Tesseract Core (Pasteur Labs, SciPy 2025 / JOSS)
github.com/pasteurlabs/tesseract-coreUniversal components for differentiable scientific computing, packaging heterogeneous scientific tools into self-contained, portable, gradient-propagating components with auto-generated schemas, CLI/REST API/Python SDK interfaces, and reproducible deployment across local, cloud, and HPC environments (105+ stars, Apache 2.0)
Sourced from
- GitHub — github.com/pasteurlabs/tesseract-core
- Awesome AI for Science — github.com/pasteurlabs/tesseract-core
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