@jerryjliu0: As frontier models (e.g. Fable 5) continue to push the task horizon of knowledge work automation, it becomes ever more …
Summary
LlamaIndex launches granular bounding boxes in LlamaParse, enabling visual citations for every word in a document to allow human audit of exact numbers and figures.
View Cached Full Text
Cached at: 06/10/26, 12:19 AM
As frontier models (e.g. Fable 5) continue to push the task horizon of knowledge work automation, it becomes ever more important for humans to be able to audit decisions back to the source context.
It is extremely easy for agents to cite an entire document or document page, but much harder for them to trace back to the exact numbers/words/figures within a page.
Today we’ve launched granular bounding boxes within LlamaParse, which allows you to obtain visual citations of every single word in the document. This allows human users to audit exact words and figures - not just general document regions or entire pages!
Come check it out: https://cloud.llamaindex.ai/?utm_source=xjl&utm_medium=social…
Teken in
E-pos
OF
Het jy nie ’n rekening nie?Teken aan
DiensbepalingsenPrivaatheidsbeleid
LlamaIndex 🦙 (@llama_index): Parsing a document accurately is one thing. Proving where every value came from is another.
When a compliance team reviews an AI extraction, or an auditor needs to sign off on a figure pulled from a financial filing, “it came from this document” isn’t enough. They need to see
Similar Articles
@jerryjliu0: Our core mission today is using AI to solve document OCR. All of our product offerings, from commercial (LlamaParse) to…
LlamaIndex has revamped its website and reaffirmed its core mission of AI-powered document OCR, with offerings including commercial product LlamaParse and open-source tools LiteParse and ParseBench. LlamaParse uses VLM-powered agentic document understanding to handle complex layouts, tables, charts, and handwritten text at scale.
@jerryjliu0: We built an AI agent for due diligence, with exact audit trails back to the source page, that you can use as a template…
LlamaIndex's Jerry Liu demonstrates building a financial due diligence AI agent with LiteParse, a free open-source PDF parser that provides exact citations and bounding box coordinates, enabling trust and transparency in agentic workflows.
@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.
@itsclelia: Do you actually own your document parsing infrastructure? At @llama_index, we wanted to make that easier, so we built �…
LlamaIndex introduces liteparse-server, an open-source, self-hosted HTTP backend for parsing PDFs, images, and Office documents with spatial layout extraction, OCR, and screenshot generation, designed for AI and data workflows.
@llama_index: Most AI pipelines are only as good as the data we provide them with, and that usually means PDFs or other unstructured …
Parse-Flow is an open-source visual workflow designer built by LlamaIndex that chains four document processing primitives—Parse, Classify, Split, and Extract—into a drag-and-drop canvas powered by LlamaAgents workflows, enabling reliable structured data extraction from unstructured enterprise documents like PDFs, contracts, and invoices.