| name | vllm-bench |
| description | Use vllm-bench to benchmark OpenAI-compatible or vLLM serving endpoints, especially multi-turn chat load tests. Use when the user asks for vllm bench, vllm-bench, multi-turn benchmark, chat serving benchmark, TTFT/TPOT/throughput measurement, concurrency sweep, load test, 压测, 多轮压测, or wants help installing, running --help, choosing flags, validating a local OpenInfer/vLLM server, saving JSON results, or interpreting vllm-bench metrics. |
vllm-bench
vllm-bench is a Rust benchmark client for online LLM serving. It does not run
the model. It drives an already running OpenAI-compatible or vLLM endpoint and
reports TTFT, TPOT, ITL, E2EL, throughput, and multi-turn per-turn breakdowns.
Use this workflow for multi-turn work:
- Install or locate
vllm-bench.
- Run
vllm-bench --help and use it as the authority for current flags.
- Confirm the server base URL and model id from
/v1/models.
- Dry-run the dataset locally.
- Run a tiny smoke benchmark.
- Scale conversations, turns, and concurrency only after the smoke passes.
- Save JSON for any result that may be compared later.
Install
Install from the upstream repository:
cargo install --git https://github.com/vllm-project/vllm-bench vllm-bench
The trailing vllm-bench package name matters: the repo also contains another
binary, so omitting it can fail with "multiple packages with binaries found".
Cargo installs the binary to ~/.cargo/bin/vllm-bench.
Alternatives from the README:
curl -fsSL https://github.com/vllm-project/vllm-bench/releases/latest/download/vllm-bench-$(uname -m)-linux-musl \
-o vllm-bench && chmod +x vllm-bench
git clone https://github.com/vllm-project/vllm-bench.git
cd vllm-bench
./install.sh
After install, run:
vllm-bench --version
vllm-bench --help
Choose Backend
For multi-turn chat, always use:
--backend openai-chat
Common backends:
| Backend | Endpoint | Use |
|---|
vllm / openai | /v1/completions | text completions |
openai-chat | /v1/chat/completions | chat, multi-turn, multimodal |
openai-embeddings | /v1/embeddings | text embeddings |
vllm-rerank | /v1/rerank | rerank |
Prefer http://127.0.0.1:<port> over localhost; some servers bind IPv4 while
localhost resolves to IPv6.
Confirm the model id before benchmarking:
curl -s http://127.0.0.1:8000/v1/models
Use the returned id as --model, or omit --model and let vllm-bench
auto-fetch it.
Multi-Turn Flags
Core flags:
--multi-turn
--multi-turn-num-turns <N>
--num-prompts <CONVERSATIONS>
--multi-turn-concurrency <CONCURRENT_CONVERSATIONS>
In multi-turn mode, --num-prompts means conversation count, not request count.
A run with --num-prompts 50 --multi-turn-num-turns 5 can send up to 250 chat
requests.
Synthetic random conversations:
--dataset-name random
--random-input-len <TOKENS_FOR_TURN_1>
--per-turn-input-len <TOKENS_FOR_TURNS_2_PLUS>
--random-output-len <OUTPUT_TOKENS_PER_TURN>
If --per-turn-input-len is omitted or 0, later turns reuse
--random-input-len. Use --multi-turn-min-turns and --multi-turn-max-turns
when conversation lengths should vary.
Think time and prefix sharing:
--multi-turn-delay-ms 500
--multi-turn-prefix-global-ratio 0.2
--multi-turn-prefix-conversation-ratio 0.5
Prefix sharing works only with --dataset-name random; the two ratios must sum
to less than 1.0.
When either prefix-sharing flag is non-zero, vllm-bench switches to fixed-
length per-turn prompts with no accumulated chat history. Use this only for
prefix-cache experiments; leave both ratios at 0 for realistic multi-turn
conversation growth.
Dry Run
Dry-run before sending traffic. It loads the tokenizer and builds conversations
without hitting the server:
vllm-bench \
--backend openai-chat \
--model Qwen/Qwen3-4B \
--tokenizer <model-path> \
--dataset-name random \
--multi-turn --multi-turn-num-turns 2 \
--random-input-len 16 --random-output-len 4 \
--num-prompts 2 \
--dry-run
<model-path> is a local tokenizer/model directory; for a public example,
replace it with the served model id or any local model directory.
Example: Generic vLLM Multi-Turn
Use this after a vLLM OpenAI server is already running on port 8000:
vllm-bench \
--backend openai-chat \
--base-url http://127.0.0.1:8000 \
--model <model-id-from-/v1/models> \
--dataset-name random \
--multi-turn \
--multi-turn-num-turns 5 \
--random-input-len 512 \
--per-turn-input-len 256 \
--random-output-len 128 \
--num-prompts 50 \
--multi-turn-concurrency 10 \
--ready-check-timeout-sec 60 \
--percentile-metrics ttft,tpot,itl,e2el \
--metric-percentiles 50,90,99 \
--save-result
Read the output as:
Conversations completed/total: end-to-end conversation success.
