mineru-tutorials

agent
Guvenlik Denetimi
Uyari
Health Uyari
  • License — License: NOASSERTION
  • Description — Repository has a description
  • Active repo — Last push 0 days ago
  • Low visibility — Only 6 GitHub stars
Code Uyari
  • Code scan incomplete — No supported source files were scanned during light audit
Permissions Gecti
  • Permissions — No dangerous permissions requested

Bu listing icin henuz AI raporu yok.

SUMMARY

MinerU Training Camp course materials and tutorials

README.md

MinerU Training Camp

English | 简体中文

Ask DeepWiki

This repository contains the course materials for the MinerU Training Camp. The curriculum covers MinerU product selection, local and containerized deployment, online API usage, model fine-tuning, OpenClaw Skill development, AI Agent building, and document parsing evaluation based on OmniDocBench, Dingo, and WebMainBench.

Course materials include:

  • Course notes in Markdown for online reading, search, and maintenance
  • Slide decks in PDF format for preview and sharing
  • Video links to the Bilibili course collection

Join our training camp WeChat group for discussion and support.

Audience

This course is designed for:

  • Developers who want to quickly understand the MinerU product matrix and choose the right entry point
  • Engineers who need to deploy MinerU locally, with Docker, or in domestic computing environments
  • Developers who want to build document parsing, knowledge base, or information extraction applications with MinerU Open API
  • Algorithm and platform teams interested in document parsing model fine-tuning, evaluation, and production workflows
  • Practitioners who want to build Agents, Skills, or research tools with AI coding workflows

Learning Path

We recommend following the course order:

  1. Start with Lesson 01 to understand the MinerU product matrix and scenario-based selection.
  2. Continue with Lesson 02 to practice deployment for both the MinerU project and MinerU-HTML project.
  3. If you prefer a hosted, deployment-free workflow, study Lesson 03 on MinerU Online API.
  4. If you need model customization, study Lesson 04 on MinerU 1.2B fine-tuning.
  5. If you focus on ecosystem integration, study Lessons 05 and 06 on Skill and Agent development.
  6. Lessons 07 and 08 are optional. They are recommended for learners who need quality evaluation, model benchmarking, or model optimization.

Course Catalog

Lesson Topic Notes Slides Video
00 MinerU Training Camp Preview Notes - Bilibili
01 MinerU Product Matrix: Quick Start and Scenario-Based Selection Notes PDF Bilibili
02-1 MinerU Project Deployment Practice Notes PDF Bilibili
02-2 MinerU-HTML Project Deployment Practice Notes PDF Bilibili
03 MinerU Online API Hands-on Tutorial Notes PDF Bilibili
04 MinerU 1.2B Model Fine-Tuning Notes PDF Bilibili
05 OpenClaw Skill Development: Flexible Document Q&A with MinerU Notes PDF Bilibili
06 Vibe Coding Practice: Building an AI Agent with MinerU Notes PDF Bilibili
07 MinerU-HTML Parsing Evaluation with Dingo Notes PDF Bilibili
08 OCR Benchmarking: Deep Evaluation of MinerU with OmniDocBench and Dingo Notes PDF Bilibili

Repository Structure

.
├── 00课:MinerU实战训练营先导预告/
├── 01课:MinerU 全场景产品矩阵:快速上手与选型/
├── 02课:MinerU 多环境部署实践:从开源容器化到信创生态适配/
│   ├── 02-1:MinerU 项目/
│   └── 02-2:MinerU-HTML 项目/
├── 03课:MinerU 在线 API 实战教程/
├── 04课:MinerU 1.2B 模型微调/
├── 05课:OpenClaw Skill 开发实践:基于MinerU 的文档灵活问答/
├── 06课:Vibe Coding 实战:基于MinerU 搭建AI Agent/
├── 07课:MinerU-HTML 解析效能验证:基于 Dingo 的量化评测方法/
└── 08课:OCR模型对标:基于 OmniDocBench 与 Dingo 的 MinerU 模型深度评测/

Related Resources

Contributing

Issues and pull requests are welcome for:

  • Typos, broken links, or formatting issues
  • Additional notes for deployment, API usage, and model fine-tuning
  • Course practice cases, FAQs, and troubleshooting experience
  • Evaluation data, evaluation scripts, or model comparison results

License

Copyright (c) 2026 OpenDataLab.

This course material is licensed under the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.

Yorumlar (0)

Sonuc bulunamadi