Thomas Meli's repositories

FeatureSelectionMaster

A full-feature package to analyze and select informative features and find feature interactions.

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Music_Theory_Awesome

An Awesome List of Online Music Theory Resources

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bayesian-stats-modelling-tutorial

How to do Bayesian statistical modelling using numpy and PyMC3

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Causalinference

Causal Inference in Python

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Data_Free_Books

Free Books for learning Data Science, Data Visualization, and Machine Learning.

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Data_Interactive_Learning

Some of the best educational/visualization tools I've seen for learning data science, statistics, and computer science.

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deep_learning_and_the_game_of_go

Code and other material for the book "Deep Learning and the Game of Go"

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Dengue2021

Updated Version of DrivenData Dengue Time Series Prediction

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EPIJudge

EPI Judge - Preview Release

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Interpretable_ML_Resources

Resources for Interpretable and Explainable AI

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leela-zero

Go engine with no human-provided knowledge, modeled after the AlphaGo Zero paper.

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MeliML

Automates many repetitive ML tasks in my own 'opinionated' style.

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minimal_error_sveltekit

Reproducing minimal error with sveltekit

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predictions_analyzer

Predictions Analyzer is a powerful tool to help discover which models perform best on the kinds of samples you have. This allows you to create local models and ensemble models with precision, while also finding out which samples are the most challenging to classify.

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rapid_prototype

Rapid Prototyping Entire Pipelines Combined With Optuna and Wandb

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scikit-learn

scikit-learn: machine learning in Python

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