demml/opsml
Quality Control for AI Artifact Management
This tool helps AI and machine learning teams manage, version, and govern all components of their AI systems, from traditional models and datasets to modern generative AI prompts and agents. It takes in various AI artifacts like trained models, datasets, prompts, and agent definitions, and outputs versioned, traceable records that streamline development, deployment, and monitoring. Data scientists, ML engineers, and AI product managers will find this useful for maintaining quality and consistency across their AI projects.
Use this if you need to bring structure, consistent versioning, and clear lineage to your AI models, datasets, prompts, and agents, ensuring quality control from development through production.
Not ideal if you are a sole practitioner working on a single, isolated AI project without the need for team collaboration, extensive versioning, or governance.
Stars
31
Forks
2
Language
Rust
License
—
Category
Last pushed
Mar 13, 2026
Commits (30d)
0
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