Distributed PDE Solver in Tensorflow
Project description
Efficient and Scalable Physics-Informed Deep Learning
Collocation-based PINN solvers and PDE discovery methods on top of Tensorflow for multi-worker distributed computing.
Use TensorDiffEq if you require:
- A meshless PINN solver that can distribute over multiple workers (GPUs) for forward problems (inference) and inverse problems (discovery)
- Scalable domains - Iterated solver construction allows for N-D spatio-temporal support
- support for N-D spatial domains with no time element is included
- Self-Adaptive Collocation methods for forward and inverse PINNs
- Intuitive user interface allowing for explicit definitions of variable domains, boundary conditions, initial conditions, and strong-form PDEs
What makes TensorDiffEq different?
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Completely open-source
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Self-Adaptive Solvers for forward and inverse problems, leading to increased accuracy of the solution and stability in training, resulting in less overall training time
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Multi-GPU distributed training for large or fine-grain spatio-temporal domains
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Built on top of Tensorflow 2.0 for increased support in new functionality exclusive to recent TF releases, such as XLA support, autograph for efficent graph-building, and grappler support for graph optimization* - with no chance of the source code being sunset in a further Tensorflow version release
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Intuitive interface - defining domains, BCs, ICs, and strong-form PDEs in "plain english"
*In development
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