This is an info Alert.
Full logo
  • Home
  • Agentic Frameworks
  • Agentic Browsers
  • Blog

AI Agentic Frameworks

Discover, compare, and choose the perfect AI agent framework for your next project. From LangChain to CrewAI, find comprehensive guides, comparisons, and tutorials.

40+ Frameworks • Feature Comparisons • Implementation Guides • Real-world Case Studies

​

Categories

Languages

Sort by

GitHub Stars

Difficulty

Pricing

Community Size

​
LangChain
LangChain

by LangChain Inc

RAG & Knowledge
Intermediate

Framework for building context-aware LLM applications

Key Features:
Sequential workflowsComponent chainingRAG pipelines
4.6
117,000
Open Source
Learn More
Dify
Dify

by Dify.AI

Visual Development
Intermediate

Production-ready platform for LLMOps and agent development

Key Features:
Visual agent builderLLMOpsRAG
4.6
100,000
Open Source + Cloud
Learn More
AutoGen
AutoGen

by Microsoft

Multi-Agent Systems
Advanced

Multi-agent conversation framework for LLM applications

Key Features:
Multi-agent conversationsAutonomous task solvingHuman-in-the-loop
4.0
50,600
Open Source
Learn More
n8n
n8n

by n8n GmbH

Workflow Orchestration
Beginner

Fair-code workflow automation with native AI capabilities

Key Features:
Workflow automationBusiness process automationAPI integration
4.6
49,500
Freemium • 20
Learn More
LlamaIndex Agents
LlamaIndex Agents

by LlamaIndex

RAG & Knowledge
Intermediate

Data framework for LLM applications with agent support

Key Features:
RAG applicationsData ingestionAgent workflows
4.4
44,600
Open Source + Cloud
Learn More
Langflow
Langflow

by Langflow

Visual Development
Beginner

Low-code platform for building AI agents and RAG workflows

Key Features:
Visual workflow designAPI generationRAG applications
4.4
44,100
Open Source
Learn More
CrewAI
CrewAI

by CrewAI Inc

Multi-Agent Systems
Intermediate

Framework for orchestrating role-playing autonomous AI agents

Key Features:
Role-based agentsCollaborative workflowsTask delegation
4.2
39,200
Open Source + Enterprise
Learn More
Flowise
Flowise

by FlowiseAI

Visual Development
Beginner

Open-source low-code tool for building customized LLM flows

Key Features:
Visual AI workflowsDrag-and-drop builderRAG applications
3.8
30,000
Open Source + Cloud
Learn More
LangGraph
LangGraph

by LangChain Inc

Multi-Agent Systems
Advanced

Low-level orchestration framework for stateful multi-agent systems

Key Features:
Graph-based workflowsState managementMulti-agent orchestration
4.2
19,900
Open Source + Commercial
Learn More
Browse All 38 Frameworks

Browse Frameworks by Language

Agency Swarm
AgentDock
AutoGen
AWS Bedrock Agents
Azure AI Agent Service
ControlFlow
CrewAI
Dify
Google ADK
Google Vertex AI Agent Builder
Haystack
LangChain
Langflow
LangGraph
LlamaIndex Agents
Mem0
MetaGPT
Phidata (Agno)
Portia AI
Pydantic AI
Rasa
SmolAgents
SuperAGI
Swarms Framework
SwarmZero
TaskWeaver
Upsonic

Botpress
Flowise
Mastra
n8n
Rivet

Make (Integromat)
Voiceflow
Zapier Central (Agents)

Modus

OpenAI AgentKit

Semantic Kernel

LangChain vs LangGraph
Compare features, pricing, and use cases
AutoGen vs CrewAI
Compare features, pricing, and use cases
LangChain vs AutoGen
Compare features, pricing, and use cases
Dify vs Flowise
Compare features, pricing, and use cases
LangFlow vs n8n
Compare features, pricing, and use cases
CrewAI vs LangGraph
Compare features, pricing, and use cases
LlamaIndex vs LangChain
Compare features, pricing, and use cases
AutoGen vs LangGraph
Compare features, pricing, and use cases
Browse by Category:

Multi-Agent Systems (19)

Enterprise Integration (4)

Conversational AI (4)

Visual Development (4)

RAG & Knowledge (3)

Workflow Orchestration (2)

Research & Experimental (2)


AI Agent Framework Selection Guide

Answer a few questions to get personalized recommendations for the best AI agent framework for your project. Our decision matrix considers your experience level, project requirements, and team setup.

