deals with artificial neural networks.

These networks are composed of multiple layers, and each layer is formed from various nodes.

Deep learning networks can learn from data similarly to how humans learn, irrespective of the data distribution.

This makes them a valuable tool for data scientists looking to build models that can learn from data independently.

The deep learning network has become very popular in recent years because of its ability to achieve state-of-the-art results on various tasks.

There seems to be a new SOTA deep learning algorithm research paper on  https://arxiv.org/  every single day!

deep learning

8.) Reinforcement Learning

Reinforcement learning is a research topic in data science that deals with algorithms that can learn on multiple levels from interactions with their environment.

This area of research is essential because it allows us to develop algorithms that can learn non-greedy approaches to decision-making, allowing businesses and companies to win in the long term compared to the short.

9.) Data Visualization

Data visualization is an excellent research topic in data science because it allows us to see our data in a way that is easy to understand.

Data visualization techniques can be used to create charts, graphs, and other visual representations of data.

This allows us to see the patterns and trends hidden in our data.

Data visualization is also used to communicate results to others.

This allows us to share our findings with others in a way that is easy to understand.

There are many ways to contribute to and learn about data visualization.

Some ways include attending conferences, reading papers, and contributing to open-source projects.

data visualization

10.) Predictive Maintenance

Predictive maintenance is a hot topic in data science because it allows us to prevent failures before they happen.

This is done using data analytics to predict when a failure will occur.

This allows us to take corrective action before the failure actually happens.

While this sounds simple, avoiding false positives while keeping recall is challenging and an area wide open for advancement.

11.) Financial Analysis

Financial analysis is an older topic that has been around for a while but is still a great field where contributions can be felt.

Current researchers are focused on analyzing macroeconomic data to make better financial decisions.

This is done by analyzing the data to identify trends and patterns.

Financial analysts can use this information to make informed decisions about where to invest their money.

Financial analysis is also used to predict future economic trends.

This allows businesses and individuals to prepare for potential financial hardships and enable companies to be cash-heavy during good economic conditions.

Overall, financial analysis is a valuable tool for anyone looking to make better financial decisions.

Financial Analysis

12.) Image Recognition

Image recognition is one of the hottest topics in data science because it allows us to identify objects in images.

This is done using artificial intelligence algorithms that can learn from data and understand what objects you’re looking for.

This allows us to build models that can accurately recognize objects in images and video.

This is a valuable tool for businesses and individuals who want to be able to identify objects in images.

Think about security, identification, routing, traffic, etc.

Image Recognition has gained a ton of momentum recently – for a good reason.

13.) Fraud Detection

Fraud detection is a great topic in data science because it allows us to identify fraudulent activity before it happens.

This is done by analyzing data to look for patterns and trends that may be associated with the fraud.

Once our machine learning model recognizes some of these patterns in real time, it immediately detects fraud.

This allows us to take corrective action before the fraud actually happens.

Fraud detection is a valuable tool for anyone who wants to protect themselves from potential fraudulent activity.

fraud detection

14.) Web Scraping

Web scraping is a controversial topic in data science because it allows us to collect data from the web, which is usually data you do not own.

This is done by extracting data from websites using scraping tools that are usually custom-programmed.

This allows us to collect data that would otherwise be inaccessible.

For obvious reasons, web scraping is a unique tool – giving you data your competitors would have no chance of getting.

I think there is an excellent opportunity to create new and innovative ways to make scraping accessible for everyone, not just those who understand Selenium and Beautiful Soup.

15.) Social Media Analysis

Social media analysis is not new; many people have already created exciting and innovative algorithms to study this.

However, it is still a great data science research topic because it allows us to understand how people interact on social media.

This is done by analyzing data from social media platforms to look for insights, bots, and recent societal trends.

Once we understand these practices, we can use this information to improve our marketing efforts.

For example, if we know that a particular demographic prefers a specific type of content, we can create more content that appeals to them.

Social media analysis is also used to understand how people interact with brands on social media.

This allows businesses to understand better what their customers want and need.

Overall, social media analysis is valuable for anyone who wants to improve their marketing efforts or understand how customers interact with brands.

social media

16.) GPU Computing

GPU computing is a fun new research topic in data science because it allows us to process data much faster than traditional CPUs .

Due to how GPUs are made, they’re incredibly proficient at intense matrix operations, outperforming traditional CPUs by very high margins.

While the computation is fast, the coding is still tricky.

There is an excellent research opportunity to bring these innovations to non-traditional modules, allowing data science to take advantage of GPU computing outside of deep learning.

17.) Quantum Computing

Quantum computing is a new research topic in data science and physics because it allows us to process data much faster than traditional computers.

It also opens the door to new types of data.

There are just some problems that can’t be solved utilizing outside of the classical computer.

For example, if you wanted to understand how a single atom moved around, a classical computer couldn’t handle this problem.

You’ll need to utilize a quantum computer to handle quantum mechanics problems.

This may be the “hottest” research topic on the planet right now, with some of the top researchers in computer science and physics worldwide working on it.

You could be too.

quantum computing

18.) Genomics

Genomics may be the only research topic that can compete with quantum computing regarding the “number of top researchers working on it.”

Genomics is a fantastic intersection of data science because it allows us to understand how genes work.

This is done by sequencing the DNA of different organisms to look for insights into our and other species.

Once we understand these patterns, we can use this information to improve our understanding of diseases and create new and innovative treatments for them.

Genomics is also used to study the evolution of different species.

Genomics is the future and a field begging for new and exciting research professionals to take it to the next step.

19.) Location-based services

Location-based services are an old and time-tested research topic in data science.

Since GPS and 4g cell phone reception became a thing, we’ve been trying to stay informed about how humans interact with their environment.

This is done by analyzing data from GPS tracking devices, cell phone towers, and Wi-Fi routers to look for insights into how humans interact.

Once we understand these practices, we can use this information to improve our geotargeting efforts, improve maps, find faster routes, and improve cohesion throughout a community.

Location-based services are used to understand the user, something every business could always use a little bit more of.

While a seemingly “stale” field, location-based services have seen a revival period with self-driving cars.

GPS

20.) Smart City Applications

Smart city applications are all the rage in data science research right now.

By harnessing the power of data, cities can become more efficient and sustainable.

But what exactly are smart city applications?

In short, they are systems that use data to improve city infrastructure and services.

This can include anything from traffic management and energy use to waste management and public safety.

Data is collected from various sources, including sensors, cameras, and social media.

It is then analyzed to identify tendencies and habits.

This information can make predictions about future needs and optimize city resources.

As more and more cities strive to become “smart,” the demand for data scientists with expertise in smart city applications is only growing.

21.) Internet Of Things (IoT)

The Internet of Things, or IoT, is exciting and new data science and sustainability research topic.

IoT is a network of physical objects embedded with sensors and connected to the internet.

These objects can include everything from alarm clocks to refrigerators; they’re all connected to the internet.

That means that they can share data with computers.

And that’s where data science comes in.

Data scientists are using IoT data to learn everything from how people use energy to how traffic flows through a city.

They’re also using IoT data to predict when an appliance will break down or when a road will be congested.

Really, the possibilities are endless.

With such a wide-open field, it’s easy to see why IoT is being researched by some of the top professionals in the world.

internet of things

22.) Cybersecurity

Cybersecurity is a relatively new research topic in data science and in general, but it’s already garnering a lot of attention from businesses and organizations.

After all, with the increasing number of cyber attacks in recent years, it’s clear that we need to find better ways to protect our data.

While most of cybersecurity focuses on infrastructure, data scientists can leverage historical events to find potential exploits to protect their companies.

Sometimes, looking at a problem from a different angle helps, and that’s what data science brings to cybersecurity.

Also, data science can help to develop new security technologies and protocols.

As a result, cybersecurity is a crucial data science research area and one that will only become more important in the years to come.

23.) Blockchain

Blockchain is an incredible new research topic in data science for several reasons.

First, it is a distributed database technology that enables secure, transparent, and tamper-proof transactions.

Did someone say transmitting data?

This makes it an ideal platform for tracking data and transactions in various industries.

Second, blockchain is powered by cryptography, which not only makes it highly secure – but is a familiar foe for data scientists.

Finally, blockchain is still in its early stages of development, so there is much room for research and innovation.

As a result, blockchain is a great new research topic in data science that vows to revolutionize how we store, transmit and manage data.

blockchain

24.) Sustainability

Sustainability is a relatively new research topic in data science, but it is gaining traction quickly.

To keep up with this demand, The Wharton School of the University of Pennsylvania has  started to offer an MBA in Sustainability .

This demand isn’t shocking, and some of the reasons include the following:

Sustainability is an important issue that is relevant to everyone.

Datasets on sustainability are constantly growing and changing, making it an exciting challenge for data scientists.

There hasn’t been a “set way” to approach sustainability from a data perspective, making it an excellent opportunity for interdisciplinary research.

As data science grows, sustainability will likely become an increasingly important research topic.

25.) Educational Data

Education has always been a great topic for research, and with the advent of big data, educational data has become an even richer source of information.

By studying educational data, researchers can gain insights into how students learn, what motivates them, and what barriers these students may face.

Besides, data science can be used to develop educational interventions tailored to individual students’ needs.

Imagine being the researcher that helps that high schooler pass mathematics; what an incredible feeling.

With the increasing availability of educational data, data science has enormous potential to improve the quality of education.

online education

26.) Politics

As data science continues to evolve, so does the scope of its applications.

Originally used primarily for business intelligence and marketing, data science is now applied to various fields, including politics.

By analyzing large data sets, political scientists (data scientists with a cooler name) can gain valuable insights into voting patterns, campaign strategies, and more.

Further, data science can be used to forecast election results and understand the effects of political events on public opinion.

With the wealth of data available, there is no shortage of research opportunities in this field.

As data science evolves, so does our understanding of politics and its role in our world.

27.) Cloud Technologies

Cloud technologies are a great research topic.

It allows for the outsourcing and sharing of computer resources and applications all over the internet.

This lets organizations save money on hardware and maintenance costs while providing employees access to the latest and greatest software and applications.

I believe there is an argument that AWS could be the greatest and most technologically advanced business ever built (Yes, I know it’s only part of the company).

Besides, cloud technologies can help improve team members’ collaboration by allowing them to share files and work on projects together in real-time.

As more businesses adopt cloud technologies, data scientists must stay up-to-date on the latest trends in this area.

By researching cloud technologies, data scientists can help organizations to make the most of this new and exciting technology.

cloud technologies

28.) Robotics

Robotics has recently become a household name, and it’s for a good reason.

First, robotics deals with controlling and planning physical systems, an inherently complex problem.

Second, robotics requires various sensors and actuators to interact with the world, making it an ideal application for machine learning techniques.

Finally, robotics is an interdisciplinary field that draws on various disciplines, such as computer science, mechanical engineering, and electrical engineering.

As a result, robotics is a rich source of research problems for data scientists.

29.) HealthCare

Healthcare is an industry that is ripe for data-driven innovation.

Hospitals, clinics, and health insurance companies generate a tremendous amount of data daily.

This data can be used to improve the quality of care and outcomes for patients.

This is perfect timing, as the healthcare industry is undergoing a significant shift towards value-based care, which means there is a greater need than ever for data-driven decision-making.

As a result, healthcare is an exciting new research topic for data scientists.

There are many different ways in which data can be used to improve healthcare, and there is a ton of room for newcomers to make discoveries.

healthcare

30.) Remote Work

There’s no doubt that remote work is on the rise.

In today’s global economy, more and more businesses are allowing their employees to work from home or anywhere else they can get a stable internet connection.

But what does this mean for data science? Well, for one thing, it opens up a whole new field of research.

For example, how does remote work impact employee productivity?

What are the best ways to manage and collaborate on data science projects when team members are spread across the globe?

And what are the cybersecurity risks associated with working remotely?

These are just a few of the questions that data scientists will be able to answer with further research.

So if you’re looking for a new topic to sink your teeth into, remote work in data science is a great option.

31.) Data-Driven Journalism

Data-driven journalism is an exciting new field of research that combines the best of both worlds: the rigor of data science with the creativity of journalism.

By applying data analytics to large datasets, journalists can uncover stories that would otherwise be hidden.

And telling these stories compellingly can help people better understand the world around them.

Data-driven journalism is still in its infancy, but it has already had a major impact on how news is reported.

In the future, it will only become more important as data becomes increasingly fluid among journalists.

It is an exciting new topic and research field for data scientists to explore.

journalism

32.) Data Engineering

Data engineering is a staple in data science, focusing on efficiently managing data.

Data engineers are responsible for developing and maintaining the systems that collect, process, and store data.

In recent years, there has been an increasing demand for data engineers as the volume of data generated by businesses and organizations has grown exponentially.

Data engineers must be able to design and implement efficient data-processing pipelines and have the skills to optimize and troubleshoot existing systems.

If you are looking for a challenging research topic that would immediately impact you worldwide, then improving or innovating a new approach in data engineering would be a good start.

33.) Data Curation

Data curation has been a hot topic in the data science community for some time now.

Curating data involves organizing, managing, and preserving data so researchers can use it.

Data curation can help to ensure that data is accurate, reliable, and accessible.

It can also help to prevent research duplication and to facilitate the sharing of data between researchers.

Data curation is a vital part of data science. In recent years, there has been an increasing focus on data curation, as it has become clear that it is essential for ensuring data quality.

As a result, data curation is now a major research topic in data science.

There are numerous books and articles on the subject, and many universities offer courses on data curation.

Data curation is an integral part of data science and will only become more important in the future.

businessman

34.) Meta-Learning

Meta-learning is gaining a ton of steam in data science. It’s learning how to learn.

So, if you can learn how to learn, you can learn anything much faster.

Meta-learning is mainly used in deep learning, as applications outside of this are generally pretty hard.

In deep learning, many parameters need to be tuned for a good model, and there’s usually a lot of data.

You can save time and effort if you can automatically and quickly do this tuning.

In machine learning, meta-learning can improve models’ performance by sharing knowledge between different models.

For example, if you have a bunch of different models that all solve the same problem, then you can use meta-learning to share the knowledge between them to improve the cluster (groups) overall performance.

I don’t know how anyone looking for a research topic could stay away from this field; it’s what the  Terminator  warned us about!

35.) Data Warehousing

A data warehouse is a system used for data analysis and reporting.

It is a central data repository created by combining data from multiple sources.

Data warehouses are often used to store historical data, such as sales data, financial data, and customer data.

This data type can be used to create reports and perform statistical analysis.

Data warehouses also store data that the organization is not currently using.

This type of data can be used for future research projects.

Data warehousing is an incredible research topic in data science because it offers a variety of benefits.

Data warehouses help organizations to save time and money by reducing the need for manual data entry.

They also help to improve the accuracy of reports and provide a complete picture of the organization’s performance.

Data warehousing feels like one of the weakest parts of the Data Science Technology Stack; if you want a research topic that could have a monumental impact – data warehousing is an excellent place to look.

data warehousing

36.) Business Intelligence

Business intelligence aims to collect, process, and analyze data to help businesses make better decisions.

Business intelligence can improve marketing, sales, customer service, and operations.

It can also be used to identify new business opportunities and track competition.

BI is business and another tool in your company’s toolbox to continue dominating your area.

Data science is the perfect tool for business intelligence because it combines statistics, computer science, and machine learning.

Data scientists can use business intelligence to answer questions like, “What are our customers buying?” or “What are our competitors doing?” or “How can we increase sales?”

Business intelligence is a great way to improve your business’s bottom line and an excellent opportunity to dive deep into a well-respected research topic.

37.) Crowdsourcing

One of the newest areas of research in data science is crowdsourcing.

Crowdsourcing is a process of sourcing tasks or projects to a large group of people, typically via the internet.

This can be done for various purposes, such as gathering data, developing new algorithms, or even just for fun (think: online quizzes and surveys).

But what makes crowdsourcing so powerful is that it allows businesses and organizations to tap into a vast pool of talent and resources they wouldn’t otherwise have access to.

And with the rise of social media, it’s easier than ever to connect with potential crowdsource workers worldwide.

Imagine if you could effect that, finding innovative ways to improve how people work together.

That would have a huge effect.

crowd sourcing

Final Thoughts, Are These Research Topics In Data Science For You?

Thirty-seven different research topics in data science are a lot to take in, but we hope you found a research topic that interests you.

If not, don’t worry – there are plenty of other great topics to explore.

The important thing is to get started with your research and find ways to apply what you learn to real-world problems.

We wish you the best of luck as you begin your data science journey!

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Top 10 Data Science Project Ideas in 2024

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data science thesis projects

Data science is a practical field. You need various hands-on skills to stand out and advance your career. One of the best ways to obtain them is by building end-to-end data science projects that solve complex problems using real-world datasets.

Not sure where to start?

In this article, we provide 10 case studies from finance, healthcare, marketing, manufacturing, and other industries. You can use them as inspiration and adapt them to the domain of your interest.

All projects involve real business cases. Each one starts with a brief description of the problem, followed by an outline of the methodology, then the expected output, and finally, a recommended dataset and a relevant research paper. Most of the datasets are available on Kaggle or can be web scraped.

If you wish to start a project without the trouble of selecting and locating resources, we've prepared a series of engaging and relevant projects on our platform. These projects offer valuable hands-on practice to test your skills.

You can also include them in your portfolio to demonstrate to potential employers your experience in tackling everyday job challenges. For more information, check out the projects page on our website.

Below, we present 10 data science project ideas with step-by-step solutions. But first, we’ll explain what the data science life cycle is and how to execute an end-to-end project. Continue reading to learn to how to recognize and use your resources to turn information into a data science project.

Top 10 Data Science Project Ideas: Table of Contents

The data science life cycle, hospital treatment pricing prediction, youtube comments analysis, illegal fishing classification.

  • Bank Customer Segmentation

Dogecoin Cryptocurrency Prices Predictor with LSTM

Book recommendation system, gender detection and age prediction using deep learning, speech emotion recognition for customer satisfaction, traveling agency customer service chatbots, detection of metallic surface defects.

