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Research PaperResearchia:202605.27052

Guiding LLM Post-training Data Engineering with Model Internals from Sparse Autoencoders

Yi Jing

Abstract

Model internals encode rich information about how a large language model (LLM) processes its training data; however, post-training data engineering largely relies on external signals and ignores rich intrinsic signals lying in model internals. We propose SAERL, a data engineering framework for LLM reinforcement learning (RL). It models three intrinsic data properties: diversity, difficulty, and quality, using model internals extracted with Sparse Autoencoder (SAE), an advanced mechanistic interp...

Submitted: May 27, 2026Subjects: AI; Artificial Intelligence

Description / Details

Model internals encode rich information about how a large language model (LLM) processes its training data; however, post-training data engineering largely relies on external signals and ignores rich intrinsic signals lying in model internals. We propose SAERL, a data engineering framework for LLM reinforcement learning (RL). It models three intrinsic data properties: diversity, difficulty, and quality, using model internals extracted with Sparse Autoencoder (SAE), an advanced mechanistic interpretability tool. Each property grounds a concrete data engineering operation: SAE-space clustering with moderate batch mixing for batch diversity control, a difficulty proxy for easy-to-hard curriculum ordering, and a quality probe for data filtering. SAERL improves average accuracy by 3.00% over vanilla GRPO and reaches target accuracy with 20% fewer training steps on Qwen2.5-Math-1.5B, with consistent gains across model scales and RL algorithms. Experiments show that SAE transfers effectively across model families and scales, serving as a lightweight and reusable data engineering tool. These results demonstrate that model internals are a powerful and practical source of signals for post-training data engineering.


Source: arXiv:2605.27354v1 - http://arxiv.org/abs/2605.27354v1 PDF: https://arxiv.org/pdf/2605.27354v1 Original Link: http://arxiv.org/abs/2605.27354v1

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Submission Info
Date:
May 27, 2026
Topic:
Artificial Intelligence
Area:
AI
Comments:
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