CLLGJan 29

Procedural Pretraining: Warming Up Language Models with Abstract Data

arXiv:2601.21725v14 citationsh-index: 80
Originality Highly original
AI Analysis

This addresses the challenge of accelerating and improving language model training for AI researchers and practitioners, though it is incremental as it builds on existing pretraining paradigms.

The paper tackles the problem of inefficient language model pretraining by introducing procedural pretraining, where models are first exposed to abstract structured data before learning from natural language, code, and math datasets. The result shows significant improvements, such as accuracy on context recall jumping from 10% to 98% and models reaching the same loss with only 55-86% of the original data.

Pretraining directly on web-scale corpora is the de facto paradigm for building language models. We study an alternative setting where the model is initially exposed to abstract structured data, as a means to ease the subsequent acquisition of rich semantic knowledge, much like humans learn simple logic and mathematics before higher reasoning. We specifically focus on procedural data, generated by formal languages and other simple algorithms, as such abstract data. We first diagnose the algorithmic skills that different forms of procedural data can improve, often significantly. For example, on context recall (Needle-in-a-haystack), the accuracy jumps from 10 to 98% when pretraining on Dyck sequences (balanced brackets). Second, we study how these gains are reflected in pretraining larger models (up to 1.3B). We find that front-loading as little as 0.1% procedural data significantly outperforms standard pretraining on natural language, code, and informal mathematics (C4, CodeParrot, and DeepMind-Math datasets). Notably, this procedural pretraining enables the models to reach the same loss value with only 55, 67, 86% of the original data. Third, we explore the mechanisms behind and find that procedural pretraining instils non-trivial structure in both attention and MLP layers. The former is particularly important for structured domains (e.g. code), and the latter for language. Finally, we lay a path for combining multiple forms of procedural data. Our results show that procedural pretraining is a simple, lightweight means to improving performance and accelerating language model pretraining, ultimately suggesting the promise of disentangling knowledge acquisition from reasoning in LLMs.

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