Tell us about your project requirements:
​
​
​
​

Getting Started Learning Pathways

Choose your learning path based on your background and goals. Each pathway is designed to take you from beginner to proficient in AI agent development, with recommended frameworks and step-by-step progression.

No-Code Visual Builder Path
Beginner
1-2 weeks

Start with visual, drag-and-drop tools to build AI agents without programming. Perfect for business users and rapid prototyping.

Learning Steps:
1
Start with n8n Workflows
3-5 days

Learn workflow automation and basic AI integrations using visual node-based editor.

2
Explore Dify Platform
2-3 days

Build conversational AI agents with visual interface and pre-built templates.

3
Advanced with Flowise
3-4 days

Create more complex LangChain flows using visual drag-and-drop interface.

Benefits:
• No programming required• Immediate visual feedback
Prerequisites:
• Basic understanding of workflows• Familiarity with business processes
Start No-Code Visual Builder Path
Python Developer Path
Intermediate
3-4 weeks

Comprehensive learning path for developers who want to build production-ready AI agent systems with code.

Learning Steps:
1
Master LangChain Basics
1 week

Learn the foundation of AI agent development with the most popular framework.

2
Explore CrewAI for Multi-Agents
5-7 days

Build teams of AI agents that work together on complex tasks.

3
Advanced with LangGraph
1-2 weeks

Create sophisticated stateful agents with graph-based workflows.

Benefits:
• Full control over agent behavior• Production-ready code
Prerequisites:
• Python programming experience• Basic understanding of APIs
Start Python Developer Path
Enterprise Implementation Path
Advanced
4-6 weeks

Focus on security, scalability, and enterprise-grade features for business-critical AI agent deployments.

Learning Steps:
1
Microsoft Semantic Kernel
1-2 weeks

Enterprise-grade framework with strong Microsoft ecosystem integration.

2
AutoGen for Complex Workflows
1-2 weeks

Build sophisticated multi-agent conversations for enterprise use cases.

3
Production Deployment
2-3 weeks

Learn containerization, monitoring, and scaling strategies.

Benefits:
• Enterprise security features• Scalable architecture
Prerequisites:
• Enterprise development experience• Understanding of security best practices
Start Enterprise Implementation Path
Research & Experimentation Path
Advanced
2-3 weeks

Cutting-edge frameworks for researchers and developers exploring the latest in AI agent technology.

Learning Steps:
1
LlamaIndex for RAG
5-7 days

Specialized framework for retrieval-augmented generation and data indexing.

2
Haystack for Search
5-7 days

End-to-end framework for building search and question-answering systems.

3
Custom Agent Development
1-2 weeks

Learn to build custom agents and experiment with novel architectures.

Benefits:
• Cutting-edge capabilities• Research-oriented features
Prerequisites:
• Advanced programming skills• Understanding of ML/NLP concepts
Start Research & Experimentation Path
Not sure which path to choose?

Use our framework selection guide above to get personalized recommendations based on your specific project requirements and experience level.

AI Agent Use Cases & Applications

Explore real-world applications of AI agent frameworks across different industries and use cases. From business automation to research and content creation, discover which frameworks excel in each domain.

Zapier Agents & Workflow Automation
Simple

Create intelligent automation workflows that connect multiple apps and services, with AI agents making decisions at each step.

Timeline:

1-2 weeks

Expected ROI:

200-400% productivity increase

Recommended Frameworks:
n8n
zapier
make.com
Key Features:
• No-code setup
• Multi-app integration
• Trigger-based automation
• Smart decision making
Industry Examples:

Lead qualification in CRM • Invoice processing • Customer onboarding

Explore Frameworks
Document Processing & Analysis
Moderate

AI agents that extract, analyze, and process documents automatically across business workflows.

