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Paul Brebner

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guest Instaclustr

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Summary Anomaly detection is a capability that is useful in a variety of problem domains, including finance, internet of things, and systems monitoring. Scaling the volume of events that can be processed in real-time can be challenging, so Paul Brebner from Instaclustr set out to see how far he could push Kafka and Cassandra for this use case. In this interview he explains the system design that he tested, his findings for how these tools were able to work together, and how they behaved at different orders of scale. It was an interesting conversation about how he stress tested the Instaclustr managed service for benchmarking an application that has real-world utility.

Announcements

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Interview

Introduction How did you get involved in the area of data management? Can you start by describing the problem that you were trying to solve and the requirements that you were aiming for?

What are some example cases where anomaly detection is useful or necessary?

Once you had established the requirements in terms of functionality and data volume, what was your approach for dete