Kafka Performance: Best Practices for Monitoring and Improving

Presented by

Kirk Lewis

About this talk

Kafka performance relies on implementing continuous intelligence and real-time analytics. It is important to be able to ingest, check the data, and make timely business decisions. Stream processing systems provide a unified, high-performance architecture. This architecture processes real-time data feeds and guarantees system health. But, performance and reliability are challenging. IT managers, system architects, and data engineers must address challenges with Kafka capacity planning to ensure the successful deployment, adoption, and performance of a real-time streaming platform. When something breaks, it can be difficult to restore service, or even know where to begin. This webinar discusses best practices to overcome critical performance challenges for Kafka data streaming that can negatively impact the usability, operation, and maintenance of the platform, as well as the data and devices connected to it. Topics include: Kafka data streaming architecture, key monitoring metrics, offline partitioning, broker, topics, consumer groups, and topic lag.

Related topics:

More from this channel

Upcoming talks (2)
On-demand talks (112)
Subscribers (6158)
Pepperdata is the Big Data performance company. Fortune 1000 enterprises depend on Pepperdata to manage and optimize the performance of Hadoop and Spark applications and infrastructure. Developers and IT Operations use Pepperdata soluions to diagnose and solve performance problems in production, increase infrastructure efficiencies, and maintain critical SLAs. Pepperdata automatically correlates performance issues between applications and operations, accelerates time to production, and increases infrastructure ROI. Pepperdata works with customer Big Data systems on-premises and in the cloud.