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vllm-benchmarking

Run production vLLM benchmarks — `vllm bench` (serve, throughput, latency, sweep, startup, mm-processor), request-rate vs max-concurrency semantics, TTFT/TPOT/ITL/E2EL percentiles, goodput SLO measurement, prefix-cache workloads, air-gapped operation (HF_ENDPOINT, ModelScope, hf-mirror, offline cache). Methodology split — SLO health checks vs A/B change sweeps — plus pitfalls that produce misleading numbers (no warmup, wrong tokenizer, random-as-prod, `--request-rate inf` alone).

air-gapped/skills·.claude/skills/vllm-benchmarking/SKILL.md
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coding agent を選び、プロジェクト用または個人用コマンドをコピーします。

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プロジェクトに導入.agents/skills/vllm-benchmarking
npx skills add https://github.com/air-gapped/skills/tree/fe056f58396d4556dc52f335a9d8d49ef9bd2730/.claude/skills/vllm-benchmarking -a codex -y
個人環境に導入~/.agents/skills/vllm-benchmarking
npx skills add https://github.com/air-gapped/skills/tree/fe056f58396d4556dc52f335a9d8d49ef9bd2730/.claude/skills/vllm-benchmarking -a codex -g -y
手動配置先.agents/skills/vllm-benchmarkingOfficial docs ↗
プロジェクトに導入.claude/skills/vllm-benchmarking
npx skills add https://github.com/air-gapped/skills/tree/fe056f58396d4556dc52f335a9d8d49ef9bd2730/.claude/skills/vllm-benchmarking -a claude-code -y
個人環境に導入~/.claude/skills/vllm-benchmarking
npx skills add https://github.com/air-gapped/skills/tree/fe056f58396d4556dc52f335a9d8d49ef9bd2730/.claude/skills/vllm-benchmarking -a claude-code -g -y
手動配置先.claude/skills/vllm-benchmarkingOfficial docs ↗
プロジェクトに導入.agents/skills/vllm-benchmarking
npx skills add https://github.com/air-gapped/skills/tree/fe056f58396d4556dc52f335a9d8d49ef9bd2730/.claude/skills/vllm-benchmarking -a github-copilot -y
個人環境に導入~/.copilot/skills/vllm-benchmarking
npx skills add https://github.com/air-gapped/skills/tree/fe056f58396d4556dc52f335a9d8d49ef9bd2730/.claude/skills/vllm-benchmarking -a github-copilot -g -y
手動配置先.agents/skills/vllm-benchmarkingOfficial docs ↗
プロジェクトに導入.agents/skills/vllm-benchmarking
npx skills add https://github.com/air-gapped/skills/tree/fe056f58396d4556dc52f335a9d8d49ef9bd2730/.claude/skills/vllm-benchmarking -a cursor -y
個人環境に導入~/.cursor/skills/vllm-benchmarking
npx skills add https://github.com/air-gapped/skills/tree/fe056f58396d4556dc52f335a9d8d49ef9bd2730/.claude/skills/vllm-benchmarking -a cursor -g -y
手動配置先.agents/skills/vllm-benchmarkingOfficial docs ↗
プロジェクトに導入.agents/skills/vllm-benchmarking
npx skills add https://github.com/air-gapped/skills/tree/fe056f58396d4556dc52f335a9d8d49ef9bd2730/.claude/skills/vllm-benchmarking -a gemini-cli -y
個人環境に導入~/.gemini/skills/vllm-benchmarking
npx skills add https://github.com/air-gapped/skills/tree/fe056f58396d4556dc52f335a9d8d49ef9bd2730/.claude/skills/vllm-benchmarking -a gemini-cli -g -y
Native Gemini CLIgemini skills install https://github.com/air-gapped/skills.git --scope workspace --path .claude/skills/vllm-benchmarking
手動配置先.agents/skills/vllm-benchmarkingOfficial docs ↗
⚠ インストールには open-source skills CLI を使用します。実行前にソースと権限を確認してください。
# vLLM benchmarking

Target audience: operators producing defensible latency/throughput numbers against production or pre-production vLLM deployments, on datacenter GPUs, often in containerized or air-gapped environments.

## Why this matters

Bad benchmarks are worse than no benchmarks — they drive the wrong decisions with false confidence. The three common failure modes:

1. **Wrong methodology.** `--request-rate inf` answers "saturation throughput," not "TTFT my users see." Mixing those up leads to buying GPUs to solve a latency problem, or shipping a latency regression because total throughput looked fine.
2. **Wrong workload.** `--dataset-name random` has zero prefix structure. Real coding-agent or RAG traffic has heavy prefix reuse. Benchmarking caching wins on random produces numbers that don't survive contact with prod.
3. **No warmup / wrong tokenizer.** First N requests hit cold CUDA graphs. Token counts are fiction unless `--tokenizer` matches the served model exactly.

