AIM396: ML Best Practices: Prepare Data, Build Models, and Manage Lifecycle - a podcast by AWS

from 2021-01-31T22:10:42.023393

:: ::

In this session, we cover best practices for enterprises that want to use powerful open-source technologies to simplify and scale their machine learning (ML) efforts. Learn how to use Apache Spark, the data processing and analytics engine commonly used at enterprises today, for data preparation as it unifies data at massive scale across various sources. We train models using TensorFlow, and we use MLflow to track experiment runs between multiple users within a reproducible environment. We then manage the deployment of models to production. We show you how MLflow can be used with any existing ML library and incrementally incorporated into an existing ML development process. This session is brought to you by AWS partner, Databricks.

Further episodes of AWS re:Invent 2018

Further podcasts by AWS

Website of AWS