NeuroMANCER (PNNL)
github.com/pnnl/neuromancerPyTorch-based differentiable programming framework for physics-informed system identification, parametric constrained optimization, and model predictive control, integrating neural operators, neural ODEs, KANs, SINDy, and differentiable predictive control with 30+ tutorials (1.3k+ stars, BSD License)
Sourced from
- Awesome AI for Science — github.com/pnnl/neuromancer
- GitHub — github.com/pnnl/neuromancer
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