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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
36-point evaluation

Agenticness

13/36
Guided Assistant
Dify
9/36
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
1
LangChain
1
State & Memory
Dify
2
LangChain
0
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 / open source** — full functionality available at no cost.
LangChain
- **Free / open source** — full functionality available at no cost.
Analysis

Our Verdict

If you need a team-friendly, production app platform with knowledge bases, workflow/agent building, app publishing (web/API), and operational visibility (logs/runtime analysis)—go with Dify; it’s especially strong when you want the same AI app wired to multiple model providers with minimal engineering overhead. If instead you’re building bespoke agent behavior in Python and want fine-grained control over how components are chained—using LangChain as the wiring layer, then optionally LangGraph/LangSmith for orchestration control and debugging/evaluation—choose LangChain for its code-first, modular agent engineering approach.

Choose Dify if...

  • +Choose Dify if you want a managed (or self-hosted) *application platform* to build production-ready chatbots/agent apps and “chatflows”/“workflow apps,” including document-based knowledge bases, app publishing as a web app or API, and built-in app logs/runtime data analysis for operating the system.
  • +Choose Dify if your team benefits from collaboration and operations features—workspace-based team limits/role management, collaboration in shared workspaces, plus branding customization for published web apps—rather than building everything inside your own codebase.
  • +Choose Dify if you want a fast way to compare and run the same app across multiple model providers (OpenAI, Anthropic, Llama 2, Azure OpenAI, Hugging Face, Replicate) without reengineering your agent logic for each provider.
  • +Choose Dify if you want a hybrid path: start in the free sandbox (200 message credits) and then move into paid workspaces for higher usage and more team/workspace capacity.

Choose LangChain if...

  • +Choose LangChain if you’re a developer building *custom agent workflows in code* (Python) and want a modular “agent engineering” approach to connect models, tools, retrieval, and external systems into multi-step chains.
  • +Choose LangChain if you want maximum flexibility over orchestration and lifecycle tooling by pairing with LangGraph for more controllable agent orchestration and LangSmith for debugging, evaluation, and deployment support.
  • +Choose LangChain if you’re planning to swap model providers while keeping application logic stable, since its design emphasizes interoperable interfaces (models/embeddings/vector stores/retrievers) and third-party integrations.
  • +Choose LangChain if you prefer a purely self-hosted/open-source developer framework (install via pip/uv, MIT-licensed) rather than using a finished end-user app platform for publishing and observability.