https://github.com/opendatalab/MinerU.git

myhloli 050e1dbc70 chore: update changelog for version 2.1.6 release with fixes for table parsing and visualization box position hai 3 meses
.github fffb68797c fix: update GITHUB_TOKEN usage in CLA action and change branch to 'cla' hai 3 meses
demo 54f065d00c refactor: standardize parameter names for formula and table parsing in demo.py hai 4 meses
docker 6d9380323b chore: update Dockerfile and documentation to use sglang v0.4.9 hai 3 meses
docs 6d9380323b chore: update Dockerfile and documentation to use sglang v0.4.9 hai 3 meses
mineru 825fc95a8a fix: ensure new pages are created for overlay merging in draw_bbox.py hai 3 meses
projects d3f6736e0a Update _config_endpoint.py hai 4 meses
signatures 2bf2337e76 @myhloli has signed the CLA in opendatalab/MinerU#3129 hai 3 meses
tests fc2377ff37 test: update e2e hai 4 meses
.gitattributes 60c4141604 chore: add CSS and SCSS files to linguist-vendored- Update .gitattributes to mark CSS and SCSS files as vendored- Ensure these files are not included in language statistics hai 1 ano
.gitignore 91f8cbe25a feat: add zh_CN docs hai 1 ano
LICENSE.md a4c72e2e33 fix: solve conflicts hai 1 ano
MinerU_CLA.md 572c35f9c0 Update MinerU_CLA.md hai 1 ano
README.md 050e1dbc70 chore: update changelog for version 2.1.6 release with fixes for table parsing and visualization box position hai 3 meses
README_zh-CN.md 050e1dbc70 chore: update changelog for version 2.1.6 release with fixes for table parsing and visualization box position hai 3 meses
SECURITY.md 113a3ad91f Create SECURITY.md hai 5 meses
mineru.template.json a29489ef51 refactor: update config file name and enhance model path handling hai 5 meses
mkdocs.yml 2afc1bb6d0 Merge pull request #3069 from myhloli/dev hai 4 meses
pyproject.toml 56f25a4e90 refactor: update imports and adapt to sglang version changes in processing logic hai 3 meses
update_version.py 2c8db7edec fix: update sglang dependency version and correct version tag handling hai 5 meses

README.md

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[![HuggingFace](https://img.shields.io/badge/Demo_on_HuggingFace-yellow.svg?logo=data:image/png;base64,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&labelColor=white)](https://huggingface.co/spaces/opendatalab/MinerU) 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[![Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/gist/myhloli/3b3a00a4a0/mineru_demo.ipynb) [![arXiv](https://img.shields.io/badge/arXiv-2409.18839-b31b1b.svg?logo=arXiv)](https://arxiv.org/abs/2409.18839) [![Ask DeepWiki](https://deepwiki.com/badge.svg)](https://deepwiki.com/opendatalab/MinerU) [English](README.md) | [简体中文](README_zh-CN.md)