  • Data Science Project Ideas: Next Steps\

End-to-end projects involve real-world problems which you solve using the 6 stages of the data science life cycle:

  • Business understanding
  • Data understanding
  • Data preparation

Here’s how to execute a data science project from end to end in more detail.

First, you define the business questions, requirements, and performance measurement. After that, you collect data to answer these questions. Then come the cleaning and preparation processes to get the data ready for exploration and analysis. These are the understanding stages.

But we’re not done yet.

Next comes the data preparation process. It involves the preprocessing and engineering of the features to prepare for the modeling step. Once that’s done, you can train the models on the prepared data. Depending on the task you are working on, you can do one of two things:

  • Deploy the model on a live server and integrate it into a mobile or web application; then, monitor it and iterate again if needed, or
  • Build dashboards based on the insights extracted from the data and the modeling step.

That wraps up the data science life cycle. Before you start working, you need some ideas for a data science project.

For starters, select a domain you are interested in. You can choose one that fits your educational background or previous work experience. This will give you a head start as you will know the field.

After that, you need to explore the common problems in this domain and how data science can solve them. Finally, choose a case study and formulate the business questions. Only then can you apply the life cycle we discussed above.

Now, let’s get started with a few project ideas.

The increasing cost of healthcare services is a major concern, especially for patients in the US. However, if planned properly, it can be reduced significantly.

The purpose of this project is to predict hospital charges before admitting a patient. Data science projects like this one are a great addition to your portfolio, especially if you want to pursue a career in healthcare .

Project Description

This will allow people to compare the costs at different medical institutions and plan their finances accordingly in case of elective admissions. It will also enable insurance companies to predict how much a patient with a particular medical condition might claim after a hospitalization.

You can solve this project using predictive analysis . This type of advanced analytics allows us to make predictions about future outcomes based on historical data. Typically, it involves statistical modeling, data mining, and machine learning techniques. In this case, we estimate hospital treatment costs based on the patient’s clinical data at admission.

Methodology

  • Collect the hospital package pricing dataset
  • Explore and understand the data
  • Clean the data
  • Perform engineering and preprocessing to prepare for the modeling step
  • Select the suitable predictive model and train it with the data
  • Deploy the model on a live server and integrate it into a web application to predict the pricing in real time
  • Monitor the model in production and iterate

Expected Output

There are two expected outputs from this project:

  • Analytical dashboard with insights extracted from the data that can be delivered to hospital and insurance companies
  • Deployed predictive model into production on a live server that can be integrated into a web or mobile application and predict treatment costs in real time

Suggest Dataset:

  • Package Pricing at Mission Hospital

Research Paper:

  • Predicting the Inpatient Hospital Cost Using Machine Learning

This following example is form the marketing and finance domain .

Sentiment analysis or opinion mining refers to the analysis of the attitudes, feedback, and emotions users express on social media and other online platforms. It involves the detection of patterns in natural language that allude to people’s attitudes toward certain products or topics.

YouTube is the second most popular website in the world. Its comments section is a great source of user opinions on various topics. There are many examples of how you can approach such a data science project.

Let’s explore one of them.

You can analyze YouTube comments with natural language processing techniques. Begin by scraping text data using the library YouTube-Comment-Scraper-Python. It fetches comments utilizing browser automation.

Then, apply natural processing and text processing techniques to extract features, analyze them, and find the answers to the business questions you posed. You can build a dashboard to present the insights.

  • Define the business questions you want to answer
  • Build a web scrapper to collect data
  • Clean the scraped data
  • Text preprocessing to extract features
  • Exploratory data analysis to extract insights from the data
  • Build dashboards to present the insights interactively

Dashboards with insights from the scraped data.

Suggested Data

  • Most Liked Comments on YouTube
  • Analysis and Classification of User Comments on YouTube Videos
  • Sentiment Analysis on YouTube Comments: A Brief Study

Marine life has a significant impact on our planet, providing food, oxygen, and biodiversity. Unfortunately, 90% of the large fish are gone primarily as a result of overfishing . In addition, many major fisheries notice increases in illegal fishing, undermining the efforts to conserve and manage fish stocks.

Detecting fishing activities in the ocean is a crucial step in achieving sustainability. It’s also an excellent big data project to add to your portfolio.

Identifying whether a vessel is fishing illegally and where this activity is likely to occur is a major step in ending illegal, unreported, and unregulated (IUU) fishing. However, monitoring the oceans is costly, time-consuming, and logistically difficult.

To overcome these challenges, we must improve the ability to detect and predict illegal fishing. This can be done using classification machine learning models to recognize and trace illegal fishing activity by collecting and processing GPS data from ships, as well as other pieces of information. The classification algorithm can distinguish these ships by type, fishing gear, and fishing behaviors.

  • Collect the fishing watch dataset
  • Perform data exploration to understand it better
  • Perform engineering to extract features from the data
  • Train classification models to categorize the fishing activity
  • Deploy the trained model on a live server and integrate it into a web application
  • Finish by monitoring the model in production and iterating

Deployed model running in a live server and used within a web service or mobile application to predict illegal fishing in real time.

Suggested Dataset

  • Global Fishing Watch datasets

Research Papers

  • Fishing Activity Detection from AIS Data Using Autoencoders
  • Predicting Illegal Fishing on the Patagonia Shelf from Oceanographic Seascapes

The competition in the banking sector is increasing. To improve their services and retain and attract clients, banking and non-bank institutions need to modernize their marketing and customer strategies through personalization.

There are various data science models that could aid these efforts. Here, we focus on customer segmentation analysis .

Customer or market segmentation helps develop more effective investment and personalization strategies with the available information about clients. This is the process of grouping customers based on common characteristics, such as demographics or behaviors. This substantially improves targeting.

In this project, we segment Indian bank customers using data from more than one million transactions. We extract valuable information from these clusters and build dashboards with the insights. The final outputs can be used to improve products and marketing strategies.

  • Define the questions you would like to answer with the data
  • Collect the customer dataset
  • Perform exploratory data analysis to have a better understanding of the data
  • Perform feature preprocessing
  • Train clustering models to segment the data into a selected number of groups
  • Conduct cluster analysis to extract insights
  • Build dashboards with the insights

Dashboards with marketing insights extracted from the segmented customers.

  • A Customer Segmentation Approach in Commercial Banks

Dogecoin became one of the most popularity cryptocurrencies in recent years. Its price peaked in 2021, and it’s been slowly decreasing in 2022. That’s the case with most cryptocurrencies in the current economic situation.

However, the constant fluctuations make it hard for a human being to predict with accuracy the future prices. As such, automated algorithms are commonly used in finance .

This is an extremely valuable data science project for your resume if you want to pursue a career in this domain. If that’s your goal, you also need to learn how to use Python for Finance .

In this section, we discuss a time series forecasting project, commonly encountered in the financial sector .

A time series is a sequence of data points distributed over a time span. With forecasting, we can recognize patterns and predict future incidents based on historical trends. This type of data analytics projects can be conducted using several models, including ARIMA (autoregressive integrated moving average), regression algorithms, and long short-term memory (LSTM).

  • Collect the historical price data of the Dogecoin cryptocurrency
  • Manipulate and clean the data
  • Explore the data to have a better understanding
  • Train a deep learning model to predict the future change in prices
  • Deploy the model on a live server to predict the changes in real time

Deployed model into production integrated into a cryptocurrency trading web or mobile application. You can also build a dashboard based on the data insights to help understand the dynamics of Dogecoin.

  • Dogecoin Historical Price Data

Project Overview

Flawed products can result in substantial financial losses, so defect detection is crucial in manufacturing. Although human detection systems are still the traditional method employed, computer vision techniques are more effective.

In this example, we build a system to detect defects in metallic objects or surfaces during different phases of the production processes.

The types of defects can be aesthetic, such as stains, or potentially damaging the product’s functionality, such as notches, scratches, burns, lack of rectification, bumps, burrs, flatness, lack of thread, countersunk, rust, or cracks.

Since the appearance of metallic surfaces changes substantially with different lighting, defects are hard to detect even using computer vision. For this reason, lighting is a crucial component in solving such types of data science problems. Otherwise, the methodology of this project is standard.

  • Collect the metal surface defects dataset
  • Data cleaning and exploration
  • Feature extraction
  • Train models for defects detection and classification
  • Deploy the model into production on an embedded system

A deployed model on an embedded system that can detect and classify metallic surface defects in different conditions and environments.

  • Metal Surface Defects Dataset
  • Online Metallic Surface Defect Detection Using Deep Learning

Data Science Project Ideas: Next Steps

Having diverse and complex data science projects in your portfolio is a great way to demonstrate your skills to future employers. You can choose one from the list above or use it as inspiration and come up with your own idea.

But first, make sure you have the necessary skills to solve these problems. If you want to start with something simpler, try the 365 Data Science Career Track . That way, you can build your foundational knowledge and gradually progress to more advanced topics. In the meantime, the instructors will guide you through the completion of real-life data science projects. Sign up and start your learning journey with a selection of free courses.

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Youssef Hosni

Computer Vision Researcher / Data Scientist

Youssef is a computer vision researcher working towards his Ph.D. His research focuses on developing real-time computer vision algorithms for healthcare applications. He also worked as a data scientist, using customers' data to gain a better understanding of their behavior. Youssef is passionate about data and believes in AI's power to improve people's lives. He hopes to transfer his passion to others and guide them into this wide field through his writings.

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LIBRARIES | ARCH

Data science masters theses.

The Master of Science in Data Science program requires the successful completion of 12 courses to obtain a degree. These requirements cover six core courses, a leadership or project management course, two required courses corresponding to a declared specialization, two electives, and a capstone project or thesis. This collection contains a selection of masters theses or capstone projects by MSDS graduates.

Collection Details

List of items in this collection
  Title Date Added Visibility
 

2022-06-15
 

2022-06-05
 

2020-06-16
 

2020-06-13
 

2019-11-26
 

2019-11-21
 

2019-06-23

CodeAvail

Best 52 Data Science Project Ideas For Final Year

Data Science Project Ideas

Are you interested in diving into the world of data science and machine learning? Well, you’re in the right place! Data science is a fascinating field that combines mathematics, statistics, and programming to extract meaningful insights from data. To get started on your data science journey, you’ll need some project ideas to practice your skills. In this blog, we’ll present 52 data science project ideas, with explanations for the first 10, to help you get started on your data-driven adventure.

What is Data Science?

Table of Contents

Data science is like a detective for data. It’s a way of using math, statistics, and computers to find valuable information hidden in big piles of data. Think of it as sorting through a jigsaw puzzle without knowing what the final picture looks like. Data scientists collect, clean, and analyze data to discover patterns, make predictions, and solve problems. They help businesses make smart decisions, like suggesting products you might like or finding ways to reduce costs. Data science is all about turning data into knowledge that can guide important choices in the world of business, science, and beyond.

10 Data Science Project Ideas For Final Year

1. predictive sales analysis.

Build a model that predicts future sales based on historical data. This project can help businesses optimize inventory and staffing.

2. Sentiment Analysis on Social Media Posts

Analyze Twitter or Reddit data to determine public sentiment about a specific topic, brand, or event.

3. Movie Recommendation System

Build a system that gives movie suggestions to users by looking at what they like and what they’ve watched before.

4. Credit Card Fraud Detection

Develop a model to identify fraudulent credit card transactions, helping banks and customers prevent financial loss.

5. Natural Language Processing (NLP) Chatbot

Build a chatbot that can engage in conversations, answer questions, and perform simple tasks using NLP techniques.

6. Image Classification

Train a model to classify images into predefined categories, like cats vs. dogs or handwritten digits recognition.

7. Housing Price Prediction

Make a tool that guesses how much a house costs in one place by looking at things like how big it is, how many bedrooms it has, and what neighborhood it’s in.

8. Customer Churn Analysis

Analyze customer behavior data to predict and reduce customer churn for businesses like subscription services.

9. Text Summarization

Create a text summarization tool that can automatically generate concise summaries of long articles or documents.

10. Anomaly Detection

Detect anomalies in time-series data, such as network traffic or equipment sensor readings, to identify unusual patterns or issues.

42 Data Science Project Ideas For Final Year

Now that you have a solid understanding of the first 10 data science project ideas, here are the names of the remaining 42 projects:

  • Social Network Analysis
  • Stock Price Prediction
  • Email Spam Detection
  • Language Translation Tool
  • Customer Segmentation
  • Weather Forecasting
  • Healthcare Analytics
  • Music Genre Classification
  • E-commerce Product Recommendation
  • Predictive Maintenance for Machinery
  • Personality Prediction from Text
  • Restaurant Reviews Sentiment Analysis
  • Fraud Detection in Insurance Claims
  • Image Style Transfer
  • Predicting Disease Outbreaks
  • Earnings Call Analysis
  • Sports Analytics
  • Traffic Congestion Prediction
  • Employee Attrition Prediction
  • Game Recommendation System
  • News Topic Modeling
  • Customer Lifetime Value Prediction
  • Autonomous Drone Navigation
  • Food Recipe Generator
  • Movie Script Generation
  • Fashion Style Recognition
  • Energy Consumption Forecasting
  • Environmental Pollution Monitoring
  • Object Detection in Images
  • Customer Support Chatbot
  • Predictive Healthcare Diagnostics
  • Vehicle License Plate Recognition
  • Social Media Influence Analysis
  • Image Super-Resolution
  • Cybersecurity Threat Detection
  • Demand Forecasting for Retail
  • Stock Market Sentiment Analysis
  • Music Lyrics Generation
  • Voice Assistant for Data Analysis
  • Political Opinion Mining
  • Wildlife Species Identification
  • Education Recommender System

Data science is an exciting field with endless possibilities. We’ve shared 52 data science project ideas to help you embark on your data science journey. The first 10 projects, from sales predictions to anomaly detection, offer a solid foundation to hone your skills.

As you explore these projects, remember that learning by doing is key. Start with projects that match your current skill level and gradually tackle more complex ones. Whether you’re interested in finance, healthcare, entertainment, or any other domain, there’s a data science project waiting for you.

By working on these projects, you’ll gain hands-on experience, build a portfolio, and develop the problem-solving skills crucial for a successful data science career. So, pick a project, gather your data, and start analyzing! With dedication and practice, you’ll be well on your way to becoming a proficient data scientist and making a meaningful impact with your data-driven insights.

Frequently Asked Questions

How can i start working on a data science project as a beginner .

Start with simple projects and learn from online tutorials. Python is a good language to begin with.

What’s the importance of data science in today’s world? 

Data science helps make informed decisions in various fields, from business to healthcare, by uncovering insights hidden in data.

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Top 65+ Data Science Projects in 2024 [with Source Code]

Data Science Projects involve using data to solve real-world problems and find new solutions. They are great for beginners who want to add work to their resume , especially if you’re a final-year student . Data Science is a hot career in 2024, and by building data science projects you can start to gain industry insights.

Think about predicting movie ratings or analyzing trends in social media posts. For example, you could guess how people will rate movies or see what’s popular on social media. Data Science Projects are a great way to learn and show your skills, setting you up for success in the future.

Data-Sciecne-Projects

Explore cutting-edge data science projects with complete source code for 2024. These top Data Science Projects cover a range of applications, from machine learning and predictive analytics to natural language processing and computer vision . Dive into real-world examples to enhance your skills and understanding of data science.

Table of Content

What is Data Science?

Why build data science projects, best data science projects with source code, top data science projects – faqs.

Data Science is all about making sense of big piles of data . It’s like finding patterns and predicting future outcomes based on data. Data scientists use special tools and tricks to turn huge data into helpful information that can solve problems or make predictions.

Data Science is like being a detective for numbers. It’s about digging into huge piles of data to find hidden treasures of insights. Just like Sherlock Holmes uses clues to solve mysteries, data scientists use algorithms and techniques to uncover valuable information that helps businesses make better decisions.

Data Science Projects are important because they help us make better decisions using data . Whether it’s predicting trends in finance , understanding customer behavior in marketing, or diagnosing diseases in healthcare, data science projects enable us to uncover insights that lead to smarter choices and more efficient processes.

Data Science projects are like powerful tools that help us understand the world around us. They let us see patterns in data that we wouldn’t notice otherwise. By using these patterns, we can make smarter decisions in everything from business to healthcare, making our lives better and more efficient.

Let us look at some fun and exciting data science projects with source codes, that you can build.

Here are the best Data Science Projects with source code for beginners and experts to give a great learning experience. These projects help you understand the applications of data science by providing real world problems and solutions.

These projects use various technologies like Pandas , Matplotlib , Scikit-learn , TensorFlow , and many more. Deep learning projects commonly use TensorFlow and PyTorch, while NLP projects leverage NLTK, SpaCy, and TensorFlow.

We have categorized these projects into 6 categories. This will help you understand data science and it’s uses in different field. You can specialize in a particular field or build a diverse portfolio for job hunting.

Top Data Science Project Categories

Web scraping projects.

  • Data Analysis and Visualization Projects

Machine Learning Projects

  • Time Series Forecasting Projects

Deep Learning Projects

Opencv projects, nlp projects.

Explore the fascinating world of web scraping by building these data science projects with these exciting examples.

  • Quote Scraping
  • Wikipedia Text Scraping and cleaning
  • Movies Review Scraping And Analysis
  • Product Price Scraping and Analysis
  • News Scraping and Analysis
  • Real Estate Property Scraping and visualization
  • Geeksforgeeks Job Portal Web Scraping for Job Search
  • YouTube Channel Videos Web Scrapping
  • Real-time Share Price scrapping and analysis

Data Analysis & Visualizations

Go through on a data-driven journey with these captivating exploratory data analysis and visualization projects.

  • Zomato Data Analysis Using Python
  • IPL Data Analysis
  • Airbnb Data Analysis
  • Global Covid-19 Data Analysis and Visualizations
  • Housing Price Analysis & Predictions
  • Market Basket Analysis
  • Titanic Dataset Analysis and Survival Predictions
  • Iris Flower Dataset Analysis and Predictions
  • Customer Churn Analysis
  • Car Price Prediction Analysis
  • Indian Election Data Analysis
  • HR Analytics to Track Employee Performance
  • Product Recommendation Analysis
  • Credit Card Approvals Analysis & Predictions
  • Uber Trips Data Analysis
  • iPhone Sales Analysis
  • Google Search Analysis
  • World Happiness Report Analysis & Visualization
  • Apple Smart Watch Data Analysis
  • Analyze International Debt Statistics

Dive into the world of machine learning with these real world data science practical projects.

