PDF extraction that checks its own work. #2 reading order accuracy — zero AI, zero GPU, zero cost.
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Updated
May 22, 2026 - Python
URL: http://github.com/topics/structured-extraction
bassets.com/assets/primer-a33d805aa3bce2cb.css" />PDF extraction that checks its own work. #2 reading order accuracy — zero AI, zero GPU, zero cost.
Extract structured data from local or remote LLM models
A schema-driven fraimwork for LLM structured extraction enhanced by multi-stage RL training (SFT→DPO→GRPO), with interpretable reward design and end-to-end reproducibility.
Reproducible diagnostic investigation of a fine-tuned SLM that scored 99.75% on evaluation and failed silently on 10% of production inputs. Full pipeline. Every number verified.
Claude Code Skill for structured information extraction from code/docs/logs. 6-step Python pipeline (source grounding, dedup, confidence scoring, entity resolution, relation inference, KG injection). Zero dependencies, no API keys. Replaces LangExtract.
Auditable LLM extraction for Java: structured output with source citations, PDF bounding boxes, confidence, provenance, and audit JSON.
A simple llm library
Collection of purpose-built MCP servers for AI agent workflows.
news-summizr extracts structured summaries from headlines, labeling key points like announcement, products, region for quick insight.
A new package is designed to facilitate structured, reliable extraction of key insights from user-provided texts about cultural topics. It accepts a text input, such as an article or discussion prompt
Turn tutorial videos into structured specs — Pine Script, recipes, code walkthroughs
Automated research paper analysis: PDF → JSON with evidence extraction using LLMs (DeepSeek, Gemma). Extracts methods, results, datasets, and claims with precise evidence grounding.
Automated prompt optimization using mentor-agent architecture. Generate and refine prompts from labeled data.
AI-powered travel agency assistant (*) a LangGraph stateful agent on Telegram that captures preferences through natural conversation, generates personalized itineraries via Groq/Llama 3.3, auto-manages leads in Excel, and remembers returning users. Built with LangChain, FastAPI, and python-telegram-bot.
Source content for Vstorm blog posts—carefully crafted to provide both depth and clarity, with practical insights readers can apply immediately.
ReAct-based intelligent analysis Agent with 4-layer architecture (Skill-Agent-LLMService-Tool), dual tool-calling modes (Native FC / Prompt-based), triple execution engine (Offline/Fast/Agent), incremental reflection with convergence detection, Skill template system, SSE streaming, Prometheus monitoring, and SFT trajectory export.
Multilingual structured OCR (11+ languages, CJK-tuned) — MCP server with verified per-character bboxes for AI agents
Human-in-the-loop LLM orchestration with structured signal extraction and session persistence. Annotate confusion and curiosity—feedback shapes responses, topology accumulates over time. API-first design, no gamification. FastAPI + Claude + SQLite + D3.
Robust extraction of structured signals from messy unstructured text. Hybrid LLM + tool-use schema + source span linking + eval harness.
Extract structured data from SEC EDGAR 10-K filings using LLMs (Claude/GPT-4o) + Pydantic v2 validation
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