Skip to main content

A reproducible Gomoku benchmark for search-vs-LLM and LLM-vs-LLM dual play.

Project description

GomokuBench

GomokuBench is a lightweight benchmark for testing frontier LLMs against a search-powered Gomoku engine in a setting that is simple, adversarial, reproducible, and easy to inspect move by move. It also supports dual mode, where two LLMs play Gomoku against each other as Black and White with separate prompts, responses, and reasoning logs.

YouTube Demo

It is built for AI companies, model builders, and researchers who want a fast way to answer a practical question:

Can a general-purpose language model consistently beat a classical search algorithm in a fully specified board game?

Until 2026.4.26, no LLM in this benchmark has beaten the built-in AlphaBeta search engine. If you find one, please share it with us.

GomokuBench is designed to be easy to plug into model APIs, easy to run from the command line, and easy to audit after the game ends. Every move can be replayed, every prompt is explicit, and every result is saved as structured JSON.

Author: Homer Quan
GitHub: homerquan/GomokuBench

Why This Benchmark

  • Simple game, hard reasoning: Gomoku has clear rules and no hidden information, so failures are easier to interpret.
  • Search vs LLM: benchmark a deterministic AlphaBeta engine against modern chat models under the same rules.
  • Fast iteration: add a new model with a small JSON config and start benchmarking right away.
  • Useful outputs: save per-game logs, final boards, and aggregate win/loss results for later analysis.
  • Good for demos and research: use it for model evals, prompting experiments, tool-use studies, and public scoreboards.

Current Leaderboard

As of 2026.4.27, every model listed below is still down 10:0 against the built-in AlphaBeta search engine.

Model Wins Losses Draws Avg Moves (Win) Avg Moves (Loss) Score
👑 GPT-5.5 (OpenRouter) 0 10 0 0 9.2 1.84
Nemotron 3 Super 0 10 0 0 8.0 1.6
GPT-OSS 120B (Free) 0 10 0 0 7.0 1.4
gemma4:latest 0 10 0 0 5.0 1.0
Mistral Small 2603 (OpenRouter) 0 10 0 0 4.8 0.96

Quick Start

Install from PyPI:

pip install gomokubench

If your Python install does not put console scripts on PATH, use the module form:

python -m gomoku play
python -m gomoku benchmark --model nemotron-3-super -r 10

Play against the engine:

gomoku play

Benchmark an LLM:

gomoku benchmark --model nemotron-3-super -r 10

Benchmark with a custom model config file:

gomoku benchmark --model-file ./my-model.json -r 10

Run two LLMs against each other:

gomoku dual --BLACK-LLM-FILE ./black-model.json --WHITE-LLM-FILE ./white-model.json -r 10

You can use the same model config for both sides; GomokuBench keeps their game prompts and reasoning logs separate. When -r is greater than 1, the first player alternates by round for fairer play: White starts round 1, Black starts round 2, and so on. Dual mode does not use --ai-level because no search engine is involved.

If you have spare credit to burn, try:

gomoku dual --WHITE-LLM-FILE models/claude-opus-4.7.json --BLACK-LLM-FILE models/gpt-5.5-pro.json -r 10 -v

Requirements

  • Python 3
  • numpy

Install

Or install from source:

pip install .

The package installs a gomoku console command. Some native Python installations place that command in a user scripts directory that is not on PATH, so gomoku may not be found immediately after pip install.

You can always run GomokuBench through Python instead:

python -m gomoku play
python -m gomoku benchmark --model nemotron-3-super -r 10

If python -m gomoku works but gomoku does not, add Python's scripts directory to PATH. On macOS and Linux this is often ~/.local/bin; on Windows it is often %APPDATA%\Python\Python3x\Scripts.

Play

gomoku play

Optional flags:

  • --player black|white
  • --ai-first
  • --ai-level easy|standard|hard

The CLI always uses a 19x19 board.

AI levels:

  • easy: shallower search with a small amount of move randomness
  • standard: the default benchmark setting
  • hard: deeper search

Moves use x,y with 1-based coordinates, for example 10,10.

