Categories: Tech Threads

Integrating rate-limiting and backpressure strategies synergistically to handle and alleviate consumer lag in Apache Kafka

Can be reached for real-time POC development and hands-on technical training at gautambangalore@gmail.com. Besides, to design, develop just as help in any Hadoop/Big Data handling related task, Apache Kafka, Streaming Data etc. Gautam is an advisor and furthermore an Educator as well. Before that, he filled in as Sr. Technical Architect in different technologies and business space across numerous nations.
He is energetic about sharing information through blogs, preparing workshops on different Big Data related innovations, systems, and related technologies.

 

 

 

 

 

 

 

 

Page: 1 2

Recent Posts

RisingWave- An unwrinkled road to event stream processing

A distributed SQL streaming database called RisingWave makes processing streaming data easy, dependable, and efficient.… Read More

6 months ago

Transferring real-time data processed within Apache Flink to Kafka

Transferring real-time data processed within Apache Flink to Kafka and ultimately to Druid for analysis/decision-making.… Read More

7 months ago

Streaming real-time data from Kafka 3.7.0 to Flink 1.18.1 for processing

Over the past few years, Apache Kafka has emerged as the leading standard for streaming… Read More

9 months ago

Why Apache Kafka and Apache Flink work incredibly well together to boost real-time data analytics

When data is analyzed and processed in real-time, it can yield insights and actionable information… Read More

10 months ago

Leveraging Apache Kafka for the Distribution of Large Messages (in gigabyte size range)

In today's data-driven world, the capability to transport and circulate large amounts of data, especially… Read More

11 months ago

The Zero Copy principle subtly encourages Apache Kafka to be more efficient.

The Apache Kafka, a distributed event streaming technology, can process trillions of events each day… Read More

1 year ago