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Changelog

  • 2025/07/26 2.1.6 Released
    • Fixed table parsing issues in handwritten documents when using vlm backend
    • Fixed visualization box position drift issue when document is rotated #3175
  • 2025/07/24 2.1.5 Released
    • sglang 0.4.9 version adaptation, synchronously upgrading the dockerfile base image to sglang 0.4.9.post3
  • 2025/07/23 2.1.4 Released
    • Bug Fixes
    • Fixed the issue of excessive memory consumption during the MFR step in the pipeline backend under certain scenarios #2771
    • Fixed the inaccurate matching between image/table and caption/footnote under certain conditions #3129
  • 2025/07/16 2.1.1 Released
    • Bug fixes
    • Fixed text block content loss issue that could occur in certain pipeline scenarios #3005
    • Fixed issue where sglang-client required unnecessary packages like torch #2968
    • Updated dockerfile to fix incomplete text content parsing due to missing fonts in Linux #2915
    • Usability improvements
    • Updated compose.yaml to facilitate direct startup of sglang-server, mineru-api, and mineru-gradio services
    • Launched brand new online documentation site, simplified readme, providing better documentation experience
  • 2025/07/05 Version 2.1.0 Released
    • This is the first major update of MinerU 2, which includes a large number of new features and improvements, covering significant performance optimizations, user experience enhancements, and bug fixes. The detailed update contents are as follows:
    • Performance Optimizations:
    • Significantly improved preprocessing speed for documents with specific resolutions (around 2000 pixels on the long side).
    • Greatly enhanced post-processing speed when the pipeline backend handles batch processing of documents with fewer pages (<10 pages).
    • Layout analysis speed of the pipeline backend has been increased by approximately 20%.
    • Experience Enhancements:
    • Built-in ready-to-use fastapi service and gradio webui. For detailed usage instructions, please refer to Documentation.
    • Adapted to sglang version 0.4.8, significantly reducing the GPU memory requirements for the vlm-sglang backend. It can now run on graphics cards with as little as 8GB GPU memory (Turing architecture or newer).
    • Added transparent parameter passing for all commands related to sglang, allowing the sglang-engine backend to receive all sglang parameters consistently with the sglang-server.
    • Supports feature extensions based on configuration files, including custom formula delimiters, enabling heading classification, and customizing local model directories. For detailed usage instructions, please refer to Documentation.
    • New Features:
    • Updated the pipeline backend with the PP-OCRv5 multilingual text recognition model, supporting text recognition in 37 languages such as French, Spanish, Portuguese, Russian, and Korean, with an average accuracy improvement of over 30%. Details
    • Introduced limited support for vertical text layout in the pipeline backend.
History Log
2025/06/20 2.0.6 Released
  • Fixed occasional parsing interruptions caused by invalid block content in vlm mode
  • Fixed parsing interruptions caused by incomplete table structures in vlm mode

<summary>2025/06/17 2.0.5 Released</summary>
<ul>
  <li>Fixed the issue where models were still required to be downloaded in the <code>sglang-client</code> mode</li>
  <li>Fixed the issue where the <code>sglang-client</code> mode unnecessarily depended on packages like <code>torch</code> during runtime.</li>
  <li>Fixed the issue where only the first instance would take effect when attempting to launch multiple <code>sglang-client</code> instances via multiple URLs within the same process</li>
</ul>

<summary>2025/06/15 2.0.3 released</summary>
<ul>
  <li>Fixed a configuration file key-value update error that occurred when downloading model type was set to <code>all</code></li>
  <li>Fixed the issue where the formula and table feature toggle switches were not working in <code>command line mode</code>, causing the features to remain enabled.</li>
  <li>Fixed compatibility issues with sglang version 0.4.7 in the <code>sglang-engine</code> mode.</li>
  <li>Updated Dockerfile and installation documentation for deploying the full version of MinerU in sglang environment</li>
</ul>

