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Integration:  git github
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        # Papers With Everything

Hacktoberfest is a month-long virtual festival of open source! Participants are giving back to the community by completing pull requests, participating in events, and donating to open-source projects. This project is part of Hacktoberfest, where participants enrich the Open Source Data Science domain by adding datasets and models to existing code repos.

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What is DagsHub?

DagsHub is a centralized platform to host and manage machine learning projects including code, data, models, experiments, annotations, model registry, and more! DagsHub does the MLOps heavy lifting for its users. Every repository comes with configured S3 storage, an experiment tracking server, and an annotation workspace - all using popular open-source tools like MLflow, DVC, Git, and Label Studio.

Quick Start to Contribution

What does the DagsHub community contribute?

Promoting Open Source Data Science has always been a core value for us at DagsHub. We've promoted it in various ways, including sponsoring the Reproducibility Challenge by Papers with Code to make SOTA paper accessible to the ML community.

This year, we decided to combine the open source festival of Hacktoberfest and the Reproducibility Challenge to create THE Grand Festival of Open Source Data Science!

In this challenge, participants will connect repos from GitHub to DagsHub that host reproduced papers from NeurIPS, ICML, ICLR, ACL, EMNLP, CVPR, and ECCV, and add their datasets and model's weights to DagsHub Storage.

How to contribute?

Tip!

Press p or to see the previous file or, n or to see the next file

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Machine Learning papers with code, data and models

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