ML and GenAI
made simple
Build better models and generative AI apps on a unified, end-to-end,
open source MLOps platform
open source MLOps platform
Join thousands of users worldwide
Run ML and generative AI projects that solve complex, real-world challenges
What makes MLflow different
Open Source
Integrate with any ML library and platform
Comprehensive
Manage end-to-end ML and GenAI workflows, from development to production
Unified
Unified platform for both traditional ML and GenAI applications
Streamline your entire ML and generative AI lifecycle in a dynamic landscape
- Generative AI
- Deep Learning
- Traditional ML
- Evaluation
- Model Management
- Improve generative AI quality
- Enhance LLM observability with tracing
- Build applications with prompt engineering
- Track progress during fine tuning
- Package and deploy models
- Securely host LLMs at scale with MLflow Deployments
Run MLflow anywhere
MLflow integrates with these tools and platforms
Get started with how-to guides, tutorials and everything you need
- LLMs
- Deep Learning
- Traditional ML
- Tracking
- Deployment
Evaluating LLMs
Learn how to evaluate LLMs with MLflowUsing Custom PyFunc with LLMs
Explore the nuances of packaging, customizing, and deploying advanced LLMs in MLflow using custom PyFuncs.Evaluation for RAG
Learn how to evaluate Retrieval Augmented Generation applications by leveraging LLMs to generate a evaluation dataset and evaluate it using the built-in metrics in the MLflow Evaluate API.Join our growing community
14M+ monthly downloads
600+ contributors worldwide
600+ contributors worldwide