| name | sglang-torch-profiler-analysis |
| description | Compact SGLang torch-profiler triage skill. Use when Codex should inspect an existing `trace.json(.gz)` or profile directory, trigger `sglang.profiler` against a live server, and return one compact report with kernel, overlap-opportunity, and fuse-pattern tables. Single-trace triage is enough for quick diagnosis; mapping+formal two-trace triage gives stronger overlap conclusions. |
SGLang Torch Profiler Analysis
Overview
Use this skill for SGLang torch.profiler analysis.
There is only one public workflow:
Use the unified entrypoint:
triage always prints the same three tables:
- kernel table
- overlap-opportunity table
- fuse-pattern table
By default, all three tables only render rows at or above 1.0% cumulative GPU-time share.
Treat anything below that as noise unless the user explicitly asks for a lower cutoff.
The script-level fuse-pattern table should stay source-backed and deterministic.
Do not build a fuzzy string-matching engine into the script for typo-tolerance.
If exact/source-backed matching is weak but the agent judges that a cluster of kernels
still looks semantically close to a known pattern, add a short AI note after the table
with one of these labels:
high: very likely the same pattern family; naming drift or minor implementation reshaping is the main uncertainty
medium: several signals line up, but one important piece is still ambiguous
low: weak resemblance only; mention it only if it is still worth a human follow-up
When To Use It
- inspect an SGLang torch profiler trace or profile directory
- profile a live SGLang server and immediately analyze the output
- summarize which kernel families dominate prefill or decode
- map kernels back to Python code paths
- judge whether a code path still has overlap headroom
- check whether an already-known fusion or overlap path should have applied
Diffusion Backend Gate
For diffusion benchmark or profiling work, only analyze traces produced by the native
SGLang diffusion backend.
If the run that generated the trace logs any of:
Falling back to diffusers backend
Using diffusers backend
Loaded diffusers pipeline
stop the workflow instead of analyzing the trace. Treat it as a backend-selection issue,
not as valid SGLang diffusion profiler evidence.
Main Flows
1. Single-trace triage from an existing profile dir or trace
python3 scripts/analyze_sglang_torch_profile.py \
--input /path/to/profile_dir_or_trace.json.gz
Use this when you want the fastest read on kernel share and likely fused-kernel pattern matches.
The overlap table stays conservative in single-trace mode and will tell you when a mapping/formal pair is needed.
2. Single-trace triage from a running server
python3 scripts/analyze_sglang_torch_profile.py \
--url http://127.0.0.1:30000 \
--num-steps 5 \
--profile-by-stage
3. Two-trace triage from existing profile dirs or traces
python3 scripts/analyze_sglang_torch_profile.py triage \
--mapping-input /path/to/graph_off_profile_dir \
--formal-input /path/to/graph_on_profile_dir
Use this when you need stronger overlap conclusions and cleaner kernel-to-source attribution.
4. Two-trace triage from running servers
python3 scripts/analyze_sglang_torch_profile.py triage \
--mapping-url http://127.0.0.1:31025 \
--formal-url http://127.0.0.1:31026 \
--num-steps 5 \
--profile-by-stage
profile_by_stage
profile_by_stage is not only for PD disaggregation.
- On ordinary non-PD serving, it is still useful because prefill and decode usually have very different bottlenecks.
- On the current profile-v2 path inside SGLang, stage-based profiling is effectively the normal path.
- PD-disaggregated serving adds one extra rule: prefill workers and decode workers must be profiled separately. That is stricter than ordinary
profile_by_stage.
How To Choose The Triage Shape
Single-trace triage
Use when you want the lowest-friction report:
- one trace is already available
- you mainly want kernel share and fusion clues
- you are comparing two runs side by side by running triage once per trace
This is the recommended default.
Two-trace triage
Use when you need:
- a stronger answer about overlap headroom
- graph-off source mapping plus graph-on final behavior
- more trustworthy overlap recommendations in the middle table
- mapping trace with
--disable-cuda-graph --disable-piecewise-cuda-graph
- formal trace with the real serving optimizations enabled
Do not call the mapping pass a "fast profile". It exists to recover kernel -> cpu_op -> python scope.
Workflow
Single-trace workflow
- If the user only wants a quick diagnosis, one trace is enough.
- Prefer rank-local
TP-0 traces over merged traces.
- For a live server, this skill can call
sglang.profiler and automatically send a small probe request.
- Prefer
--profile-by-stage even on standard serving unless the user explicitly wants an all-stage mixed trace.
Two-trace workflow
- Produce a mapping trace first with graph disabled.
- Produce a formal trace second with graph enabled and the real serving flags kept on.
- Run
triage for the compact three-table report.
- Read the results in this order:
- kernel table
- overlap-opportunity table
- fuse-pattern table
- Before calling something a "new" optimization idea, compare the top rows against both references/fuse-overlap-catalog.md and references/overlap-catalog.md. Always check the
PR-backed / in-flight sections too. Prefer reporting:
- an existing fused or overlap path that should already apply here
- an existing path that appears disabled, unsupported, or regressed in this trace
- an upstream PR-backed pattern that already exists but is not merged into the checked-out tree
- a truly new opportunity only when no catalog entry fits
- If no exact pattern fully matches but the trace still looks semantically close to a known family, add one flat
AI similarity judgment note after the tables.
Use high, medium, or low only.
Base that note on the full pattern shape, not on one kernel name alone.
Prefer semantic cues such as producer-consumer chain, source locations, CPU op names, TP context, and model-specific structure.
Do not rewrite the script table itself to include these heuristic judgments.
References
Load these only when needed:
Output Contract
Return:
- trace path or generated profile path
- model/server args when available
- kernel table
- overlap-opportunity table
- fuse-pattern table
- optional
AI similarity judgment note with high / medium / low when exact matching is inconclusive
- one short conclusion about what dominates the run
- whether the overlap conclusion came from single-trace triage or mapping/formal two-trace triage