extract-kernel-definitions
openbooklet.com/s/extract-kernel-definitionsopenbooklet.com/s/extract-kernel-definitions@1.0.0GET /api/v1/skills/extract-kernel-definitionsExtract kernel schemas and definitions from SGLang model implementations with deduplication. Use when adding a new model, extracting GPU kernels (MLA, MoE, GQA, RMSNorm, GEMM), or generating Definition JSON files for flashinfer_trace.
Add pytest tests to validate reference implementations in flashinfer_trace against FlashInfer or SGLang ground truth. Use when validating kernel definitions, adding tests for new op_types, or verifying reference implementations are correct.
Clone SGLang, FlashInfer, sgl-cookbook repositories from GitHub to tmp/. Use when setting up the project, preparing for kernel extraction, or when the user needs the source repositories.
Track popular/new open-source LLMs and update docs/model_coverage.mdx with their kernel support status. Use when discovering new models to add to the coverage tracker, checking if a specific model is covered, or refreshing model coverage documentation.
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