Kit is a free, open-source MLOps tool that simplifies AI project management by packaging models, datasets, code, and configurations into a standardized, versioned, and tamper-proof ModelKit. It enables collaboration, model traceability, and reproducibility, making it easier to hand off AI projects between data scientists, developers, and DevOps teams.
Explores KitOps, an open source project that bridges the gap between DevOps and machine learning pipelines by allowing you to leverage existing DevOps pipelines for MLOps tasks.
ModelKits are standardized packages that contain all the necessary components of an ML project, including the model, datasets, code, and configuration files.
ModelKits are defined using a YAML file called a Kitfile, which can be integrated seamlessly with existing DevOps pipelines, much like a Dockerfile for containerization.
Flux is a set of continuous and progressive delivery solutions for Kubernetes that are open and extensible. The latest version brings many new features, making it more flexible and versatile.
• Continuous Integration (CI) and Continuous Deployment (CD) pipelines for Machine Learning (ML) applications
• Importance of CI/CD in ML lifecycle
• Designing CI/CD pipelines for ML models
• Automating model training, deployment, and monitoring
• Overview of tools and platforms used for CI/CD in ML