A Machinehack ML challenge
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Updated
Oct 24, 2022 - Jupyter Notebook
A Machinehack ML challenge
Student dropout predictions based on grades and other info. Classification problem with MLPClassifier.
A linear regression model using scikit and pandas for the prediction of the atomic ionization energy, with a rmse of 106 KJ/mol
Binary classification from a dataset with imbalanced target feature classes
Analysis on effect of temperature, rainfall and pesticide on Global food crops yield along with Crop Yield prediction using scikit-learn ML algorithms. Interactive website for outcomes using HTML, Bootstrap, JS, CSS, d3 and so on.
Programming assignments covering fundamentals of machine learning and deep learning. These were completed as part of the Plaksha Tech Leaders Fellowship program.
Build custom vacab, Ham /Spam using tfidf , Movie review classification using TFIDF
Scikit-Learn useful pre-defined Pipelines Hub
This Repo contains the Mini-Projects I've made while self-learning Data Science.
Data Science case for windmill power prediction based on weather. Based on Data Challenge of Air Liquide (@AirLiquide) and TotalEnergies(@total-sa, @Total-RD) companies in 2021. Real Data Science model was much more complicated to get 6 place. The link of the competition - https://datascience.total.com/fr/challenge/19/details#.
Optimizing an ML Pipeline in Azure - A Machine Learning Engineer Project
A collection of pandas & scikit-learn compatible transformers for preprocessing and feature engineering 🛠
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