Timeline:

2-4 weeks

Expected ROI:

150-300% efficiency gains

Recommended Frameworks:
langchain
llamaindex
dify
Key Features:
• OCR integration
• Content extraction
• Data validation
• Multi-format support
Industry Examples:

Contract analysis • Resume screening • Financial reporting

Explore Frameworks
Data Integration & Synchronization
Complex

Multi-agent systems that keep data synchronized across platforms and databases with intelligent conflict resolution.

Timeline:

4-8 weeks

Expected ROI:

100-250% data accuracy improvement

Recommended Frameworks:
autogen
crewai
semantic-kernel
Key Features:
• Real-time sync
• Conflict resolution
• Data validation
• Error handling
Industry Examples:

ERP integration • Customer data unification • Inventory synchronization

Explore Frameworks

Want to implement business process automation? Start with our framework selection guide above to find the best tools for your specific requirements and technical constraints.

Intelligent Chatbots & Virtual Assistants
Moderate

AI agents that provide 24/7 customer support with natural conversation and escalation capabilities.

Timeline:

2-3 weeks

Expected ROI:

40-60% reduction in support costs

Recommended Frameworks:
dify
rasa
botframework
Key Features:
• Natural language processing
• Context awareness
• Multi-channel support
• Human handoff
Industry Examples:

E-commerce support • Technical helpdesk • Banking queries

Explore Frameworks
Multi-Agent Customer Journey
Complex

Specialized AI agents working together to handle complex customer interactions across multiple touchpoints.

Timeline:

4-6 weeks

Expected ROI:

25-40% increase in customer satisfaction

Recommended Frameworks:
crewai
autogen
langgraph
Key Features:
• Agent specialization
• Seamless handoffs
• Journey tracking
• Personalization
Industry Examples:

Enterprise sales support • Complex technical issues • Multi-product consultations

Explore Frameworks
Proactive Support & Monitoring
Complex

AI agents that monitor systems and customer behavior to provide proactive support and prevent issues.

Timeline:

3-5 weeks

Expected ROI:

30-50% reduction in support tickets

Recommended Frameworks:
langchain
haystack
semantic-kernel
Key Features:
• Predictive analytics
• Real-time monitoring
• Automated alerts
• Preventive actions
Industry Examples:

System health monitoring • Usage pattern analysis • Churn prevention

Explore Frameworks

Want to implement customer support & communication? Start with our framework selection guide above to find the best tools for your specific requirements and technical constraints.

Automated Research & Information Gathering
Moderate

AI agents that collect, analyze, and synthesize information from multiple sources for comprehensive research.

Timeline:

2-4 weeks

Expected ROI:

300-500% faster research cycles

Recommended Frameworks:
langchain
llamaindex
haystack
Key Features:
• Multi-source aggregation
• Content summarization
• Citation tracking
• Quality assessment
Industry Examples:

Market research • Academic research • Competitive analysis

Explore Frameworks
Data Analysis & Insights Generation
Complex

Multi-agent systems that process large datasets and generate actionable insights and recommendations.

Timeline:

3-6 weeks

Expected ROI:

200-400% improvement in decision speed

Recommended Frameworks:
autogen
crewai
langchain
Key Features:
• Statistical analysis
• Pattern recognition
• Visualization
• Recommendation engine
Industry Examples:

Financial modeling • Customer segmentation • Risk assessment

Explore Frameworks
Knowledge Management & Discovery
Complex

AI agents that organize, index, and provide intelligent access to organizational knowledge bases.

Timeline:

4-8 weeks

Expected ROI:

150-300% faster knowledge access

Recommended Frameworks:
llamaindex
haystack
semantic-kernel
Key Features:
• Semantic search
• Knowledge graphs
• Content recommendations
• Expert identification
Industry Examples:

Enterprise knowledge base • Research databases • Legal document search

Explore Frameworks

Want to implement research & data analysis? Start with our framework selection guide above to find the best tools for your specific requirements and technical constraints.

