Learn about the very latest in real-time data processing tools, architectures, and applications with this video collection of select talks from the five Strata + Hadoop World conferences in 2016. You'll see world-class experts like Jay Kreps (Confluent) and Michael Armbrust (Databricks) discuss advances in tools such as Kafka and Spark, and leaders in the field explain how they design real-time platforms at scale, address common …
The Real-Time Video Collection: 2016
Video description
Learn about the very latest in real-time data processing tools, architectures, and applications with this video collection of select talks from the five Strata + Hadoop World conferences in 2016. You'll see world-class experts like Jay Kreps (Confluent) and Michael Armbrust (Databricks) discuss advances in tools such as Kafka and Spark, and leaders in the field explain how they design real-time platforms at scale, address common challenges, and implement streaming architectures across industries.
With The Real-time Video Collection: 2016, you get the full year of real-time talks, no matter when you purchase during 2016.
Here's how it works: After each conference wraps up, we'll update the video with an additional batch of talks. This year's conferences are being held in June, August, September and December. Content from Strata + Hadoop World San Jose, held in March 2016, is already available, and includes 11 talks from experts in real-time data processing.
Distributed stream processing with Apache Kafka - Jay Kreps (Confluent)
Apache Spark and real-time analytics: From interactive queries to streaming - Michael Armbrust (Databricks)
Fast data made easy with Apache Kafka and Apache Kudu (incubating) - Ted Malaska (Cloudera), Jeff Holoman (Cloudera)
Apache Flink: Streaming done right - Kostas Tzoumas (data Artisans)
Real-time Hadoop: What an ideal messaging system should bring to Hadoop - Ted Dunning (MapR Technologies)
Designing a scalable real-time data platform using Akka, Spark Streaming, and Kafka - Alex Silva (Pluralsight)
Pulsar: Real-time analytics at scale leveraging Kafka, Kylin, and Druid - Tony Ng (eBay, Inc.)
Lessons learned building a scalable self-serve, real-time, multitenant monitoring service at Yahoo - Sumeet Singh (Yahoo), Mridul Jain (Yahoo)
San Jose 2016: Real-Time Applications
Taking Spark Streaming to the next level with DataFrames - Tathagata Das (Databricks)
Real-time fraud detection using process mining with Spark Streaming - Hylke Hendriksen (ING)
Uber, your Hadoop has arrived: Powering intelligence for Uber’s real-time marketplace - Vinoth Chandar (Uber)
London 2016: Real-time Tools
Triggers in Apache Beam (incubating): User-controlled balance of completeness, latency, and cost in streaming big data pipelines - Kenneth Knowles (Google)
The evolution of massive-scale data processing - Tyler Akidau (Google)
London 2016: Real-time Architectures
Analytics for large-scale time series and event data - Ira Cohen (Anodot)
Streaming analytics at 300 billion events per day with Kafka, Samza, and Druid - Xavier Léauté (Metamarkets)
London 2016: Real-time Applications
Real-time epilepsy monitoring with smart clothing: A case study in time series, open source technology, and connected devices - Eric Kramer (Dataiku)
Kappa architecture in the telecom industry - Ignacio Manuel Mulas Viela (Ericsson) and Nicolas Seyvet (Ericsson AB)
Start your Free Trial Self paced Go to the Course We have partnered with providers to bring you collection of courses, When you buy through links on our site, we may earn an affiliate commission from provider.
This site uses cookies. By continuing to use this website, you agree to their use.I Accept