@jerryjliu0: Parse PDFs at lightspeed (this video is at 1x) Absolute cinema
Summary
Jerry Liu announces LiteParse v2, a Rust-based PDF parser that is claimed to be the fastest and most accurate open-source, model-free PDF parser available.
View Cached Full Text
Cached at: 05/29/26, 09:56 PM
Parse PDFs at lightspeed (this video is at 1x)
Absolute cinema https://t.co/4l1Sr47qjU
Jerry Liu (@jerryjliu0): We’ve created the world’s fastest PDF parser ⚡️
And it’s more accurate than any other open-source, model-free PDF parser out there (pymupdf, pypdf, markitdown, pdftotext, opendataloader, pymupdf4llm)
Introducing LiteParse v2 - we rewrote the entire library into Rust and
Similar Articles
@jerryjliu0: Last week we revamped Liteparse to be the fastest PDF parser out there An underrated part of liteparse is it doesn't ju…
Jerry Liu announces a revamped LiteParse, a fast PDF parser that provides bounding boxes for audit trails, with sample demos available.
@jerryjliu0: LiteParse, our OSS document parser, is really good at parsing complex PDF layouts, text, and tables into a clean spatia…
LiteParse is an open-source, heuristic-based PDF parser that quickly converts complex layouts, text, and tables into a clean spatial grid without relying on ML models.
@jerryjliu0: LiteParse is the best open-source, model-free document parser for AI agents. Run it over over 50+ document types, and i…
LlamaIndex releases liteparse-server, a self-hosted, model-free HTTP API for parsing diverse document types with high spatial fidelity and privacy preservation.
run-llama/liteparse
LiteParse is a standalone open-source PDF parsing tool from run-llama that provides fast, local spatial text extraction with bounding boxes, supporting multiple programming languages and platforms.
@llama_index: When we say “LiteParse runs everywhere,” we mean it. Our WASM package is lightweight, minimal, and built for browser an…
LiteParse is a lightweight WASM-based PDF parser designed for browser and edge runtimes like Cloudflare Workers, enabling efficient document parsing in edge environments.