Continuous delivery for machine learning - DevOps Conference
As organizations move to become more "data-driven" or "AI-driven", it's increasingly important to incorporate data science and data engineering approaches into the software development process to avoid silos that hinder efficient collaboration and alignment. However, this integration also brings new challenges when compared to traditional software development. Not only do we have to manage the software code artifacts, but also the data sets, the machine learning models, and the parameters and hyperparameters used by such models. All these artifacts have to be managed, versioned, and promoted through different stages until they're deployed to production. It's harder to achieve versioning, quality control, reliability, repeatability and audibility in that process.
Sep-3-2019, 10:10:25 GMT
- Technology:
- Information Technology
- Artificial Intelligence > Machine Learning (1.00)
- Data Science (1.00)
- Software Engineering (1.00)
- Information Technology