Successful requests: successful turns.
Total input tokens: includes growing chat history in normal multi-turn mode.
per_turn_metrics in JSON: TTFT/TPOT/ITL/E2EL by turn index.
Expect later turns to have larger input token counts because each request sends
the prior user/assistant history plus the next user message.
Example: Local OpenInfer Qwen3-4B Smoke
This was validated locally with OpenInfer Qwen3-4B and vllm-bench built from
this repo. Start OpenInfer:
cd <openinfer-repo>
cargo run --release -p openinfer-server -- \
--model-path <model-path> \
--served-model-name Qwen/Qwen3-4B \
--port 18080 \
--cuda-graph=false
Confirm the model:
curl -s http://127.0.0.1:18080/v1/models
Run a tiny multi-turn benchmark:
cd <vllm-bench-repo>
target/release/vllm-bench \
--backend openai-chat \
--base-url http://127.0.0.1:18080 \
--model Qwen/Qwen3-4B \
--tokenizer <model-path> \
--dataset-name random \
--multi-turn \
--multi-turn-min-turns 2 \
--multi-turn-max-turns 3 \
--random-input-len 32 \
--per-turn-input-len 12 \
--random-output-len 8 \
--num-prompts 3 \
--multi-turn-concurrency 2 \
--ready-check-timeout-sec 30 \
--extra-body '{"min_tokens":null}' \
--percentile-metrics ttft,tpot,itl,e2el \
--metric-percentiles 50,90 \
--save-result \
--result-dir /tmp \
--result-filename vllm-bench-multi-turn-smoke.json
The --extra-body '{"min_tokens":null}' is for OpenInfer compatibility. The
random multi-turn path auto-adds min_tokens unless overridden; this pins
output length on vLLM but OpenInfer currently rejects that field. --ignore-eos
also skips min_tokens and worked in local smoke testing, but it asks the
server to ignore EOS and can grow contexts more aggressively.
The local smoke run completed 3/3 conversations, 8/8 turns, and wrote
/tmp/vllm-bench-multi-turn-smoke.json with per_turn_metrics.
Scale Safely
After the smoke passes:
- Increase
--num-prompts first to improve measurement stability.
- Increase
--multi-turn-concurrency to find the service knee.
- Increase
--random-input-len, --per-turn-input-len, and
--random-output-len to match the target workload.
- Save every serious run with
--save-result --metadata KEY=VALUE.
For deterministic latency A/B runs, pass --temperature 0 explicitly. Omit it
only when the benchmark is intentionally measuring server default generation
behavior.
Use a sweep when searching for the concurrency knee:
vllm-bench \
--backend openai-chat \
--base-url http://127.0.0.1:8000 \
--model <model-id> \
--dataset-name random \
--multi-turn --multi-turn-num-turns 5 \
--random-input-len 512 --per-turn-input-len 256 --random-output-len 128 \
--num-prompts 200 \
--sweep-max-concurrency 1,2,4,8,16,32 \
--sweep-summary-percentiles 90,99 \
--save-result
For A/B comparisons, keep the workload flags identical and compare result JSON:
vllm-bench --compare baseline.json candidate.json
Troubleshooting
min_tokens is not supported by this engine: pass
--extra-body '{"min_tokens":null}' or, if appropriate, --ignore-eos.
- All-zero metrics with failed requests: inspect the first HTTP error printed
above the result block; it usually names the unsupported request field.
- Connection fails on
localhost: switch to 127.0.0.1.
- Model id mismatch: use
curl /v1/models and set --model to that exact id.
- Tokenizer load fails: set
--tokenizer to a local model directory with
tokenizer.json, or rely on server-side tokenize/detokenize fallback if the
server implements it.
- Dataset construction is suspicious: run the same command with
--dry-run.
- Long serious runs need reproducibility: set
--seed, --result-filename,
and --metadata entries for server commit, model, GPU, and key flags.
Metrics
Use database-style thinking: requests are transactions, prompt tokens are read
set size, output tokens are write volume, and concurrency is the number of
in-flight conversations.
- TTFT: queueing plus prefill latency until the first output token.
- TPOT: decode time per output token after the first token.
- ITL: per-token latency distribution.
- E2EL: total turn latency.
- Request throughput: turns per second.
- Output throughput: generated tokens per second.
- Multi-turn JSON: inspect
per_turn_metrics to see how latency changes as
history grows.