About
Machine learning (ML) models are increasingly becoming integral components of modern applications, and there is a growing need to deploy them in real-time environments. This approach empowers organizations to process and act on data in real-time allowing for immediate insights and rapid response to changing circumstances. By combining the real-time data streaming capabilities of Apache Kafka with the powerful distributed computing capabilities of Apache Spark, organizations can build robust and scalable real-time ML pipelines. However, combining Kafka and Spark poses significant challenges, especially when it comes to achieving low latency and high scalability. In this webinar, you will learn: - The fundamentals of real-time ML. - The biggest challenges facing Data teams. - The optimal usage of Apache Kafka and Apache Spark and their unique strengths and capabilities in the context of real-time data processing and analysis Who should attend: - Cloud, Software, and Data Architects - Big Data and ML Engineers
When
Wednesday, May 29, 2024 · 1:00 p.m. Eastern Time (US & Canada) (GMT -4:00)
Agenda
  • The fundamentals of real-time ML.
  • The biggest challenges facing Data teams.
  • The optimal usage of Apache Kafka and Apache Spark and their unique strengths and capabilities in the context of real-time data processing and analysis
Presenters
1713991095-6fae0f01298ee8b0
Hichem Kenniche
Product Architect, NetApp
K
Katie Bavoso
Media Personality, Channel, TechnologyAdvice
Katie Bavoso is an Emmy-nominated broadcaster with a decade of professional content creation, production, hosting, and interviewing experience. Starting her career off as a TV news reporter and anchor in Maine, she pivoted to the IT channel to help connect vendors, solutions and services providers, and IT buyers through exciting video content and storytelling. Katie is now the host of Channel Insider: Partner POV, a video and podcast series shining a light on the the most innovative solution providers of the IT channel.
Reserve Your Spot
First Name*
Last Name*
Email Address*
Company*
Job Title*
Country*
Postal/Zip Code*