
Si Lao
Staff Engineer at Uber Streaming Data Team
Actions
Si Lao is a Staff Software Engineer on Uber’s Streaming Data Team. He works on building a highly scalable, reliable Kafka ecosystem at Uber, including uReplicator, Kafka Consumer Proxy, and other internal tooling.
Links
Exactly-Once Stream Processing at scale in Uber
Uber successfully leverages multiple technologies, such as Kafka, Flink, Pinot and others to accommodate a wide spectrum of real time use cases such as data transformation, processing,alerting, fraud & threat detection, analytics, archival etc.
Many business use cases have been steadily emerging at Uber with a need for Exactly Once semantics. Tracking Ads spend is one such use case that is particularly important.
In this presentation, Si and Roshan will shed light on how unified exactly-once guarantees are supported within Uber’s Data platform, emphasizing the integration between multiple streaming technologies to address the specific needs of exactly-once use cases. We will also provide an overview of the thought process underpinning the platform's recent enhancements and prospective roadmap.
Topics include:
1. A brief overview of Uber's real-time streaming data infrastructure, covering Kafka, Flink, and Pinot.
2. Enhancements to the Kafka, Flink platforms to enable and simplify building end-to-end exactly-once pipelines at scale.
3. Unique problems we tackled, open challenges, as well as our future roadmap.
Kafka Summit London 2024 Sessionize Event
Please note that Sessionize is not responsible for the accuracy or validity of the data provided by speakers. If you suspect this profile to be fake or spam, please let us know.
Jump to top