k2
FSA/FST algorithms, differentiable, with PyTorch compatibility
FSA/FST algorithms, differentiable, with PyTorch compatibility
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The vision of k2 is to be able to seamlessly integrate Finite State Automaton (FSA) and Finite State Transducer (FST) algorithms into autograd-based machine learning toolkits like PyTorch and TensorFlow. For speech recognition applications, this should make it easy to interpolate and combine various training objectives such as cross-entropy, CTC and MMI and to jointly optimize a speech recognition system with multiple decoding passes including lattice rescoring and confidence estimation. We hope k2 will have many other applications as well.
Summary
FSA/FST algorithms, differentiable, with PyTorch compatibility
Last Updated
May 8, 2023 at 08:35
License
Apache V2
Total Downloads
12.5K
Supported Platforms
Unsupported Platforms
Documentation
https://k2.readthedocs.io/en/latest/