cutedsl-kernel-integration

작성자: nvidia

Use when integrating a CuTeDSL/CUTE DSL kernel into cuDNN Frontend as a frontend-only Python API, including APIBase wrappers, lazy cudnn exports, optional…

npx skills add https://github.com/nvidia/cudnn-frontend --skill cutedsl-kernel-integration

CuTeDSL Kernel Integration

Use this skill to add or update a CuTeDSL frontend-only API in cuDNN Frontend. The goal is a complete integration: Python API, wrapper, exports, docs, and tests.

Before Editing

  1. Inspect the current repo state and avoid overwriting unrelated changes.
  2. Confirm every original source file needed for the integration is available. If a source file is missing, report that gap instead of inferring its contract from a related kernel.
  3. Record source provenance when it is available: upstream URL, local source path, commit, and which files map to public API modules versus private helpers.
  4. Classify the kernel before choosing a template:
    • Kernel family: dense GEMM, GEMM fusion, grouped GEMM, discrete grouped GEMM, MoE, attention, sparse attention, or another frontend-only API family.
    • Execution topology: single kernel, paired forward/backward APIs, multi-kernel orchestrator, helper-kernel setup, distributed/runtime-coordinated execution, or internal scheduler.
    • Public surface: class API, high-level wrapper, returned tensors, optional outputs, workspace ownership, and import/export namespace.
    • Internal support: source helper modules, schedulers, metadata utilities, and generated descriptors that must stay private to the package.
  5. Read references/integration-pattern.md for the detailed repo conventions before implementing.

Integration Workflow

  1. Add or update the operation package under the closest existing family, such as python/cudnn/<operation>/, python/cudnn/grouped_gemm/<operation>/, python/cudnn/discrete_grouped_gemm/<operation>/, or python/cudnn/sdpa/<direction>/.
  2. Implement the class API by extending APIBase; keep constructor descriptors, check_support(), compile(), and execute() consistent with the closest template.
  3. Add a high-level wrapper that allocates outputs, caches/reuses compiled kernels where the template does, and returns a TupleDict.
  4. Export the public class and wrapper through the operation/family __init__.py files and _LAZY_OPTIONAL_IMPORTS in python/cudnn/__init__.py.
  5. Reuse the existing cutedsl optional dependency unless the new kernel truly needs an additional package.
  6. Add FE OSS documentation and update the relevant overview or operation index links.
  7. Add tests under test/python/fe_api/, including support validation and numerical/reference coverage when executable.
  8. For grouped/discrete/MoE/SDPA kernels, preserve the source helper and scheduler topology; shared helper modules should be internal package files, not public cudnn exports.

Verification

  • Run focused formatting or tests for the files changed.
  • At minimum for skill-only edits, verify this SKILL.md has valid frontmatter and all referenced paths exist.
  • For kernel integrations, run the relevant pytest test/python/fe_api/test_<operation>.py target when the environment has the required GPU and optional dependencies; otherwise report the skipped verification explicitly.

nvidia의 다른 스킬

compileiq-debug
nvidia
Use when something is wrong: Search() hangs, all evaluations return INVALID_SCORE, scores aren't improving, every config returns the same number, ptxas errors…
official
create-github-pr
nvidia
gh CLI를 사용하여 GitHub 풀 리퀘스트를 생성합니다. 사용자가 새 PR을 만들거나, 코드 리뷰를 제출하거나, 풀 리퀘스트를 열고자 할 때 사용합니다. 트리거 키워드 -…
official
diagnose-perf
nvidia
First-responder performance triage for Isaac Sim and Isaac Lab. Identifies bottleneck category (GPU-bound, CPU-bound, VRAM, loading) using nvidia-smi and…
official
eagle3-review-logs
nvidia
Review EAGLE3 pipeline experiment logs from the launcher's experiments/ directory. Summarizes pass/fail status for all 4 tasks, diagnoses failures with root…
official
nemoclaw-maintainer-cross-issue-sweep
nvidia
다른 열린 이슈들을 스캔하여 주어진 PR이 함께 수정하거나 실수로 망가뜨릴 수 있는 이슈를 찾습니다. 인접 수정 기회와 모순 위험을 file:line…과 함께 출력합니다.
official
karpathy-guidelines
nvidia
일반적인 LLM 코딩 실수를 줄이기 위한 행동 지침입니다. 코드 작성, 검토 또는 리팩토링 시 과도한 복잡성을 피하고 정밀한 변경을 위해 사용하세요.
official
fhir-basics
nvidia
에이전트에게 FHIR R4 API의 작동 방식, 사용 가능한 리소스, 검색 매개변수를 사용한 쿼리 방법, 모든 응답 형식을 올바르게 파싱하는 방법을 가르칩니다…
official
underdeclared-agent
nvidia
A helpful assistant agent
official