  • Wine Quality Prediction
  • Credit Card Fraud Detection
  • Disease Prediction Using Machine Learning
  • Loan Approval Prediction using Machine Learning
  • Loan Eligibility prediction using Machine Learning Models in Python
  • Recommendation System in Python
  • ML | Heart Disease Prediction Using Logistic Regression
  • House Price Prediction using Machine Learning in Python
  • ML | Boston Housing Kaggle Challenge with Linear Regression
  • ML | Kaggle Breast Cancer Wisconsin Diagnosis using Logistic Regression
  • ML | Cancer cell classification using Scikit-learn
  • Stock Price Prediction using Machine Learning in Python
  • ML | Kaggle Breast Cancer Wisconsin Diagnosis using KNN and Cross-Validation
  • Box Office Revenue Prediction Using Linear Regression in ML
  • Online Payment Fraud Detection using Machine Learning in Python
  • Customer Segmentation using Unsupervised Machine Learning in Python
  • Bitcoin Price Prediction using Machine Learning in Python
  • Recognizing HandWritten Digits in Scikit Learn
  • Zillow Home Value (Zestimate) Prediction in ML
  • Calories Burnt Prediction using Machine Learning

Time Series & Forecasting

Data Sceince Projects on time series and forecasting-

  • Time Series Analysis with Stock Price Data
  • Weather Data Analysis
  • Time Series Analysis with Cryptocurrency Data
  • Climate Change Data Analysis
  • Anomaly Detection in Time Series Data
  • Sales Forecast Prediction – Python
  • Predictive Modeling for Sales or Demand Forecasting
  • Air Quality Data Analysis and Dynamic Visualizations
  • Gold Price Analysis and Forcasting Over Time
  • Food Price Forecasting
  • Time wise Unemployement Data Analysis
  • Dogecoin Price Prediction with Machine Learning

Dive into these Data Science projects on Deep Learning to see how smart computers can get!

  • Prediction of Wine type using Deep Learning
  • IPL Score Prediction Using Deep Learning
  • Handwritten Digit Recognition using Neural Network
  • Predict Fuel Efficiency Using Tensorflow in Python
  • Identifying handwritten digits using Logistic Regression in PyTorch

Explore fascinating Data Science projects with OpenCV, a cool tool for playing with images and videos. You can do fun tasks like recognizing faces , tracking objects , and even creating your own Snapchat-like filters . Let’s unleash the power of computer vision together!

  • OCR of Handwritten digits | OpenCV
  • Cartooning an Image using OpenCV – Python
  • Count number of Object using Python-OpenCV
  • Count number of Faces using Python – OpenCV
  • Text Detection and Extraction using OpenCV and OCR

Discover the magic of NLP (Natural Language Processing) projects , where computers learn to understand human language. Dive into exciting tasks like sentiment analysis, chatbots, and language translation. Join the adventure of teaching computers to speak our language through these exciting projects.

  • Detecting Spam Emails Using Tensorflow in Python
  • SMS Spam Detection using TensorFlow in Python
  • Flipkart Reviews Sentiment Analysis using Python
  • Fake News Detection using Machine Learning
  • Fake News Detection Model using TensorFlow in Python
  • Twitter Sentiment Analysis using Python
  • Facebook Sentiment Analysis using python
  • Hate Speech Detection using Deep Learning

In this journey through data science projects, we’ve explored a vast array of fascinating topics and applications. From uncovering insights in web scraping and exploratory data analysis to solving real-world problems with machine learning, deep learning, OpenCV, and NLP, we’ve witnessed the power of data-driven insights.

Whether it’s predicting wine quality or detecting fraud, analyzing sentiments or forecasting sales, each project showcases how data science transforms raw data into actionable knowledge. With these projects, we’ve unlocked the potential of technology to make smarter decisions, improve processes, and enrich our understanding of the world around us.

What projects can be done in data science?

Data science projects can include web scraping, exploratory data analysis, machine learning, deep learning, computer vision, natural language processing, and more.

Which project is good for data science?

One of the most basic yet popular data science project is customer segmentation . Product based or service based, all companies need to work such that they can capture maximum users. This makes customer segmentation an important project.

How do I choose a data science project?

Choose a data science project based on your interests, available data, relevance to your goals, and potential impact on solving real-world problems.

What are the 10 main components of a data science project?

The 10 main components of a data science project include problem definition, data collection, data cleaning, exploratory data analysis, feature engineering, model selection, model training, model evaluation, results interpretation, and communication.

Are ML projects good for resume?

ML projects are excellent additions to a resume, showcasing practical skills, problem-solving abilities, and the ability to derive insights from data.

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Capstone and thesis overview.

Capstone and thesis are similar in that they both represent a culminating, scholarly effort of high quality. Both should clearly state a problem or issue to be addressed. Both will allow students to complete a larger project and produce a product or publication that can be highlighted on their resumes. Students should consider the factors below when deciding whether a capstone or thesis may be more appropriate to pursue.

A capstone is a practical or real-world project that can emphasize preparation for professional practice. A capstone is more appropriate if:

  • you don't necessarily need or want the experience of the research process or writing a big publication
  • you want more input on your project, from fellow students and instructors
  • you want more structure to your project, including assignment deadlines and due dates
  • you want to complete the project or graduate in a timely manner

A student can enroll in MSDS 498 Capstone in any term. However, capstone specialization courses can provide a unique student experience and may be offered only twice a year. 

A thesis is an academic-focused research project with broader applicability. A thesis is more appropriate if:

  • you want to get a PhD or other advanced degree and want the experience of the research process and writing for publication
  • you want to work individually with a specific faculty member who serves as your thesis adviser
  • you are more self-directed, are good at managing your own projects with very little supervision, and have a clear direction for your work
  • you have a project that requires more time to pursue

Students can enroll in MSDS 590 Thesis as long as there is an approved thesis project proposal, identified thesis adviser, and all other required documentation at least two weeks before the start of any term.

From Faculty Director, Thomas W. Miller, PhD

Tom Miller

Capstone projects and thesis research give students a chance to study topics of special interest to them. Students can highlight analytical skills developed in the program. Work on capstone and thesis research projects often leads to publications that students can highlight on their resumes.”

A thesis is an individual research project that usually takes two to four terms to complete. Capstone course sections, on the other hand, represent a one-term commitment.

Students need to evaluate their options prior to choosing a capstone course section because capstones vary widely from one instructor to the next. There are both general and specialization-focused capstone sections. Some capstone sections offer in individual research projects, others offer team research projects, and a few give students a choice of individual or team projects.

Students should refer to the SPS Graduate Student Handbook for more information regarding registration for either MSDS 590 Thesis or MSDS 498 Capstone.

Capstone Experience

If students wish to engage with an outside organization to work on a project for capstone, they can refer to this checklist and lessons learned for some helpful tips.

Capstone Checklist

  • Start early — set aside a minimum of one to two months prior to the capstone quarter to determine the industry and modeling interests.
  • Networking — pitch your idea to potential organizations for projects and focus on the business benefits you can provide.
  • Permission request — make sure your final project can be shared with others in the course and the information can be made public.
  • Engagement — engage with the capstone professor prior to and immediately after getting the dataset to ensure appropriate scope for the 10 weeks.
  • Teambuilding — recruit team members who have similar interests for the type of project during the first week of the course.

Capstone Lesson Learned

  • Access to company data can take longer than expected; not having this access before or at the start of the term can severely delay the progress
  • Project timeline should align with coursework timeline as closely as possible
  • One point of contact (POC) for business facing to ensure streamlined messages and more effective time management with the organization
  • Expectation management on both sides: (business) this is pro-bono (students) this does not guarantee internship or job opportunities
  • Data security/masking not executed in time can risk the opportunity completely

Publication of Work

Northwestern University Libraries offers an option for students to publish their master’s thesis or capstone in Arch, Northwestern’s open access research and data repository.

Benefits for publishing your thesis:

  • Your work will be indexed by search engines and discoverable by researchers around the world, extending your work’s impact beyond Northwestern
  • Your work will be assigned a Digital Object Identifier (DOI) to ensure perpetual online access and to facilitate scholarly citation
  • Your work will help accelerate discovery and increase knowledge in your subject domain by adding to the global corpus of public scholarly information

Get started:

  • Visit Arch online
  • Log in with your NetID
  • Describe your thesis: title, author, date, keywords, rights, license, subject, etc.
  • Upload your thesis or capstone PDF and any related supplemental files (data, code, images, presentations, documentation, etc.)
  • Select a visibility: Public, Northwestern-only, Embargo (i.e. delayed release)
  • Save your work to the repository

Your thesis manuscript or capstone report will then be published on the MSDS page. You can view other published work here .

For questions or support in publishing your thesis or capstone, please contact [email protected] .

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List of Best Research and Thesis Topic Ideas for Data Science in 2022

In an era driven by digital and technological transformation, businesses actively seek skilled and talented data science potentials capable of leveraging data insights to enhance business productivity and achieve organizational objectives. In keeping with an increasing demand for data science professionals, universities offer various data science and big data courses to prepare students for the tech industry. Research projects are a crucial part of these programs and a well- executed data science project can make your CV appear more robust and compelling. A  broad range of data science topics exist that offer exciting possibilities for research but choosing data science research topics can be a real challenge for students . After all, a good research project relies first and foremost on data analytics research topics that draw upon both mono-disciplinary and multi-disciplinary research to explore endless possibilities for real –world applications.

As one of the top-most masters and PhD online dissertation writing services , we are geared to assist students in the entire research process right from the initial conception to the final execution to ensure that you have a truly fulfilling and enriching research experience. These resources are also helpful for those students who are taking online classes .

By taking advantage of our best digital marketing research topics in data science you can be assured of producing an innovative research project that will impress your research professors and make a huge difference in attracting the right employers.

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Data science thesis topics

We have compiled a list of data science research topics for students studying data science that can be utilized in data science projects in 2022. our team of professional data experts have brought together master or MBA thesis topics in data science  that cater to core areas  driving the field of data science and big data that will relieve all your research anxieties and  provide a solid grounding for  an interesting research projects . The article will feature data science thesis ideas that can be immensely beneficial for students as they cover a broad research agenda for future data science . These ideas have been drawn from the 8 v’s of big data namely Volume, Value, Veracity, Visualization, Variety, Velocity, Viscosity, and Virility that provide interesting and challenging research areas for prospective researches  in their masters or PhD thesis . Overall, the general big data research topics can be divided into distinct categories to facilitate the research topic selection process.

  • Security and privacy issues
  • Cloud Computing Platforms for Big Data Adoption and Analytics
  • Real-time data analytics for processing of image , video and text
  • Modeling uncertainty

How “The Research Guardian” Can Help You A lot!

Our top thesis writing experts are available 24/7 to assist you the right university projects. Whether its critical literature reviews to complete your PhD. or Master Levels thesis.

DATA SCIENCE PHD RESEARCH TOPICS

The article will also guide students engaged in doctoral research by introducing them to an outstanding list of data science thesis topics that can lead to major real-time applications of big data analytics in your research projects.

  • Intelligent traffic control ; Gathering and monitoring traffic information using CCTV images.
  • Asymmetric protected storage methodology over multi-cloud service providers in Big data.
  • Leveraging disseminated data over big data analytics environment.
  • Internet of Things.
  • Large-scale data system and anomaly detection.

What makes us a unique research service for your research needs?

We offer all –round and superb research services that have a distinguished track record in helping students secure their desired grades in research projects in big data analytics and hence pave the way for a promising career ahead. These are the features that set us apart in the market for research services that effectively deal with all significant issues in your research for.

  • Plagiarism –free ; We strictly adhere to a non-plagiarism policy in all our research work to  provide you with well-written, original content  with low similarity index   to maximize  chances of acceptance of your research submissions.
  • Publication; We don’t just suggest PhD data science research topics but our PhD consultancy services take your research to the next level by ensuring its publication in well-reputed journals. A PhD thesis is indispensable for a PhD degree and with our premier best PhD thesis services that  tackle all aspects  of research writing and cater to  essential requirements of journals , we will bring you closer to your dream of being a PhD in the field of data analytics.
  • Research ethics: Solid research ethics lie at the core of our services where we actively seek to protect the  privacy and confidentiality of  the technical and personal information of our valued customers.
  • Research experience: We take pride in our world –class team of computing industry professionals equipped with the expertise and experience to assist in choosing data science research topics and subsequent phases in research including findings solutions, code development and final manuscript writing.
  • Business ethics: We are driven by a business philosophy that‘s wholly committed to achieving total customer satisfaction by providing constant online and offline support and timely submissions so that you can keep track of the progress of your research.

Now, we’ll proceed to cover specific research problems encompassing both data analytics research topics and big data thesis topics that have applications across multiple domains.

Get Help from Expert Thesis Writers!

TheresearchGuardian.com providing expert thesis assistance for university students at any sort of level. Our thesis writing service has been serving students since 2011.

Multi-modal Transfer Learning for Cross-Modal Information Retrieval

Aim and objectives.

The research aims to examine and explore the use of CMR approach in bringing about a flexible retrieval experience by combining data across different modalities to ensure abundant multimedia data.

  • Develop methods to enable learning across different modalities in shared cross modal spaces comprising texts and images as well as consider the limitations of existing cross –modal retrieval algorithms.
  • Investigate the presence and effects of bias in cross modal transfer learning and suggesting strategies for bias detection and mitigation.
  • Develop a tool with query expansion and relevance feedback capabilities to facilitate search and retrieval of multi-modal data.
  • Investigate the methods of multi modal learning and elaborate on the importance of multi-modal deep learning to provide a comprehensive learning experience.

The Role of Machine Learning in Facilitating the Implication of the Scientific Computing and Software Engineering

  • Evaluate how machine learning leads to improvements in computational APA reference generator tools and thus aids in  the implementation of scientific computing
  • Evaluating the effectiveness of machine learning in solving complex problems and improving the efficiency of scientific computing and software engineering processes.
  • Assessing the potential benefits and challenges of using machine learning in these fields, including factors such as cost, accuracy, and scalability.
  • Examining the ethical and social implications of using machine learning in scientific computing and software engineering, such as issues related to bias, transparency, and accountability.

Trustworthy AI

The research aims to explore the crucial role of data science in advancing scientific goals and solving problems as well as the implications involved in use of AI systems especially with respect to ethical concerns.

  • Investigate the value of digital infrastructures  available through open data   in  aiding sharing  and inter linking of data for enhanced global collaborative research efforts
  • Provide explanations of the outcomes of a machine learning model  for a meaningful interpretation to build trust among users about the reliability and authenticity of data
  • Investigate how formal models can be used to verify and establish the efficacy of the results derived from probabilistic model.
  • Review the concept of Trustworthy computing as a relevant framework for addressing the ethical concerns associated with AI systems.

The Implementation of Data Science and their impact on the management environment and sustainability

The aim of the research is to demonstrate how data science and analytics can be leveraged in achieving sustainable development.

  • To examine the implementation of data science using data-driven decision-making tools
  • To evaluate the impact of modern information technology on management environment and sustainability.
  • To examine the use of  data science in achieving more effective and efficient environment management
  • Explore how data science and analytics can be used to achieve sustainability goals across three dimensions of economic, social and environmental.

Big data analytics in healthcare systems

The aim of the research is to examine the application of creating smart healthcare systems and   how it can   lead to more efficient, accessible and cost –effective health care.

  • Identify the potential Areas or opportunities in big data to transform the healthcare system such as for diagnosis, treatment planning, or drug development.
  • Assessing the potential benefits and challenges of using AI and deep learning in healthcare, including factors such as cost, efficiency, and accessibility
  • Evaluating the effectiveness of AI and deep learning in improving patient outcomes, such as reducing morbidity and mortality rates, improving accuracy and speed of diagnoses, or reducing medical errors
  • Examining the ethical and social implications of using AI and deep learning in healthcare, such as issues related to bias, privacy, and autonomy.

Large-Scale Data-Driven Financial Risk Assessment

The research aims to explore the possibility offered by big data in a consistent and real time assessment of financial risks.

  • Investigate how the use of big data can help to identify and forecast risks that can harm a business.
  • Categories the types of financial risks faced by companies.
  • Describe the importance of financial risk management for companies in business terms.
  • Train a machine learning model to classify transactions as fraudulent or genuine.

Scalable Architectures for Parallel Data Processing

Big data has exposed us to an ever –growing volume of data which cannot be handled through traditional data management and analysis systems. This has given rise to the use of scalable system architectures to efficiently process big data and exploit its true value. The research aims to analyses the current state of practice in scalable architectures and identify common patterns and techniques to design scalable architectures for parallel data processing.

  • To design and implement a prototype scalable architecture for parallel data processing
  • To evaluate the performance and scalability of the prototype architecture using benchmarks and real-world datasets
  • To compare the prototype architecture with existing solutions and identify its strengths and weaknesses
  • To evaluate the trade-offs and limitations of different scalable architectures for parallel data processing
  • To provide recommendations for the use of the prototype architecture in different scenarios, such as batch processing, stream processing, and interactive querying

Robotic manipulation modelling

The aim of this research is to develop and validate a model-based control approach for robotic manipulation of small, precise objects.

  • Develop a mathematical model of the robotic system that captures the dynamics of the manipulator and the grasped object.
  • Design a control algorithm that uses the developed model to achieve stable and accurate grasping of the object.
  • Test the proposed approach in simulation and validate the results through experiments with a physical robotic system.
  • Evaluate the performance of the proposed approach in terms of stability, accuracy, and robustness to uncertainties and perturbations.
  • Identify potential applications and areas for future work in the field of robotic manipulation for precision tasks.

Big data analytics and its impacts on marketing strategy

The aim of this research is to investigate the impact of big data analytics on marketing strategy and to identify best practices for leveraging this technology to inform decision-making.

