IRCLDCLGApr 23, 2025

AdaParse: An Adaptive Parallel PDF Parsing and Resource Scaling Engine

arXiv:2505.01435v15 citationsh-index: 10Has CodeMLSys
Originality Incremental advance
AI Analysis

This work addresses the bottleneck of parsing large-scale scientific PDF corpora for AI research, offering a scalable solution to support trillion-token dataset creation.

The paper tackles the problem of efficiently parsing scientific PDFs for language model training by introducing AdaParse, an adaptive engine that selects and scales parsers based on document complexity and human preferences, achieving a 17x throughput improvement with comparable accuracy on a benchmark of 1000 documents.

Language models for scientific tasks are trained on text from scientific publications, most distributed as PDFs that require parsing. PDF parsing approaches range from inexpensive heuristics (for simple documents) to computationally intensive ML-driven systems (for complex or degraded ones). The choice of the "best" parser for a particular document depends on its computational cost and the accuracy of its output. To address these issues, we introduce an Adaptive Parallel PDF Parsing and Resource Scaling Engine (AdaParse), a data-driven strategy for assigning an appropriate parser to each document. We enlist scientists to select preferred parser outputs and incorporate this information through direct preference optimization (DPO) into AdaParse, thereby aligning its selection process with human judgment. AdaParse then incorporates hardware requirements and predicted accuracy of each parser to orchestrate computational resources efficiently for large-scale parsing campaigns. We demonstrate that AdaParse, when compared to state-of-the-art parsers, improves throughput by $17\times$ while still achieving comparable accuracy (0.2 percent better) on a benchmark set of 1000 scientific documents. AdaParse's combination of high accuracy and parallel scalability makes it feasible to parse large-scale scientific document corpora to support the development of high-quality, trillion-token-scale text datasets. The implementation is available at https://github.com/7shoe/AdaParse/

Code Implementations1 repo
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