Automated Content Creation
Simple

AI agents that generate blog posts, social media content, and marketing materials with brand consistency.

Timeline:

1-3 weeks

Expected ROI:

400-600% increase in content output

Recommended Frameworks:
langchain
dify
gpt-engineer
Key Features:
• Multi-format content
• Brand voice matching
• SEO optimization
• Bulk generation
Industry Examples:

Blog writing • Social media posts • Product descriptions

Explore Frameworks
Multi-Channel Marketing Campaigns
Complex

Coordinated AI agents that create, schedule, and optimize marketing campaigns across multiple channels.

Timeline:

4-6 weeks

Expected ROI:

100-200% improvement in campaign ROI

Recommended Frameworks:
crewai
autogen
langgraph
Key Features:
• Campaign coordination
• A/B testing
• Performance optimization
• Cross-channel consistency
Industry Examples:

Integrated campaigns • Influencer outreach • Event promotion

Explore Frameworks
Personalized Content & Recommendations
Complex

AI agents that create personalized content and product recommendations based on user behavior and preferences.

Timeline:

3-5 weeks

Expected ROI:

50-150% increase in engagement

Recommended Frameworks:
langchain
semantic-kernel
llamaindex
Key Features:
• User profiling
• Dynamic personalization
• Recommendation algorithms
• Real-time adaptation
Industry Examples:

E-commerce recommendations • Personalized emails • Content curation

Explore Frameworks

Want to implement content generation & marketing? Start with our framework selection guide above to find the best tools for your specific requirements and technical constraints.

Need help choosing the right use case?

Consider starting with business automation use cases for quick wins and ROI, then expanding to more complex multi-agent systems as your team gains experience with AI agent frameworks.

Use Selection GuideBrowse All Frameworks

Integration Ecosystem & Connectivity

AI agent frameworks excel when connected to your existing tools and services. Explore how different frameworks integrate with popular platforms, from zapier agents and workflow automation to enterprise systems and cloud infrastructure.

Zapier
Workflow Platform

Create zapier agents that trigger on 6000+ app events. Connect AI frameworks to automate workflows across your entire tech stack.

Compatible Frameworks:
n8n
langchain
dify
flowise
Make.com (Integromat)
Workflow Platform

Visual automation platform for connecting AI agents with web services and APIs.

Compatible Frameworks:
n8n
langchain
autogen
Microsoft Power Automate
Enterprise Platform

Enterprise workflow automation with AI agent integration for Office 365 environments.

Compatible Frameworks:
semantic-kernel
langchain
IFTTT
Consumer Platform

Simple trigger-action automation for connecting AI agents to smart home and mobile apps.

Compatible Frameworks:
n8n
dify

Slack
Team Communication

Deploy AI agents as Slack bots for team automation, Q&A, and workflow management.

Compatible Frameworks:
langchain
autogen
crewai
botframework
Discord
Community Platform

Create AI agents for community management, moderation, and interactive experiences.

Compatible Frameworks:
langchain
autogen
dify
Microsoft Teams
Enterprise Communication

Enterprise AI agents for meeting summaries, task automation, and knowledge management.

Compatible Frameworks:
semantic-kernel
botframework
langchain
WhatsApp Business
Messaging Platform

AI agents for customer support and automated messaging via WhatsApp Business API.

Compatible Frameworks:
botframework
rasa
dify

Database Connections
Data Storage

Direct integration with SQL/NoSQL databases for data retrieval and analysis.

Compatible Frameworks:
langchain
llamaindex
autogen
semantic-kernel
REST APIs
API Integration

Universal API connectivity for integrating with any web service or microservice.

Compatible Frameworks:
langchain
autogen
crewai
haystack
Google Workspace
Document Platform

Access Google Sheets, Docs, Drive, and Gmail for document processing and automation.

Compatible Frameworks:
langchain
autogen
n8n
Salesforce
CRM Platform

CRM integration for lead qualification, customer support, and sales automation.

Compatible Frameworks:
langchain
semantic-kernel
autogen

AWS Services
Cloud Platform

Deploy agents on Lambda, ECS, or EC2 with integration to AWS AI services.

