pySigLib -- Fast Signature-Based Computations on CPU and GPU
Shmelev, Daniil, Salvi, Cristopher
Signature-based methods have recently gained significant traction in machine learning for sequential data. In particular, signature kernels have emerged as powerful discriminators and training losses for generative models on time-series, notably in quantitative finance. However, existing implementations do not scale to the dataset sizes and sequence lengths encountered in practice. We present pySigLib, a high-performance Python library offering optimised implementations of signatures and signature kernels on CPU and GPU, fully compatible with PyTorch's automatic differentiation. Beyond an efficient software stack for large-scale signature-based computation, we introduce a novel differentiation scheme for signature kernels that delivers accurate gradients at a fraction of the runtime of existing libraries.
Sep-16-2025
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- Europe > United Kingdom > England > Oxfordshire > Oxford (0.04)
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- Research Report (0.82)
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- Information Technology > Security & Privacy (0.46)
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