/install kernelgen-flagos
kernelgen-flagos — Unified GPU Operator Generation Skill
This is a unified entry point that bundles four sub-skills into one:
| Sub-skill file | Purpose |
|---|---|
kernelgen-general.md |
Generate GPU kernels for any Python/Triton repository |
kernelgen-for-flaggems.md |
Specialized generation for FlagGems repositories |
kernelgen-for-vllm.md |
Specialized generation for vLLM repositories |
kernelgen-submit-feedback.md |
Submit bug reports and feedback via GitHub or email |
All sub-skill files are located in the same directory as this SKILL.md file.
Routing Protocol — Follow This BEFORE Doing Anything Else
Phase 1: Detect Repository Type
Use the Glob tool to check for project identity files in the current working directory:
Glob: pyproject.toml
Glob: setup.py
Glob: setup.cfg
Then use the Read tool to read whichever file exists. Determine the project name from
the file contents (e.g., name = "flag_gems" in pyproject.toml, or name='vllm' in setup.py).
Also use the Glob tool to check for characteristic directory structures:
FlagGems indicators (match ANY):
src/flag_gems/directory exists- Project name is
flag_gemsorflag-gemsorFlagGems import flag_gemsappears in test files
vLLM indicators (match ANY):
vllm/directory exists at the repo root (withvllm/__init__.py)- Project name is
vllm csrc/directory exists alongsidevllm/
Phase 2: Dispatch to Sub-skill
Based on the detection result, use the Read tool to read the appropriate sub-skill file from this skill's directory, then follow the instructions in that file exactly.
To locate the sub-skill files: They are in the same directory as this SKILL.md. Use the Glob tool to find the path:
Glob: **/skills/kernelgen-flagos/kernelgen-general.md
Then use the Read tool to read the matched path.
Decision Table
| Detection Result | Action |
|---|---|
| FlagGems repository detected | Read kernelgen-for-flaggems.md and follow it |
| vLLM repository detected | Read kernelgen-for-vllm.md and follow it |
| Neither detected (or unknown) | Read kernelgen-general.md and follow it |
| User reports a bug or requests feedback submission | Read kernelgen-submit-feedback.md and follow it |
Important rules:
- Always detect first, dispatch second. Never skip detection.
- Read the entire sub-skill file before starting execution — do not partially read it.
- Follow the sub-skill instructions exactly as if they were the main SKILL.md. All steps, rules, and protocols in the sub-skill apply fully.
- Do not mix sub-skills. Once you dispatch to a sub-skill, follow it to completion.
- If the user explicitly requests a specific sub-skill (e.g., "use the FlagGems version"), honor that request regardless of auto-detection results.
- CRITICAL — MCP is mandatory: ALL operator code generation MUST go through the
mcp__kernelgen-mcp__generate_operatorMCP tool. NEVER generate Triton kernels, PyTorch wrappers, or operator implementations yourself. If MCP is not configured, not reachable, or fails after all retries, STOP and report the issue — do NOT fall back to writing code manually.
Phase 3: Feedback Handling
At any point during the workflow, if the user reports a bug, says something is broken, or asks to submit feedback about the skill:
- Use the Read tool to read
kernelgen-submit-feedback.mdfrom this skill's directory. - Follow the feedback submission workflow described in that file.
- After feedback is submitted, ask the user if they want to continue with the operator generation workflow or stop.
Quick Reference for Users
# Generate a kernel operator (auto-detects repo type)
/kernelgen-flagos relu
# Generate with explicit function type
/kernelgen-flagos rms_norm --func-type normalization
# The skill will automatically:
# - Detect if you're in a FlagGems repo → use FlagGems-specific workflow
# - Detect if you're in a vLLM repo → use vLLM-specific workflow
# - Otherwise → use the general-purpose workflow
If you encounter any issues during generation, just say "submit feedback" or "report a bug" and the skill will guide you through the feedback submission process.
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install kernelgen-flagos - After installation, invoke the skill by name or use
/kernelgen-flagos - Provide required inputs per the skill's parameter spec and get structured output
What is KernelGen FlagOS?
Unified GPU kernel operator generation skill. Automatically detects the target repository type (FlagGems, vLLM, or general Python/Triton) and dispatches to t... It is an AI Agent Skill for Claude Code / OpenClaw, with 140 downloads so far.
How do I install KernelGen FlagOS?
Run "/install kernelgen-flagos" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is KernelGen FlagOS free?
Yes, KernelGen FlagOS is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does KernelGen FlagOS support?
KernelGen FlagOS is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created KernelGen FlagOS?
It is built and maintained by Flagos (@wbavon); the current version is v1.0.0.