PyMuPDF 文档加载器。有关 __ModuleName__Loader 所有功能和配置的详细文档,请参阅 API 参考。
概览
集成详情
| 类别 | 包 | 本地 | 可序列化 | JS 支持 |
|---|---|---|---|---|
| PyMuPDFLoader | langchain-community | ✅ | ❌ | ❌ |
加载器功能
| 来源 | 文档延迟加载 | 原生异步支持 | 提取图像 | 提取表格 |
|---|---|---|---|---|
| PyMuPDFLoader | ✅ | ❌ | ✅ | ✅ |
设置
凭据
使用 PyMuPDFLoader 无需凭据 如果您想获得对模型调用的自动化、一流的跟踪,您也可以通过取消下面的注释来设置您的 LangSmith API 密钥:复制
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# os.environ["LANGSMITH_API_KEY"] = getpass.getpass("Enter your LangSmith API key: ")
# os.environ["LANGSMITH_TRACING"] = "true"
安装
安装 langchain-community 和 pymupdf。复制
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%pip install -qU langchain-community pymupdf
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Note: you may need to restart the kernel to use updated packages.
初始化
现在我们可以实例化模型对象并加载文档复制
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from langchain_community.document_loaders import PyMuPDFLoader
file_path = "./example_data/layout-parser-paper.pdf"
loader = PyMuPDFLoader(file_path)
加载
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docs = loader.load()
docs[0]
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Document(metadata={'producer': 'pdfTeX-1.40.21', 'creator': 'LaTeX with hyperref', 'creationdate': '2021-06-22T01:27:10+00:00', 'source': './example_data/layout-parser-paper.pdf', 'file_path': './example_data/layout-parser-paper.pdf', 'total_pages': 16, 'format': 'PDF 1.5', 'title': '', 'author': '', 'subject': '', 'keywords': '', 'moddate': '2021-06-22T01:27:10+00:00', 'trapped': '', 'page': 0}, page_content='LayoutParser: A Unified Toolkit for Deep\nLearning Based Document Image Analysis\nZejiang Shen1 (\x00), Ruochen Zhang2, Melissa Dell3, Benjamin Charles Germain\nLee4, Jacob Carlson3, and Weining Li5\n1 Allen Institute for AI\nshannons@allenai.org\n2 Brown University\nruochen zhang@brown.edu\n3 Harvard University\n{melissadell,jacob carlson}@fas.harvard.edu\n4 University of Washington\nbcgl@cs.washington.edu\n5 University of Waterloo\nw422li@uwaterloo.ca\nAbstract. Recent advances in document image analysis (DIA) have been\nprimarily driven by the application of neural networks. Ideally, research\noutcomes could be easily deployed in production and extended for further\ninvestigation. However, various factors like loosely organized codebases\nand sophisticated model configurations complicate the easy reuse of im-\nportant innovations by a wide audience. Though there have been on-going\nefforts to improve reusability and simplify deep learning (DL) model\ndevelopment in disciplines like natural language processing and computer\nvision, none of them are optimized for challenges in the domain of DIA.\nThis represents a major gap in the existing toolkit, as DIA is central to\nacademic research across a wide range of disciplines in the social sciences\nand humanities. This paper introduces LayoutParser, an open-source\nlibrary for streamlining the usage of DL in DIA research and applica-\ntions. The core LayoutParser library comes with a set of simple and\nintuitive interfaces for applying and customizing DL models for layout de-\ntection, character recognition, and many other document processing tasks.\nTo promote extensibility, LayoutParser also incorporates a community\nplatform for sharing both pre-trained models and full document digiti-\nzation pipelines. We demonstrate that LayoutParser is helpful for both\nlightweight and large-scale digitization pipelines in real-word use cases.\nThe library is publicly available at https://layout-parser.github.io.\nKeywords: Document Image Analysis · Deep Learning · Layout Analysis\n· Character Recognition · Open Source library · Toolkit.\n1\nIntroduction\nDeep Learning(DL)-based approaches are the state-of-the-art for a wide range of\ndocument image analysis (DIA) tasks including document image classification [11,\narXiv:2103.15348v2 [cs.CV] 21 Jun 2021')
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import pprint
pprint.pp(docs[0].metadata)
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{'producer': 'pdfTeX-1.40.21',
'creator': 'LaTeX with hyperref',
'creationdate': '2021-06-22T01:27:10+00:00',
'source': './example_data/layout-parser-paper.pdf',
'file_path': './example_data/layout-parser-paper.pdf',
'total_pages': 16,
'format': 'PDF 1.5',
'title': '',
'author': '',
'subject': '',
'keywords': '',
'moddate': '2021-06-22T01:27:10+00:00',
'trapped': '',
'page': 0}
延迟加载
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pages = []
for doc in loader.lazy_load():
pages.append(doc)
if len(pages) >= 10:
# do some paged operation, e.g.
# index.upsert(page)
pages = []
len(pages)
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6
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print(pages[0].page_content[:100])
pprint.pp(pages[0].metadata)
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LayoutParser: A Unified Toolkit for DL-Based DIA
11
focuses on precision, efficiency, and robustness. T
{'producer': 'pdfTeX-1.40.21',
'creator': 'LaTeX with hyperref',
'creationdate': '2021-06-22T01:27:10+00:00',
'source': './example_data/layout-parser-paper.pdf',
'file_path': './example_data/layout-parser-paper.pdf',
'total_pages': 16,
'format': 'PDF 1.5',
'title': '',
'author': '',
'subject': '',
'keywords': '',
'moddate': '2021-06-22T01:27:10+00:00',
'trapped': '',
'page': 10}
- 源
- 页(如果在 *page* 模式下)
- 总页数
- 创建日期
- 创建者
- 制作者
拆分模式和自定义页面分隔符
加载 PDF 文件时,可以通过两种不同的方式进行拆分- 按页
- 作为单个文本流
按页提取 PDF。每页都提取为一个 langchain Document 对象
复制
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loader = PyMuPDFLoader(
"./example_data/layout-parser-paper.pdf",
mode="page",
)
docs = loader.load()
print(len(docs))
pprint.pp(docs[0].metadata)
复制
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16
{'producer': 'pdfTeX-1.40.21',
'creator': 'LaTeX with hyperref',
'creationdate': '2021-06-22T01:27:10+00:00',
'source': './example_data/layout-parser-paper.pdf',
'file_path': './example_data/layout-parser-paper.pdf',
'total_pages': 16,
'format': 'PDF 1.5',
'title': '',
'author': '',
'subject': '',
'keywords': '',
'moddate': '2021-06-22T01:27:10+00:00',
'trapped': '',
'page': 0}
将整个 PDF 提取为一个 langchain Document 对象
复制
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loader = PyMuPDFLoader(
"./example_data/layout-parser-paper.pdf",
mode="single",
)
docs = loader.load()
print(len(docs))
pprint.pp(docs[0].metadata)
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1
{'producer': 'pdfTeX-1.40.21',
'creator': 'LaTeX with hyperref',
'creationdate': '2021-06-22T01:27:10+00:00',
'source': './example_data/layout-parser-paper.pdf',
'file_path': './example_data/layout-parser-paper.pdf',
'total_pages': 16,
'format': 'PDF 1.5',
'title': '',
'author': '',
'subject': '',
'keywords': '',
'moddate': '2021-06-22T01:27:10+00:00',
'trapped': ''}
添加自定义 *pages_delimiter* 以在 *single* 模式下标识页面结束位置
复制
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loader = PyMuPDFLoader(
"./example_data/layout-parser-paper.pdf",
mode="single",
pages_delimiter="\n-------THIS IS A CUSTOM END OF PAGE-------\n",
)
docs = loader.load()
print(docs[0].page_content[:5780])
从 PDF 中提取图像
您可以使用三种不同的解决方案从 PDF 中提取图像- rapidOCR(轻量级光学字符识别工具)
- Tesseract(高精度 OCR 工具)
- 多模态语言模型
使用 rapidOCR 从 PDF 中提取图像
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%pip install -qU rapidocr-onnxruntime
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Note: you may need to restart the kernel to use updated packages.
复制
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from langchain_community.document_loaders.parsers import RapidOCRBlobParser
loader = PyMuPDFLoader(
"./example_data/layout-parser-paper.pdf",
mode="page",
images_inner_format="markdown-img",
images_parser=RapidOCRBlobParser(),
)
docs = loader.load()
print(docs[5].page_content)
使用 Tesseract 从 PDF 中提取图像
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%pip install -qU pytesseract
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Note: you may need to restart the kernel to use updated packages.