<summary>2025/06/13 2.0.0 Released</summary>
<ul>
  <li><strong>New Architecture</strong>: MinerU 2.0 has been deeply restructured in code organization and interaction methods, significantly improving system usability, maintainability, and extensibility.
    <ul>
      <li><strong>Removal of Third-party Dependency Limitations</strong>: Completely eliminated the dependency on <code>pymupdf</code>, moving the project toward a more open and compliant open-source direction.</li>
      <li><strong>Ready-to-use, Easy Configuration</strong>: No need to manually edit JSON configuration files; most parameters can now be set directly via command line or API.</li>
      <li><strong>Automatic Model Management</strong>: Added automatic model download and update mechanisms, allowing users to complete model deployment without manual intervention.</li>
      <li><strong>Offline Deployment Friendly</strong>: Provides built-in model download commands, supporting deployment requirements in completely offline environments.</li>
      <li><strong>Streamlined Code Structure</strong>: Removed thousands of lines of redundant code, simplified class inheritance logic, significantly improving code readability and development efficiency.</li>
      <li><strong>Unified Intermediate Format Output</strong>: Adopted standardized <code>middle_json</code> format, compatible with most secondary development scenarios based on this format, ensuring seamless ecosystem business migration.</li>
    </ul>
  </li>
  <li><strong>New Model</strong>: MinerU 2.0 integrates our latest small-parameter, high-performance multimodal document parsing model, achieving end-to-end high-speed, high-precision document understanding.
    <ul>
      <li><strong>Small Model, Big Capabilities</strong>: With parameters under 1B, yet surpassing traditional 72B-level vision-language models (VLMs) in parsing accuracy.</li>
      <li><strong>Multiple Functions in One</strong>: A single model covers multilingual recognition, handwriting recognition, layout analysis, table parsing, formula recognition, reading order sorting, and other core tasks.</li>
      <li><strong>Ultimate Inference Speed</strong>: Achieves peak throughput exceeding 10,000 tokens/s through <code>sglang</code> acceleration on a single NVIDIA 4090 card, easily handling large-scale document processing requirements.</li>
      <li><strong>Online Experience</strong>: You can experience our brand-new VLM model on <a href="https://mineru.net/OpenSourceTools/Extractor">MinerU.net</a>, <a href="https://huggingface.co/spaces/opendatalab/MinerU">Hugging Face</a>, and <a href="https://www.modelscope.cn/studios/OpenDataLab/MinerU">ModelScope</a>.</li>
    </ul>
  </li>
  <li><strong>Incompatible Changes Notice</strong>: To improve overall architectural rationality and long-term maintainability, this version contains some incompatible changes:
    <ul>
      <li>Python package name changed from <code>magic-pdf</code> to <code>mineru</code>, and the command-line tool changed from <code>magic-pdf</code> to <code>mineru</code>. Please update your scripts and command calls accordingly.</li>
      <li>For modular system design and ecosystem consistency considerations, MinerU 2.0 no longer includes the LibreOffice document conversion module. If you need to process Office documents, we recommend converting them to PDF format through an independently deployed LibreOffice service before proceeding with subsequent parsing operations.</li>
    </ul>
  </li>
</ul>

2025/05/24 Release 1.3.12
      <li>Added support for PPOCRv5 models, updated <code>ch_server</code> model to <code>PP-OCRv5_rec_server</code>, and <code>ch_lite</code> model to <code>PP-OCRv5_rec_mobile</code> (model update required)
        <ul>
          <li>In testing, we found that PPOCRv5(server) has some improvement for handwritten documents, but has slightly lower accuracy than v4_server_doc for other document types, so the default ch model remains unchanged as <code>PP-OCRv4_server_rec_doc</code>.</li>
          <li>Since PPOCRv5 has enhanced recognition capabilities for handwriting and special characters, you can manually choose the PPOCRv5 model for Japanese-Traditional Chinese mixed scenarios and handwritten documents</li>
          <li>You can select the appropriate model through the lang parameter <code>lang='ch_server'</code> (Python API) or <code>--lang ch_server</code> (command line):
            <ul>
              <li><code>ch</code>: <code>PP-OCRv4_server_rec_doc</code> (default) (Chinese/English/Japanese/Traditional Chinese mixed/15K dictionary)</li>
              <li><code>ch_server</code>: <code>PP-OCRv5_rec_server</code> (Chinese/English/Japanese/Traditional Chinese mixed + handwriting/18K dictionary)</li>
              <li><code>ch_lite</code>: <code>PP-OCRv5_rec_mobile</code> (Chinese/English/Japanese/Traditional Chinese mixed + handwriting/18K dictionary)</li>
              <li><code>ch_server_v4</code>: <code>PP-OCRv4_rec_server</code> (Chinese/English mixed/6K dictionary)</li>
              <li><code>ch_lite_v4</code>: <code>PP-OCRv4_rec_mobile</code> (Chinese/English mixed/6K dictionary)</li>
            </ul>
          </li>
        </ul>
      </li>
      <li>Added support for handwritten documents through optimized layout recognition of handwritten text areas
        <ul>
          <li>This feature is supported by default, no additional configuration required</li>
          <li>You can refer to the instructions above to manually select the PPOCRv5 model for better handwritten document parsing results</li>
        </ul>
      </li>
      <li>The <code>huggingface</code> and <code>modelscope</code> demos have been updated to versions that support handwriting recognition and PPOCRv5 models, which you can experience online</li>
    

    2025/04/29 Release 1.3.10
        <li>Added support for custom formula delimiters, which can be configured by modifying the <code>latex-delimiter-config</code> section in the <code>magic-pdf.json</code> file in your user directory.</li>
      