Compatible Frameworks:
langchain
autogen
semantic-kernel
Azure Cloud
Cloud Platform

Native integration with Azure AI services, Functions, and Container Instances.

Compatible Frameworks:
semantic-kernel
langchain
botframework
Google Cloud
Cloud Platform

Deploy on Cloud Run, Functions with access to Vertex AI and Google AI services.

Compatible Frameworks:
langchain
autogen
haystack
Docker & Kubernetes
Container Platform

Containerized deployment for scalable multi-agent systems and microservices.

Compatible Frameworks:
langchain
autogen
crewai
rasa
Integration Strategy Tips

When choosing an AI agent framework, consider your existing tech stack and integration requirements:

• Zapier agents work best with frameworks that support webhook triggers and API responses

• Enterprise environments should prioritize frameworks with strong security and compliance features

• Multi-agent systems require frameworks that can handle complex inter-agent communication

• Scalability needs favor cloud-native frameworks with container support

Framework Maturity & Community Landscape

Understanding the maturity, community health, and enterprise readiness of AI agent frameworks is crucial for making informed decisions. Explore key metrics, community insights, and long-term viability indicators.

LangChain
Multi-purpose Framework

94K stars

Moderate
Maturity Metrics:
Documentation Quality
Enterprise Readiness
Development Activity
Community SizeVery Large
Key Strengths:
• Extensive ecosystem• Active development
Backing:
Corporate
LangChain Inc.

View Details

AutoGen
Multi-Agent System

32K stars

Steep
Maturity Metrics:
Documentation Quality
Enterprise Readiness
Development Activity
Community SizeLarge
Key Strengths:
• Microsoft backing• Research-driven
Backing:
Corporate
Microsoft Research

View Details

CrewAI
Multi-Agent System

21K stars

Gentle
Maturity Metrics:
Documentation Quality
Enterprise Readiness
Development Activity
Community SizeMedium
Key Strengths:
• Intuitive design• Role-based agents
Backing:
Mixed
CrewAI Inc.

View Details

Semantic Kernel
Enterprise Framework

22K stars

Moderate
Maturity Metrics:
Documentation Quality
Enterprise Readiness
Development Activity
Community SizeLarge
Key Strengths:
• Enterprise-grade• Microsoft ecosystem
Backing:
Corporate
Microsoft

View Details

n8n
Workflow Automation

47K stars

Gentle
Maturity Metrics:
Documentation Quality
Enterprise Readiness
Development Activity
Community SizeLarge
Key Strengths:
• Visual interface• No-code approach
Backing:
Corporate
n8n GmbH

View Details

Dify
LLM Application Platform

52K stars

Gentle
Maturity Metrics:
Documentation Quality
Enterprise Readiness
Development Activity
Community SizeMedium
Key Strengths:
• All-in-one platform• Visual workflow
Backing:
Corporate
Dify.AI

View Details

Ecosystem Health & Trends
Market Maturity Trends

The AI agent framework landscape is rapidly evolving, with established players like LangChain leading in community adoption while newer frameworks like CrewAI focus on user experience.

Key Metrics:
• 94K+ GitHub stars across top frameworks• 500%+ growth in community size (2023-2024)• 40+ active frameworks in production
Enterprise Adoption Patterns

Enterprise organizations increasingly favor frameworks with strong governance, security features, and professional support options.

Key Metrics:
• Microsoft & Google backing key frameworks• 80% of Fortune 500 exploring AI agents• Security & compliance becoming key differentiators
Developer Community Health

Active communities, comprehensive documentation, and responsive maintainers are crucial indicators of framework longevity and success.