复制
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from langchain_community.document_loaders.parsers import TesseractBlobParser
loader = PyMuPDFLoader(
"./example_data/layout-parser-paper.pdf",
mode="page",
images_inner_format="html-img",
images_parser=TesseractBlobParser(),
)
docs = loader.load()
print(docs[5].page_content)
使用多模态模型从 PDF 中提取图像
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%pip install -qU langchain-openai
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Note: you may need to restart the kernel to use updated packages.
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import os
from dotenv import load_dotenv
load_dotenv()
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True
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from getpass import getpass
if not os.environ.get("OPENAI_API_KEY"):
os.environ["OPENAI_API_KEY"] = getpass("OpenAI API key =")
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from langchain_community.document_loaders.parsers import LLMImageBlobParser
from langchain_openai import ChatOpenAI
loader = PyMuPDFLoader(
"./example_data/layout-parser-paper.pdf",
mode="page",
images_inner_format="markdown-img",
images_parser=LLMImageBlobParser(model=ChatOpenAI(model="gpt-4o", max_tokens=1024)),
)
docs = loader.load()
print(docs[5].page_content)
从 PDF 中提取表格
使用 PyMUPDF,您可以从您的 PDF 中提取 html、markdown 或 csv 格式的表格复制
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loader = PyMuPDFLoader(
"./example_data/layout-parser-paper.pdf",
mode="page",
extract_tables="markdown",
)
docs = loader.load()
print(docs[4].page_content)
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LayoutParser: A Unified Toolkit for DL-Based DIA
5
Table 1: Current layout detection models in the LayoutParser model zoo
Dataset
Base Model1 Large Model
Notes
PubLayNet [38]
F / M
M
Layouts of modern scientific documents
PRImA [3]
M
-
Layouts of scanned modern magazines and scientific reports
Newspaper [17]
F
-
Layouts of scanned US newspapers from the 20th century
TableBank [18]
F
F
Table region on modern scientific and business document
HJDataset [31]
F / M
-
Layouts of history Japanese documents
1 For each dataset, we train several models of different sizes for different needs (the trade-offbetween accuracy
vs. computational cost). For “base model” and “large model”, we refer to using the ResNet 50 or ResNet 101
backbones [13], respectively. One can train models of different architectures, like Faster R-CNN [28] (F) and Mask
R-CNN [12] (M). For example, an F in the Large Model column indicates it has a Faster R-CNN model trained
using the ResNet 101 backbone. The platform is maintained and a number of additions will be made to the model
zoo in coming months.
layout data structures, which are optimized for efficiency and versatility. 3) When
necessary, users can employ existing or customized OCR models via the unified
API provided in the OCR module. 4) LayoutParser comes with a set of utility
functions for the visualization and storage of the layout data. 5) LayoutParser
is also highly customizable, via its integration with functions for layout data
annotation and model training. We now provide detailed descriptions for each
component.
3.1
Layout Detection Models
In LayoutParser, a layout model takes a document image as an input and
generates a list of rectangular boxes for the target content regions. Different
from traditional methods, it relies on deep convolutional neural networks rather
than manually curated rules to identify content regions. It is formulated as an
object detection problem and state-of-the-art models like Faster R-CNN [28] and
Mask R-CNN [12] are used. This yields prediction results of high accuracy and
makes it possible to build a concise, generalized interface for layout detection.
LayoutParser, built upon Detectron2 [35], provides a minimal API that can
perform layout detection with only four lines of code in Python:
1 import
layoutparser as lp
2 image = cv2.imread("image_file") # load
images
3 model = lp. Detectron2LayoutModel (
4
"lp:// PubLayNet/ faster_rcnn_R_50_FPN_3x /config")
5 layout = model.detect(image)
LayoutParser provides a wealth of pre-trained model weights using various
datasets covering different languages, time periods, and document types. Due to
domain shift [7], the prediction performance can notably drop when models are ap-
plied to target samples that are significantly different from the training dataset. As
document structures and layouts vary greatly in different domains, it is important
to select models trained on a dataset similar to the test samples. A semantic syntax
is used for initializing the model weights in LayoutParser, using both the dataset
name and model name lp://<dataset-name>/<model-architecture-name>.