      2025/04/27 Release 1.3.9
          <li>Optimized formula parsing functionality, improved formula rendering success rate</li>
        

        2025/04/23 Release 1.3.8
            <li>The default <code>ocr</code> model (<code>ch</code>) has been updated to <code>PP-OCRv4_server_rec_doc</code> (model update required)
              <ul>
                <li><code>PP-OCRv4_server_rec_doc</code> is trained on a mixture of more Chinese document data and PP-OCR training data based on <code>PP-OCRv4_server_rec</code>, adding recognition capabilities for some traditional Chinese characters, Japanese, and special characters. It can recognize over 15,000 characters and improves both document-specific and general text recognition abilities.</li>
                <li><a href="https://paddlepaddle.github.io/PaddleX/latest/module_usage/tutorials/ocr_modules/text_recognition.html#_3">Performance comparison of PP-OCRv4_server_rec_doc/PP-OCRv4_server_rec/PP-OCRv4_mobile_rec</a></li>
                <li>After verification, the <code>PP-OCRv4_server_rec_doc</code> model shows significant accuracy improvements in Chinese/English/Japanese/Traditional Chinese in both single language and mixed language scenarios, with comparable speed to <code>PP-OCRv4_server_rec</code>, making it suitable for most use cases.</li>
                <li>In some pure English scenarios, <code>PP-OCRv4_server_rec_doc</code> may have word adhesion issues, while <code>PP-OCRv4_server_rec</code> performs better in these cases. Therefore, we've kept the <code>PP-OCRv4_server_rec</code> model, which users can access by adding the parameter <code>lang='ch_server'</code> (Python API) or <code>--lang ch_server</code> (command line).</li>
              </ul>
            </li>
          

          2025/04/22 Release 1.3.7
              <li>Fixed the issue where the lang parameter was ineffective during table parsing model initialization</li>
              <li>Fixed the significant speed reduction of OCR and table parsing in <code>cpu</code> mode</li>
            

            2025/04/16 Release 1.3.4
                <li>Slightly improved OCR-det speed by removing some unnecessary blocks</li>
                <li>Fixed page-internal sorting errors caused by footnotes in certain cases</li>
              

              2025/04/12 Release 1.3.2
                  <li>Fixed dependency version incompatibility issues when installing on Windows with Python 3.13</li>
                  <li>Optimized memory usage during batch inference</li>
                  <li>Improved parsing of tables rotated 90 degrees</li>
                  <li>Enhanced parsing of oversized tables in financial report samples</li>
                  <li>Fixed the occasional word adhesion issue in English text areas when OCR language is not specified (model update required)</li>
                

                2025/04/08 Release 1.3.1
                    <li>Fixed several compatibility issues
                      <ul>
                        <li>Added support for Python 3.13</li>
                        <li>Made final adaptations for outdated Linux systems (such as CentOS 7) with no guarantee of continued support in future versions, <a href="https://github.com/opendatalab/MinerU/issues/1004">installation instructions</a></li>
                      </ul>
                    </li>
                  

                  2025/04/03 Release 1.3.0
                      <li>Installation and compatibility optimizations
                        <ul>
                          <li>Resolved compatibility issues caused by <code>detectron2</code> by removing <code>layoutlmv3</code> usage in layout</li>
                          <li>Extended torch version compatibility to 2.2~2.6 (excluding 2.5)</li>
                          <li>Added CUDA compatibility for versions 11.8/12.4/12.6/12.8 (CUDA version determined by torch), solving compatibility issues for users with 50-series and H-series GPUs</li>
                          <li>Extended Python compatibility to versions 3.10~3.12, fixing the issue of automatic downgrade to version 0.6.1 when installing in non-3.10 environments</li>
                          <li>Optimized offline deployment process, eliminating the need to download any model files after successful deployment</li>
                        </ul>
                      </li>
                      <li>Performance optimizations
                        <ul>
                          <li>Enhanced parsing speed for batches of small files by supporting batch processing of multiple PDF files (<a href="demo/batch_demo.py">script example</a>), with formula parsing speed improved by up to 1400% and overall parsing speed improved by up to 500% compared to version 1.0.1</li>
                          <li>Reduced memory usage and improved parsing speed by optimizing MFR model loading and usage (requires re-running the <a href="docs/how_to_download_models_zh_cn.md">model download process</a> to get incremental updates to model files)</li>
                          <li>Optimized GPU memory usage, requiring only 6GB minimum to run this project</li>
                          <li>Improved running speed on MPS devices</li>
                        </ul>
                      </li>
                      <li>Parsing effect optimizations
                        <ul>
                          <li>Updated MFR model to <code>unimernet(2503)</code>, fixing line break loss issues in multi-line formulas</li>
                        </ul>
                      </li>
                      <li>Usability optimizations
                        <ul>
                          <li>Completely replaced the <code>paddle</code> framework and <code>paddleocr</code> in the project by using <code>paddleocr2torch</code>, resolving conflicts between <code>paddle</code> and <code>torch</code>, as well as thread safety issues caused by the <code>paddle</code> framework</li>
                          <li>Added real-time progress bar display during parsing, allowing precise tracking of parsing progress and making the waiting process more bearable</li>
                        </ul>
                      </li>
                    

