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15 stars written in Jupyter Notebook
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The fastai book, published as Jupyter Notebooks

Jupyter Notebook 24,789 9,449 Updated Aug 16, 2024

Tutorials on getting started with PyTorch and TorchText for sentiment analysis.

Jupyter Notebook 4,590 1,180 Updated Mar 27, 2024

Open Machine Learning course

Jupyter Notebook 3,446 1,300 Updated Mar 6, 2026

Single-document unsupervised keyword extraction

Jupyter Notebook 1,831 247 Updated Feb 11, 2026

Официальный репозиторий курса Deep Learning (2018-2021) от Deep Learning School при ФПМИ МФТИ

Jupyter Notebook 949 540 Updated Feb 12, 2022

A series of Python Jupyter notebooks that help you better understand "The Elements of Statistical Learning" book

Jupyter Notebook 913 281 Updated Jul 18, 2021

Data science portfolio

Jupyter Notebook 367 80 Updated Aug 28, 2021

Solutions and comments to assignments for 2019 Stanford's course on convolutional neural networks

Jupyter Notebook 155 69 Updated Feb 15, 2023

Detecting Fake News with 52,000 article with %97 Accuracy

Jupyter Notebook 95 42 Updated Feb 1, 2020

TorchScript tutorial (python, C++)

Jupyter Notebook 33 2 Updated Jan 20, 2020

Uber is interested in predicting rider retention. To help explore this question, they have provided a sample dataset of a cohort of users.

Jupyter Notebook 30 14 Updated Mar 8, 2018
Jupyter Notebook 10 12 Updated Sep 6, 2024

Repository containing materials for Kaggle Data Science Bowl 2019

Jupyter Notebook 2 Updated Nov 12, 2019

This notebook is dedicated to the solution of Uber take home challenge. This challenge consists of three main questions and several sub-questions

Jupyter Notebook 2 7 Updated Apr 30, 2018

III - IV quarter 2017 by hse

Jupyter Notebook 1 Updated Jul 21, 2018