Key Metrics:
• Weekly release cycles common• Average response time < 24 hours for issues• Growing contribution from enterprise developers
Framework Selection Criteria for Long-term Success

When evaluating AI agent frameworks for production use, consider these critical factors:

Community Health: Active development, responsive maintainers, regular updates

Documentation Quality: Comprehensive guides, API references, tutorials

Enterprise Features: Security, scalability, compliance, support options

Ecosystem Maturity: Third-party integrations, plugin availability

Backing & Governance: Corporate sponsorship, open-source governance

Learning Resources: Training materials, community forums, examples

Framework Comparison

Select Frameworks to Compare (up to 6)
Agency Swarm
AgentDock
AutoGen
AWS Bedrock Agents
Azure AI Agent Service
Botpress
ControlFlow
CrewAI
Dify
Flowise
Google ADK
Google Vertex AI Agent Builder
Haystack
LangChain
Langflow
LangGraph
LlamaIndex Agents
Make (Integromat)
Mastra
Mem0
MetaGPT
Modus
n8n
OpenAI AgentKit
Phidata (Agno)
Portia AI
Pydantic AI
Rasa
Rivet
Semantic Kernel
SmolAgents
SuperAGI
Swarms Framework
SwarmZero
TaskWeaver
Upsonic
Voiceflow
Zapier Central (Agents)
Criteria
LangChain
LangGraph
AutoGen
CrewAI

Category

RAG & Knowledge
Multi-Agent Systems
Multi-Agent Systems
Multi-Agent Systems

Primary Language

Python

Python

Python

Python

License

MIT

MIT

Apache-2.0

MIT

Pricing

Open Source

Open Source + Commercial

Open Source

Open Source + Enterprise

Difficulty

Intermediate
Advanced
Advanced
Intermediate

Ease of Use

4/5
3/5
3/5
4/5

Scalability

5/5
5/5
4/5
4/5

Documentation

5/5
4/5
4/5
4/5

Community

5/5
4/5
5/5
5/5

Performance

4/5
5/5
4/5
4/5

GitHub Stars

117,000

19,900

50,600

39,200

Frequently Asked Questions

Get answers to common questions about AI agent frameworks, implementation, and choosing the right solution for your needs.

What is an AI agent framework?

An AI agent framework is a software structure that provides tools, libraries, and abstractions for building intelligent agents. These frameworks handle complex tasks like model integration, memory management, tool usage, and multi-agent coordination, allowing developers to focus on business logic rather than infrastructure.

Which framework is best for beginners?

For beginners, we recommend starting with n8n for visual workflow creation, CrewAI for its intuitive role-based approach, or LangChain if you prefer Python and have some programming experience. These frameworks offer excellent documentation and community support.

What's the difference between LangChain and LangGraph?

LangChain is a general-purpose framework for building LLM applications with chains and agents. LangGraph extends LangChain with graph-based workflows, offering more explicit control flow, state management, and debugging capabilities for complex, stateful applications.

Are these frameworks suitable for enterprise use?

Yes, several frameworks are enterprise-ready including Semantic Kernel (Microsoft), LangChain with enterprise features, AutoGen, and n8n. Consider factors like security, scalability, compliance, vendor support, and integration capabilities when choosing for enterprise use.

How do I choose between multi-agent and single-agent frameworks?

Choose multi-agent frameworks (AutoGen, CrewAI, LangGraph) when you need specialized agents working together, complex workflows with different roles, or parallel processing. Single-agent frameworks work well for simpler, linear tasks or when you want to start simple and scale up.

What programming languages are supported?

Python is the most widely supported language across frameworks. TypeScript/JavaScript is supported by LangChain, n8n, and LangGraph. C# developers should consider Semantic Kernel. Java support is available in Semantic Kernel. Check each framework's documentation for specific language support.

Are these frameworks free to use?

Most frameworks offer open-source versions that are free to use. However, some have commercial features, enterprise support, or cloud hosting that require payment. Check the pricing details for each framework, especially for commercial use or advanced features.

How do I handle framework updates and compatibility?

AI agent frameworks are rapidly evolving. Follow framework roadmaps, join their communities, use version pinning in production, test updates in staging environments, and consider the framework's stability and update frequency when choosing for production use.

Full logo

10X your AI agents' Impact by letting the AI Agents get the right context!

Let’s stay in touch
Ubscribe to our newsletter to receive latest articles to your inbox weekly.
  • Use Cases
    • Healthcare
    • n8n
  • About
    • About
    • Contact

© All rights reserved.Help center
Terms of service