PostTrainBench Lite

PaperImplementation

Progress Over Time

Interactive timeline showing model performance evolution on PostTrainBench Lite

State-of-the-art frontier
Open
Proprietary

PostTrainBench Lite Leaderboard

3 models
ContextCostLicense
1
OpenAI
OpenAI
1.1M$2.50 / $15.00
2
OpenAI
OpenAI
1.1M$5.00 / $30.00
3
OpenAI
OpenAI
1.1M$1.00 / $6.00
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About this benchmark

What is PostTrainBench Lite?

PostTrainBench Lite measures whether an agent can design and execute a full post-training strategy (data, prompts, RL recipe, and eval loop) for a pretrained base model under a constrained time budget, scored as normalized mean reward over the improvement window.

PostTrainBench Lite is a text benchmark evaluating models on reasoning, agents, code, and systems tasks. LLM Stats tracks 3 models on this benchmark, scored on a 0–1 scale. The current average is 0.4, with the leader at 0.5.

Compare leaders on the best AI for reasoning, best AI for agents, best AI for code and best AI for systems leaderboards.

Current leaders

GPT-5.6 Terra from OpenAI currently leads the PostTrainBench Lite leaderboard with a score of 0.515 across 3 evaluated AI models.

1GPT-5.6 TerraOpenAI51.5%
2GPT-5.6 SolOpenAI50.3%
3GPT-5.6 LunaOpenAI29.6%

Source paper

Title
PostTrainBench: Can LLM Agents Automate LLM Post-Training?
Authors
Ben Rank, Hardik Bhatnagar, Ameya Prabhu, Shira Eisenberg, and 3 others
Published
Abstract

AI agents have become surprisingly proficient at software engineering over the past year, largely due to improvements in reasoning capabilities. This raises a deeper question: can these systems extend their capabilities to automate AI research itself? In this paper, we explore post-training, the critical phase that turns base LLMs into useful assistants. We introduce PostTrainBench to benchmark how well LLM agents can perform post-training autonomously under bounded compute constraints (10 hours on one H100 GPU). We ask frontier agents (e.g., Claude Code with Opus 4.6) to optimize the performance of a base LLM on a particular benchmark (e.g., Qwen3-4B on AIME). Importantly, we do not provide any predefined strategies to the agents and instead give them full autonomy to find necessary information on the web, run experiments, and curate data. We find that frontier agents make substantial progress but generally lag behind instruction-tuned LLMs from leading providers: 23.2% for the best agent vs. 51.1% for official instruction-tuned models. However, agents can exceed instruction-tuned models in targeted scenarios: GPT-5.1 Codex Max achieves 89% on BFCL with Gemma-3-4B vs. 67% for the official model. We also observe several failure modes worth flagging. Agents sometimes engage in reward hacking: training on the test set, downloading existing instruction-tuned checkpoints instead of training their own, and using API keys they find to generate synthetic data without authorization. These behaviors are concerning and highlight the importance of careful sandboxing as these systems become more capable. Overall, we hope PostTrainBench will be useful for tracking progress in AI R&D automation and for studying the risks that come with it. Website and code are available at https://posttrainbench.com/.

FAQ

Common questions about the PostTrainBench Lite benchmark and leaderboard.

What is the PostTrainBench Lite benchmark?

PostTrainBench Lite measures whether an agent can design and execute a full post-training strategy (data, prompts, RL recipe, and eval loop) for a pretrained base model under a constrained time budget, scored as normalized mean reward over the improvement window.

What is the PostTrainBench Lite leaderboard?

The PostTrainBench Lite leaderboard ranks 3 AI models based on their performance on this benchmark. Currently, GPT-5.6 Terra by OpenAI leads with a score of 0.515. The average score across all models is 0.438.

What is the highest PostTrainBench Lite score?

The highest PostTrainBench Lite score is 0.515, achieved by GPT-5.6 Terra from OpenAI.

How many models are evaluated on PostTrainBench Lite?

3 models have been evaluated on the PostTrainBench Lite benchmark, with 0 verified results and 3 self-reported results.

Where can I find the PostTrainBench Lite paper?

The PostTrainBench Lite paper is available at https://arxiv.org/abs/2603.08640. The paper details the methodology, dataset construction, and evaluation criteria.

Where can I find the PostTrainBench Lite dataset?

The PostTrainBench Lite dataset is available at https://github.com/aisa-group/PostTrainBench.

What categories does PostTrainBench Lite cover?

PostTrainBench Lite is categorized under reasoning, agents, code, and systems. The benchmark evaluates text models.

Which model offers the best value on PostTrainBench Lite?

Among models scoring within 10% of the leader, GPT-5.6 Terra from OpenAI is the cheapest, at $2.50 per million input tokens with a score of 0.515.

How recent are the PostTrainBench Lite leaderboard results?

The PostTrainBench Lite leaderboard was last updated in July 2026 and currently includes 3 evaluated models.