32 subscribers
با برنامه Player FM !
پادکست هایی که ارزش شنیدن دارند
حمایت شده


Running Hundreds of Stream Processing Applications with Apache Kafka at Wise
Manage episode 424666777 series 2510642
What’s it like building a stream processing platform with around 300 stateful stream processing applications based on Kafka Streams? Levani Kokhreidze (Principal Engineer, Wise) shares his experience building such a platform that the business depends on for multi-currency movements across the globe. He explains how his team uses Kafka Streams for real-time money transfers at Wise, a fintech organization that facilitates international currency transfers for 11 million customers.
Getting to this point and expanding the stream processing platform is not, however, without its challenges. One of the major challenges at Wise is to aggregate, join, and process real-time event streams to transfer currency instantly. To accomplish this, the Wise relies on Apache Kafka® as an event broker, as well as Kafka Streams, the accompanying Java stream processing library. Kafka Streams lets you build event-driven microservices for processing streams, which can then be deployed alongside the Kafka cluster of your choice. Wise also uses the Interactive Queries feature in Kafka streams, to query internal application state at runtime.
The Wise stream processing platform has gradually moved them away from a monolithic architecture to an event-driven microservices model with around 400 total microservices working together. This has given Wise the ability to independently shape and scale each service to better serve evolving business needs. Their stream processing platform includes a domain-specific language (DSL) that provides libraries and tooling, such as Docker images for building your own stream processing applications with governance. With this approach, Wise is able to store 50 TB of stateful data based on Kafka Streams running in Kubernetes.
Levani shares his own experiences in this journey with you and provides you with guidance that may help you follow in Wise’s footsteps. He covers how to properly delegate ownership and responsibilities for sourcing events from existing data stores, and outlines some of the pitfalls they encountered along the way. To cap it all off, Levani also shares some important lessons in organization and technology, with some best practices to keep in mind.
EPISODE LINKS
- Kafka Streams 101 course
- Real-Time Stream Processing with Kafka Streams ft. Bill Bejeck
- Watch the video version of this podcast
- Join the Confluent Community
- Learn more with Kafka tutorials, resources, and guides at Confluent Developer
- Live demo: Intro to Event-Driven Microservices with Confluent
- Use PODCAST100 to get an additional $100 of free Confluent Cloud usage (details)
265 قسمت
Manage episode 424666777 series 2510642
What’s it like building a stream processing platform with around 300 stateful stream processing applications based on Kafka Streams? Levani Kokhreidze (Principal Engineer, Wise) shares his experience building such a platform that the business depends on for multi-currency movements across the globe. He explains how his team uses Kafka Streams for real-time money transfers at Wise, a fintech organization that facilitates international currency transfers for 11 million customers.
Getting to this point and expanding the stream processing platform is not, however, without its challenges. One of the major challenges at Wise is to aggregate, join, and process real-time event streams to transfer currency instantly. To accomplish this, the Wise relies on Apache Kafka® as an event broker, as well as Kafka Streams, the accompanying Java stream processing library. Kafka Streams lets you build event-driven microservices for processing streams, which can then be deployed alongside the Kafka cluster of your choice. Wise also uses the Interactive Queries feature in Kafka streams, to query internal application state at runtime.
The Wise stream processing platform has gradually moved them away from a monolithic architecture to an event-driven microservices model with around 400 total microservices working together. This has given Wise the ability to independently shape and scale each service to better serve evolving business needs. Their stream processing platform includes a domain-specific language (DSL) that provides libraries and tooling, such as Docker images for building your own stream processing applications with governance. With this approach, Wise is able to store 50 TB of stateful data based on Kafka Streams running in Kubernetes.
Levani shares his own experiences in this journey with you and provides you with guidance that may help you follow in Wise’s footsteps. He covers how to properly delegate ownership and responsibilities for sourcing events from existing data stores, and outlines some of the pitfalls they encountered along the way. To cap it all off, Levani also shares some important lessons in organization and technology, with some best practices to keep in mind.
EPISODE LINKS
- Kafka Streams 101 course
- Real-Time Stream Processing with Kafka Streams ft. Bill Bejeck
- Watch the video version of this podcast
- Join the Confluent Community
- Learn more with Kafka tutorials, resources, and guides at Confluent Developer
- Live demo: Intro to Event-Driven Microservices with Confluent
- Use PODCAST100 to get an additional $100 of free Confluent Cloud usage (details)
265 قسمت
همه قسمت ها
×



1 Migrate Your Kafka Cluster with Minimal Downtime 1:01:30









1 Top 6 Worst Apache Kafka JIRA Bugs 1:10:58









1 Optimizing Apache JVMs for Apache Kafka 1:11:42



1 International Podcast Day - Apache Kafka Edition | Streaming Audio Special 1:02:22




1 Capacity Planning Your Apache Kafka Cluster 1:01:54




1 Streaming Analytics and Real-Time Signal Processing with Apache Kafka 1:06:33



1 Common Apache Kafka Mistakes to Avoid 1:09:43













1 Scaling an Apache Kafka Based Architecture at Therapie Clinic 1:10:56
















1 How to Build a Strong Developer Community with Global Engagement ft. Robin Moffatt and Ale Murray 35:18




1 The Evolution of Apache Kafka: From In-House Infrastructure to Managed Cloud Service ft. Jay Kreps 46:32



1 Expanding Apache Kafka Multi-Tenancy for Cloud-Native Systems ft. Anna Povzner and Anastasia Vela 31:01



1 From Batch to Real-Time: Tips for Streaming Data Pipelines with Apache Kafka ft. Danica Fine 29:50





1 Engaging Database Partials with Apache Kafka for Distributed System Consistency ft. Pat Helland 42:09

1 The Truth About ZooKeeper Removal and the KIP-500 Release in Apache Kafka ft. Jason Gustafson and Colin McCabe 31:50



















1 Collecting Data with a Custom SIEM System Built on Apache Kafka and Kafka Connect ft. Vitalii Rudenskyi 25:14












1 Building a Microservices Architecture with Apache Kafka at Nationwide Building Society ft. Rob Jackson 48:54





1 Event Streaming Trends and Predictions for 2021 ft. Gwen Shapira, Ben Stopford, and Michael Noll 44:34


1 Mastering DevOps with Apache Kafka, Kubernetes, and Confluent Cloud ft. Rick Spurgeon and Allison Walther 46:18




1 Tales from the Frontline of Apache Kafka DevOps ft. Jason Bell 1:00:25












1 Using Apache Kafka as the Event-Driven System for 1,500 Microservices at Wix ft. Natan Silnitsky 49:12




1 Disaster Recovery with Multi-Region Clusters in Confluent Platform ft. Anna McDonald and Mitch Henderson 43:04


















1 IoT Integration and Real-Time Data Correlation with Kafka Connect and Kafka Streams ft. Kai Waehner 40:55

















































































به Player FM خوش آمدید!
Player FM در سراسر وب را برای یافتن پادکست های با کیفیت اسکن می کند تا همین الان لذت ببرید. این بهترین برنامه ی پادکست است که در اندروید، آیفون و وب کار می کند. ثبت نام کنید تا اشتراک های شما در بین دستگاه های مختلف همگام سازی شود.