Mortgage-loan-prediction - Show how to perform advanced Analytics and Machine Learning in Python using a full complement of PyData utilities

Overview

come_visit_again_ML_Project

come visit again was the kaggle competition that was hosted by IIIT Bangalore and was a in house Data Science Competition and out task was to predict the number of visitors on particular date for a particular resturent. We have been provided with thousands of of resturents over the world as our dataset. We ended up with Rank1 in private Leaderboard and here's the solution for it :)

Screenshot

Code Information

I have provided these python notebooks.

  1. FeatureGen.ipynb - This Python file generates features and outputs train_data.csv that will be used by models.

  2. Model Xgb - Contains xgboost model training and testing code, also generates the submission file at the end.

  3. Model LightGbm - Contains LightGBM model training and testing code, also generates subsmission file at the end.

Thank You for viewing

Owner
Deepak Nandwani
A Machine Learning and Data Science Engineer, my goal is to make a +ve impact on millions of people's daily lives & to be hyper-optimistic about the future.
Deepak Nandwani
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