Benchmark

Run an LLM against the built-in alpha-beta AI:

gomoku benchmark --model nemotron-3-super -r 10

You can also point directly at a custom model config JSON file:

gomoku benchmark --model-file ./my-model.json -r 10

To give the LLM a better chance, benchmark against a weaker engine:

gomoku benchmark --model nemotron-3-super -r 10 --ai-level easy

To watch the rounds play out in the console while benchmarking:

gomoku benchmark --model nemotron-3-super -r 10 -v

What this does:

  • Loads the model config from models/nemotron-3-super.json
  • Or, with --model-file, loads the model config from the JSON path you provide
  • Runs 10 rounds total
  • Uses balanced starts: 5 rounds with the AI moving first and 5 rounds with the LLM moving first
  • Always uses a 19x19 board
  • Uses the selected AI level, defaulting to standard
  • -v prints each round, move, and board state in the console
  • Saves the benchmark report to benchmarks/nemotron-3-super.json

The benchmark report is saved as JSON and includes the summary plus per-game move logs and final boards.

What Gets Saved

Each benchmark run saves a JSON report in benchmarks/ with:

  • model name and provider
  • board size and AI level
  • total wins, losses, and draws
  • which side moved first in each round
  • full move logs
  • final board states

That makes GomokuBench useful both as a quick CLI demo and as a small research harness for repeatable comparisons across model versions and providers.

Adding Models

This repo now includes a few example model configs in the models/ folder.

You can add another model by creating a new JSON config that uses an OpenAI-compatible chat completions API format.

See the models folder on GitHub for example config files.

API Keys and Environment Variables

For models requiring authentication, set the necessary API key in your environment.

If you are using OpenRouter, you will need an OPENROUTER_API_KEY. You can obtain your API key by signing up at https://openrouter.ai.

Once you have your key, set it as an environment variable in your terminal:

export OPENROUTER_API_KEY=your_actual_api_key_here

Alternatively, you can add it to a .env file in the project root:

OPENROUTER_API_KEY=your_actual_api_key_here

The benchmark will look for this environment variable when running models configured to use it.

In general, to add a model:

  • add a new config file under models/
  • or keep it anywhere and pass it with --model-file /path/to/model.json
  • point it at an OpenAI-compatible baseURL
  • set the remote model name
  • add any required API key env var to .env or export it directly in your terminal

Examples in this repo include Ollama-compatible, Hugging Face Router, and OpenRouter model configs.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

gomokubench-0.1.8.tar.gz (26.6 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

gomokubench-0.1.8-py3-none-any.whl (37.6 kB view details)

Uploaded Python 3

File details

Details for the file gomokubench-0.1.8.tar.gz.

File metadata

  • Download URL: gomokubench-0.1.8.tar.gz
  • Upload date:
  • Size: 26.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.11.15

File hashes

Hashes for gomokubench-0.1.8.tar.gz
Algorithm Hash digest
SHA256 7b4afbd2b673811e7417bfb46f91d51437b000045876617f1d588965973cc1a9
MD5 a241f1ad326029d8abbfaa80fa7c5a13
BLAKE2b-256 65cf2bdf48bbe05a1d48f3a1c6fe1456db68b3a15f56327cf0e4550b39a2e42f

See more details on using hashes here.

File details

Details for the file gomokubench-0.1.8-py3-none-any.whl.

File metadata

  • Download URL: gomokubench-0.1.8-py3-none-any.whl
  • Upload date:
  • Size: 37.6 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.11.15

File hashes

Hashes for gomokubench-0.1.8-py3-none-any.whl
Algorithm Hash digest
SHA256 f740742338bb2f3a9f2c87d5ef726a896b10c9b112cc6aa43aa31bb278dfb4be
MD5 7568f50f2c6435f7a860c170071ed2ee
BLAKE2b-256 a0299a4132c1df819fa877f0a2e248dba4e8b56347daf5a0ab4cc381091eb172

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page