Dify
English
English
  • Getting Started
    • Welcome to Dify
      • Features and Specifications
      • List of Model Providers
    • Dify Community
      • Deploy with Docker Compose
      • Start with Local Source Code
      • Deploy with aaPanel
      • Start Frontend Docker Container Separately
      • Environment Variables Explanation
      • FAQs
    • Dify Cloud
    • Dify Premium on AWS
    • Dify for Education
  • Guides
    • Model
      • Add New Provider
      • Predefined Model Integration
      • Custom Model Integration
      • Interfaces
      • Schema
      • Load Balancing
    • Application Orchestration
      • Create Application
      • Chatbot Application
        • Multiple Model Debugging
      • Agent
      • Application Toolkits
        • Moderation Tool
    • Workflow
      • Key Concepts
      • Variables
      • Node Description
        • Start
        • End
        • Answer
        • LLM
        • Knowledge Retrieval
        • Question Classifier
        • Conditional Branch IF/ELSE
        • Code Execution
        • Template
        • Doc Extractor
        • List Operator
        • Variable Aggregator
        • Variable Assigner
        • Iteration
        • Parameter Extraction
        • HTTP Request
        • Agent
        • Tools
        • Loop
      • Shortcut Key
      • Orchestrate Node
      • File Upload
      • Error Handling
        • Predefined Error Handling Logic
        • Error Type
      • Additional Features
      • Debug and Preview
        • Preview and Run
        • Step Run
        • Conversation/Run Logs
        • Checklist
        • Run History
      • Application Publishing
      • Structured Outputs
      • Bulletin: Image Upload Replaced by File Upload
    • Knowledge
      • Create Knowledge
        • 1. Import Text Data
          • 1.1 Import Data from Notion
          • 1.2 Import Data from Website
        • 2. Choose a Chunk Mode
        • 3. Select the Indexing Method and Retrieval Setting
      • Manage Knowledge
        • Maintain Documents
        • Maintain Knowledge via API
      • Metadata
      • Integrate Knowledge Base within Application
      • Retrieval Test / Citation and Attributions
      • Knowledge Request Rate Limit
      • Connect to an External Knowledge Base
      • External Knowledge API
    • Tools
      • Quick Tool Integration
      • Advanced Tool Integration
      • Tool Configuration
        • Google
        • Bing
        • SearchApi
        • StableDiffusion
        • Dall-e
        • Perplexity Search
        • AlphaVantage
        • Youtube
        • SearXNG
        • Serper
        • SiliconFlow (Flux AI Supported)
        • ComfyUI
    • Publishing
      • Publish as a Single-page Web App
        • Web App Settings
        • Text Generator Application
        • Conversation Application
      • Embedding In Websites
      • Developing with APIs
      • Re-develop Based on Frontend Templates
    • Annotation
      • Logs and Annotation
      • Annotation Reply
    • Monitoring
      • Data Analysis
      • Integrate External Ops Tools
        • Integrate LangSmith
        • Integrate Langfuse
        • Integrate Opik
    • Extension
      • API-Based Extension
        • External Data Tool
        • Deploy API Tools with Cloudflare Workers
        • Moderation
      • Code-Based Extension
        • External Data Tool
        • Moderation
    • Collaboration
      • Discover
      • Invite and Manage Members
    • Management
      • App Management
      • Team Members Management
      • Personal Account Management
      • Subscription Management
      • Version Control
  • Workshop
    • Basic
      • How to Build an AI Image Generation App
    • Intermediate
      • Build An Article Reader Using File Upload
      • Building a Smart Customer Service Bot Using a Knowledge Base
      • Generating analysis of Twitter account using Chatflow Agent
  • Community
    • Seek Support
    • Become a Contributor
    • Contributing to Dify Documentation
  • Plugins
    • Introduction
    • Quick Start
      • Install and Use Plugins
      • Develop Plugins
        • Initialize Development Tools
        • Tool Plugin
        • Model Plugin
          • Create Model Providers
          • Integrate the Predefined Model
          • Integrate the Customizable Model
        • Agent Strategy Plugin
        • Extension Plugin
        • Bundle
      • Debug Plugin
    • Manage Plugins
    • Schema Specification
      • Manifest
      • Endpoint
      • Tool
      • Agent
      • Model
        • Model Designing Rules
        • Model Schema
      • General Specifications
      • Persistent Storage
      • Reverse Invocation of the Dify Service
        • App
        • Model
        • Tool
        • Node
    • Best Practice
      • Develop a Slack Bot Plugin
      • Dify MCP Plugin Guide: Connect Zapier and Automate Email Delivery with Ease
    • Publish Plugins
      • Publish Plugins Automatically
      • Publish to Dify Marketplace
        • Plugin Developer Guidelines
        • Plugin Privacy Protection Guidelines
      • Publish to Your Personal GitHub Repository
      • Package the Plugin File and Publish it
      • Signing Plugins for Third-Party Signature Verification
    • FAQ
  • Development
    • Backend
      • DifySandbox
        • Contribution Guide
    • Models Integration
      • Integrate Open Source Models from Hugging Face
      • Integrate Open Source Models from Replicate
      • Integrate Local Models Deployed by Xinference
      • Integrate Local Models Deployed by OpenLLM
      • Integrate Local Models Deployed by LocalAI
      • Integrate Local Models Deployed by Ollama
      • Integrate Models on LiteLLM Proxy
      • Integrating with GPUStack for Local Model Deployment
      • Integrating AWS Bedrock Models (DeepSeek)
    • Migration
      • Migrating Community Edition to v1.0.0
  • Learn More
    • Use Cases
      • DeepSeek & Dify Integration Guide: Building AI Applications with Multi-Turn Reasoning
      • Private Deployment of Ollama + DeepSeek + Dify: Build Your Own AI Assistant
      • Build a Notion AI Assistant
      • Create a MidJourney Prompt Bot with Dify
      • Create an AI Chatbot with Business Data in Minutes
      • Integrating Dify Chatbot into Your Wix Website
      • How to connect with AWS Bedrock Knowledge Base?
      • Building the Dify Scheduler
      • Building an AI Thesis Slack Bot on Dify
    • Extended Reading
      • What is LLMOps?
      • Retrieval-Augmented Generation (RAG)
        • Hybrid Search
        • Re-ranking
        • Retrieval Modes
      • How to Use JSON Schema Output in Dify?
    • FAQ
      • Self-Host
      • LLM Configuration and Usage
      • Plugins
  • Policies
    • Open Source License
    • User Agreement
      • Terms of Service
      • Privacy Policy
      • Get Compliance Report
  • Features
    • Workflow
Powered by GitBook
On this page
  1. Guides
  2. Workflow
  3. Node Description

