Skip to content

xLLM-AI/xllm-workflow

Repository files navigation

xLLM AI Coding Workflow

Languages: English | 简体中文

Agent-ready workflows, prompts, schemas, and reference knowledge for NPU large-model serving optimization on Ascend NPUs. First landing target: xLLM; fair baselines: vLLM-Ascend and SGLang NPU.

What this repository handles:

  1. Feature design & development — Design new NPU serving features, write code, and validate through review-gated evidence loops.
  2. Issue diagnosis & fix — Locate accuracy regressions, crashes, OOM, graph failures, or HCCL issues; produce reproducible evidence and validated patches.
  3. Performance optimization — Establish fair baselines, collect profiling evidence, identify bottlenecks, and iterate toward TPOT/TTFT/TPS targets with measurable gains.

1 Quick Start

A. Initialize xLLM And Skills

Mode 1 starts the code agent from this repository root. The script clones or reuses code/xllm, links this project's skills/* into .agents/skills, and links xLLM repository skills into the same generated directory.

python scripts/init_xllm_workspace.py

Mode 2 starts the code agent from code/xllm. The same script installs this project's skills/* into the selected agent skills directory, while xLLM keeps using its own repository-local skills.

python scripts/init_xllm_workspace.py --mode xllm --agent codex

The initialization script creates local config.json from config.example.json when needed. It then reads xLLM repository settings from config.json; if they are missing, it asks for the Git URL and branch or commit, writes them back to local config.json, and clones code/xllm when the directory is missing or empty.

B. Start The Code Agent

For Mode 1, start the code agent from this repository root so it can load AGENTS.md and the generated .agents/skills directory.

codex

For Mode 2, start the code agent from the xLLM repository.

cd code/xllm
codex

C. Pick A Prompt

Copy a template from prompts/ and fill in model, hardware, framework, workload, and target metrics.

Prompt Scenario
sota-loop End-to-end optimization, TPOT/decode gaps, MTP validation
eval-profiler Build gates, service startup, evalscope, profiling, capacity/OOM
pr-fix PR regressions, review replies, rebase, build gates
operator-work Operator work, Triton-Ascend AOT migration, xllm_ops runtime integration

D. Execute Workflow

Formal work follows target → baseline → profiling → patch → accuracy → performance → record. See AGENTS.md for skill routing and docs/npu-ai-coding-standard-workflow.md for phase details.

2 Directory Overview

AGENTS.md           → Agent system prompt (constraints, skill routing, directory guide)
CLAUDE.md           → Claude Code redirect to AGENTS.md
config.example.json → Shared default configuration template
config.json         → Local configuration SSOT, generated and gitignored
prompts/            → Copy-ready task prompt templates (Chinese)
skills/             → Procedural agent skills (eval, profiler, benchmark, operator integration, …)
reference/
   knowledge/    → Immutable domain rules and hardware references
   code-style/   → C++/Python/NPU code style conventions
   io_specs/     → Artifact schemas (run manifest, perf, accuracy, profiling)
   pr_history/   → Model dossiers and PR history (queryable via scripts/query.py)
baseline/           → Performance acceptance criteria
scripts/            → Cross-skill shared deterministic scripts
humanize/           → Experience flywheel (validated troubleshooting lessons)
docs/               → NPU AI coding workflow documentation
tests/              → Repository hygiene and schema validators
code/               → External source mount (gitignored)
runs/               → Execution workspace (gitignored)

config.example.json is the shared default template. config.json is the local single source of truth for one developer's workspace and is intentionally gitignored. Its top-level order is code (origin/upstream/branch/commit), xllm_config keys for selected xLLM CLI parameters, xllm_config_comments metadata, and tests with smoke, quick, and full validation levels. Skills and scripts read local config.json instead of hardcoding values.

reference/ is the static knowledge base — immutable domain rules that never change based on a single run. Skills query it for hardware limits, code style, artifact schemas, and historical optimization context.

humanize/ is the experience flywheel — Agents write validated troubleshooting lessons here, making the workspace smarter over time. Concrete ledgers live under run roots; only durable lessons are promoted back.

scripts/ is the deterministic engine — cross-skill shared automation scripts that LLMs must not modify. Changes to these scripts require human review.

skills/ contains procedural agent skills, each with a SKILL.md defining the execution workflow, evidence contracts, and local references. Mode 1 links them into generated .agents/skills; Mode 2 links them into the selected agent skills directory.

3 Typical Workflow

xLLM AI Coding Workflow

An evidence-driven loop: each optimization starts from a measurable target, collects comparable data, makes one reviewable change, and leaves artifacts for reproduction.

4 Contribution Guidelines

  1. Deterministic capabilities go into scripts — Any automatable deterministic logic (compile, evaluate, profiling collection) should be locked into scripts/; LLM must not modify script logic.
  2. Reusable workflows become Skills — Repeated standard workflows (benchmark comparison, PR review) should be encapsulated as skills/ Skills, not scattered notes.
  3. Pitfall lessons & best practices go into humanize — Validated troubleshooting lessons, tuning insights, and recurring pitfalls belong in humanize/, making the workspace smarter over time.
  4. Avoid duplication — Configuration, specs, and prompts must not appear in multiple places; keep one source and reference it (SSOT).
  5. Do not commit local paths, private IPs, credentials, or non-public logs.

5 License

No license file yet. Add one before broad external reuse.

About

This is the ai coding workflow repository for xLLM.

Resources

Stars

11 stars

Watchers

1 watching

Forks

Releases

No releases published

Packages

 
 
 

Contributors