Machine Learning model deployment


"Enterprise Machine Learning requires looking at the big picture […] from a data engineering and a data platform perspective," lectured Justin Norman during the talk on the deployment of Machine Learning models at this year's DataWorks Summit in Barcelona. Indeed, an industrial Machine Learning system is a part of a vast data infrastructure, which renders an end-to-end ML workflow particularly complex. The challenges linked to the development, deployment, and maintenance of the real-world ML systems should not be overlooked as we pursue the finest ML algorithms. Machine Learning is not necessarily meant to replace human decision making, it is mainly about helping humans make complex judgment base decisions. The talk I attended, Machine Learning Model Deployment: Strategy to Implementation, was given by Cloudera's experts, Justin Norman and Sagar Kewalramani.

Duplicate Docs Excel Report

None found

Similar Docs  Excel Report  more

None found