Presented By O’Reilly and Cloudera
Make Data Work
September 11, 2018: Training & Tutorials
September 12–13, 2018: Keynotes & Sessions
New York, NY

Clouds and containers: Case studies for big data

Paul Curtis (MapR Technologies)
2:55pm–3:35pm Wednesday, 09/12/2018
Data engineering and architecture
Location: 1E 09 Level: Beginner
Average rating: *****
(5.00, 2 ratings)

Who is this presentation for?

  • Enterprise architects and CIOs

Prerequisite knowledge

  • A basic understanding of big data deployment, containers, and cloud infrastructure

What you'll learn

  • Learn strategies for deploying big data solutions using containers both on-premises and in the cloud, drawn from actual customer case studies

Description

Today, big data has expanded from traditional big data frameworks to a range of newer technologies, such as Spark, Kafka, and SQL-on-Hadoop. But once the data has been captured, how can the cloud, containers, and a data fabric combine to build the infrastructure to provide the business insights?

Paul Curtis explores how three customers built their big data environments. While the approaches were different, all had the same common requirements—reliable, scalable storage and flexibility—and the end goals for each were strikingly similar—the ability to handle large amounts of data and provide insights quickly.

One customer optimized for processing speed, another optimized for absolute application portability, and the third optimized for processing application flexibility. However, in all three cases, these customers realized that there was a common need for their data to be available across all of their applications. Their storage requirements became the base that allowed their applications to access the large data sets and to preserve application state. By starting with their storage needs, each of these customers then made choices about the application environment that worked best for their requirements. For example, preserving application state became a major requirement of one customer in order to allow their containerized applications complete portability and scalability. After choosing how to store their data, each customer chose a different path to achieving the goal. The combinations of clouds and containers each of the customers chose directly impacted the success of their big data projects.

Join Paul to explore different perspectives and techniques for big data deployments.

Photo of Paul Curtis

Paul Curtis

MapR Technologies

Paul Curtis is a principal solutions engineer at MapR, where he provides pre- and postsales technical support to MapR’s worldwide systems engineering team. Previously, Paul was senior operations engineer for Unami, a startup founded to deliver on the promise of interactive TV for consumers, networks, and advertisers, and a systems manager for Spiral Universe, a company providing school administration software as a service. He also held senior support engineer positions at Sun Microsystems, enterprise account technical management positions for both Netscape and FileNet, and positions in application development at Applix, IBM Service Bureau, and Ticketron. Paul got started in the ancient personal computing days; he began his first full-time programming job on the day the IBM PC was introduced.