A key benefit of doing data science on the cloud is the amount of time that it saves you. You shouldn’t have to wait days or months -- instead, because many jobs are parallel, you can get your results in minutes-to-hours by having them execute on thousands of machines. Running data jobs on thousands of machines for minutes at a time requires fully managed services. Given the choice between a product that requires you to first configure a container, server or cluster and another product that frees you from those considerations, the serverless option is always more ideal. You'll have more time to solve the problems that actually matter to your business. In this video, Lak Lakshmanan, Alex Osterloh, and Rez Rokni walk through an example of carrying out a data science task from a Datalab notebook that marshals the auto-awesome power of Google Cloud Platform (GCP) — which includes Google Cloud Pub/Sub, Google Cloud Dataflow and Google BigQuery — to glean insights from your data.
Missed the conference? Watch all the talks here:
Watch more talks about Big Data & Machine Learning here:
Fpvracer.lt is not the owner of this text/video/image/photo content, the real source of content is Youtube.com and user declared in this page publication as Youtube.com user,
if you have any question about video removal, what was shared by open community, please contact Youtube.com directly or report bad/not working video links directly to video owner on Youtube.com. Removed video from Youtube.com will also be removed from here.