- This repository showcases data analysis and machine learning (ML) projects.
- Includes Exploratory Data Analysis (EDA) notebooks, ML Models, and Evaluation Metrics.
- Built using Python libraries:
NumPy,Pandas,Scikit-learn, andStatsmodels. - Demonstrates end-to-end processes from data exploration to model evaluation.
- 📊 EDA Notebook:
Data cleaning,exploration, andvisualization. - 🔮 Predictive Analysis Notebook:
Time Series Analysisfor sales forecasting. - 📝 Executive Summary:
Key findings and recommendations. - 📂 Dataset: Coffee Shop Sales.xlsx.
- 📊 EDA Notebook:
Cost,RevenueandProfitability analysis. - 📝 Executive Summary:
Key insights on cost, revenue and profitabilityand recommendations. - 📂 Dataset: food_orders_new_delhi.csv.
- EDA notebook on GitHub:
Comprehensive Explorationof the dataon Github. - EDA notebook on Kaggle: Comprehensive Exploration of the data
on Kaggle. - Machine Learning notebook on GitHub:
Classification of Accident SeveritybyLogistic Regression,Random Forest ClassifierandXGBoost. - 📂 Dataset:
road_accident_dataset
- Clone the repository:
https://github.com/mayur-de/Data_Analysis_and_Modeling.git
- Explore:
- Notebooks: Jupyter notebooks for EDA and model building.
- Executive Summary: Executive Summary of the Analyses.
- Models: Stored scripts for ML models.
- Metrics: Evaluation results and performance metrics.
- Fork the repo and submit a pull request for improvements or new models.
- Libraries: NumPy, Pandas, Scikit-learn, Statsmodels for data analysis and machine learning.
- Datasets and resources from the open-source community.