Managing The Machine Learning Lifecycle

Building a machine learning model can be difficult, but that is only half of the battle. Having a perfect model is only useful if you are able to get it into production. In this episode Stepan Pushkarev, founder of Hydrosphere, explains why deploying and maintaining machine learning projects in production is different from regular software projects and the challenges that they bring. He also describes the Hydrosphere platform, and how the different components work together to manage the full lifecycle of model deployment and retraining. This was a useful conversation to get a better understanding of the unique difficulties that exist for machine learning projects.

2356 232

Suggested Podcasts

vatsal acharya

Stanford Continuing Studies Program

Alternatives Medical Clinic

Networking Marketing Top Earners w Simon Chan

Aliza Rosen

Dan Lippert & Ryan Rosenberg

Unnamed Automotive Podcast

Sankalp Patil

Brightest Star