tilegym-converting-cutile-to-julia

द्वारा nvidia

Converts cuTile Python GPU kernels (@ct.kernel) to cuTile.jl Julia equivalents. Handles kernel syntax translation, 0-indexed to 1-indexed conversion,…

npx skills add https://github.com/nvidia/skills --skill tilegym-converting-cutile-to-julia

cuTile Python → cuTile.jl (Julia) Conversion

Convert @ct.kernel Python kernels to Julia function ... end cuTile.jl kernels.

Workflow Selection

Architecture

Julia kernels are standalone — no Python bridge, no pytest integration. The Julia sub-project lives in julia/ at the repo root with its own Project.toml for dependency management.

julia/                          # Self-contained Julia sub-project
├── Project.toml                # Dependencies: CUDA.jl, cuTile.jl, NNlib.jl, Test
├── kernels/                    # cuTile.jl kernel implementations
│   ├── add.jl                  # ← Ground-truth: 1D element-wise with alpha scaling (tensor+tensor, tensor+scalar)
│   ├── matmul.jl               # ← Ground-truth: 2D tiled MMA, standard Julia layout (M,K)×(K,N)→(M,N)
│   └── softmax.jl              # ← Ground-truth: 3 strategies (TMA, online, chunked) using ct.load/ct.store
└── test/                       # Julia-native tests (using Test stdlib)
    ├── runtests.jl             # Test runner entry point
    ├── test_add.jl
    ├── test_matmul.jl
    └── test_softmax.jl

Ground-truth reference: Always consult julia/kernels/*.jl and julia/test/*.jl for patterns that compile and pass tests. These are the canonical examples of working cuTile.jl code.

Instructions

  1. Analyze the Python kernel: identify patterns, shapes, dtypes, operations
  2. Write Julia kerneljulia/kernels/<op>.jl with cuTile.jl kernel + bridge function(s)
  3. Convert kernel signature (see translations/workflow.md Phase 2)
  4. Convert kernel body (apply references/api-mapping.md + references/critical-rules.md)
  5. Write Julia testjulia/test/test_<op>.jl using Test stdlib + NNlib.jl for reference
  6. Register test — add include(...) in julia/test/runtests.jl
  7. Validate — run the bundled validator: python <skill-dir>/scripts/validate_cutile_jl.py <file.jl>
  8. Test — run julia --project=julia/ julia/test/runtests.jl

Full conversion checklist with post-conversion verification → translations/workflow.md

⚠️ Top Pitfalls

The most dangerous translation errors. Full rules (17 total) in references/critical-rules.md.

#PitfallOne-line fix
1ct.full() doesn't exist in JuliaUse fill(val, shape), zeros(T, dims...), or ones(T, dims...)
2max(a, b) on tiles → IRErrorUse max.(a, b) (broadcast dot)
3IRError / MethodError mentioning IRStructurizerCompiler bug — file upstream with minimal reproducer
4ct.launch arg order silently wrongArgs are positional — match kernel signature exactly
5ct.load with order — index positions wrongorder remaps BOTH shape AND index (Critical Rule 16)

Worked Examples

Side-by-side Python → Julia conversions matching the released Julia kernels in julia/kernels/. Each directory contains cutile_python.py (before) and cutile_julia.jl (after).

#ExampleKey PatternsWhen to Reference
01add1D ct.load/ct.store, alpha scaling, scalar broadcast, fill/zeros, keyword load/storeStarting point; basic TMA + element-wise patterns
02matmulmuladd, TF32 conversion, K-loop with for, 2D swizzle, standard Julia layout, ct.@compiler_optionsMMA / tensor core operations
03softmaxPersistent scheduling, for loops, gather/scatter, padding_mode, multi-passLarge-tensor reduction patterns

These match the released kernels in julia/kernels/ (add.jl, matmul.jl, softmax.jl). The examples are simplified teaching versions — always consult julia/kernels/*.jl for the canonical, tested implementations.

Reference Documents

CategoryDocumentContent
Workflowstranslations/workflow.mdFull conversion workflow with todo list, validation loop, checklist
Rulesreferences/critical-rules.md17 Critical Rules for cuTile Python → Julia conversion
APIreferences/api-mapping.mdPython↔Julia bidirectional API mapping + kernel patterns
Testingreferences/testing.mdJulia-native test patterns, tolerances, failure diagnosis
Debuggingreferences/debugging.mdJulia-specific error diagnosis + IR debug commands
Scriptsscripts/validate_cutile_jl.pyStatic validation for Julia anti-patterns (run it)
Ground Truthjulia/kernels/*.jl + julia/test/*.jlActual working implementations in the codebase

Environment Setup

Prerequisite — Julia: this skill requires the Julia version declared in julia/Project.toml under [compat] julia. If julia --version is missing or older than that, install from the official Julia site at https://julialang.org/install/ following the verified installer instructions for your OS. Resume below once julia --version is compatible.

Then, from the repo root:

# Install Julia dependencies declared in julia/Project.toml
julia --project=julia/ -e 'using Pkg; Pkg.instantiate()'

# Run tests
julia --project=julia/ julia/test/runtests.jl

Requirements:

  • Julia (minimum version declared in julia/Project.toml under [compat] julia)
  • CUDA 13.1+ driver
  • Blackwell GPU (compute capability 10+)
  • Dependencies managed via julia/Project.toml: CUDA.jl, cuTile.jl, NNlib.jl, Test

nvidia की और Skills

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
Create GitHub pull requests using the gh CLI. Use when the user wants to create a new PR, submit code for review, or open a pull request. Trigger keywords -…
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
Scans other open issues to find ones a given PR may also fix or accidentally break. Outputs adjacent-fix opportunities and contradiction risks with file:line…
official
karpathy-guidelines
nvidia
सामान्य LLM कोडिंग गलतियों को कम करने के लिए व्यवहार संबंधी दिशानिर्देश। कोड लिखते, समीक्षा करते या रिफैक्टर करते समय उपयोग करें ताकि अत्यधिक जटिलता से बचा जा सके, सर्जिकल बदलाव किए जा सकें,…
official
fhir-basics
nvidia
Teaches agents how FHIR R4 APIs work, what resources are available, how to query them with search parameters, and how to correctly parse all response formats…
official
underdeclared-agent
nvidia
A helpful assistant agent
official