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Fast Signature Computations on CPU and GPU

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Fast Signature Computations on CPU and GPU

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Installation

Before installing, please ensure you have a compatible C++ compiler installed (MSVC for Windows, GCC or Clang for Linux and MacOS), then run

pip install pysiglib

pySigLib will automatically detect CUDA, provided the CUDA_PATH environment variable is set correctly. To manually disable CUDA and build pySigLib for CPU only, create an environment variable CUSIG and set it to 0:

set CUSIG=0
pip install pysiglib

For detailed and up-to-date installation instructions on Windows, Linux and MacOS, see the installation guide.

Documentation

Full documentation is available at https://pysiglib.readthedocs.io

Examples

Signatures

pySigLib implements truncated signature transforms through the function pysiglib.signature, which takes as input a path or batch of paths X, and a truncation degree.

X can be a numpy array or a torch tensor. For a single path, X must be of shape (path length, path dimension). For a batch of paths, it must be of shape (batch size, path length, path dimension).

The computation will run on whichever device X is on. For example, passing X = np.random.uniform(size=(32, 1000, 10)) will trigger the computation to run on the CPU, whilst X = torch.rand(32, 1000, 10, device = "cuda") will run on the CUDA device.

import pysiglib
import numpy as np

X = np.random.uniform(size=(32, 1000, 10))
sig = pysiglib.signature(X, degree = 5)

Signature Kernels

pySigLib implements signature kernels through the function pysiglib.sig_kernel, which takes as input a pair of paths or a pair of batches of paths X, Y. The dyadic_order parameter can be used to refine the PDE grid, giving more accurate results. If specified as an integer, the same refinement factor is applied to both X and Y. To apply different factors to the two paths, dyadic_order can be specified as a tuple.

As with signatures, X,Y can be numpy arrays or torch tensors, and must have the same shapes as described above. Again, the computation will run on whichever device X,Y are located on.

import pysiglib
import numpy as np

X = np.random.uniform(size=(32, 1000, 10))
Y = np.random.uniform(size=(32, 1000, 10))
sig = pysiglib.sig_kernel(X, Y, dyadic_order=1)

# In cases where the paths differ in length, it may
# be advantageous to refine the PDE grid by different
# amounts for X and Y:

X = np.random.uniform(size=(32, 100, 10))
Y = np.random.uniform(size=(32, 5000, 10))
sig = pysiglib.sig_kernel(X, Y, dyadic_order=(3, 0))

Citation

If you found this library useful in your research, please consider citing the paper:

@article{shmelev2025pysiglib,
  title={pySigLib-Fast Signature-Based Computations on CPU and GPU},
  author={Shmelev, Daniil and Salvi, Cristopher},
  journal={arXiv preprint arXiv:2509.10613},
  year={2025}
}

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