The cost of getting this right is small; the cost of getting it wrong is buying the wrong hardware.

## Decision tree — which subcommand

| Question | Command | Why |
|---|---|---|
| "Saturation throughput of this offline batch" | `vllm bench throughput` | Submits N prompts at once, measures tok/s. No server. |
| "Single-batch generation latency" | `vllm bench latency` | Fixed batch size, repeated N times. Warmup included. Good for kernel-level regression. |
| "Production serving performance" | `vllm bench serve` | HTTP-level, Poisson arrivals, percentile metrics, honors concurrency caps. Use this for serving. |
| "Find best config under SLO" | `vllm bench sweep` | Parameter sweep + auto-tune. Finds max throughput subject to P99 < X ms. |
| "Cold-start / container boot latency" | `vllm bench startup` | Time from process launch to first-token-ready. |
| "Multimodal processor overhead" | `vllm bench mm-processor` | Image/video preprocessing cost before decode. |

Most production questions route to `vllm bench serve`. Reach for the others only when the question is specifically kernel-level (latency), offline-batch (throughput), or SLO auto-tuning (sweep).

## The two methodologies operators actually need

### Methodology A: health check / SLO validation

**Question:** "Does my running deployment meet the latency SLO under realistic load?"

- Fixed `--max-concurrency` matching the production in-flight ceiling (NOT `--request-rate`).
- Realistic input/output length distribution — ideally replayed from production logs via `--dataset-name custom` with a JSONL file.
- Sustained 10+ minute run to cover warmup + steady state.
- Report: P50/P95/P99 TTFT, P95/P99 ITL, throughput (tok/s, req/s).
- Compare against the SLO. Pass/fail.

```bash
vllm bench serve \
  --model <served-model> \
  --base-url http://<endpoint> \
  --dataset-name custom \
  --dataset-path /data/captured-prod-prompts.jsonl \
  --max-concurrency 32 \
  --num-prompts 2000 \
  --percentile-metrics ttft,tpot,itl,e2el \
  --metric-percentiles 50,95,99 \
  --save-result --output-json health-check.json
```

### Methodology B: change comparison / A/B

**Question:** "Does config change X make it faster, and at what cost?"

- **Request-rate sweep**, not a single rate: e.g. 1, 2, 4, 8, 16, 32, inf req/s.
- Plot throughput vs P99 latency — the **knee of the curve is the usable operating point**. A config that shifts the knee right is a win.
- Same seeds, same `--num-prompts` (≥500), same dataset on both sides.
- Run A and B back-to-back on the same hardware in the same session to avoid thermal/neighbor noise.

See `scripts/bench-sweep.sh` for a parametrized sweep runner that emits one JSON file per rate for plotting.

## Critical pitfalls

1. **No warmup.** First 30–60 s hit cold CUDA graphs / torch.compile caches. `vllm bench serve` does not auto-warm (as of v0.21) — pre-flight the server with a few requests, or set `--num-prompts` large enough (≥500) to amortize. `latency` does warm up via `--num-iters-warmup` (default 10).
2. **Wrong tokenizer.** `--tokenizer` defaults to `--model`, but if they differ (e.g., served via a local path while benching with a HF ID), every token count in the output is fiction. Always specify explicitly.
3. **`--dataset-name random` as a proxy for production traffic.** Random has zero prefix structure, overstates prefill work, understates prefix-cache hit rate, makes chunked prefill look worse than reality. For anything involving caching claims, use `custom` with a real-traffic JSONL, or `prefix_repetition` for synthetic prefix-heavy tests.
4. **`--request-rate inf` alone.** Measures saturation throughput, not the latency regime users experience. Always include a concurrency sweep for serving comparisons.
5. **`--endpoint-type` is removed.** Deprecated in v0.11.0, now gone. Use `--backend`. Current full value set (docs.vllm.ai, verified 2026-04-24): `openai`, `openai-chat`, `openai-audio`, `openai-embeddings`, `openai-embeddings-chat`, `openai-embeddings-clip`, `openai-embeddings-vlm2vec`, `vllm`, `vllm-chat`, `vllm-pooling`, `vllm-rerank`, `infinity-embeddings`, `infinity-embeddings-clip`.
6. **Conflating tok/s with req/s.** High total-tokens/sec can coexist with terrible TTFT. Always report both plus P99 ITL.
7. **Noisy neighbor.** Shared GPU, unrelated container load, MIG partition changes mid-run — check `nvidia-smi dmon` for unrelated activity before trusting numbers.
8. **`latency` subcommand disables prefix caching by default** (to keep numbers clean). If benchmarking prefix-cache behavior, use `serve` with the `prefix_repetition` dataset.

