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title

Edelweiss Hackathon-Machine Learning

Problem statements

  • Machine Learning – Propensity to Foreclose

Predicting propensity of the customer to foreclose their loans. The objective is to retain the customer for the maximum tenure.

  • Machine Learning – Portfolio & Price Prediction for Intra-day trades

Price movement prediction using a masked set of features - This involves predicting short-term to mid-term price movements using a combination of multiple features.

Competition Link

https://www.hackerearth.com/challenges/competitive/machine-learning-Edelweiss/

Leaderboard (3rd)

https://www.hackerearth.com/challenges/competitive/machine-learning-Edelweiss/leaderboard/

Final

title LinkedIn