xitorch
is a PyTorch-based library of differentiable functions and functionals that
can be widely used in scientific computing applications as well as deep learning.
The documentation can be found at: https://xitorch.readthedocs.io/
Finding root of a function:
import torch
from xitorch.optimize import rootfinder
def func1(y, A): # example function
return torch.tanh(A @ y + 0.1) + y / 2.0
# set up the parameters and the initial guess
A = torch.tensor([[1.1, 0.4], [0.3, 0.8]]).requires_grad_()
y0 = torch.zeros((2,1)) # zeros as the initial guess
# finding a root
yroot = rootfinder(func1, y0, params=(A,))
# calculate the derivatives
dydA, = torch.autograd.grad(yroot.sum(), (A,), create_graph=True)
grad2A, = torch.autograd.grad(dydA.sum(), (A,), create_graph=True)
linalg
: Linear algebra and sparse linear algebra moduleoptimize
: Optimization and root finder moduleintegrate
: Quadrature and integration moduleinterpolate
: Interpolation
- python 3.7 or higher
- pytorch 1.8 or higher (install here)
After fulfilling all the requirements, type the commands below to install xitorch
python -m pip install xitorch
Or if you want to install from source:
git clone https://github.com/xitorch/xitorch/
cd xitorch
python -m pip install -e .
- Differentiable Quantum Chemistry (DQC): https://dqc.readthedocs.io/
Neural mirror design (example 01):
Initial velocity optimization in molecular dynamics (example 02):