NeuroAI (Meta FAIR)
github.com/facebookresearch/neuroaiModular Python suite for Neuro-AI research across all modalities, providing efficient data loaders (NeuralSet), curated datasets (NeuralFetch), scalable training (NeuralTrain), and unified benchmarking (NeuralBench) for building and evaluating neuroscience foundation models (Meta FAIR, 270+ stars, MIT License, 2026)
Sourced from
- Awesome AI for Science — github.com/facebookresearch/neuroai
- GitHub — github.com/facebookresearch/neuroai
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