                    2025/03/03 1.2.1 released
                      <li>Fixed the impact on punctuation marks during full-width to half-width conversion of letters and numbers</li>
                      <li>Fixed caption matching inaccuracies in certain scenarios</li>
                      <li>Fixed formula span loss issues in certain scenarios</li>
                      

                      2025/02/24 1.2.0 released

                      This version includes several fixes and improvements to enhance parsing efficiency and accuracy:

                        <li><strong>Performance Optimization</strong>
                          <ul>
                            <li>Increased classification speed for PDF documents in auto mode.</li>
                          </ul>
                        </li>
                        <li><strong>Parsing Optimization</strong>
                          <ul>
                            <li>Improved parsing logic for documents containing watermarks, significantly enhancing the parsing results for such documents.</li>
                            <li>Enhanced the matching logic for multiple images/tables and captions within a single page, improving the accuracy of image-text matching in complex layouts.</li>
                          </ul>
                        </li>
                        <li><strong>Bug Fixes</strong>
                          <ul>
                            <li>Fixed an issue where image/table spans were incorrectly filled into text blocks under certain conditions.</li>
                            <li>Resolved an issue where title blocks were empty in some cases.</li>
                          </ul>
                        </li>
                        

                        2025/01/22 1.1.0 released

                        In this version we have focused on improving parsing accuracy and efficiency:

                          <li><strong>Model capability upgrade</strong> (requires re-executing the <a href="https://github.com/opendatalab/MinerU/blob/master/docs/how_to_download_models_en.md">model download process</a> to obtain incremental updates of model files)
                            <ul>
                              <li>The layout recognition model has been upgraded to the latest <code>doclayout_yolo(2501)</code> model, improving layout recognition accuracy.</li>
                              <li>The formula parsing model has been upgraded to the latest <code>unimernet(2501)</code> model, improving formula recognition accuracy.</li>
                            </ul>
                          </li>
                          <li><strong>Performance optimization</strong>
                            <ul>
                              <li>On devices that meet certain configuration requirements (16GB+ VRAM), by optimizing resource usage and restructuring the processing pipeline, overall parsing speed has been increased by more than 50%.</li>
                            </ul>
                          </li>
                          <li><strong>Parsing effect optimization</strong>
                            <ul>
                              <li>Added a new heading classification feature (testing version, enabled by default) to the online demo (<a href="https://mineru.net/OpenSourceTools/Extractor">mineru.net</a>/<a href="https://huggingface.co/spaces/opendatalab/MinerU">huggingface</a>/<a href="https://www.modelscope.cn/studios/OpenDataLab/MinerU">modelscope</a>), which supports hierarchical classification of headings, thereby enhancing document structuring.</li>
                            </ul>
                          </li>
                          

                          2025/01/10 1.0.1 released

                          This is our first official release, where we have introduced a completely new API interface and enhanced compatibility through extensive refactoring, as well as a brand new automatic language identification feature:

