Stepan Pushkarev is a CTO of Hydrosphere.io. His background is in the engineering of data platforms. He spent the last couple of years building continuous delivery and monitoring tools for machine learning applications as well as designing streaming data platforms. He works closely with data scientists to make them productive and successful in their daily operations.
Ilnur Garifullin is an ML Engineer in Hydrosphere.io focused on implementation of the company's latest researches and platform developments into Hydrosphere.io users practice.
Very often a workflow of training models and delivering them to the production environment contains loads of manual work. Those could be either building a Docker image and deploying it to the Kubernetes cluster or packing the model to the Python package and installing it to your Python application. Or even changing your Java classes with the defined weights and re-compiling the whole project. Not to mention that all of this should be followed by testing your model's performance. It hardly could be named "continuous delivery" if you do it all manually. Imagine you could run the whole process of assembling/training/deploying/testing/running model via a single command in your terminal. In this webinar, we will present a way to build the whole workflow of data gathering/model training/model deployment/model testing into a single flow and run it with a single command.