license, license_name, license_link, base_model, library_name, tags, pipeline_tag, language
license license_name license_link base_model library_name tags pipeline_tag language
other lfm1.0 https://www.liquid.ai/legal/lfm-license
anakin87/LFM2-2.6B-ttt-rl-merged
transformers
rl
cispo
tictactoe
rlvr
text-generation
en

LFM2-2.6B-mr-tictactoe

A 2.6B parameter model that plays near-perfect Tic Tac Toe, outperforming openai/gpt-5-mini on this task.

Built from LiquidAI/LFM2-2.6B through a full training pipeline: Supervised Fine-Tuning on synthetic data, followed by two rounds of Reinforcement Learning (CISPO) in a verifiable Tic Tac Toe environment.

This model was developed as part of 🎓 LLM RL Environments Lil Course, a hands-on course on building RL environments for Language Models, where models learn from rewards, not examples. It walks through the full process of turning a small open model into a specialist that outperforms a large proprietary one on a specific task (Tic Tac Toe).

🤗🕹️ Play against Mr. Tic Tac Toe

Tic Tac Toe performance

Training pipeline

Step Model Method
1. SFT warm-up anakin87/LFM2-2.6B-ttt-sft SFT on 174 synthetic games from gpt-5-mini
2. RL round 1 anakin87/LFM2-2.6B-ttt-rl + merged CISPO, 600 steps, opponents at 20-70% random
3. RL round 2 anakin87/LFM2-2.6B-ttt-rl-2 + this model CISPO, 400 steps, opponents at 0-25% random, temp 1.25

Evaluation

100 games per setting. The model plays as X (first mover) against a Minimax-based opponent.

Model vs random opponent % Wins % Draws % Losses % Follows format % Games w invalid moves
openai/gpt-5-mini 90 9 1 100 0
LiquidAI/LFM2-2.6B 40 11 49 27.8 40
anakin87/LFM2-2.6B-mr-tictactoe 90 10 0 100 0
Model vs optimal opponent % Wins % Draws % Losses % Follows format % Games w invalid moves
openai/gpt-5-mini 0 76 24 100 0
LiquidAI/LFM2-2.6B 0 11 89 24.7 43
anakin87/LFM2-2.6B-mr-tictactoe 0 97 3 99.8 0

Training details

  • Algorithm: CISPO (two rounds), using Verifiers RLTrainer
  • Environment: anakin87/tictactoe (Verifiers environment)
  • LoRA rank: 8
  • Hardware: 2x NVIDIA RTX Pro 6000 (round 1), 2x NVIDIA H200 (round 2)
  • Training time: ~8 hours per round
  • W&B project: LFM2-2.6B Tic Tac Toe
Description
Model synced from source: anakin87/LFM2-2.6B-mr-tictactoe
Readme 1 MiB
Languages
Jinja 100%