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February 14, 2019 @ 11.00 AM GMT | 12.00 CEST
We all know it: the potential for Machine Learning practitioners to make a breakthrough and drive positive outcomes is unprecedented. But how do you take advantage of the myriad of data and ML tools now available at your fingertips? How do you streamline processes, speed up discovery, share knowledge, and scale up implementations for real-life scenarios?

Databricks Unified Analytics Platform is a cloud-service that provides you with ready-to-use clusters to handle all analytics processes in one place, from data preparation to model building and serving, with virtually no limit to how much you can scale.

In this webinar, we will cover some of the latest innovations brought into the Databricks Unified Analytics Platform for Machine Learning. In particular we will show you how to:

  • Get started quickly using the Databricks Runtime 5.0 for Machine Learning, that provides a pre-configured Databricks clusters including the most popular ML frameworks and libraries, Conda support, performance optimizations, and more.
  • Track, tune, and manage models, from experimentation to production, with MLflow, an open-source framework for the end-to-end Machine Learning lifecycle that allows data scientists to track experiments, share and reuse projects, and deploy models quickly, locally or in the cloud.
  • Scale up deep learning training workloads from a single machine to large clusters for the most demanding applications using the new HorovodRunner.

 
Presenter
Andy
Andrew Weaver
Solutions Architect, Databricks                                   
Andrew Weaver is a Solutions Architect at Databricks with a data engineering and devops background. Prior joining Databricks, he worked for a number of organisations, from BAE Systems AI, the UK Governement and the Metropolitan Police Service.





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