Best of 2019 - Enterprise-Scale Big Data Analytics on Google Cloud Platform

Logo
Presented by

Naveen Punjabi from Google & Anita Thomas from Qubole

About this talk

As companies scale their data infrastructure on Google Cloud, they need a self-service data platform with integrated tools that enables easier, more collaborative processing of big data workloads. Join Qubole and Google experts to learn: - Why a unified experience with native notebooks, a command workbench, and integrated Apache Airflow are a must for enabling data engineers and data scientists to collaborate using the tools, languages, and engines they are familiar with. - The importance of enhanced versions of Apache Spark, Hadoop, Hive and Airflow, along with dedicated support and specialized engineering teams by engine, for your big data analytics projects. - How workload-aware autoscaling, aggressive downscaling, intelligent Preemptible VM support, and other administration capabilities are critical for proper scalability and reduced TCO. - How you can deliver day-1 self-service access to process the data in your GCP data lake or BigQuery data warehouse, with enterprise-grade security.

Related topics:

More from this channel

Upcoming talks (0)
On-demand talks (118)
Subscribers (8243)
Tune in to hear from open data lake platform leaders and engineers discuss everything from continuous date engineering on data lakes for machine learning, streaming analytics, ad-hoc analytics and data exploration in the cloud. The interactive talks are designed for both data engineers, data analysts and data scientists that want to learn about some of the challenges and solutions for use cases seen in data-driven organizations. Learn more about Qubole: http://bit.ly/AboutQubole