                            <li><strong>New API Interface</strong>
                              <ul>
                                <li>For the data-side API, we have introduced the Dataset class, designed to provide a robust and flexible data processing framework. This framework currently supports a variety of document formats, including images (.jpg and .png), PDFs, Word documents (.doc and .docx), and PowerPoint presentations (.ppt and .pptx). It ensures effective support for data processing tasks ranging from simple to complex.</li>
                                <li>For the user-side API, we have meticulously designed the MinerU processing workflow as a series of composable Stages. Each Stage represents a specific processing step, allowing users to define new Stages according to their needs and creatively combine these stages to customize their data processing workflows.</li>
                              </ul>
                            </li>
                            <li><strong>Enhanced Compatibility</strong>
                              <ul>
                                <li>By optimizing the dependency environment and configuration items, we ensure stable and efficient operation on ARM architecture Linux systems.</li>
                                <li>We have deeply integrated with Huawei Ascend NPU acceleration, providing autonomous and controllable high-performance computing capabilities. This supports the localization and development of AI application platforms in China. <a href="https://github.com/opendatalab/MinerU/blob/master/docs/README_Ascend_NPU_Acceleration_zh_CN.md">Ascend NPU Acceleration</a></li>
                              </ul>
                            </li>
                            <li><strong>Automatic Language Identification</strong>
                              <ul>
                                <li>By introducing a new language recognition model, setting the <code>lang</code> configuration to <code>auto</code> during document parsing will automatically select the appropriate OCR language model, improving the accuracy of scanned document parsing.</li>
                              </ul>
                            </li>
                            

                            2024/11/22 0.10.0 released

                            Introducing hybrid OCR text extraction capabilities:

                              <li>Significantly improved parsing performance in complex text distribution scenarios such as dense formulas, irregular span regions, and text represented by images.</li>
                              <li>Combines the dual advantages of accurate content extraction and faster speed in text mode, and more precise span/line region recognition in OCR mode.</li>
                              

                              2024/11/15 0.9.3 released

                              Integrated RapidTable for table recognition, improving single-table parsing speed by more than 10 times, with higher accuracy and lower GPU memory usage.

                              2024/11/06 0.9.2 released

                              Integrated the StructTable-InternVL2-1B model for table recognition functionality.

                              2024/10/31 0.9.0 released

                              This is a major new version with extensive code refactoring, addressing numerous issues, improving performance, reducing hardware requirements, and enhancing usability:

                                <li>Refactored the sorting module code to use <a href="https://github.com/ppaanngggg/layoutreader">layoutreader</a> for reading order sorting, ensuring high accuracy in various layouts.</li>
                                <li>Refactored the paragraph concatenation module to achieve good results in cross-column, cross-page, cross-figure, and cross-table scenarios.</li>
                                <li>Refactored the list and table of contents recognition functions, significantly improving the accuracy of list blocks and table of contents blocks, as well as the parsing of corresponding text paragraphs.</li>
                                <li>Refactored the matching logic for figures, tables, and descriptive text, greatly enhancing the accuracy of matching captions and footnotes to figures and tables, and reducing the loss rate of descriptive text to near zero.</li>
                                <li>Added multi-language support for OCR, supporting detection and recognition of 84 languages. For the list of supported languages, see <a href="https://paddlepaddle.github.io/PaddleOCR/latest/en/ppocr/blog/multi_languages.html#5-support-languages-and-abbreviations">OCR Language Support List</a>.</li>
                                <li>Added memory recycling logic and other memory optimization measures, significantly reducing memory usage. The memory requirement for enabling all acceleration features except table acceleration (layout/formula/OCR) has been reduced from 16GB to 8GB, and the memory requirement for enabling all acceleration features has been reduced from 24GB to 10GB.</li>
                                <li>Optimized configuration file feature switches, adding an independent formula detection switch to significantly improve speed and parsing results when formula detection is not needed.</li>
                                <li>Integrated <a href="https://github.com/opendatalab/PDF-Extract-Kit">PDF-Extract-Kit 1.0</a>:
                                  <ul>
                                    <li>Added the self-developed <code>doclayout_yolo</code> model, which speeds up processing by more than 10 times compared to the original solution while maintaining similar parsing effects, and can be freely switched with <code>layoutlmv3</code> via the configuration file.</li>
                                    <li>Upgraded formula parsing to <code>unimernet 0.2.1</code>, improving formula parsing accuracy while significantly reducing memory usage.</li>
                                    <li>Due to the repository change for <code>PDF-Extract-Kit 1.0</code>, you need to re-download the model. Please refer to <a href="https://github.com/opendatalab/MinerU/blob/master/docs/how_to_download_models_en.md">How to Download Models</a> for detailed steps.</li>
                                  </ul>
                                </li>
                                

                                2024/09/27 Version 0.8.1 released

                                Fixed some bugs, and providing a localized deployment version of the online demo and the front-end interface.