For the full flag reference for each subcommand, see `references/commands.md`. For the dataset catalog and when to use each, see `references/datasets.md`.

## Air-gapped environments

Operators who can't reach `huggingface.co` have three working patterns:

1. **Reroute to a mirror** — set `HF_ENDPOINT=https://hf-mirror.com` (or an internal reverse-proxy URL). `huggingface_hub` treats it transparently.
2. **ModelScope** — set `VLLM_USE_MODELSCOPE=True` plus `trust_remote_code=True`. Historical gap: LoRA adapter loading through ModelScope (vLLM issue #32841, closed 2026-01-23). Re-verify on your vLLM version before relying on LoRA-via-ModelScope; issue closure without a linked PR means status is unclear — test first.
3. **Fully offline with pre-seeded cache** — `HF_HUB_OFFLINE=1` + `TRANSFORMERS_OFFLINE=1`, `HF_HOME` pointing at a pre-populated directory (NFS, PVC, or JuiceFS/S3).

For benchmark datasets specifically: `sonnet` is **in-tree** at `vllm/benchmarks/sonnet.txt` — never downloads. `random` is synthetic — never downloads. `sharegpt` must be pre-staged: `wget` the JSON on a connected host, `rsync` into the enclave, point `--dataset-path` at it.

For the full air-gapped recipe (HF proxy setup, gated model tokens, MinIO-as-HF-cache, transformer cache warming), see `references/air-gapped.md`.

## Measuring the outcomes that matter

Default metrics (`--percentile-metrics ttft,tpot,itl,e2el`):

- **TTFT** — time-to-first-token. User-facing responsiveness. Dominated by prefill.
- **TPOT** — time-per-output-token (averaged across decode). Steady-state perceived speed.
- **ITL** — inter-token latency (per-step). Catches stalls that TPOT averages away.
- **E2EL** — end-to-end request latency. Only one that matters for pooling/embedding models.

Reporting guideline: **always P50 and P99 together**. Either in isolation is misleading. Add P95 if ITL has a long tail.

**Goodput SLO** — `--goodput KEY:VALUE` (milliseconds) tracks requests that completed within an SLO budget. Example: `--goodput ttft:500 itl:50`. Goodput is what actually matters in production; raw throughput that violates SLO is useless.

For methodology detail (warmup protocols, sweep design, SLO-constrained auto-tune, how to capture real-traffic prompts for replay), see `references/methodology.md`.

## When numbers look wrong or a run crashes

See `references/troubleshooting.md` for the failure modes: tokenizer mismatch (numbers off 20–40%), cold-cache contamination (suspiciously fast), air-gapped hang (incomplete `HF_HUB_OFFLINE` setup), goodput=0 (unit error), noisy-neighbor ITL variance, and the full "what to include in a bug report" checklist.

## Parsing the output JSON

See `references/output-schema.md` for the field layout in `--output-json` — top-level fields (`request_throughput`, `output_throughput`, `total_token_throughput`), the `mean_/median_/std_/p<N>_<metric>_ms` pattern, speculative decoding fields, and which names are stable across versions vs renamed.

## External references

- vLLM bench CLI docs: https://docs.vllm.ai/en/latest/benchmarking/cli/
- `vllm bench serve` reference: https://docs.vllm.ai/en/stable/cli/bench/serve/
- Performance dashboard (nightly reference numbers): https://docs.vllm.ai/en/latest/benchmarking/dashboard/
- In-tree benchmarks dir: https://github.com/vllm-project/vllm/tree/main/benchmarks
- Air-gapped discussion thread: https://discuss.vllm.ai/t/setting-up-vllm-in-an-airgapped-environment/916
- vLLM env vars (including `VLLM_USE_MODELSCOPE`): https://docs.vllm.ai/en/stable/configuration/env_vars/
- Blog: Anatomy of a High-Throughput LLM Inference System (2025-09-05): https://blog.vllm.ai/2025/09/05/anatomy-of-vllm.html
- Blog: Large Scale Serving — DeepSeek @ 2.2k tok/s/H200 (2025-12-17): https://blog.vllm.ai/2025/12/17/large-scale-serving.html