Open-source framework for building production-grade conversational AI assistants with full control over data and deployment.
An open-source platform for building AI assistants and chatbots — gives you full control over your conversational AI without vendor lock-in.
Rasa is an open-source conversational AI framework that gives developers complete control over building, training, and deploying AI assistants. Unlike hosted platforms, Rasa runs entirely on your infrastructure, making it the go-to choice for enterprises with strict data privacy, security, or compliance requirements. The framework consists of two main components: Rasa Open Source for building the conversational logic and NLU pipeline, and Rasa Pro (commercial) which adds enterprise features like analytics, role-based access control, and a visual conversation builder called Rasa Studio. Rasa uses a unique approach combining traditional NLU (intent classification, entity extraction) with LLM-powered capabilities, allowing developers to leverage the reliability of structured dialog management alongside the flexibility of large language models. The framework supports CALM (Conversational AI with Language Models), an architecture that uses LLMs for understanding while maintaining deterministic business logic for critical paths. Rasa's training pipeline is fully customizable, supporting custom components, featurizers, and policies. The framework includes built-in support for slot filling, form handling, and complex multi-turn conversations. Rasa assistants can be connected to messaging channels like Slack, Telegram, Facebook Messenger, and custom frontends. The platform has a large open-source community with thousands of contributors and extensive documentation. Rasa Pro adds enterprise features including end-to-end testing, conversation-driven development tools, and production deployment infrastructure. Used by companies like Deutsche Telekom, Adobe, and BMW for production conversational AI deployments.
Was this helpful?
Open-source framework for building production-grade conversational AI assistants with full control over data and deployment.
Use Case:
Use Case:
Use Case:
Use Case:
Use Case:
Use Case:
Free
forever
Check website for pricing
Contact sales
Ready to get started with Rasa?
View Pricing Options →Enterprise conversational AI with data privacy requirements
Complex multi-turn dialog systems
Production chatbots needing deterministic behavior
Rasa works with these platforms and services:
We believe in transparent reviews. Here's what Rasa doesn't handle well:
Rasa Open Source is fully open source. Rasa Pro adds commercial enterprise features.
Yes, Rasa's CALM architecture integrates LLMs for understanding while maintaining deterministic business logic.
Rasa can run on any infrastructure — cloud, on-premise, or hybrid — using Docker/Kubernetes.
Rasa offers more control and customization but requires more engineering effort than hosted solutions.
Weekly insights on the latest AI tools, features, and trends delivered to your inbox.
People who use this tool also find these helpful
Standardized communication protocol for AI agents enabling interoperability and coordination across different agent frameworks.
CLI tool for scaffolding, building, and deploying AI agent projects with best-practice templates, tool integrations, and framework support.
Full-stack platform for building, testing, and deploying AI agents with built-in memory, tools, and team orchestration capabilities.
Lightweight Python framework for building modular AI agents with schema-driven I/O using Pydantic and Instructor.
Latest version of the pioneering autonomous AI agent with enhanced planning, tool usage, and memory capabilities.
IBM's open-source TypeScript framework for building production AI agents with structured tool use, memory management, and observability.
See how Rasa compares to Voiceflow and other alternatives
View Full Comparison →No-Code Builders
Conversational AI platform for building voice and chat agents with visual design tools and multi-channel deployment.
Automation & Workflows
Dify is an open-source platform for building AI applications that combines visual workflow design, model management, and knowledge base integration in one tool. It lets you create chatbots, AI agents, and workflow automations by connecting AI models with your data sources, APIs, and business logic through a drag-and-drop interface. Dify supports multiple LLM providers (OpenAI, Anthropic, open-source models), offers RAG pipeline configuration, and provides tools for prompt engineering, model comparison, and application monitoring. Available as cloud-hosted or self-hosted with Docker.
AI Agent Builders
Framework for RAG, pipelines, and agentic search applications. This ai agent builders provides comprehensive solutions for businesses looking to optimize their operations.
No reviews yet. Be the first to share your experience!
Get started with Rasa and see if it's the right fit for your needs.
Get Started →Take our 60-second quiz to get personalized tool recommendations
Find Your Perfect AI Stack →Explore 20 ready-to-deploy AI agent templates for sales, support, dev, research, and operations.
Browse Agent Templates →