This repository contains a collection of Machine Learning projects, case studies, and data analysis exercises. The projects cover various aspects of data analysis, visualization, and machine learning techniques.
-
Case Study 1: Data Analysis and Visualization
- Tip analysis project
- Salary and gender analysis
- Interactive visualizations and statistical analysis
-
Case Study 2: Business Analytics
- Fyntra data analysis
- Business insights and recommendations
-
Case Study 3: Advanced Data Analysis
- Complex data processing
- Statistical modeling
-
Case Study 4: Machine Learning Applications
- Predictive modeling
- Feature engineering
-
Case Study 5: Data Science Projects
- End-to-end data science workflow
- Model deployment considerations
-
Complete Pandas Tutorial
- Comprehensive guide to Pandas library
- Data manipulation and analysis techniques
- Best practices and common use cases
-
Self Study
- Additional learning materials
- Practice exercises
- Advanced concepts
- Python
- Pandas
- NumPy
- Matplotlib
- Seaborn
- Scikit-learn
- Jupyter Notebooks
- Clone the repository:
git clone https://github.com/aditya0545/MACHINE-LEARNING.git
- Navigate to the project directory:
cd MACHINE-LEARNING
- Install required dependencies:
pip install -r requirements.txt
- Open Jupyter Notebook:
jupyter notebook
Each case study is organized in its own directory with:
- Jupyter notebooks containing the analysis
- Dataset directory with required data files
- Additional resources and documentation
Feel free to contribute to this repository by:
- Forking the repository
- Creating a new branch for your feature
- Submitting a pull request
This project is licensed under the MIT License - see the LICENSE file for details.
For any questions or suggestions, please open an issue in the repository.