# google-deepmind/deepmind-research

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15,034 stars · 2,883 forks · Jupyter Notebook · Apache-2.0

## Links

- GitHub: https://github.com/google-deepmind/deepmind-research
- awesome-repositories: https://awesome-repositories.com/repository/google-deepmind-deepmind-research.md

## Description

This is an open-source research repository providing a collection of machine learning implementations designed to reproduce results from published academic papers. It serves as a public archive of code and datasets used to validate scientific claims within the field of artificial intelligence.

The repository contains neural network code implemented using both JAX and PyTorch to support scalable research and experimentation.

The codebase covers a range of research and development activities, including the implementation of specific AI models, the validation of deep learning benchmarks, and the general reproduction of machine learning research and scientific paper verification.

## Tags

### Artificial Intelligence & ML

- [Research Reproductions](https://awesome-repositories.com/f/artificial-intelligence-ml/research-papers/research-reproductions.md) — Provides a collection of implementations designed to reproduce the results and logic of published machine learning research.
- [Machine Learning Implementations](https://awesome-repositories.com/f/artificial-intelligence-ml/machine-learning-implementations.md) — Provides a collection of code-based reference implementations of core machine learning algorithms from research papers.
- [Neural Network Implementations](https://awesome-repositories.com/f/artificial-intelligence-ml/neural-network-implementations.md) — Implements specific neural network architectures and algorithms described in academic research papers.
- [Paper-to-Code Implementations](https://awesome-repositories.com/f/artificial-intelligence-ml/research-papers/paper-to-code-implementations.md) — Translates academic research papers into functional code to test the metrics and claims of AI publications.
- [Research Repositories](https://awesome-repositories.com/f/artificial-intelligence-ml/research-repositories.md) — Serves as a public archive of experimental code, datasets, and methodologies for advancing AI research.
- [Benchmark Validations](https://awesome-repositories.com/f/artificial-intelligence-ml/deep-learning-research/benchmark-validations.md) — Includes standardized implementations to validate and compare model performance against established research baselines.
- [JAX Implementations](https://awesome-repositories.com/f/artificial-intelligence-ml/jax-implementations.md) — Ships high-performance neural network implementations using JAX for scalable scientific computing.
- [PyTorch Implementations](https://awesome-repositories.com/f/artificial-intelligence-ml/pytorch-implementations.md) — Ships deep learning implementations utilizing PyTorch for neural network architecture and experimentation.

### Content Management & Publishing

- [Reproducible Research Publishing](https://awesome-repositories.com/f/content-management-publishing/data-science-product-publishing/reproducible-research-publishing.md) — Provides the open-source code and datasets necessary to reproduce findings and verify scientific claims from published research. ([source](https://cdn.jsdelivr.net/gh/google-deepmind/deepmind-research@master/README.md))