Doc Extractor

PreviousTemplateNextList Operator

Last updated 7 months ago

Definition

LLMs cannot directly read or interpret document contents. Therefore, it's necessary to parse and read information from user-uploaded documents through a document extractor node, convert it to text, and then pass the content to the LLM to process the file contents.

Application Scenarios

  • Building LLM applications that can interact with files, such as ChatPDF or ChatWord;

  • Analyzing and examining the contents of user-uploaded files;

Node Functionality

The document extractor node can be understood as an information processing center. It recognizes and reads files in the input variables, extracts information, and converts it into string-type output variables for downstream nodes to call.

The document extractor node structure is divided into input variables and output variables.

Input Variables

The document extractor only accepts variables with the following data structures:

  • File, a single file

  • Array[File], multiple files

The document extractor can only extract information from document-type files, such as the contents of TXT, Markdown, PDF, HTML, DOCX format files. It cannot process image, audio, video, or other file formats.

Output Variables

The output variable is fixed and named as text. The type of output variable depends on the input variable:

  • If the input variable is File, the output variable is string

  • If the input variable is Array[File], the output variable is array[string]

Array variables generally need to be used in conjunction with list operation nodes. For detailed instructions, please refer to list-operator.

Configuration Example

In a typical file interaction Q&A scenario, the document extractor can serve as a preliminary step for the LLM node, extracting file information from the application and passing it to the downstream LLM node to answer user questions about the file.

This section will introduce the usage of the document extractor node through a typical ChatPDF example workflow template.

Configuration Process:

  1. Enable file upload for the application. Add a single file variable in the "Start" node and name it pdf.

  2. Add a document extractor node and select the pdf variable in the input variables.

  3. Add an LLM node and select the output variable of the document extractor node in the system prompt. The LLM can read the contents of the file through this output variable.

Configure the end node by selecting the output variable of the LLM node in the end node.

After configuration, the application will have file upload functionality, allowing users to upload PDF files and engage in conversation.

To learn how to upload files in chat conversations and interact with the LLM, please refer to Additional Features.

doc extractor
Chatpdf workflow
chat with pdf