  • Review the literature on big data analytics and marketing strategy to identify key trends and challenges
  • Conduct a case study analysis of companies that have successfully integrated big data analytics into their marketing strategies
  • Identify the key factors that contribute to the effectiveness of big data analytics in marketing decision-making
  • Develop a framework for integrating big data analytics into marketing strategy.
  • Investigate the ethical implications of big data analytics in marketing and suggest best practices for responsible use of this technology.

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Take a review of different varieties of thesis topics and samples from our website TheResearchGuardian.com on multiple subjects for every educational level.

Platforms for large scale data computing: big data analysis and acceptance

To investigate the performance and scalability of different large-scale data computing platforms.

  • To compare the features and capabilities of different platforms and determine which is most suitable for a given use case.
  • To identify best practices for using these platforms, including considerations for data management, security, and cost.
  • To explore the potential for integrating these platforms with other technologies and tools for data analysis and visualization.
  • To develop case studies or practical examples of how these platforms have been used to solve real-world data analysis challenges.

Distributed data clustering

Distributed data clustering can be a useful approach for analyzing and understanding complex datasets, as it allows for the identification of patterns and relationships that may not be immediately apparent.

To develop and evaluate new algorithms for distributed data clustering that is efficient and scalable.

  • To compare the performance and accuracy of different distributed data clustering algorithms on a variety of datasets.
  • To investigate the impact of different parameters and settings on the performance of distributed data clustering algorithms.
  • To explore the potential for integrating distributed data clustering with other machine learning and data analysis techniques.
  • To apply distributed data clustering to real-world problems and evaluate its effectiveness.

Analyzing and predicting urbanization patterns using GIS and data mining techniques".

The aim of this project is to use GIS and data mining techniques to analyze and predict urbanization patterns in a specific region.

  • To collect and process relevant data on urbanization patterns, including population density, land use, and infrastructure development, using GIS tools.
  • To apply data mining techniques, such as clustering and regression analysis, to identify trends and patterns in the data.
  • To use the results of the data analysis to develop a predictive model for urbanization patterns in the region.
  • To present the results of the analysis and the predictive model in a clear and visually appealing way, using GIS maps and other visualization techniques.

Use of big data and IOT in the media industry

Big data and the Internet of Things (IoT) are emerging technologies that are transforming the way that information is collected, analyzed, and disseminated in the media sector. The aim of the research is to understand how big data and IoT re used to dictate information flow in the media industry

  • Identifying the key ways in which big data and IoT are being used in the media sector, such as for content creation, audience engagement, or advertising.
  • Analyzing the benefits and challenges of using big data and IoT in the media industry, including factors such as cost, efficiency, and effectiveness.
  • Examining the ethical and social implications of using big data and IoT in the media sector, including issues such as privacy, security, and bias.
  • Determining the potential impact of big data and IoT on the media landscape and the role of traditional media in an increasingly digital world.

Exigency computer systems for meteorology and disaster prevention

The research aims to explore the role of exigency computer systems to detect weather and other hazards for disaster prevention and response

  • Identifying the key components and features of exigency computer systems for meteorology and disaster prevention, such as data sources, analytics tools, and communication channels.
  • Evaluating the effectiveness of exigency computer systems in providing accurate and timely information about weather and other hazards.
  • Assessing the impact of exigency computer systems on the ability of decision makers to prepare for and respond to disasters.
  • Examining the challenges and limitations of using exigency computer systems, such as the need for reliable data sources, the complexity of the systems, or the potential for human error.

Network security and cryptography

Overall, the goal of research is to improve our understanding of how to protect communication and information in the digital age, and to develop practical solutions for addressing the complex and evolving security challenges faced by individuals, organizations, and societies.

  • Developing new algorithms and protocols for securing communication over networks, such as for data confidentiality, data integrity, and authentication
  • Investigating the security of existing cryptographic primitives, such as encryption and hashing algorithms, and identifying vulnerabilities that could be exploited by attackers.
  • Evaluating the effectiveness of different network security technologies and protocols, such as firewalls, intrusion detection systems, and virtual private networks (VPNs), in protecting against different types of attacks.
  • Exploring the use of cryptography in emerging areas, such as cloud computing, the Internet of Things (IoT), and blockchain, and identifying the unique security challenges and opportunities presented by these domains.
  • Investigating the trade-offs between security and other factors, such as performance, usability, and cost, and developing strategies for balancing these conflicting priorities.

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21 Data Science Projects for Beginners (with Source Code)

Looking to start a career in data science but lack experience? This is a common challenge. Many aspiring data scientists find themselves in a tricky situation: employers want experienced candidates, but how do you gain experience without a job? The answer lies in building a strong portfolio of data science projects .

Image of someone working on multiple data science projects at the same time

A well-crafted portfolio of data science projects is more than just a collection of your work. It's a powerful tool that:

  • Shows your ability to solve real-world problems
  • Highlights your technical skills
  • Proves you're ready for professional challenges
  • Makes up for a lack of formal work experience

By creating various data science projects for your portfolio, you can effectively demonstrate your capabilities to potential employers, even if you don't have any experience . This approach helps bridge the gap between your theoretical knowledge and practical skills.

Why start a data science project?

Simply put, starting a data science project will improve your data science skills and help you start building a solid portfolio of projects. Let's explore how to begin and what tools you'll need.

Steps to start a data science project

  • Define your problem : Clearly state what you want to solve .
  • Gather and clean your data : Prepare it for analysis.
  • Explore your data : Look for patterns and relationships .

Hands-on experience is key to becoming a data scientist. Projects help you:

  • Apply what you've learned
  • Develop practical skills
  • Show your abilities to potential employers

Common tools for building data science projects

To get started, you might want to install:

  • Programming languages : Python or R
  • Data analysis tools : Jupyter Notebook and SQL
  • Version control : Git
  • Machine learning and deep learning libraries : Scikit-learn and TensorFlow , respectively, for more advanced data science projects

These tools will help you manage data, analyze it, and keep track of your work.

Overcoming common challenges

New data scientists often struggle with complex datasets and unfamiliar tools. Here's how to address these issues:

  • Start small : Begin with simple projects and gradually increase complexity.
  • Use online resources : Dataquest offers free guided projects to help you learn.
  • Join a community : Online forums and local meetups can provide support and feedback.

Setting up your data science project environment

To make your setup easier :

  • Use Anaconda : It includes many necessary tools, like Jupyter Notebook.
  • Implement version control: Use Git to track your progress .

Skills to focus on

According to KDnuggets , employers highly value proficiency in SQL, database management, and Python libraries like TensorFlow and Scikit-learn. Including projects that showcase these skills can significantly boost your appeal in the job market.

In this post, we'll explore 21 diverse data science project ideas. These projects are designed to help you build a compelling portfolio, whether you're just starting out or looking to enhance your existing skills. By working on these projects, you'll be better prepared for a successful career in data science.

Choosing the right data science projects for your portfolio

Building a strong data science portfolio is key to showcasing your skills to potential employers. But how do you choose the right projects? Let's break it down.

Balancing personal interests, skills, and market demands

When selecting projects, aim for a mix that :

  • Aligns with your interests
  • Matches your current skill level
  • Highlights in-demand skills
  • Projects you're passionate about keep you motivated.
  • Those that challenge you help you grow.
  • Focusing on sought-after skills makes your portfolio relevant to employers.

For example, if machine learning and data visualization are hot in the job market, including projects that showcase these skills can give you an edge.

A step-by-step approach to selecting data science projects

  • Assess your skills : What are you good at? Where can you improve?
  • Identify gaps : Look for in-demand skills that interest you but aren't yet in your portfolio.
  • Plan your projects : Choose 3-5 substantial projects that cover different stages of the data science workflow. Include everything from data cleaning to applying machine learning models .
  • Get feedback and iterate : Regularly ask for input on your projects and make improvements.

Common data science project pitfalls and how to avoid them

Many beginners underestimate the importance of early project stages like data cleaning and exploration. To overcome data science project challeges :

  • Spend enough time on data preparation
  • Focus on exploratory data analysis to uncover patterns before jumping into modeling

By following these strategies, you'll build a portfolio of data science projects that shows off your range of skills. Each one is an opportunity to sharpen your abilities and demonstrate your potential as a data scientist.

Real learner, real results

Take it from Aleksey Korshuk , who leveraged Dataquest's project-based curriculum to gain practical data science skills and build an impressive portfolio of projects:

The general knowledge that Dataquest provides is easily implemented into your projects and used in practice.

Through hands-on projects, Aleksey gained real-world experience solving complex problems and applying his knowledge effectively. He encourages other learners to stay persistent and make time for consistent learning:

I suggest that everyone set a goal, find friends in communities who share your interests, and work together on cool projects. Don't give up halfway!

Aleksey's journey showcases the power of a project-based approach for anyone looking to build their data skills. By building practical projects and collaborating with others, you can develop in-demand skills and accomplish your goals, just like Aleksey did with Dataquest.

21 Data Science Project Ideas

Excited to dive into a data science project? We've put together a collection of 21 varied projects that are perfect for beginners and apply to real-world scenarios. From analyzing app market data to exploring financial trends, these projects are organized by difficulty level, making it easy for you to choose a project that matches your current skill level while also offering more challenging options to tackle as you progress.

Beginner Data Science Projects

  • Profitable App Profiles for the App Store and Google Play Markets
  • Exploring Hacker News Posts
  • Exploring eBay Car Sales Data
  • Finding Heavy Traffic Indicators on I-94
  • Storytelling Data Visualization on Exchange Rates
  • Clean and Analyze Employee Exit Surveys
  • Star Wars Survey

Intermediate Data Science Projects

  • Exploring Financial Data using Nasdaq Data Link API
  • Popular Data Science Questions
  • Investigating Fandango Movie Ratings
  • Finding the Best Markets to Advertise In
  • Mobile App for Lottery Addiction
  • Building a Spam Filter with Naive Bayes
  • Winning Jeopardy

Advanced Data Science Projects

  • Predicting Heart Disease
  • Credit Card Customer Segmentation
  • Predicting Insurance Costs
  • Classifying Heart Disease
  • Predicting Employee Productivity Using Tree Models
  • Optimizing Model Prediction
  • Predicting Listing Gains in the Indian IPO Market Using TensorFlow

In the following sections, you'll find detailed instructions for each project. We'll cover the tools you'll use and the skills you'll develop. This structured approach will guide you through key data science techniques across various applications.

1. Profitable App Profiles for the App Store and Google Play Markets

Difficulty Level: Beginner

In this beginner-level data science project, you'll step into the role of a data scientist for a company that builds ad-supported mobile apps. Using Python and Jupyter Notebook, you'll analyze real datasets from the Apple App Store and Google Play Store to identify app profiles that attract the most users and generate the highest revenue. By applying data cleaning techniques, conducting exploratory data analysis, and making data-driven recommendations, you'll develop practical skills essential for entry-level data science positions.

Tools and Technologies

  • Jupyter Notebook

Prerequisites

To successfully complete this project, you should be comfortable with Python fundamentals such as:

  • Variables, data types, lists, and dictionaries
  • Writing functions with arguments, return statements, and control flow
  • Using conditional logic and loops for data manipulation
  • Working with Jupyter Notebook to write, run, and document code

Step-by-Step Instructions

  • Open and explore the App Store and Google Play datasets
  • Clean the datasets by removing non-English apps and duplicate entries
  • Analyze app genres and categories using frequency tables
  • Identify app profiles that attract the most users
  • Develop data-driven recommendations for the company's next app development project

Expected Outcomes

Upon completing this project, you'll have gained valuable skills and experience, including:

  • Cleaning and preparing real-world datasets for analysis using Python
  • Conducting exploratory data analysis to identify trends in app markets
  • Applying frequency analysis to derive insights from data
  • Translating data findings into actionable business recommendations

Relevant Links and Resources

  • Example Solution Code

2. Exploring Hacker News Posts

In this beginner-level data science project, you'll analyze a dataset of submissions to Hacker News, a popular technology-focused news aggregator. Using Python and Jupyter Notebook, you'll explore patterns in post creation times, compare engagement levels between different post types, and identify the best times to post for maximum comments. This project will strengthen your skills in data manipulation, analysis, and interpretation, providing valuable experience for aspiring data scientists.

To successfully complete this project, you should be comfortable with Python concepts for data science such as:

  • String manipulation and basic text processing
  • Working with dates and times using the datetime module
  • Using loops to iterate through data collections
  • Basic data analysis techniques like calculating averages and sorting
  • Creating and manipulating lists and dictionaries
  • Load and explore the Hacker News dataset, focusing on post titles and creation times
  • Separate and analyze 'Ask HN' and 'Show HN' posts
  • Calculate and compare the average number of comments for different post types
  • Determine the relationship between post creation time and comment activity
  • Identify the optimal times to post for maximum engagement
  • Manipulating strings and datetime objects in Python for data analysis
  • Calculating and interpreting averages to compare dataset subgroups
  • Identifying time-based patterns in user engagement data
  • Translating data insights into practical posting strategies
  • Original Hacker News Posts dataset on Kaggle

3. Exploring eBay Car Sales Data

In this beginner-level data science project, you'll analyze a dataset of used car listings from eBay Kleinanzeigen, a classifieds section of the German eBay website. Using Python and pandas, you'll clean the data, explore the included listings, and uncover insights about used car prices, popular brands, and the relationships between various car attributes. This project will strengthen your data cleaning and exploratory data analysis skills, providing valuable experience in working with real-world, messy datasets.

To successfully complete this project, you should be comfortable with pandas fundamentals and have experience with:

  • Loading and inspecting data using pandas
  • Cleaning column names and handling missing data
  • Using pandas to filter, sort, and aggregate data
  • Creating basic visualizations with pandas
  • Handling data type conversions in pandas
  • Load the dataset and perform initial data exploration
  • Clean column names and convert data types as necessary
  • Analyze the distribution of car prices and registration years
  • Explore relationships between brand, price, and vehicle type
  • Investigate the impact of car age on pricing
  • Cleaning and preparing a real-world dataset using pandas
  • Performing exploratory data analysis on a large dataset
  • Creating data visualizations to communicate findings effectively
  • Deriving actionable insights from used car market data
  • Original eBay Kleinanzeigen Dataset on Kaggle

4. Finding Heavy Traffic Indicators on I-94

In this beginner-level data science project, you'll analyze a dataset of westbound traffic on the I-94 Interstate highway between Minneapolis and St. Paul, Minnesota. Using Python and popular data visualization libraries, you'll explore traffic volume patterns to identify indicators of heavy traffic. You'll investigate how factors such as time of day, day of the week, weather conditions, and holidays impact traffic volume. This project will enhance your skills in exploratory data analysis and data visualization, providing valuable experience in deriving actionable insights from real-world time series data.

To successfully complete this project, you should be comfortable with data visualization in Python techniques and have experience with:

  • Data manipulation and analysis using pandas
  • Creating various plot types (line, bar, scatter) with Matplotlib
  • Enhancing visualizations using seaborn
  • Interpreting time series data and identifying patterns
  • Basic statistical concepts like correlation and distribution
  • Load and perform initial exploration of the I-94 traffic dataset
  • Visualize traffic volume patterns over time using line plots
  • Analyze traffic volume distribution by day of the week and time of day
  • Investigate the relationship between weather conditions and traffic volume
  • Identify and visualize other factors correlated with heavy traffic
  • Creating and interpreting complex data visualizations using Matplotlib and seaborn
  • Analyzing time series data to uncover temporal patterns and trends
  • Using visual exploration techniques to identify correlations in multivariate data
  • Communicating data insights effectively through clear, informative plots
  • Original Metro Interstate Traffic Volume Data Set

5. Storytelling Data Visualization on Exchange Rates

In this beginner-level data science project, you'll create a storytelling data visualization about Euro exchange rates against the US Dollar. Using Python and Matplotlib, you'll analyze historical exchange rate data from 1999 to 2021, identifying key trends and events that have shaped the Euro-Dollar relationship. You'll apply data visualization principles to clean data, develop a narrative around exchange rate fluctuations, and create an engaging and informative visual story. This project will strengthen your ability to communicate complex financial data insights effectively through visual storytelling.

To successfully complete this project, you should be familiar with storytelling through data visualization techniques and have experience with:

  • Creating and customizing plots with Matplotlib
  • Applying design principles to enhance data visualizations
  • Working with time series data in Python
  • Basic understanding of exchange rates and economic indicators
  • Load and explore the Euro-Dollar exchange rate dataset
  • Clean the data and calculate rolling averages to smooth out fluctuations
  • Identify significant trends and events in the exchange rate history
  • Develop a narrative that explains key patterns in the data
  • Create a polished line plot that tells your exchange rate story
  • Crafting a compelling narrative around complex financial data
  • Designing clear, informative visualizations that support your story
  • Using Matplotlib to create publication-quality line plots with annotations
  • Applying color theory and typography to enhance visual communication
  • ECB Euro reference exchange rate: US dollar

6. Clean and Analyze Employee Exit Surveys

In this beginner-level data science project, you'll analyze employee exit surveys from the Department of Education, Training and Employment (DETE) and the Technical and Further Education (TAFE) institute in Queensland, Australia. Using Python and pandas, you'll clean messy data, combine datasets, and uncover insights into resignation patterns. You'll investigate factors such as years of service, age groups, and job dissatisfaction to understand why employees leave. This project offers hands-on experience in data cleaning and exploratory analysis, essential skills for aspiring data analysts.

To successfully complete this project, you should be familiar with data cleaning techniques in Python and have experience with:

  • Basic pandas operations for data manipulation
  • Handling missing data and data type conversions
  • Merging and concatenating DataFrames
  • Using string methods in pandas for text data cleaning
  • Basic data analysis and aggregation techniques
  • Load and explore the DETE and TAFE exit survey datasets
  • Clean column names and handle missing values in both datasets
  • Standardize and combine the "resignation reasons" columns
  • Merge the DETE and TAFE datasets for unified analysis
  • Analyze resignation reasons and their correlation with employee characteristics
  • Applying data cleaning techniques to prepare messy, real-world datasets
  • Combining data from multiple sources using pandas merge and concatenate functions
  • Creating new categories from existing data to facilitate analysis
  • Conducting exploratory data analysis to uncover trends in employee resignations
  • DETE Exit Survey Dataset

7. Star Wars Survey

In this beginner-level data science project, you'll analyze survey data about the Star Wars film franchise. Using Python and pandas, you'll clean and explore data collected by FiveThirtyEight to uncover insights about fans' favorite characters, film rankings, and how opinions vary across different demographic groups. You'll practice essential data cleaning techniques like handling missing values and converting data types, while also conducting basic statistical analysis to reveal trends in Star Wars fandom.

