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LLM inference benchmarking toolkit

Project description

Tokenomics

Benchmarking suite for OpenAI-compatible inference servers. Measures throughput, latency, and steady-state performance.

Example benchmark

Install

pip install tokenomics

From source

git clone https://github.com/tugot17/tokenomics.git
cd tokenomics
uv venv --python 3.12 --seed && source .venv/bin/activate
uv pip install -e .

Completion Benchmark

Sends chat completion requests to any OpenAI-compatible server and records per-request and system-wide metrics.

By default, requests are non-streaming for maximum throughput. Use --stream to enable SSE streaming for TTFT and per-token latency metrics.

Usage

# Sustained mode — maintains constant concurrency (recommended)
tokenomics completion \
  --scenario "D(1024,256)" \
  --model your-model \
  --max-concurrency 1,2,4,8,16,32,64,128,256,512,1024

# Burst mode — fires all requests at once
tokenomics completion \
  --scenario "D(1024,256)" \
  --model your-model \
  --batch-sizes 1,2,4,8

# Multiple completions per request (e.g. for RL rollouts)
tokenomics completion \
  --scenario "D(1024,256)" \
  --model your-model \
  --max-concurrency 1,2,4,8,16 \
  -n 16

# Streaming mode — enables TTFT and per-token metrics
tokenomics completion \
  --scenario "D(1024,256)" \
  --model your-model \
  --max-concurrency 1,2,4,8 \
  --stream

The two execution modes (--batch-sizes and --max-concurrency) are mutually exclusive. Burst is good for peak throughput; sustained gives realistic production numbers.

Traffic Scenarios

Pattern Example Description
D(in,out) D(100,50) Fixed token counts
N(mu,sigma)/(mu,sigma) N(100,50)/(50,0) Normal distribution
U(min,max)/(min,max) U(50,150)/(20,80) Uniform distribution

Datasets

The benchmark uses a bundled AIME dataset by default. You can specify a custom dataset with --dataset-config.

The benchmark concatenates random text snippets from the dataset until it reaches the input token count specified by the scenario. Snippets are picked with replacement, so even a small dataset can produce long prompts.

Dataset config format

A dataset config is a JSON file with a source section:

Local file (TXT, CSV, or JSON):

{
  "source": { "type": "file", "path": "../data/prompts.txt" },
  "prompt_column": "text"
}

File paths are resolved relative to the config file.

HuggingFace dataset:

{
  "source": {
    "type": "huggingface",
    "path": "squad",
    "huggingface_kwargs": { "split": "train" }
  },
  "prompt_column": "question"
}

AIME (built-in shortcut):

{
  "source": { "type": "aime" }
}

See examples/dataset_configs/ for more examples.

Key Options

Flag Description
--scenario Traffic pattern (required)
--model Model name (required)
--api-base Server URL (default: http://localhost:8000/v1)
--batch-sizes Burst mode sweep points
--max-concurrency Sustained mode sweep points
--num-prompts Prompts per sweep point in sustained mode
--num-runs Runs per sweep point (default: 3)
--max-tokens Max output tokens (default: 4096)
-n Completions per request (default: 1)
--stream Enable SSE streaming for TTFT/per-token metrics
--dataset-config Path to dataset config (default: bundled AIME)
--results-dir Output directory (one JSON per sweep value)
--lora-strategy LoRA distribution: single, uniform, zipf, mixed, all-unique
--lora-names Comma-separated LoRA adapter names

Metrics

Per-request:

  • TTFT — time to first token (streaming only)
  • Decode throughput — output tokens/s per request (streaming only)
  • TPOT — time per output token (streaming only)
  • Per-request latency — end-to-end time per request

System-wide:

  • End-to-end output throughputtotal_output_tokens / wall_time
  • Steady-state output throughput — median tok/s across time buckets where the batch is >= 80% full (streaming only)

Plotting

# Compare multiple benchmarks
tokenomics plot-completion output.png results_dir1/ results_dir2/

Non-streaming (default) produces a 2-panel plot:

Non-streaming example

Top Output throughput
Bottom Per-request latency

Streaming (--stream) produces a 6-panel dashboard:

Left Right
Row 1 TTFT Decode throughput per request
Row 2 End-to-end output throughput Latency breakdown (prefill vs decode)
Row 3 Steady-state output throughput Time-series token buckets

Embedding Benchmark

Tests concurrent embedding throughput.

tokenomics embedding \
  --model Qwen/Qwen3-Embedding-4B \
  --sequence_lengths "200" \
  --batch_sizes "1,8,16,32,64,128,256,512" \
  --num_runs 3 \
  --results-dir embedding_results/

tokenomics plot-embedding embedding_results/ embedding_plot.png

Embedding performance

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