💰 Predicting the sales of Rossmann drug stores through machine learning.
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README.md

Rossmann Store Sales

Forecast sales using store, promotion and competitor data. Link to Kaggle Competition.

A complete list of models developed for this problem can be found here and the final report with a detailed explanation of our approach and observations is included here. Additionally, each model-name.py file includes a description of the assumptions made & features used for the model as well as the final RMSPE scores for the predictions (from Kaggle).

Team:

  1. Suyash Lakhotia (SuyashLakhotia)
  2. Prasanth Karthikeyan (prashnerd)
  3. Nikhil Venkatesh (nikv96)
  4. Rainy Sokhonn (rsokhonn)

Disclaimer: This repo is no longer maintained and was submitted as part of the course project for CZ 4041 Machine Learning at NTU in AY 16/17 Semester 2.