To successfully complete this project, you should be familiar with combining, analyzing, and visualizing data while having experience with:

  • Converting data types in pandas DataFrames
  • Filtering and sorting data
  • Basic data aggregation and analysis techniques
  • Load the Star Wars survey data and explore its structure
  • Analyze the rankings of Star Wars films among respondents
  • Explore viewership and character popularity across different demographics
  • Investigate the relationship between fan characteristics and their opinions
  • Applying data cleaning techniques to prepare survey data for analysis
  • Using pandas to explore and manipulate structured data
  • Performing basic statistical analysis on categorical and numerical data
  • Interpreting survey results to draw meaningful conclusions about fan preferences
  • Original Star Wars Survey Data on GitHub

8. Exploring Financial Data using Nasdaq Data Link API

Difficulty Level: Intermediate

In this beginner-friendly data science project, you'll analyze real-world economic data to uncover market trends. Using Python, you'll interact with the Nasdaq Data Link API to retrieve financial datasets, including stock prices and economic indicators. You'll apply data wrangling techniques to clean and structure the data, then use pandas and Matplotlib to analyze and visualize trends in stock performance and economic metrics. This project provides hands-on experience in working with financial APIs and analyzing market data, skills that are highly valuable in data-driven finance roles.

  • requests (for API calls)

To successfully complete this project, you should be familiar with working with APIs and web scraping in Python , and have experience with:

  • Making HTTP requests and handling responses using the requests library
  • Parsing JSON data in Python
  • Data manipulation and analysis using pandas DataFrames
  • Creating line plots and other basic visualizations with Matplotlib
  • Basic understanding of financial terms and concepts
  • Set up authentication for the Nasdaq Data Link API
  • Retrieve historical stock price data for a chosen company
  • Clean and structure the API response data using pandas
  • Analyze stock price trends and calculate key statistics
  • Fetch and analyze additional economic indicators
  • Create visualizations to illustrate relationships between different financial metrics
  • Interacting with financial APIs to retrieve real-time and historical market data
  • Cleaning and structuring JSON data for analysis using pandas
  • Calculating financial metrics such as returns and moving averages
  • Creating informative visualizations of stock performance and economic trends
  • Nasdaq Data Link API Documentation

9. Popular Data Science Questions

In this beginner-friendly data science project, you'll analyze data from Data Science Stack Exchange to uncover trends in the data science field. You'll identify the most frequently asked questions, popular technologies, and emerging topics. Using SQL and Python, you'll query a database to extract post data, then use pandas to clean and analyze it. You'll visualize trends over time and across different subject areas, gaining insights into the evolving landscape of data science. This project offers hands-on experience in combining SQL, data analysis, and visualization skills to derive actionable insights from a real-world dataset.

To successfully complete this project, you should be familiar with querying databases with SQL and Python and have experience with:

  • Writing SQL queries to extract data from relational databases
  • Data cleaning and manipulation using pandas DataFrames
  • Basic data analysis techniques like grouping and aggregation
  • Creating line plots and bar charts with Matplotlib
  • Interpreting trends and patterns in data
  • Connect to the Data Science Stack Exchange database and explore its structure
  • Write SQL queries to extract data on questions, tags, and view counts
  • Use pandas to clean the extracted data and prepare it for analysis
  • Analyze the distribution of questions across different tags and topics
  • Investigate trends in question popularity and topic relevance over time
  • Visualize key findings using Matplotlib to illustrate data science trends
  • Extracting specific data from a relational database using SQL queries
  • Cleaning and preprocessing text data for analysis using pandas
  • Identifying trends and patterns in data science topics over time
  • Creating meaningful visualizations to communicate insights about the data science field
  • Data Science Stack Exchange Data Explorer

10. Investigating Fandango Movie Ratings

In this beginner-friendly data science project, you'll investigate potential bias in Fandango's movie rating system. Following up on a 2015 analysis that found evidence of inflated ratings, you'll compare 2015 and 2016 movie ratings data to determine if Fandango's system has changed. Using Python, you'll perform statistical analysis to compare rating distributions, calculate summary statistics, and visualize changes in rating patterns. This project will strengthen your skills in data manipulation, statistical analysis, and data visualization while addressing a real-world question of rating integrity.

To successfully complete this project, you should be familiar with fundamental statistics concepts and have experience with:

  • Data manipulation using pandas (e.g., loading data, filtering, sorting)
  • Calculating and interpreting summary statistics in Python
  • Creating and customizing plots with matplotlib
  • Comparing distributions using statistical methods
  • Interpreting results in the context of the research question
  • Load the 2015 and 2016 Fandango movie ratings datasets using pandas
  • Clean the data and isolate the samples needed for analysis
  • Compare the distribution shapes of 2015 and 2016 ratings using kernel density plots
  • Calculate and compare summary statistics for both years
  • Analyze the frequency of each rating class (e.g., 4.5 stars, 5 stars) for both years
  • Determine if there's evidence of a change in Fandango's rating system
  • Conducting a comparative analysis of rating distributions using Python
  • Applying statistical techniques to investigate potential bias in ratings
  • Creating informative visualizations to illustrate changes in rating patterns
  • Drawing and communicating data-driven conclusions about rating system integrity
  • Original FiveThirtyEight Article on Fandango Ratings

11. Finding the Best Markets to Advertise In

In this beginner-friendly data science project, you'll analyze survey data from freeCodeCamp to determine the best markets for an e-learning company to advertise its programming courses. Using Python and pandas, you'll explore the demographics of new coders, their locations, and their willingness to pay for courses. You'll clean the data, handle outliers, and use frequency analysis to identify countries with the most potential customers. By the end, you'll provide data-driven recommendations on where the company should focus its advertising efforts to maximize its return on investment.

To successfully complete this project, you should have a solid grasp on how to summarize distributions using measures of central tendency, interpret variance using z-scores , and have experience with:

  • Filtering and sorting DataFrames
  • Handling missing data and outliers
  • Calculating summary statistics (mean, median, mode)
  • Creating and manipulating new columns based on existing data
  • Load the freeCodeCamp 2017 New Coder Survey data
  • Identify and handle missing values in the dataset
  • Analyze the distribution of participants across different countries
  • Calculate the average amount students are willing to pay for courses by country
  • Identify and handle outliers in the monthly spending data
  • Determine the top countries based on number of potential customers and their spending power
  • Cleaning and preprocessing survey data for analysis using pandas
  • Applying frequency analysis to identify key markets
  • Handling outliers to ensure accurate calculations of spending potential
  • Combining multiple factors to make data-driven business recommendations
  • freeCodeCamp 2017 New Coder Survey Results

12. Mobile App for Lottery Addiction

In this beginner-friendly data science project, you'll develop the core logic for a mobile app aimed at helping lottery addicts better understand their chances of winning. Using Python, you'll create functions to calculate probabilities for the 6/49 lottery game, including the chances of winning the big prize, any prize, and the expected return on buying a ticket. You'll also compare lottery odds to real-life situations to provide context. This project will strengthen your skills in probability theory, Python programming, and applying mathematical concepts to real-world problems.

To successfully complete this project, you should be familiar with probability fundamentals and have experience with:

  • Writing functions in Python with multiple parameters
  • Implementing combinatorics calculations (factorials, combinations)
  • Working with control structures (if statements, for loops)
  • Performing mathematical operations in Python
  • Basic set theory and probability concepts
  • Implement the factorial and combinations functions for probability calculations
  • Create a function to calculate the probability of winning the big prize in a 6/49 lottery
  • Develop a function to calculate the probability of winning any prize
  • Design a function to compare lottery odds with real-life event probabilities
  • Implement a function to calculate the expected return on buying a lottery ticket
  • Implementing complex probability calculations using Python functions
  • Translating mathematical concepts into practical programming solutions
  • Creating user-friendly outputs to effectively communicate probability concepts
  • Applying programming skills to address a real-world social issue

13. Building a Spam Filter with Naive Bayes

In this beginner-friendly data science project, you'll build a spam filter using the multinomial Naive Bayes algorithm. Working with the SMS Spam Collection dataset, you'll implement the algorithm from scratch to classify messages as spam or ham (non-spam). You'll calculate word frequencies, prior probabilities, and conditional probabilities to make predictions. This project will deepen your understanding of probabilistic machine learning algorithms, text classification, and the practical application of Bayesian methods in natural language processing.

To successfully complete this project, you should be familiar with conditional probability and have experience with:

  • Python programming, including working with dictionaries and lists
  • Understand probability concepts like conditional probability and Bayes' theorem
  • Text processing techniques (tokenization, lowercasing)
  • Pandas for data manipulation
  • Understanding of the Naive Bayes algorithm and its assumptions
  • Load and explore the SMS Spam Collection dataset
  • Preprocess the text data by tokenizing and cleaning the messages
  • Calculate the prior probabilities for spam and ham messages
  • Compute word frequencies and conditional probabilities
  • Implement the Naive Bayes algorithm to classify messages
  • Test the model and evaluate its accuracy on unseen data
  • Implementing the multinomial Naive Bayes algorithm from scratch
  • Applying Bayesian probability calculations in a real-world context
  • Preprocessing text data for machine learning applications
  • Evaluating a text classification model's performance
  • SMS Spam Collection Dataset

14. Winning Jeopardy

In this beginner-friendly data science project, you'll analyze a dataset of Jeopardy questions to uncover patterns that could give you an edge in the game. Using Python and pandas, you'll explore over 200,000 Jeopardy questions and answers, focusing on identifying terms that appear more often in high-value questions. You'll apply text processing techniques, use the chi-squared test to validate your findings, and develop strategies for maximizing your chances of winning. This project will strengthen your data manipulation skills and introduce you to practical applications of natural language processing and statistical testing.

To successfully complete this project, you should be familiar with intermediate statistics concepts like significance and hypothesis testing with experience in:

  • String operations and basic regular expressions in Python
  • Implementing the chi-squared test for statistical analysis
  • Working with CSV files and handling data type conversions
  • Basic natural language processing concepts (e.g., tokenization)
  • Load the Jeopardy dataset and perform initial data exploration
  • Clean and preprocess the data, including normalizing text and converting dollar values
  • Implement a function to find the number of times a term appears in questions
  • Create a function to compare the frequency of terms in low-value vs. high-value questions
  • Apply the chi-squared test to determine if certain terms are statistically significant
  • Analyze the results to develop strategies for Jeopardy success
  • Processing and analyzing large text datasets using pandas
  • Applying statistical tests to validate hypotheses in data analysis
  • Implementing custom functions for text analysis and frequency comparisons
  • Deriving actionable insights from complex datasets to inform game strategy
  • J! Archive - Fan-created archive of Jeopardy! games and players

15. Predicting Heart Disease

Difficulty Level: Advanced

In this challenging but guided data science project, you'll build a K-Nearest Neighbors (KNN) classifier to predict the risk of heart disease. Using a dataset from the UCI Machine Learning Repository, you'll work with patient features such as age, sex, chest pain type, and cholesterol levels to classify patients as having a high or low risk of heart disease. You'll explore the impact of different features on the prediction, optimize the model's performance, and interpret the results to identify key risk factors. This project will strengthen your skills in data preprocessing, exploratory data analysis, and implementing classification algorithms for healthcare applications.

  • scikit-learn

To successfully complete this project, you should be familiar with supervised machine learning in Python and have experience with:

  • Implementing machine learning workflows with scikit-learn
  • Understanding and interpreting classification metrics (accuracy, precision, recall)
  • Feature scaling and preprocessing techniques
  • Basic data visualization with Matplotlib
  • Load and explore the heart disease dataset from the UCI Machine Learning Repository
  • Preprocess the data, including handling missing values and scaling features
  • Split the data into training and testing sets
  • Implement a KNN classifier and evaluate its initial performance
  • Optimize the model by tuning the number of neighbors (k)
  • Analyze feature importance and their impact on heart disease prediction
  • Interpret the results and summarize key findings for healthcare professionals
  • Implementing and optimizing a KNN classifier for medical diagnosis
  • Evaluating model performance using various metrics in a healthcare context
  • Analyzing feature importance in predicting heart disease risk
  • Translating machine learning results into actionable healthcare insights
  • UCI Machine Learning Repository: Heart Disease Dataset

16. Credit Card Customer Segmentation

In this challenging but guided data science project, you'll perform customer segmentation for a credit card company using unsupervised learning techniques. You'll analyze customer attributes such as credit limit, purchases, cash advances, and payment behaviors to identify distinct groups of credit card users. Using the K-means clustering algorithm, you'll segment customers based on their spending habits and credit usage patterns. This project will strengthen your skills in data preprocessing, exploratory data analysis, and applying machine learning for deriving actionable business insights in the financial sector.

To successfully complete this project, you should be familiar with unsupervised machine learning in Python and have experience with:

  • Implementing K-means clustering with scikit-learn
  • Feature scaling and dimensionality reduction techniques
  • Creating scatter plots and pair plots with Matplotlib and seaborn
  • Interpreting clustering results in a business context
  • Load and explore the credit card customer dataset
  • Perform exploratory data analysis to understand relationships between customer attributes
  • Apply principal component analysis (PCA) for dimensionality reduction
  • Implement K-means clustering on the transformed data
  • Visualize the clusters using scatter plots of the principal components
  • Analyze cluster characteristics to develop customer profiles
  • Propose targeted strategies for each customer segment
  • Applying K-means clustering to segment customers in the financial sector
  • Using PCA for dimensionality reduction in high-dimensional datasets
  • Interpreting clustering results to derive meaningful customer profiles
  • Translating data-driven insights into actionable marketing strategies
  • Credit Card Dataset for Clustering on Kaggle

17. Predicting Insurance Costs

In this challenging but guided data science project, you'll predict patient medical insurance costs using linear regression. Working with a dataset containing features such as age, BMI, number of children, smoking status, and region, you'll develop a model to estimate insurance charges. You'll explore the relationships between these factors and insurance costs, handle categorical variables, and interpret the model's coefficients to understand the impact of each feature. This project will strengthen your skills in regression analysis, feature engineering, and deriving actionable insights in the healthcare insurance domain.

To successfully complete this project, you should be familiar with linear regression modeling in Python and have experience with:

  • Implementing linear regression models with scikit-learn
  • Handling categorical variables (e.g., one-hot encoding)
  • Evaluating regression models using metrics like R-squared and RMSE
  • Creating scatter plots and correlation heatmaps with seaborn
  • Load and explore the insurance cost dataset
  • Perform data preprocessing, including handling categorical variables
  • Conduct exploratory data analysis to visualize relationships between features and insurance costs
  • Create training/testing sets to build and train a linear regression model using scikit-learn
  • Make predictions on the test set and evaluate the model's performance
  • Visualize the actual vs. predicted values and residuals
  • Implementing end-to-end linear regression analysis for cost prediction
  • Handling categorical variables in regression models
  • Interpreting regression coefficients to derive business insights
  • Evaluating model performance and understanding its limitations in healthcare cost prediction
  • Medical Cost Personal Datasets on Kaggle

18. Classifying Heart Disease

In this challenging but guided data science project, you'll work with the Cleveland Clinic Foundation heart disease dataset to develop a logistic regression model for predicting heart disease. You'll analyze features such as age, sex, chest pain type, blood pressure, and cholesterol levels to classify patients as having or not having heart disease. Through this project, you'll gain hands-on experience in data preprocessing, model building, and interpretation of results in a medical context, strengthening your skills in classification techniques and feature analysis.

To successfully complete this project, you should be familiar with logistic regression modeling in Python and have experience with:

  • Implementing logistic regression models with scikit-learn
  • Evaluating classification models using metrics like accuracy, precision, and recall
  • Interpreting model coefficients and odds ratios
  • Creating confusion matrices and ROC curves with seaborn and Matplotlib
  • Load and explore the Cleveland Clinic Foundation heart disease dataset
  • Perform data preprocessing, including handling missing values and encoding categorical variables
  • Conduct exploratory data analysis to visualize relationships between features and heart disease presence
  • Create training/testing sets to build and train a logistic regression model using scikit-learn
  • Visualize the ROC curve and calculate the AUC score
  • Summarize findings and discuss the model's potential use in medical diagnosis
  • Implementing end-to-end logistic regression analysis for medical diagnosis
  • Interpreting odds ratios to understand risk factors for heart disease
  • Evaluating classification model performance using various metrics
  • Communicating the potential and limitations of machine learning in healthcare

19. Predicting Employee Productivity Using Tree Models

In this challenging but guided data science project, you'll analyze employee productivity in a garment factory using tree-based models. You'll work with a dataset containing factors such as team, targeted productivity, style changes, and working hours to predict actual productivity. By implementing both decision trees and random forests, you'll compare their performance and interpret the results to provide actionable insights for improving workforce efficiency. This project will strengthen your skills in tree-based modeling, feature importance analysis, and applying machine learning to solve real-world business problems in manufacturing.