                                2024/09/09 Version 0.8.0 released

                                Supporting fast deployment with Dockerfile, and launching demos on Huggingface and Modelscope.

                                2024/08/30 Version 0.7.1 released

                                Add paddle tablemaster table recognition option

                                2024/08/09 Version 0.7.0b1 released

                                Simplified installation process, added table recognition functionality

                                2024/08/01 Version 0.6.2b1 released

                                Optimized dependency conflict issues and installation documentation

                                2024/07/05 Initial open-source release

                                MinerU

                                Project Introduction

                                MinerU is a tool that converts PDFs into machine-readable formats (e.g., markdown, JSON), allowing for easy extraction into any format. MinerU was born during the pre-training process of InternLM. We focus on solving symbol conversion issues in scientific literature and hope to contribute to technological development in the era of large models. Compared to well-known commercial products, MinerU is still young. If you encounter any issues or if the results are not as expected, please submit an issue on issue and attach the relevant PDF.

                                https://github.com/user-attachments/assets/4bea02c9-6d54-4cd6-97ed-dff14340982c

                                Key Features

                                • Remove headers, footers, footnotes, page numbers, etc., to ensure semantic coherence.
                                • Output text in human-readable order, suitable for single-column, multi-column, and complex layouts.
                                • Preserve the structure of the original document, including headings, paragraphs, lists, etc.
                                • Extract images, image descriptions, tables, table titles, and footnotes.
                                • Automatically recognize and convert formulas in the document to LaTeX format.
                                • Automatically recognize and convert tables in the document to HTML format.
                                • Automatically detect scanned PDFs and garbled PDFs and enable OCR functionality.
                                • OCR supports detection and recognition of 84 languages.
                                • Supports multiple output formats, such as multimodal and NLP Markdown, JSON sorted by reading order, and rich intermediate formats.
                                • Supports various visualization results, including layout visualization and span visualization, for efficient confirmation of output quality.
                                • Supports running in a pure CPU environment, and also supports GPU(CUDA)/NPU(CANN)/MPS acceleration
                                • Compatible with Windows, Linux, and Mac platforms.

                                Quick Start

                                If you encounter any installation issues, please first consult the FAQ.

                                If the parsing results are not as expected, refer to the Known Issues.

                                Online Experience

                                Official online web application

                                The official online version has the same functionality as the client, with a beautiful interface and rich features, requires login to use

                                • OpenDataLab

                                Gradio-based online demo

                                A WebUI developed based on Gradio, with a simple interface and only core parsing functionality, no login required

                                • ModelScope
                                • HuggingFace

                                Local Deployment

                                [!WARNING] Pre-installation Notice—Hardware and Software Environment Support

                                To ensure the stability and reliability of the project, we only optimize and test for specific hardware and software environments during development. This ensures that users deploying and running the project on recommended system configurations will get the best performance with the fewest compatibility issues.

                                By focusing resources on the mainline environment, our team can more efficiently resolve potential bugs and develop new features.

                                In non-mainline environments, due to the diversity of hardware and software configurations, as well as third-party dependency compatibility issues, we cannot guarantee 100% project availability. Therefore, for users who wish to use this project in non-recommended environments, we suggest carefully reading the documentation and FAQ first. Most issues already have corresponding solutions in the FAQ. We also encourage community feedback to help us gradually expand support.

