Log In to Continue

Please fill the correct email

If you haven't signed up, please do so by filling out the form on the right → Please sign up for the webinar.

Hybrid Serving & Analytics: MaxCompute Realtime DW engine-MC-Hologres Introduction

Monday, Feb. 1, 2021 | 4:00 PM - 4:30 PM UTC+8:00

View More

Overview

The Commercial Release of Hologres is available since 00:00, 1 February 2021 UTC+08:00.

MC-Hologres could do more than a traditional data warehouse, we call it HSAP, the short name for Hybrid Serving & Analytics Processing. With Hologres, both Serving and Analytics scenarios could be supported by a unified platform.

Who Should Join:

  • Who needs to analyze and process PB-Scale data with high concurrency and low latency
  • Who needs to use Business Intelligence(BI) tools in real time
  • Who is currently using PostgreSQL

For further details, please visit our product page or contact our professionals.
Hologres Product Page
Watch our Hologres Prodct Intro Video

Topics

  • Why we design MC-Hologres as a RealTime Data Warehouse
  • Why MC-Hologres enables real-time ingestion, real-time data processing, and real-time analytics

Speaker(s)

  • Derek Meng

    MaxCompute & MC-Hologres Product Manager , Alibaba Cloud Intelligence

    Derek Meng is a seasoned expert in Big Data area with 8 years database development experience as big data architect. He is currently responsible for the Alibaba Cloud Data Warehouse product MaxCompute in Alibaba Cloud International.

  • Billy Liu

    Staff Product Manager, Alibaba Cloud Intelligence

    Billy Liu, Staff Product Manager at Alibaba Cloud. He is the product owner for Hologres(MPP real-time data warehouse designed for hybrid serving and analytics processing). 10+ years experience on big data, data warehousing and open source community. Apache Kylin PMC & Committer.

Sign Up Now

Log in with your Alibaba Cloud account to sign up for this webinar.

Or fill out the form below to sign up.

Thank you for signing up. Sign up for Other Users

Sign Up for the Webinar