- Gala Groceries, in partnership with Cognizant, leveraged data-driven insights and machine learning to optimize perishable item stocking. This repository showcases the journey through exploratory data analysis (EDA), data modeling, model building, and machine learning production.
- EDA (Task 1): Thorough data exploration using visualizations and statistics to reveal insights from extensive datasets.
- Data Modeling and Strategy (Task 2): Developing machine learning models with diverse algorithms to enhance decision accuracy and efficiency.
- Model Building (Task 3): Building and fine-tuning machine learning models.
- Machine Learning Production (Task 4): Leading model deployment to production and generating detailed reports for informed business decisions and AI solution validation.
- Conducted comprehensive data exploration.
- Utilized visualizations and statistics to gain insights.
- Developed a data modeling strategy for stock optimization.
- Utilized diverse machine learning algorithms.
- Built and fine-tuned machine learning models.
- Deployed models to production.
- Generated detailed reports for business decision-making and AI solution validation.
The Gala Groceries Data-Driven Stock Optimization Project showcases how data-driven insights and machine learning can revolutionize perishable item stocking. This collaborative effort with Cognizant resulted in enhanced decision accuracy, minimized waste, and optimized stock levels, ultimately improving the customer experience.