                                Parsing Backend pipeline vlm-transformers vlm-sglang
                                Operating System Linux / Windows / macOS Linux / Windows Linux / Windows (via WSL2)
                                CPU Inference Support
                                GPU Requirements Turing architecture and later, 6GB+ VRAM or Apple Silicon Turing architecture and later, 8GB+ VRAM
                                Memory Requirements Minimum 16GB+, recommended 32GB+
                                Disk Space Requirements 20GB+, SSD recommended
                                Python Version 3.10-3.13

                                Install MinerU

                                Install MinerU using pip or uv

                                pip install --upgrade pip
                                pip install uv
                                uv pip install -U "mineru[core]"
                                

                                Install MinerU from source code

                                git clone https://github.com/opendatalab/MinerU.git
                                cd MinerU
                                uv pip install -e .[core]
                                

                                [!TIP] mineru[core] includes all core features except sglang acceleration, compatible with Windows / Linux / macOS systems, suitable for most users. If you need to use sglang acceleration for VLM model inference or install a lightweight client on edge devices, please refer to the documentation Extension Modules Installation Guide.


                                Deploy MinerU using Docker

                                MinerU provides a convenient Docker deployment method, which helps quickly set up the environment and solve some tricky environment compatibility issues. You can get the Docker Deployment Instructions in the documentation.


                                Using MinerU

                                The simplest command line invocation is:

                                mineru -p <input_path> -o <output_path>
                                

                                You can use MinerU for PDF parsing through various methods such as command line, API, and WebUI. For detailed instructions, please refer to the Usage Guide.

                                TODO

                                • Reading order based on the model
                                • Recognition of index and list in the main text
                                • Table recognition
                                • Heading Classification
                                • Handwritten Text Recognition
                                • Vertical Text Recognition
                                • Latin Accent Mark Recognition
                                • Code block recognition in the main text
                                • Chemical formula recognition
                                • Geometric shape recognition

                                Known Issues

                                • Reading order is determined by the model based on the spatial distribution of readable content, and may be out of order in some areas under extremely complex layouts.
                                • Limited support for vertical text.
                                • Tables of contents and lists are recognized through rules, and some uncommon list formats may not be recognized.
                                • Code blocks are not yet supported in the layout model.
                                • Comic books, art albums, primary school textbooks, and exercises cannot be parsed well.
                                • Table recognition may result in row/column recognition errors in complex tables.
                                • OCR recognition may produce inaccurate characters in PDFs of lesser-known languages (e.g., diacritical marks in Latin script, easily confused characters in Arabic script).
                                • Some formulas may not render correctly in Markdown.

                                FAQ

                                • If you encounter any issues during usage, you can first check the FAQ for solutions.
                                • If your issue remains unresolved, you may also use DeepWiki to interact with an AI assistant, which can address most common problems.
                                • If you still cannot resolve the issue, you are welcome to join our community via Discord or WeChat to discuss with other users and developers.

                                All Thanks To Our Contributors

                                License Information

                                LICENSE.md

                                Currently, some models in this project are trained based on YOLO. However, since YOLO follows the AGPL license, it may impose restrictions on certain use cases. In future iterations, we plan to explore and replace these with models under more permissive licenses to enhance user-friendliness and flexibility.

                                Acknowledgments

                                Citation

                                @misc{wang2024mineruopensourcesolutionprecise,
                                      title={MinerU: An Open-Source Solution for Precise Document Content Extraction}, 
                                      author={Bin Wang and Chao Xu and Xiaomeng Zhao and Linke Ouyang and Fan Wu and Zhiyuan Zhao and Rui Xu and Kaiwen Liu and Yuan Qu and Fukai Shang and Bo Zhang and Liqun Wei and Zhihao Sui and Wei Li and Botian Shi and Yu Qiao and Dahua Lin and Conghui He},
                                      year={2024},
                                      eprint={2409.18839},
                                      archivePrefix={arXiv},
                                      primaryClass={cs.CV},
                                      url={https://arxiv.org/abs/2409.18839}, 
                                }
                                
                                @article{he2024opendatalab,
                                  title={Opendatalab: Empowering general artificial intelligence with open datasets},
                                  author={He, Conghui and Li, Wei and Jin, Zhenjiang and Xu, Chao and Wang, Bin and Lin, Dahua},
                                  journal={arXiv preprint arXiv:2407.13773},
                                  year={2024}
                                }
                                

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