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Streaming Structured Inference with Flash-SemiCRF

Machine Learning 2026-04-22 v1

Abstract

Semi-Markov Conditional Random Fields (semi-CRFs) assign labels to segments of a sequence rather than to individual positions, enabling exact inference over segment-level features and principled uncertainty estimates at their boundaries. However, existing implementations must materialize a large edge potential tensor whose size grows with sequence length, maximum segment length, and label count, becoming prohibitive for speech-scale state spaces and intractable at genomic scales where sequences can exceed 100,000 positions. This memory bottleneck has limited the adoption of exact segment-level inference for long sequences and large label sets. We identify that the core inefficiency is materializing edge potentials that can instead be evaluated on-the-fly from a compact prefix-sum array, and make several improvements. First, replacing the stored edge tensor with prefix-sum lookup reduces the memory footprint by a factor proportional to the product of segment length and label count. Second, a streaming forward-backward pass with checkpoint-boundary normalization keeps working memory sublinear in sequence length while preserving exact gradients. Third, zero-centered cumulative scores control numerical drift and induce an adaptive duration prior under label imbalance. We integrate these ideas into Flash-SemiCRF, a fused Triton kernel that enables exact semi-CRF inference on previously intractable problem sizes. Available at https://github.com/biobenkj/flash-semicrf.

Keywords

Cite

@article{arxiv.2604.18780,
  title  = {Streaming Structured Inference with Flash-SemiCRF},
  author = {Benjamin K. Johnson and Thomas Goralski and Ayush Semwal and Hui Shen and H. Josh Jang},
  journal= {arXiv preprint arXiv:2604.18780},
  year   = {2026}
}
R2 v1 2026-07-01T12:27:04.653Z