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Side-by-side comparison

Dify vs LangChain

Dify

Build and run AI apps with cloud or self-hosted deployment

AgenticnessGuided Assistant
vs
LangChain

Build agentic LLM apps with a modular Python framework

AgenticnessGuided Assistant

Side-by-side comparison based on our agenticness evaluation framework

At a glance

Quick Facts

FeatureDifyLangChain
CategoryAgent Frameworks & OrchestrationAgent Frameworks & Orchestration
DeploymentHybrid (cloud + self-hosted)Self-hosted
Autonomy LevelSemi-autonomousCopilot (human-in-loop)
Model SupportMulti-modelMulti-model
Open SourceYesYes
MCP Support--Yes
Team SupportSmall teamSmall team
Pricing ModelFree / open sourceFree / open source
Interfaceweb, apiapi, cli
32-point evaluation

Agenticness

10/32
Guided Assistant
Dify
8/32
Guided Assistant
LangChain

Dimension Breakdown (0-4 each)

Action Capability
Dify
1
LangChain
2
Autonomy
Dify
1
LangChain
1
Planning
Dify
2
LangChain
1
Adaptation
Dify
0
LangChain
1
State & Memory
Dify
2
LangChain
1
Reliability
Dify
1
LangChain
0
Interoperability
Dify
1
LangChain
1
Safety
Dify
2
LangChain
1

Scores from our agenticness evaluation framework. Higher is more autonomous.

Features & Use Cases

Dify

Features

  • Cloud-hosted and self-hosted deployment options
  • Free sandbox with 200 message credits
  • Supports OpenAI, Anthropic, Llama 2, Azure OpenAI, Hugging Face, and Replicate
  • Builds chatbot, text generator, agent, chatflow, and workflow apps
  • Knowledge base with document upload and knowledge storage limits
  • Publish apps as a web app or API
  • App logs and runtime data analysis
  • Role management and web app branding customization

Use Cases

  • A developer prototyping an AI app with the free sandbox before moving to a paid workspace
  • A small team building a production chatbot or workflow app with document retrieval
  • A company that wants a self-hosted option for tighter infrastructure control
  • A team that needs to publish AI functionality as an API or web app
  • An organization that wants to compare model providers in one platform
LangChain

Features

  • Python framework for building agents and LLM applications
  • Interoperable interfaces for models, embeddings, vector stores, and retrievers
  • Third-party integrations for data sources, tools, and model providers
  • Modular component-based architecture for composing workflows
  • Works with LangGraph for more controllable agent orchestration
  • Integrates with LangSmith for debugging, evaluation, and deployment support
  • Open-source MIT-licensed codebase

Use Cases

  • Building custom AI agents that call tools and external systems
  • Prototyping LLM applications before hardening them for production
  • Connecting language models to retrieval and data-augmentation workflows
  • Swapping model providers while keeping application logic stable
  • Developing and debugging agent workflows alongside LangGraph and LangSmith

Pricing

Dify
- **Free:** Sandbox plan with 200 message credits, 1 team workspace, 1 team member, 5 apps, 50 knowledge documents, and limited throughput. - **Professional ($59/workspace/month):** 5,000 message credits/month, 3 team members, 50 apps, 500 knowledge documents, and higher limits for workflows and API usage. - **Team ($159/workspace/month):** 10,000 message credits/month, 50 team members, 200 apps, 1,000 knowledge documents, and higher throughput plus unlimited log history. - **Enterprise:** Pricing not publicly listed; contact sales.
LangChain
- **Free:** Open-source library under the MIT license - **Pro:** Not publicly available for the core library - **Enterprise:** Not publicly available from the README content
Analysis

Our Verdict

Pick Dify when you need a production-oriented AI app platform that teams can publish as a web app/API with built-in knowledge-base document handling, app logs/runtime analysis, and workspace-based collaboration—starting from a sandbox and scaling via plan-based limits. Pick LangChain when you want to engineer bespoke agent workflows in Python by composing models, retrievers, and external tools with a modular architecture, ideally alongside LangGraph (orchestration control) and LangSmith (debugging/evaluation) in a fully self-hosted setup.

Choose Dify if...

  • +Choose Dify if you want a managed (cloud) or self-hosted *application platform* to build and ship production LLM apps like chatbots, agent apps, and “chatflow/workflow” apps—with publishing as a web app or API, plus built-in app logs/runtime data analysis and team collaboration via workspaces.
  • +Choose Dify if your team needs an opinionated RAG/knowledge-base experience: document upload with defined knowledge storage limits, centralized “knowledge base” for retrieval, and model-provider selection in one place (OpenAI, Anthropic, Llama 2, Azure OpenAI, Hugging Face, Replicate).
  • +Choose Dify if you want to move from prototyping to governed team usage: the free sandbox (200 message credits) to validate an app, then paid plans that increase message credits, knowledge-document limits, workflow/API usage, and (on Team) unlimited log history.

Choose LangChain if...

  • +Choose LangChain if you’re building a custom agent/LLM system in code and want a modular Python framework to wire together models, embeddings, retrievers/vector stores, and tool integrations into multi-step workflows.
  • +Choose LangChain if you want deeper developer control over orchestration and debugging by pairing it with the surrounding ecosystem: use LangGraph for more controllable agent orchestration and LangSmith for debugging, evaluation, and deployment workflows.
  • +Choose LangChain if you prefer a fully self-hosted, open-source “agent engineering” approach where your application logic lives in your codebase (MIT-licensed library), making it easier to swap model providers while keeping your workflow components stable.