|Dataset|Base Model1|Large Model|Notes|
|---|---|---|---|
|PubLayNet [38] PRImA [3] Newspaper [17] TableBank [18] HJDataset [31]|F / M M F F F / M|M &#45; &#45; F &#45;|Layouts of modern scientific documents Layouts of scanned modern magazines and scientific reports Layouts of scanned US newspapers from the 20th century Table region on modern scientific and business document Layouts of history Japanese documents|
使用文件
许多文档加载器都涉及解析文件。这些加载器之间的区别通常源于文件如何被解析,而不是文件如何被加载。例如,您可以使用open 读取 PDF 或 Markdown 文件的二进制内容,但您需要不同的解析逻辑才能将该二进制数据转换为文本。 因此,将解析逻辑与加载逻辑解耦可能会有所帮助,这使得无论数据如何加载,都更容易重用给定的解析器。您可以使用此策略,使用相同的解析参数来分析不同的文件。复制
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from langchain_community.document_loaders import FileSystemBlobLoader
from langchain_community.document_loaders.generic import GenericLoader
from langchain_community.document_loaders.parsers import PyMuPDFParser
loader = GenericLoader(
blob_loader=FileSystemBlobLoader(
path="./example_data/",
glob="*.pdf",
),
blob_parser=PyMuPDFParser(),
)
docs = loader.load()
print(docs[0].page_content)
pprint.pp(docs[0].metadata)
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LayoutParser: A Unified Toolkit for Deep
Learning Based Document Image Analysis
Zejiang Shen1 (�), Ruochen Zhang2, Melissa Dell3, Benjamin Charles Germain
Lee4, Jacob Carlson3, and Weining Li5
1 Allen Institute for AI
shannons@allenai.org
2 Brown University
ruochen zhang@brown.edu
3 Harvard University
{melissadell,jacob carlson}@fas.harvard.edu
4 University of Washington
bcgl@cs.washington.edu
5 University of Waterloo
w422li@uwaterloo.ca
Abstract. Recent advances in document image analysis (DIA) have been
primarily driven by the application of neural networks. Ideally, research
outcomes could be easily deployed in production and extended for further
investigation. However, various factors like loosely organized codebases
and sophisticated model configurations complicate the easy reuse of im-
portant innovations by a wide audience. Though there have been on-going
efforts to improve reusability and simplify deep learning (DL) model
development in disciplines like natural language processing and computer
vision, none of them are optimized for challenges in the domain of DIA.
This represents a major gap in the existing toolkit, as DIA is central to
academic research across a wide range of disciplines in the social sciences
and humanities. This paper introduces LayoutParser, an open-source
library for streamlining the usage of DL in DIA research and applica-
tions. The core LayoutParser library comes with a set of simple and
intuitive interfaces for applying and customizing DL models for layout de-
tection, character recognition, and many other document processing tasks.
To promote extensibility, LayoutParser also incorporates a community
platform for sharing both pre-trained models and full document digiti-
zation pipelines. We demonstrate that LayoutParser is helpful for both
lightweight and large-scale digitization pipelines in real-word use cases.
The library is publicly available at https://layout-parser.github.io.
Keywords: Document Image Analysis · Deep Learning · Layout Analysis
· Character Recognition · Open Source library · Toolkit.
1
Introduction
Deep Learning(DL)-based approaches are the state-of-the-art for a wide range of
document image analysis (DIA) tasks including document image classification [11,
arXiv:2103.15348v2 [cs.CV] 21 Jun 2021
{'source': 'example_data/layout-parser-paper.pdf',
'file_path': 'example_data/layout-parser-paper.pdf',
'total_pages': 16,
'format': 'PDF 1.5',
'title': '',
'author': '',
'subject': '',
'keywords': '',
'creator': 'LaTeX with hyperref',
'producer': 'pdfTeX-1.40.21',
'creationdate': '2021-06-22T01:27:10+00:00',
'moddate': '2021-06-22T01:27:10+00:00',
'trapped': '',
'page': 0}
复制
向 AI 提问
from langchain_community.document_loaders import CloudBlobLoader
from langchain_community.document_loaders.generic import GenericLoader
loader = GenericLoader(
blob_loader=CloudBlobLoader(
url="s3:/mybucket", # Supports s3://, az://, gs://, file:// schemes.
glob="*.pdf",
),
blob_parser=PyMuPDFParser(),
)
docs = loader.load()
print(docs[0].page_content)
pprint.pp(docs[0].metadata)
API 参考
有关PyMuPDFLoader 所有功能和配置的详细文档,请参阅 API 参考:python.langchain.com/api_reference/community/document_loaders/langchain_community.document_loaders.pdf.PyMuPDFLoader.html
以编程方式连接这些文档到 Claude、VSCode 等,通过 MCP 获取实时答案。