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30+ Top Data Analytics Projects in 2025 [With Source Codes]
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30+ Top Data Analytics Projects in 2025 [With Source Codes]

Last Updated : 17 Nov, 2024
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Are you an aspiring data analyst? Dive into 40+ FREE Data Analytics Projects packed with the hottest 2024 tech. Data Analytics Projects for beginners, final-year students, and experienced professionals to Master essential data analytical skills. These top data analytics projects serve as a simple yet powerful gateway for beginners. Learn with free source code, mastering the art of data analytics. Make informed choices, reduce costs, and innovate for business success.

Building these data analytics projects helps you incorporate your theoretical knowledge with practical applications. These are the best data analytics projects for resumes, as they focus on real-world problems.

Big Data Analytics Projects with Source Codes

We have shortlisted some of the big data analytics Projects and categorized them into 3 categories. You can choose a single category to build projects or multiple categories to diversify your knowledge of data analytics.

We have provided multiple data analytics projects in each category. Combined there are over 30 projects to choose from.

Let's look at these categories below, and the fun projects in them.

Table of Content

  • WebScraping Data Analytics Projects
  • Data Analysis and Visualization Projects

WebScraping Data Analytics Projects

Explore these top web scraping projects with source code.

  1. Movies Review Scraping And Analysis
  2. Product Price Scraping and Analysis
  3. News Scraping and Analysis
  4. Real-time Share Price scrapping and analysis

Data Analysis and Visualization Projects

Here are the top Data Analysis and Visualization projects with source code.

  1. Zomato Data Analysis Using Python
  2. IPL Data Analysis
  3. Airbnb Data Analysis
  4. Global Covid-19 Data Analysis and Visualizations
  5. Housing Price Analysis & Predictions
  6. Market Basket Analysis
  7. Titanic Dataset Analysis and Survival Predictions
  8. Iris Flower Dataset Analysis and Predictions
  9. Customer Churn Analysis
  10. Car Price Prediction Analysis
  11. Indian Election Data Analysis
  12. HR Analytics to Track Employee Performance
  13. Product Recommendation Analysis
  14. Credit Card Approvals Analysis & Predictions
  15. Uber Trips Data Analysis
  16. iPhone Sales Analysis
  17. Google Search Analysis

Time Series Data Analytics Projects

Here are the top 10 Data Analytics Projects with source code based on Time Series

  1. Time Series Analysis with Stock Price Data
  2. Weather Data Analysis
  3. Time Series Analysis with Cryptocurrency Data
  4. Climate Change Data Analysis
  5. Anomaly Detection in Time Series Data
  6. Predictive Modeling for Sales or Demand Forecasting
  7. Air Quality Data Analysis and Dynamic Visualizations
  8. Gold Price Analysis and Forcasting Over Time
  9. Food Price Forecasting
  10. Time wise Unemployement Data Analysis

Now that you've decided on the project that you will be building, let's look at some platforms that will help you in building projects.

Best Platforms to Build Data Analyst Projects

Here are some best platforms for making data analysis projects:

  1. Microsoft Excel: Widely used for data manipulation and analysis, particularly suitable for beginners.
  2. Python (Pandas and NumPy): A versatile coding environment for advanced analytics and machine learning.
  3. RStudio: Ideal for statistical analysis, offering a comprehensive platform for data exploration.
  4. Tableau: Renowned for its data visualization capabilities, making complex datasets more accessible.
  5. Jupyter Notebooks: An interactive and collaborative environment, facilitating code execution and documentation.
  6. Google Colab: A cloud-based solution offering scalable computing resources for efficient data processing.
  7. Microsoft Azure: Another cloud-based option providing extensive computing power, especially beneficial for handling large datasets.

Choose a platform based on your project's specific needs, your familiarity with the tools, and the desired level of collaboration and visualization.

Also Explore:

  • Data Analyst Salary In India 2024
  • Data Scientist Salary in India 2024
  • Business Analyst Salary in India 2024: Fresher & Experienced

Conclusion

In conclusion, our collection of top data analytics projects offers a hands-on journey for beginners and experienced individuals into the realm of data analytics. With free source code on project problems, you can learn to master data analytics and begin your journey to be a data analyst.

These projects cover a variety of areas, from web scraping to predictive modeling, enabling you to understand and implement data analytics straightforwardly. Elevate your skills, dive into these projects, and unlock the potential of data analytics to drive your career forward.


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30+ Top Data Analytics Projects in 2025 [With Source Codes]

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Article Tags :
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  • Data Analysis
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