Key Differences Between On-Prem and Cloud Data Platforms

July 17, 2020

Cloud service models have become the new norm for enterprise deployments in almost every category — and big data is no exception. The separation of storage and compute in the cloud afford unparalleled scale, efficiency, and economics compared to on-premise solutions. If you are using Cloudera, Hortonworks or MapR, you should attend this webinar to learn the key differences between on-premise and cloud solutions, considerations for selecting cloud data lakes and data warehouses, and how to build the right architecture for your organizations analytics and machine learning needs. In this webinar, we’ll cover: - Difference between hosting an on-premise data platform in the cloud versus adopting an open data lake architecture for data processing in the cloud - How a cloud data lake architecture differs from cloud data warehouses - How to move your data to the cloud and leverage big data engines like Apache Spark, Presto, Hive and more - Avoiding security and cost pitfalls that can derail your migration to the cloud - Demo of Qubole’s open data lake platform

Previous Video
Best Practices: How To Build Scalable Data Pipelines for Machine Learning
Best Practices: How To Build Scalable Data Pipelines for Machine Learning

Data engineers today serve a wider audience than just a few years ago. Companies now need to apply machine ...

Next Video
Enterprise-Scale Big Data Analytics on Google Cloud Platform
Enterprise-Scale Big Data Analytics on Google Cloud Platform

As companies scale their data infrastructure on Google Cloud, they need a self-service data platform with i...