To successfully complete this project, you should be familiar with decision trees and random forest modeling and have experience with:

  • Implementing decision trees and random forests with scikit-learn
  • Evaluating regression models using metrics like MSE and R-squared
  • Interpreting feature importance in tree-based models
  • Creating visualizations of tree structures and feature importance with Matplotlib
  • Load and explore the employee productivity dataset
  • Perform data preprocessing, including handling categorical variables and scaling numerical features
  • Create training/testing sets to build and train a decision tree regressor using scikit-learn
  • Visualize the decision tree structure and interpret the rules
  • Implement a random forest regressor and compare its performance to the decision tree
  • Analyze feature importance to identify key factors affecting productivity
  • Fine-tune the random forest model using grid search
  • Summarize findings and provide recommendations for improving employee productivity
  • Implementing and comparing decision trees and random forests for regression tasks
  • Interpreting tree structures to understand decision-making processes in productivity prediction
  • Analyzing feature importance to identify key drivers of employee productivity
  • Applying hyperparameter tuning techniques to optimize model performance
  • UCI Machine Learning Repository: Garment Employee Productivity Dataset

20. Optimizing Model Prediction

In this challenging but guided data science project, you'll work on predicting the extent of damage caused by forest fires using the UCI Machine Learning Repository's Forest Fires dataset. You'll analyze features such as temperature, relative humidity, wind speed, and various fire weather indices to estimate the burned area. Using Python and scikit-learn, you'll apply advanced regression techniques, including feature engineering, cross-validation, and regularization, to build and optimize linear regression models. This project will strengthen your skills in model selection, hyperparameter tuning, and interpreting complex model results in an environmental context.

To successfully complete this project, you should be familiar with optimizing machine learning models and have experience with:

  • Implementing and evaluating linear regression models using scikit-learn
  • Applying cross-validation techniques to assess model performance
  • Understanding and implementing regularization methods (Ridge, Lasso)
  • Performing hyperparameter tuning using grid search
  • Interpreting model coefficients and performance metrics
  • Load and explore the Forest Fires dataset, understanding the features and target variable
  • Preprocess the data, handling any missing values and encoding categorical variables
  • Perform feature engineering, creating interaction terms and polynomial features
  • Implement a baseline linear regression model and evaluate its performance
  • Apply k-fold cross-validation to get a more robust estimate of model performance
  • Implement Ridge and Lasso regression models to address overfitting
  • Use grid search with cross-validation to optimize regularization hyperparameters
  • Compare the performance of different models using appropriate metrics (e.g., RMSE, R-squared)
  • Interpret the final model, identifying the most important features for predicting fire damage
  • Visualize the results and discuss the model's limitations and potential improvements
  • Implementing advanced regression techniques to optimize model performance
  • Applying cross-validation and regularization to prevent overfitting
  • Conducting hyperparameter tuning to find the best model configuration
  • Interpreting complex model results in the context of environmental science
  • UCI Machine Learning Repository: Forest Fires Dataset

21. Predicting Listing Gains in the Indian IPO Market Using TensorFlow

In this challenging but guided data science project, you'll develop a deep learning model using TensorFlow to predict listing gains in the Indian Initial Public Offering (IPO) market. You'll analyze historical IPO data, including features such as issue price, issue size, subscription rates, and market conditions, to forecast the percentage increase in share price on the day of listing. By implementing a neural network classifier, you'll categorize IPOs into different ranges of listing gains. This project will strengthen your skills in deep learning, financial data analysis, and using TensorFlow for real-world predictive modeling tasks in the finance sector.

To successfully complete this project, you should be familiar with deep learning in TensorFlow and have experience with:

  • Building and training neural networks using TensorFlow and Keras
  • Preprocessing financial data for machine learning tasks
  • Implementing classification models and interpreting their results
  • Evaluating model performance using metrics like accuracy and confusion matrices
  • Basic understanding of IPOs and stock market dynamics
  • Load and explore the Indian IPO dataset using pandas
  • Preprocess the data, including handling missing values and encoding categorical variables
  • Engineer features relevant to IPO performance prediction
  • Split the data into training/testing sets then design a neural network architecture using Keras
  • Compile and train the model on the training data
  • Evaluate the model's performance on the test set
  • Fine-tune the model by adjusting hyperparameters and network architecture
  • Analyze feature importance using the trained model
  • Visualize the results and interpret the model's predictions in the context of IPO investing
  • Implementing deep learning models for financial market prediction using TensorFlow
  • Preprocessing and engineering features for IPO performance analysis
  • Evaluating and interpreting classification results in the context of IPO investments
  • Applying deep learning techniques to solve real-world financial forecasting problems
  • Securities and Exchange Board of India (SEBI) IPO Statistics

How to Prepare for a Data Science Job

Landing a data science job requires strategic preparation. Here's what you need to know to stand out in this competitive field:

  • Research job postings to understand employer expectations
  • Develop relevant skills through structured learning
  • Build a portfolio of hands-on projects
  • Prepare for interviews and optimize your resume
  • Commit to continuous learning

Research Job Postings

Start by understanding what employers are looking for. Check out data science job listings on these platforms:

Steps to Get Job-Ready

Focus on these key areas:

  • Skill Development: Enhance your programming, data analysis, and machine learning skills. Consider a structured program like Dataquest's Data Scientist in Python path .
  • Hands-On Projects: Apply your skills to real projects. This builds your portfolio of data science projects and demonstrates your abilities to potential employers.
  • Put Your Portfolio Online: Showcase your projects online. GitHub is an excellent platform for hosting and sharing your work.

Pick Your Top 3 Data Science Projects

Your projects are concrete evidence of your skills. In applications and interviews, highlight your top 3 data science projects that demonstrate:

  • Critical thinking
  • Technical proficiency
  • Problem-solving abilities

We have a ton of great tips on how to create a project portfolio for data science job applications .

Resume and Interview Preparation

Your resume should clearly outline your project experiences and skills . When getting ready for data science interviews , be prepared to discuss your projects in great detail. Practice explaining your work concisely and clearly.

Job Preparation Advice

Preparing for a data science job can be daunting. If you're feeling overwhelmed:

  • Remember that everyone starts somewhere
  • Connect with mentors for guidance
  • Join the Dataquest community for support and feedback on your data science projects

Continuous Learning

Data science is an evolving field. To stay relevant:

  • Keep up with industry trends
  • Stay curious and open to new technologies
  • Look for ways to apply your skills to real-world problems

Preparing for a data science job involves understanding employer expectations, building relevant skills, creating a strong portfolio, refining your resume, preparing for interviews, addressing challenges, and committing to ongoing learning. With dedication and the right approach, you can position yourself for success in this dynamic field.

Data science projects are key to developing your skills and advancing your data science career. Here's why they matter:

  • They provide hands-on experience with real-world problems
  • They help you build a portfolio to showcase your abilities
  • They boost your confidence in handling complex data challenges

In this post, we've explored 21 beginner-friendly data science project ideas ranging from easier to harder. These projects go beyond just technical skills. They're designed to give you practical experience in solving real-world data problems – a crucial asset for any data science professional.

We encourage you to start with any of these beginner data science projects that interests you. Each one is structured to help you apply your skills to realistic scenarios, preparing you for professional data challenges. While some of these projects use SQL, you'll want to check out our post on 10 Exciting SQL Project Ideas for Beginners for dedicated SQL project ideas to add to your data science portfolio of projects.

Hands-on projects are valuable whether you're new to the field or looking to advance your career. Start building your project portfolio today by selecting from the diverse range of ideas we've shared. It's an important step towards achieving your data science career goals.

More learning resources

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Home > Dissertations and Theses > Computational and Data Sciences (PhD) Dissertations

Computational and Data Sciences (PhD) Dissertations

Below is a selection of dissertations from the Doctor of Philosophy in Computational and Data Sciences program in Schmid College that have been included in Chapman University Digital Commons. Additional dissertations from years prior to 2019 are available through the Leatherby Libraries' print collection or in Proquest's Dissertations and Theses database.

Dissertations from 2024 2024

Advancement in In-Silico Drug Discovery from Virtual Screening Molecular Dockings to De-Novo Drug Design Transformer-based Generative AI and Reinforcement Learning , Dony Ang

A Novel Correction for the Multivariate Ljung-Box Test , Minhao Huang

Medical Image Analysis Based on Graph Machine Learning and Variational Methods , Sina Mohammadi

Machine Learning and Geostatistical Approaches for Discovery of Weather and Climate Events Related to El Niño Phenomena , Sachi Perera

Global to Glocal: A Confluence of Data Science and Earth Observations in the Advancement of the SDGs , Rejoice Thomas

Dissertations from 2023 2023

Computational Analysis of Antibody Binding Mechanisms to the Omicron RBD of SARS-CoV-2 Spike Protein: Identification of Epitopes and Hotspots for Developing Effective Therapeutic Strategies , Mohammed Alshahrani

Integration of Computer Algebra Systems and Machine Learning in the Authoring of the SANYMS Intelligent Tutoring System , Sam Ford

Voluntary Action and Conscious Intention , Jake Gavenas

Random Variable Spaces: Mathematical Properties and an Extension to Programming Computable Functions , Mohammed Kurd-Misto

Computational Modeling of Superconductivity from the Set of Time-Dependent Ginzburg-Landau Equations for Advancements in Theory and Applications , Iris Mowgood

Application of Machine Learning Algorithms for Elucidation of Biological Networks from Time Series Gene Expression Data , Krupa Nagori

Stochastic Processes and Multi-Resolution Analysis: A Trigonometric Moment Problem Approach and an Analysis of the Expenditure Trends for Diabetic Patients , Isaac Nwi-Mozu

Applications of Causal Inference Methods for the Estimation of Effects of Bone Marrow Transplant and Prescription Drugs on Survival of Aplastic Anemia Patients , Yesha M. Patel

Causal Inference and Machine Learning Methods in Parkinson's Disease Data Analysis , Albert Pierce

Causal Inference Methods for Estimation of Survival and General Health Status Measures of Alzheimer’s Disease Patients , Ehsan Yaghmaei

Dissertations from 2022 2022

Computational Approaches to Facilitate Automated Interchange between Music and Art , Rao Hamza Ali

Causal Inference in Psychology and Neuroscience: From Association to Causation , Dehua Liang

Advances in NLP Algorithms on Unstructured Medical Notes Data and Approaches to Handling Class Imbalance Issues , Hanna Lu

Novel Techniques for Quantifying Secondhand Smoke Diffusion into Children's Bedroom , Sunil Ramchandani

Probing the Boundaries of Human Agency , Sook Mun Wong

Dissertations from 2021 2021

Predicting Eye Movement and Fixation Patterns on Scenic Images Using Machine Learning for Children with Autism Spectrum Disorder , Raymond Anden

Forecasting the Prices of Cryptocurrencies using a Novel Parameter Optimization of VARIMA Models , Alexander Barrett

Applications of Machine Learning to Facilitate Software Engineering and Scientific Computing , Natalie Best

Exploring Behaviors of Software Developers and Their Code Through Computational and Statistical Methods , Elia Eiroa Lledo

Assessing the Re-Identification Risk in ECG Datasets and an Application of Privacy Preserving Techniques in ECG Analysis , Arin Ghazarian

Multi-Modal Data Fusion, Image Segmentation, and Object Identification using Unsupervised Machine Learning: Conception, Validation, Applications, and a Basis for Multi-Modal Object Detection and Tracking , Nicholas LaHaye

Machine-Learning-Based Approach to Decoding Physiological and Neural Signals , Elnaz Lashgari

Learning-Based Modeling of Weather and Climate Events Related To El Niño Phenomenon via Differentiable Programming and Empirical Decompositions , Justin Le

Quantum State Estimation and Tracking for Superconducting Processors Using Machine Learning , Shiva Lotfallahzadeh Barzili

Novel Applications of Statistical and Machine Learning Methods to Analyze Trial-Level Data from Cognitive Measures , Chelsea Parlett

Optimal Analytical Methods for High Accuracy Cardiac Disease Classification and Treatment Based on ECG Data , Jianwei Zheng

Dissertations from 2020 2020

Development of Integrated Machine Learning and Data Science Approaches for the Prediction of Cancer Mutation and Autonomous Drug Discovery of Anti-Cancer Therapeutic Agents , Steven Agajanian

Allocation of Public Resources: Bringing Order to Chaos , Lance Clifner

A Novel Correction for the Adjusted Box-Pierce Test — New Risk Factors for Emergency Department Return Visits within 72 hours for Children with Respiratory Conditions — General Pediatric Model for Understanding and Predicting Prolonged Length of Stay , Sidy Danioko

A Computational and Experimental Examination of the FCC Incentive Auction , Logan Gantner

Exploring the Employment Landscape for Individuals with Autism Spectrum Disorders using Supervised and Unsupervised Machine Learning , Kayleigh Hyde

Integrated Machine Learning and Bioinformatics Approaches for Prediction of Cancer-Driving Gene Mutations , Oluyemi Odeyemi

On Quantum Effects of Vector Potentials and Generalizations of Functional Analysis , Ismael L. Paiva

Long Term Ground Based Precipitation Data Analysis: Spatial and Temporal Variability , Luciano Rodriguez

Gaining Computational Insight into Psychological Data: Applications of Machine Learning with Eating Disorders and Autism Spectrum Disorder , Natalia Rosenfield

Connecting the Dots for People with Autism: A Data-driven Approach to Designing and Evaluating a Global Filter , Viseth Sean

Novel Statistical and Machine Learning Methods for the Forecasting and Analysis of Major League Baseball Player Performance , Christopher Watkins

Dissertations from 2019 2019

Contributions to Variable Selection in Complexly Sampled Case-control Models, Epidemiology of 72-hour Emergency Department Readmission, and Out-of-site Migration Rate Estimation Using Pseudo-tagged Longitudinal Data , Kyle Anderson

Bias Reduction in Machine Learning Classifiers for Spatiotemporal Analysis of Coral Reefs using Remote Sensing Images , Justin J. Gapper

Estimating Auction Equilibria using Individual Evolutionary Learning , Kevin James

Employing Earth Observations and Artificial Intelligence to Address Key Global Environmental Challenges in Service of the SDGs , Wenzhao Li

Image Restoration using Automatic Damaged Regions Detection and Machine Learning-Based Inpainting Technique , Chloe Martin-King

Theses from 2017 2017

Optimized Forecasting of Dominant U.S. Stock Market Equities Using Univariate and Multivariate Time Series Analysis Methods , Michael Schwartz

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25 Data Science Project Ideas for Beginners with Source Code

Data science projects for Beginners-Apply your data science skills to interesting data science project ideas and solve real-world data science problems.

25 Data Science Project Ideas for Beginners with Source Code

You've got your eyes on a rewarding job in data science with your name written all over the data scientist job title. You know you have the data science skills required for the job. The problem is that you need something to prove you have a versatile data science skill set. Anyone can mention on their data science resume that they're a skilled data scientist – hiring managers will want you to back it up with some solid examples; otherwise, you will be ready to get dropped like a bad AOL connection. But how can you stand out like a bug-free production-quality data science code and show hiring managers that you're worth your salt? Easy – Data science projects. The most effective way to do it is to do it!

Well, we believe in this. This blog is an excellent medium for beginners to get their hands dirty on data science while working on some cool and exciting data science project ideas. We encourage you to have fun by exploring our list of diverse data science and machine learning projects .

Table of Contents

List of top 20 data science projects for beginners with source code , basic data science projects for beginners, data science mini projects for beginners on kaggle, finance data science projects for beginners, python data science projects for beginners, data science practice projects for beginners, elevate your data science skills with projectpro.

For those of you already working in the data science industry or looking to break into the world of data science with your first data science job, the number of processes, machine learning algorithms , knowledge extraction systems, data science tools, and technologies that you are expected to know can be overwhelming. Python, R, NLTK , TensorFlow , Keras,  Tableau, Jupyter,  iPython Notebook , Matplotlib . The list goes on … But don’t fear! We have collated 20+ data science projects for beginners to get you started and point you to the appropriate resources on the web for further understanding. 

Here is a list of easy data science projects that you can work on as a beginner in the evolving field of data science.

1) Churn Prediction using Machine Learning 

2) Sentiment Analysis of Product Reviews

3) Price Recommendation using Machine Learning

5) Sales Forecasting

6) Building a Recommender System

7) Employee Access-Challenge as a Classification Problem

8) Survival Prediction using Machine Learning

9) Personalized Medicine Recommending System

10) image masking.

11) Loan Default Prediction 

12) Fraud Detection as a Classification Problem

13) Macro-economic Trends Prediction

14) credit analysis.

15) Model Insurance Claim Severity

16) Build a Chatbot from Scratch in Python using NLTK

17) Market Basket Analysis using Apriori

18) Build a Resume Parser using NLP -Spacy

19) Build an Image Classifier Using Tensorflow

20) House Price Prediction using Machine Learning

21) Recommendation System for Retail Stores

22) fake news detection, 23) human activity recognition.

Let’s dive in.

As a beginner in data science, we recommend that you first experiment with mini projects for data science students, as highlighted in this section.

1) Churn Prediction using Machine Learning

Predicting churn for a video streaming service is crucial for revenue preservation, cost reduction, and enhancing customer experience. It enables targeted retention strategies, reduces customer acquisition costs, and leads to data-driven decision-making. By understanding factors leading to churn, such as content preferences and service quality, the company can personalize offerings, improve satisfaction, and maintain a competitive edge in the market. The good news is that all these factors can be quantified with different layers of data about billing history, subscription plans, cost of content, network/bandwidth utilization, and more to get a 360-degree view of the customer. This 360-degree view of customer data can be leveraged using predictive modeling techniques to identify patterns and various trends that influence customer satisfaction and help reduce churn.

data science thesis projects

Considering that customer churn is expensive and inevitable, leveraging analytics to understand the factors influencing customer attrition, identifying customers most likely to churn, and offering them discounts can be a great way to reduce it. In this data science project, you will build a decision tree machine learning model to understand the correlation between the different variables in the dataset and customer churn. This churn prediction machine learning project will tweak the problem of unsatisfied customers and make the revenue flow for the streaming company.

Source Code: Build a Customer Churn Prediction Model using Decision Trees  

Product reviews from users are the key for businesses to make strategic decisions as they give an in-depth understanding of what the users want for a better experience. Today, almost all companies have reviews and rating sections on their website to understand if a user’s experience has been positive, negative, or neutral. With an overload of puzzling reviews and feedback on the product, it is impossible to read each review manually. Also, the feedback often has many shorthand words and spelling mistakes that could be difficult to decipher. That is where sentiment analysis comes to the rescue.

Interesting Data Science Project- Pairwise Ranking of e-commerce Product Reviews

In this data science project, you will use natural language processing techniques to preprocess and extract relevant features from the reviews and rating dataset. You will then use a semi-supervised learning methodology to apply the pairwise ranking approach to rank reviews and further segregate them to perform sentiment analysis. The developed model will help businesses maximize user satisfaction efficiently by prioritizing product updates that will likely have the most positive impact.

