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DVC

MLOps Free

DVC (Data Version Control) is an open-source MLOps tool that brings Git-like version control to machine learning datasets, models, and experiments. It tracks large files and directories in cloud storage while keeping lightweight metadata in Git, enabling full reproducibility of ML experiments. DVC Pipelines define ML workflows as DAGs that only rerun changed stages. Integrates with GitHub, GitLab, and CI/CD systems for automated ML pipeline execution and model promotion workflows.

💰 Pricing
Free
📂 Category
MLOps
🏷️ Tags
data versioning, Git, open-source, ML pipelines, reproducibility
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