MLflow is an open-source ML lifecycle platform for tracking experiments, packaging code into reproducible runs, sharing, and deploying ML models. It provides experiment tracking, a model registry, model serving, and project packaging in a single unified platform. MLflow is system-agnostic and integrates with scikit-learn, PyTorch, TensorFlow, and most ML libraries.
- Experiment tracking
- Model registry
- Model serving
- Project packaging
- Multi-framework support
Pros
- De facto standard for ML experiment tracking
- Framework agnostic
- Strong community and ecosystem
Cons
- UI can feel dated
- Scaling self-hosted MLflow requires effort
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See how MLflow stacks up against alternatives.
vs HubSpot AI vs Windsurf vs Gemini (Google DeepMind)