Source Code: Pairwise Ranking of Product Reviews  

3) Price Recommendations for Online Sellers

E-commerce platforms today are extensively driven by machine learning algorithms, from quality checking and inventory management to sales demographics and product recommendations; all use machine learning. One more exciting business use case that e-commerce apps and websites are trying to solve is to eliminate human interference in providing price suggestions to the sellers on their marketplace to speed up the efficiency of the shopping website or app. That’s when price recommendation using machine learning comes into play.

Ecommerce Recommendation System Data Science Project

In this data science project, you will build a machine learning model that will automatically suggest the correct product prices to online sellers as accurately as possible. It is a challenging data science problem statement since similar products with very slight differences, like additional specifications, different brand names, or the demand for the product, can have different product prices. Price prediction modeling becomes even more challenging when there are lakhs of products, which is the case with most e-commerce platforms .

Source Code: Build a Price Recommendation Model using Machine Learning Regression

In this section, you will explore simple data science projects for beginners to practice using the dataset available on Kaggle.

5) Walmart Store’s Sales Forecasting

Ecommerce & Retail use big data and data science to optimize business processes and for profitable decision-making. Various tasks, like predicting sales, offering product recommendations to customers, inventory management, etc., are elegantly managed using data science techniques. Walmart has used data science techniques to make precise forecasts across its 11,500 revenue, generating $482.13 billion in 2016. As it is clear from the name of this mini project for data science, you will work on the Walmart store dataset that consists of 143 weeks of transaction records of sales across 45 Walmart stores and their 99 departments.

Sales Forecasting Data Science Project

Here is an exciting problem statement in data science that involves forecasting future sales across various departments within different Walmart outlets. The challenging aspect of this data science project is forecasting sales on four major holidays – Labor Day, Christmas, Thanksgiving, and the Super Bowl. The selected holiday markdown events are when Walmart makes the highest sales, and by forecasting sales for these events, they want to ensure sufficient product supply to meet the demand. The dataset contains markdown discounts, consumer price index, whether the week was a holiday, temperature, store size, store type, and unemployment rate. The project aims to forecast Walmart store sales across various departments using the historical Walmart dataset and predict which departments are affected by the holiday markdown events and the extent of the impact. To make predictions, you will use ML models like the Linear Regression Model, Random Forest Regression Model, K Neighbors Regression Model, XGBoost Regression Model, and a Custom Deep Learning Neural Network.

Source Code: Walmart Store Sales Forecasting

6) Building a Recommender System -Expedia Hotel Recommendations

Everybody wants their products to be personalized and behave as they wish. A recommender system aims to model a product's preference for a particular user. This data science project aims to study the Expedia Online Hotel Booking System by recommending hotels to users based on their preferences. The Expedia dataset was made available as a data science challenge on Kaggle to contextualize customer data and predict the probability of a customer likely to stay at 100 different hotel groups.

Hotel Recommendation System

The Expedia dataset consists of 37,670,293 entries in the training set and 2,528,243 in the test set. Expedia Hotel Recommendations dataset has data from 2013 to 2014 as the training set and the data for 2015 as the test set. The dataset contains details about check-in and check-out dates, user location, destination details, origin-destination distance, and the actual bookings made. Also, it has 149 latent features extracted from the hotel reviews provided by travelers dependent on hotel services like proximity to tourist attractions, cleanliness, laundry service, etc. All the user IDs that are present in the test set are present in the training set. 

Insert Video: https://www.youtube.com/watch?v=rN2xmCfZUds  

This project solution aims to predict a user's likelihood to stay at 100 different hotel groups, rank the predictions, and return the top 5 most likely hotel clusters for each user's search query in the test set. The problem falls under the category of multi-class classification problems, which you will solve by implementing Naive Bayes, Logistic Regression, and KNN algorithms over the dataset in Python.

Source Code: Expedia Hotel Recommendations

7) Amazon- Employee Access Data Science Challenge

Determining various resource access privileges for employees is a popular real-world data science challenge for giant companies like Google and Amazon. For companies like Amazon, various human resource administrators had done this earlier because of their highly complicated employee and resource situations. Amazon was interested in automating the process of providing its employees with access to various computer resources to save money and time. So, they announced a challenge on Kaggle: to build an employee access control system that automatically approves or rejects employee resource applications.

The dataset for this data science project for beginners consists of historical data of 2010 -2011 recorded by human resource administrators at Amazon Inc. The training set consists of 32769 samples and the test set consists of 58922 samples. Every dataset sample has eight features that indicate a different role or group of an Amazon employee.

Working on this project solution will teach you to work with a highly imbalanced dataset. You will learn to use the random forest model in Python to determine employees' resource access privileges automatically.

Source Code: Amazon-Employee Access Challenge

8) Predict the Survival of Titanic Passengers – Would you survive the Titanic?

Here, we have one of the popular beginner data science projects in the global community for data science beginners because the solution to this problem provides a clear understanding of what a typical data science project consists of.

Titanic Survival Prediction Data Science Project

The data science problem statement for this project involves predicting the fate of passengers aboard the RMS Titanic, which famously sank in the Atlantic Ocean after colliding with an iceberg during its voyage from the UK to New York. The aim of this data science project is to predict which passengers would have survived on the Titanic based on their characteristics, such as age, sex, class of ticket, etc.

Work on this project to learn about Python's various data types, control structures, and looping concepts. Explore how Data science libraries in Python , like NumPy , Pandas , Scikit-learn , etc., are used to solve a supervised machine learning problem .

Source Code: A tutorial for Kaggle's Titanic: Machine Learning from Disaster competition. 

The recent talk of the town among Cancer Researchers is how treating diseases like Cancer using Genetic Testing will revolutionize the universe of Cancer Research. This dreamy revolution has been partially realized because of the significant efforts of clinical pathologists. The pathologist first sequences a cancer tumor gene and then manually interprets the genetic mutation. It is quite a tedious process and takes a lot of time as the pathologist has to look for evidence in clinical literature to derive interpretations. However, this process can be smoother if we implement machine learning algorithms. This project will be a good start if you want to explore a field that integrates Medicine and Artificial Intelligence .

Medicine Recommendation System Data Science Project

The goal is to automate classifying every single genetic mutation of the cancer tumor using the dataset prepared by Memorial Sloan Kettering Cancer Center (MSKCC). The dataset contains mutations labeled as tumor growth (drivers) and neutral mutations (passengers). World-renowned researchers and oncologists have manually annotated the dataset.

You will learn how to design an automated system that can classify genetic mutations in cancer tumors into classes of drivers and passengers using the MSKCC dataset. You will be understanding the implementation of Natural Language Processing techniques. This project will guide you through merging two Python dataframes, utilizing the word_cloud library, understanding the differences between Summing and Lemmatization , implementing the Tf_Idf Vectorizer, and applying the Long-Short-Term Memory (LSTM) Deep Learning model to the given dataset.

Source Code: Keras Deep Learning Projects-Personalized Cancer Treatment

Often, we come across images from which we wish to remove background and utilize them for specific purposes. Carvana, an online startup, has attempted to build an automated photo studio that clicks 16 photographs of each vehicle in its inventory. Cavana captures these photographs with bright reflections in high resolution. However, the cars in the background sometimes make it difficult for their customers to look at their choice vehicle closely. Thus, an automated tool that can remove background noise from the captured images and only highlight the image's subject would work like magic for the startup and save tons of hours for their photo editors. You can also implement an image masking system that automatically removes background noise.

This data science project solution will use the Carvana Dataset and implement a neural network algorithm to design an Image Masking system that removes photo studio backgrounds. This implementation, built using the Tensorflow and Keras Framework, will make it easy to prepare images containing backgrounds that bring the car features into the limelight. The project will use data augmentation techniques to improve the model's performance and explore methods to change various image features such as brightness, contrast, etc.

Source Code: Solution based on U-Net for the Kaggle Carvana Image Masking Challenge  

In this section, you will find a list of project ideas for beginners in data science from the finance industry

11) Loan Default Prediction Project 

Loans are the core revenue generators for banks as a significant part of the profit for banks comes directly from the interest of these loans. However, the loan approval process is intensive, with much validation and verification based on multiple factors. And even after so much verification, banks still need to be assured that a person can repay the loan without difficulties. Today, almost all banks use machine learning to automate the loan eligibility process in real-time based on factors like Credit Score, Marital and Job Status, Gender, Existing Loans, Total Number of Dependents, Income, and Expenses, among others. 

Loan Default Prediction Data Science Project

It is an exciting data science project in the financial domain .You will build a predictive model to automate targeting suitable loan applicants. This data science problem is a classification problem where you use information about a loan applicant to predict if they can repay the loan. You will begin with exploratory data analysis , then data preprocessing , and finally, testing the developed model. After completing this project, you will develop a solid understanding of solving classification problems using machine learning .

Source Code: Building a Loan Default Prediction Model

12) Credit Card Fraud Detection 

Here, we have an exciting data science problem for data scientists who want to get out of their comfort zone by tackling classification problems caused by a significant imbalance in the size of the target groups. Credit card fraud detection is usually a classification problem that classifies transactions made on a particular credit card as fraudulent or legitimate. More credit card transaction datasets must be available for practice, as banks do not want to reveal their customer data due to privacy concerns.

Fraud Detection Data Science Project

This data science project aims to help data scientists develop an intelligent credit card fraud detection model for identifying fraudulent credit card transactions from highly imbalanced and anonymous credit card transactional datasets. To solve this project related to data science, the popular Kaggle dataset contains credit card transactions made in September 2013 by European cardholders. This credit card transactional dataset consists of 284,807 transactions, of which 492 (0.172%) transactions were fraudulent. It is a highly unbalanced dataset as the positive class, i.e., the number of frauds accounts only for 0.172% of all the credit card transactions in the dataset. There are 28 anonymized features in the dataset that are obtained by feature normalization using principal component analysis. Two additional features in the dataset have not been anonymized – the time when the transaction was made and the amount in dollars. It will help detect the overall cost of fraud.

The data science problem statement for this project aims to identify the number of fraudulent transactions in the dataset and predict the accuracy of the model developed. You can implement the solution by working on this imbalanced dataset and building a predictive model using ML algorithms like Random Forests, K-Nearest Neighbour, and Logistic Regression .

Source Code: Credit Card Fraud Detection

We often hear from the news channels that XYZ country will be one of the biggest economies in the world in the year 2030. If you have ever wondered the basis for such statements, allow me to help you. These news channels rely on statisticians-cum-Data Scientists to come up with such predictions. These data scientists analyze several financial datasets of various countries and then submit their conclusions which then make the headlines. If you are interested in a project that revolves around this area, you are on the right page.

The aim of this project solution is to design a macro-economic trends predictor using Machine learning algorithms, including linear regression, Ridge Regression, XGBoost, and elasticnet models. After implementing the models, you will deduce which model works best by plotting relevant graphs.

Source Code:  Machine Learning Project-Two Sigma Financial Modeling Challenge .

Many multinational companies of the Banking sector have now started relying on Artificial intelligence techniques that allow them to classify loan applications. They request their customers to submit specific details about themselves.

They then utilize these details and implement machine learning algorithms on the collected data to understand the ability of their customers to repay the loan they have applied for. You can also attempt to build a project around this using the German Credit Dataset.

The data science problem statement for this project is to use the German Credit Dataset to classify loan applications. The dataset contains information about about 1,000 loan applicants. For each applicant, we have 20 feature variables. Out of these 20 attributes, three can take continuous values, and the remaining seventeen can take discrete values. This problem will be solved by extracting essential features from the dataset and using those features for classification.

You will learn to implement the Logistic Regression algorithm and improve its performance using the Random Forest algorithm. You will also learn to train a Neural Network Algorithm and explore commonly used metrics in Machine Learning to analyze which algorithm is better.

Source Code: Data Science Project-Classification of German Credit Dataset

15) Modeling Insurance Claim Severity

Nobody wants to drain their time and energy on filing insurance claims and dealing with all the paperwork with an insurance broker or an agent. To make the insurance claims process hassle-free, insurance companies across the globe are leveraging data science and machine learning to make this claims service process easier. This beginner-level data science project is about how insurance companies are predictive machine learning models to enhance customer service and make the claims service process smoother and faster.

Insurance Claims Severity Prediction Data Science Project

Whenever a person files an insurance claim, an insurance agent reviews all the paperwork thoroughly and then decides on the claim amount to be sanctioned. This entire paperwork process to predict the cost and severity of the claim is time-taking. In this project, you will build a machine learning model to predict the claim severity based on the input data. This project will make use of the Allstate Claims dataset that consists of 116 categorical variables and 14 continuous features, with over 300,000 rows of masked and anonymous data where each row represents an insurance claim.

Source Code: Data Science Project on Predicting Insurance Claim Severity

In this section, you will find data science projects for beginners in Python with source code for most project ideas.

16) Building a Chatbot with Python

Do you remember the last time you spoke to a customer service associate on call or via chat for an incorrect item delivered to you from Amazon, Flipkart, or Walmart? You would have talked with a chatbot instead of a customer service agent. Gartner estimates that 85% of customer interactions will be handled by chatbots by 2022. So what exactly is a chatbot? How can you build an intelligent chatbot using Python? 

A chatbot is an AI-based digital assistant that can understand human capabilities and simulate human conversations in natural language to give prompt answers to their questions just like a real human would. Chatbots help businesses increase their operational efficiency by automating customer requests.

Chatbot Project

The most important task of a chatbot is to analyze and understand the intent of a customer request to extract relevant entities. Based on the analysis, the bot then responds appropriately to the user. Natural language processing plays a vital role in text analytics through chatbots, making the interaction between computers and humans feel like real conversations. Every chatbot works by adopting the following three classification methods-

Pattern Matching – Makes use of pattern matches to group the text and produce a response.

Natural Language Understanding (NLU) – The process of converting textual information into a structured data format that a machine can understand.

Natural Language Generation (NLG) – The process of transforming the structured data into text.

In this data science project, you will use a leading and powerful Python library, NLTK (Natural Language Toolkit) , to work with text data. You will use preprocessing techniques like Tokenization and Lemmatization to preprocess the textual data.

Source Code: Build a conversational chatbot using Python from Scratch

17) Market Basket Analysis

Whenever you visit a retail supermarket, you will find baby diapers and wipes, bread and butter, pizza base and cheese, beer, and chips positioned together in the store for sale. That is what market basket analysis is all about – analyzing the association among products bought together by customers. Market basket analysis is a versatile use case in the retail industry that helps cross-sell products in a physical outlet and also helps e-commerce businesses recommend products to customers based on product associations. Apriori and FP growth are the most popular machine learning algorithms used for association learning to perform market basket analysis.

Market Basket Analysis Beginner Level Data Science Project using Apriori

In this beginner-level data science project, you will perform Market Basket Analysis in Python using Apriori and FP Growth Algorithms based on association rules to discover hidden insights on improving product recommendations for customers. You will learn to apply various metrics like Support, Lift, and Confident to evaluate the association rules.

Source Code: Solution to   Python Data Science Project on Market Basket Analysis using Apriori and FP Growth.  

18) Building a Resume Parser 

Gone are the days when recruiters manually screened resumes for a long time. Thanks to resume parsers, sifting through thousands of candidates' resumes for a job is now easy. Resume parsers use machine learning technology to help recruiters search thousands of resumes intelligently to screen the right candidate for a job interview.

A resume parser or a CV parser is a program that analyses and extracts CV/ Resume data according to the job description and returns machine-readable output that is suitable for storage, manipulation, and reporting by a computer. A resume parser stores the extracted information for each resume with a unique entry, thereby helping recruiters get a list of relevant candidates for a specific search of keywords and phrases (skills). Resume parsers help recruiters set a specific criterion for a job, and candidate resumes that do not match the set criteria are filtered out automatically. 

Resume Parsing Application Data Science Project

In this data science project, you will build an NLP algorithm that parses a resume and looks for the words (skills) mentioned in the job description. You will use the Phrase Matcher feature of the NLP library Spacy , which does "word/phrase" matching for resume documents. The resume parser then counts the occurrence of words (skills) under various categories for each resume, helping recruiters screen ideal candidates for a job.

Source Code: Build a Resume Parser using NLP (Spacy)

19) Plant Identification using TensorFlow 

Image classification is a fantastic application of deep learning . The objective is to classify all the pixels of an image into one of the defined classes. 

Plant Species Identification Data Science Project

Plant image identification using deep learning is one of the most promising solutions to bridging the gap between computer vision and botanical taxonomy. If you want to take your first step into the amazing world of computer vision, this is an exciting data science project idea to start.

Source Code: Build an Image Classifier for Plant Species Identification  

This section boasts of a list of data science project topics that are more challenging than the ones we have discussed already, yet, can easily be labeled as fun data science projects to understand the practical applications of data science.

20) House Price Prediction 

If you think real estate is one such industry that has been alienated by Machine Learning, then we'd like to inform you that it is not the case. The industry has been using Machine learning algorithms for a long time, and a famous example is the website Zillow. Zillow has a tool called Zestimate that estimates the price of a house based on public data. If you're a beginner, it'd be a good idea to include this project in your list of data science projects.

House Price Prediction Data Science Project

In this data science project, the task is to implement a regression machine-learning algorithm for predicting the price of a house using the Zillow Dataset. The dataset contains about 60 features and two files, 'train_2016' and 'properties_2016'. The files are linked through each other via a feature called 'parcelid'. This project aims to implement a machine learning model that can predict the best future sale predictions of houses.

You will learn how to clean the dataset and techniques for replacing missing data values. You will also learn how to use exciting data visualization libraries in Python: Matplotlib, seaborn. Using statistical methods, you will explore the dataset and understand what features are relevant for training a machine learning algorithm. Additionally, you will be guided on training different machine learning algorithms for regression problems.

Source Code: ML Project on Predicting House Prices with Zillow Data

In case you have tried shopping online, you must have seen the website trying to recommend you a few products. Have you ever wondered how such websites develop products you are highly likely to display interest in? Well, that's because machine learning-based algorithms are running in the background, and this project is all about it.

Recommendation System for Retail Stores

This project aims to use the retail store dataset to build an efficient recommendation system for them and perform Market Basket Analysis. This project will help you draw customer insights by performing exploratory data analysis of the given dataset. You will learn about date-time and free items analysis, evaluating deals of the day, and tending items selection by analyzing the dataset at the item level. Additionally, you will explore the Apriori algorithm and association rules.

Source Code: Recommender System Machine Learning Project for Beginners

Fake news spreads rapidly through social media, messaging apps, and other digital platforms. It is often created and circulated with the intent of misleading or manipulating people, and can have serious consequences, from influencing public opinion to impacting political outcomes and public health. With AI-based tools, these kind of news can be easily detected and used to tag them with a disclaimer.

Fake News Classification Data Science Project

The project will guide you on how to use NLP and deep learning models to build a system that can detect fake news. You will learn how to work on a sequence problem in NLP and use models like RNN , GRU, and LSTM to solve such problems. You will also learn how to implement text cleaning and preprocessing methods like stopword removal, stemming , tokenization, padding, etc. Besides that, you will also get to explore text vectorization and word embedding models.

Source Code: NLP and Deep Learning For Fake News Classification in Python

time. With exciting watches being designed by multiple international brands, people are now gradually switching to smartwatches. Smartwatches are cool watches of the 21st century that have made their way into almost every household. The prime reason for this is the attractive features that they offer. They can do nearly anything from heart-rate monitoring and ECG monitoring to workout-tracking. If you have used one such watch, you can recall that it often tells you how well you slept. So, how come a device that never sleeps can guide you about your sleep? To find an answer, you can do a simple data science project that associates a dataset of a few people's daily activities with the data collected by various sensors attached to those people.

In this data science project, you are expected to use machine-learning algorithms to assign the Human Activity Recognition Dataset features a class out of these six: WALKING, WALKING_UPSTAIRS WALKING_DOWNSTAIRS, SITTING, STANDING, LAYING. The Human Activity Recognition Data Science Project aims to build a system that can classify human activities by considering specific features.

In this project, you will learn to implement exploratory data analysis techniques to gain insights into the dataset. You'll explore various data visualization libraries to craft insightful graphs that visualize trends effectively. Understanding Principal Component Analysis will help you shortlist relevant features for analysis. Before applying algorithms, you'll clean the dataset thoroughly to ensure data integrity. For the classification problem, you will experiment with machine learning algorithms like Logistic Regression, SVMs, Random Forest, and Neural Networks. You'll select the best model based on statistical metrics evaluation, ensuring optimal performance.

Source Code: Human-Activity-Recognition-using-machine-learning  

Before we put an end to this blog, we have a few Data Science Learning tips for you from Mohammed Sohaib , fromer Data Scientist at Pianalytix.

Human Activity Recognition

So, there you have some interesting data science project ideas to start working your way into data science. No matter whichever data science project you choose to begin, you will open up countless possibilities for developing your data science skills . Reading data science books and tutorials is definitely a great way of learning data science, but there's no substitution for actually building end-to-end solutions for challenging data science problems. Working on diverse, exciting data science projects is the perfect way to improve your data science skills and progress towards mastering them. Your hiring manager will be more impressed with your data science and machine learning projects on GitHub or on your data science portfolio than a list of books that you've read. 

ProjectPro offers data science projects in python with source code that have a taste of diverse data science problems from different business domains. Each of these data science projects is designed to develop knowledge of the most popular data science tools and in-demand data science skills that employers are looking for. Professionals build end-to-end solutions for real-world data science problems and work accordingly by modeling the solutions as per their needs. Some of these data science projects are in Python and some in R. Some of these projects on data science are simple and some hard. However, these data science projects are great for resumes , especially before important whiteboard data science interviews. Nobody wants to be a starving data scientist anymore and the best way to learn data science is to do data science. Look for as many data science projects online as you can get involved in working with. Each data science project you work on will become a building block towards mastering data science leading to bigger and better data scientist job opportunities. The world needs better Data Scientists- This is the best time to learn data science by working on interesting data science projects.

Access 200+ solved data science and machine learning projects designed to provide data science enthusiasts with experiential learning experiences. Join the Data Science Game by working on some cool and exciting Data Science Projects!!!

1. How do you find data for your data science project?

You can find data for your projects on Google Dataset Search, UCI Machine Learning Repository, Kaggle, Github, Data.gov, and other major dataset search engines and paid data repositories.

2. What projects can I do with data science?

Wine Quality Prediction- Many people wonder which option is the most acceptable when purchasing a wine bottle. The Wine Quality Prediction Data Science Project uses a Kaggle red wine dataset to investigate which chemical features of a red wine determine its quality.

Walmart Store Sales Forecasting- This fascinating data science project entails estimating future sales across several departments within various Walmart locations. Walmart's chosen holiday markdown events are when they generate the most sales.  They can ensure enough product availability to match demand by projecting sales for these occasions.

Stock Market Prediction- This project uses Machine Learning algorithms on the EuroStockMarket Dataset to create a Stock Market Forecasting system. The dataset includes closing prices for all business days for the following major European stock indices: Germany's DAX (Ibis), Switzerland's SMI, France's CAC, and the United Kingdom's FTSE.

3. How do you select the appropriate machine-learning model for a given problem?

To select the appropriate machine learning model for a given problem, first, the problem and the type of data available should be clearly defined. Then, based on the problem type and data characteristics, various factors such as the size of the dataset, the complexity of the model, the interpretability of the model, and the expected accuracy should be considered. The selection process usually involves experimenting with multiple models and selecting the one that provides the best results.

4. How do you handle overfitting or underfitting in your models?

To avoid overfitting or underfitting in machine learning models, techniques such as regularization , early stopping, data augmentation, and hyperparameter tuning can be used. Regularization reduces model complexity, early stopping prevents overfitting, data augmentation increases the training dataset size, and hyperparameter tuning adjusts model performance.

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Department of Computer Science

Thesis projects and research in ds.

The Master's thesis is a mandatory course of the Master's program in Data Science. The thesis is supervised by a professor of the data science faculty list .

Research in Data Science is a core elective for students in Data Science under the supervision of a data science professor.

Research in Data Science

The project is in independent work under the supervision of a member of the faculty in data science

Only students who have passed at least one core course in Data Management and Processing, and one core course in Data Analysis can start with a research project.

Before starting, the project must be registered in mystudies and a project description must be submitted at the start of the project to the studies administration by e-mail (address see Contact in right column).

Master's Thesis

The Master's Thesis requires 6 months of full time study/work, and we strongly discourage you from attending any courses in parallel. We recommend that you acquire all course credits before the start of the Master’s thesis. The topic for the Master’s thesis must be chosen within Data Science.

Before starting a Master’s thesis, it is important to agree with your supervisor on the task and the assessment scheme. Both have to be documented thoroughly. You electronically register the Master’s thesis in mystudies.

It is possible to complete the Master’s thesis in industry provided that a professor involved in the Data Science Master’s program supervises the thesis and your tutor approves it.

Further details on internal regulations of the Master’s thesis can be downloaded from the following website: www.inf.ethz.ch/studies/forms-and-documents.html .

Overview Master's Theses Projects

Chair of programming methodology.

  • Prof. Dr. Martin Vechev

Institute for Computing Platform

  • Prof. Dr. Gustavo Alonso
  • Prof. Dr. Torsten Hoefler
  • Prof. Dr. Ana Klimovic
  • Prof. Dr. Timothy Roscoe

Institute for Machine Learning

  • Prof. Dr. Valentina Boeva
  • Prof. Dr. Joachim Buhmann
  • Prof. Dr. Ryan Cotterell    
  • external page Prof. Dr. Menna El-Assady   
  • Prof. Dr. Niao He
  • Prof. Dr. Thomas Hofmann
  • Prof. Dr. Andreas Krause
  • Prof. Dr. Gunnar Rätsch
  • external page Prof. Dr. Mrinmaya Sachan
  • external page Prof. Dr. Bernhard Schölkopf  
  • Prof. Dr. Julia Vogt

Institute for Persasive Computing

  • Prof. Dr. Otmar Hilliges

Institute of Computer Systems

  • Prof. Dr. Markus Püschel

Institute of Information Security

  • Prof. Dr. David Basin
  • Prof. Dr. Srdjan Capkun
  • external page Prof. Dr. Florian Tramèr

Institute of Theoretical Computer Science

  • Prof. Dr. Bernd Gärtner

Institute of Visual Computing

  • Prof. Dr. Markus Gross
  • Prof. Dr. Marc Pollefeys
  • Prof. Dr. Olga Sorkine
  • Prof. Dr. Siyu Tang

Disney Research Zurich

  • external page Prof. Dr. Robert Sumner

Automatic Control Laboratory

  • Prof. Dr. Florian Dörfler
  • Prof. Dr. John Lygeros

Communication Technology Laboratory

  • Prof. Dr. Helmut Bölcskei

Computer Engineering and Networks Laboratory

  • Prof. Dr. Laurent Vanbever
  • Prof. Dr. Roger Wattenhofer

Computer Vision Laboratory

  • Prof. Dr. Ender Konukoglu
  • Prof. Dr. Luc Van Gool
  • Prof. Dr. Fisher Yu

Institute for Biomedical Engineering

  • Prof. Dr. Klaas Enno Stephan

Integrated Systems Laboratory

  • Prof. Dr. Luca Benini
  • Prof. Dr. Christoph Studer

Signal and Information Processing Laboratory (ISI)

  • Prof. Dr. Amos Lapidoth
  • Prof. Dr. Hans-Andrea Loeliger

D-MATH does not publish Master's Theses projects. In case of interest contact the professor directly.

FIM - Insitute for Mathematical Research

  • Prof. Dr. Alessio Figalli

Financial Mathematics

  • Prof. Dr. Josef Teichmann

Institute for Operations Research

  • Prof. Dr. Robert Weismantel
  • Prof. Dr. Rico Zenklusen

RiskLab Switzerland

  • external page Prof. Dr. Patrick Cheridito
  • external page Prof. Dr. Mario Valentin Wüthrich

Seminar for Applied Mathematics

  • Prof. Dr. Rima Alaifari
  • Prof. Dr. Siddhartha Mishra

Seminar for Statistics

  • Prof. Dr. Afonso Bandeira
  • Prof. Dr. Peter Bühlmann
  • Prof. Dr. Yuansi Chen
  • Prof. Dr. Nicolai Meinshausen
  • Prof. Dr. Jonas Peters
  • Prof. Dr. Johanna Ziegel

Law, Economics, and Data Science Group

  • Prof. Dr. Eliott Ash , D-GESS)

Institute for Geodesy and Photogrammetry

  • Prof. Dr. Konrad Schindler (D-BSSE)

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COMMENTS

  1. Research Topics & Ideas: Data Science

    If you're just starting out exploring data science-related topics for your dissertation, thesis or research project, you've come to the right place. In this post, we'll help kickstart your research by providing a hearty list of data science and analytics-related research ideas, including examples from recent studies.. PS - This is just the start…

  2. 75+ Data Science Project Ideas for Final Year Students

    Here's why they matter: 1. Application of Knowledge. Final year projects allow students to apply theoretical concepts learned throughout their coursework in a practical setting. This hands-on ...

  3. 10 Best Research and Thesis Topic Ideas for Data Science in 2022

    The best course of action to amplify the robustness of a resume is to participate or take up different data science projects. In this article, we have listed 10 such research and thesis topic ideas to take up as data science projects in 2022. Handling practical video analytics in a distributed cloud: With increased dependency on the internet ...

  4. Top 100 Data Science Project Ideas For Final Year

    Finance: Fraud detection, risk management, and algorithmic trading. Technology: Natural language processing, image recognition, and recommendation systems. Environmental Science: Climate modeling, predicting natural disasters, and analyzing environmental data. In summary, data science is a powerful discipline that leverages data-driven ...

  5. How to write a great data science thesis

    They will stress the importance of structure, substance and style. They will urge you to write down your methodology and results first, then progress to the literature review, introduction and conclusions and to write the summary or abstract last. To write clearly and directly with the reader's expectations always in mind.

  6. 37 Research Topics In Data Science To Stay On Top Of » EML

    The data science landscape changes rapidly, and new techniques and tools are constantly being developed. ... These topics could be an idea for a thesis or simply topics you can research independently. ... This type of data can be used for future research projects. Data warehousing is an incredible research topic in data science because it ...

  7. data science Latest Research Papers

    Assessing the effects of fuel energy consumption, foreign direct investment and GDP on CO2 emission: New data science evidence from Europe & Central Asia. Fuel . 10.1016/j.fuel.2021.123098 . 2022 . Vol 314 . pp. 123098. Author (s): Muhammad Mohsin . Sobia Naseem .

  8. Top 10 Essential Data Science Topics to Real-World Application From the

    Data Science Project Process and Typical Skill Requirement. Figure 2 describes a typical data science project, similar to Wing's (2019) "Data Life Cycle"—starting with analytic consulting to understand the problem and define scope, then gathering and processing data. Next, models (analytics) are developed, with insights extracted and ...

  9. data-science-projects · GitHub Topics · GitHub

    Add this topic to your repo. To associate your repository with the data-science-projects topic, visit your repo's landing page and select "manage topics." GitHub is where people build software. More than 100 million people use GitHub to discover, fork, and contribute to over 420 million projects.

  10. Top 10 Data Science Project Ideas in 2024

    The Data Science Life Cycle. End-to-end projects involve real-world problems which you solve using the 6 stages of the data science life cycle: Business understanding. Data understanding. Data preparation. Modeling. Validation. Deployment. Here's how to execute a data science project from end to end in more detail.

  11. Data Science Masters Theses // Arch : Northwestern University

    Data Science Masters Theses. The Master of Science in Data Science program requires the successful completion of 12 courses to obtain a degree. These requirements cover six core courses, a leadership or project management course, two required courses corresponding to a declared specialization, two electives, and a capstone project or thesis.

  12. 20 Data Analytics Projects for All Levels

    Data Visualization Projects. 5. Visualizing COVID-19. In the Visualizing COVID-19 project, you will visualize COVID-19 data using the most popular R library ggplot. You will analyze confirmed cases worldwide, compare China with other countries, learn to annotate the graph, and add a logarithmic scale.

  13. Best 52 Data Science Project Ideas For Final Year

    1. Predictive Sales Analysis. Build a model that predicts future sales based on historical data. This project can help businesses optimize inventory and staffing. 2. Sentiment Analysis on Social Media Posts. Analyze Twitter or Reddit data to determine public sentiment about a specific topic, brand, or event. 3.

  14. Top Data Science Projects with Source Code [2024]

    Data Science Projects involve using data to solve real-world problems and find new solutions. They are great for beginners who want to add work to their resume, especially if you're a final-year student.Data Science is a hot career in 2024, and by building data science projects you can start to gain industry insights.. Think about predicting movie ratings or analyzing trends in social media ...

  15. 60+ Python Projects for All Levels of Expertise

    Intermediate Python Projects. Going beyond beginner tasks and datasets, this set of Python projects will challenge you by working with non-tabular data sets (e.g., images, audio) and test your machine learning chops on various problems. 1. Classify Song Genres from Audio Data.

  16. Five Tips For Writing A Great Data Science Thesis

    Although educational programs, conventions and thesis requirements vary wildly, I hope to offer some common guidelines for any student currently working on a Data Science thesis. The article offers five guidance points, but may effectively be summarized in a single line: "Write for your reader, not for yourself."

  17. Thesis/Capstone for Master's in Data Science

    A thesis is an academic-focused research project with broader applicability. A thesis is more appropriate if: you want to get a PhD or other advanced degree and want the experience of the research process and writing for publication; you want to work individually with a specific faculty member who serves as your thesis adviser

  18. Best Big Data Science Research Topics for Masters and PhD

    Data science thesis topics. We have compiled a list of data science research topics for students studying data science that can be utilized in data science projects in 2022. our team of professional data experts have brought together master or MBA thesis topics in data science that cater to core areas driving the field of data science and big data that will relieve all your research anxieties ...

  19. 250+ End-to-End Data Science Projects with Source Code

    Data Science Projects for Final Year Students in R and Python. Data Science projects are often classified based on the language that one is using, as they are a great tool if you want to understand R programming and Python programming. ProjectPro's data science mini-projects with source code in Python and R cover diverse industry use cases.

  20. Ten Research Challenge Areas in Data Science

    Abstract. To drive progress in the field of data science, we propose 10 challenge areas for the research community to pursue. Since data science is broad, with methods drawing from computer science, statistics, and other disciplines, and with applications appearing in all sectors, these challenge areas speak to the breadth of issues spanning ...

  21. 21 Data Science Projects for Beginners (with Source Code)

    Step-by-Step Instructions. Connect to the Data Science Stack Exchange database and explore its structure. Write SQL queries to extract data on questions, tags, and view counts. Use pandas to clean the extracted data and prepare it for analysis. Analyze the distribution of questions across different tags and topics.

  22. Computational and Data Sciences (PhD) Dissertations

    Optimal Analytical Methods for High Accuracy Cardiac Disease Classification and Treatment Based on ECG Data, Jianwei Zheng. Dissertations from 2020 PDF. Development of Integrated Machine Learning and Data Science Approaches for the Prediction of Cancer Mutation and Autonomous Drug Discovery of Anti-Cancer Therapeutic Agents, Steven Agajanian. PDF

  23. 25 Data Science Project Ideas for Beginners with Source Code

    Here is a list of easy data science projects that you can work on as a beginner in the evolving field of data science. 1) Churn Prediction using Machine Learning. 2) Sentiment Analysis of Product Reviews. 3) Price Recommendation using Machine Learning. 5) Sales Forecasting.

  24. Thesis Projects and Research in DS

    Master's Thesis. The Master's Thesis requires 6 months of full time study/work, and we strongly discourage you from attending any courses in parallel. We recommend that you acquire all course credits before the start of the Master's thesis. The topic for the Master's thesis must be chosen within Data Science. Before starting a Master's ...