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Presentation

Data in Motion: Building Stream-Based Architectures with Qlik Replicate & Kafka

ยซ Kafka Summit 2020

The challenge with todayโ€™s โ€œdata explosionโ€ is finding the most appropriate answer to the question, โ€œSo where do I put my data?โ€ while avoiding the longer-term problem: data warehouses, data lakes, cloud storage, NoSQL databases, โ€ฆ are often the places where โ€œbigโ€ data goes to die.

Enter Physics 101, and my corollary to Newtonโ€™s First Law of Motion:
โ€ข Data in motion tends to stay in motion until it comes rest on disk. Similarly, if data is at rest, it will remain at rest until an external โ€œforceโ€ puts it in motion again.
โ€ข Data inevitably comes to rest at some point. Without โ€œexternal forcesโ€, data often gets lost or becomes stale where it lands. โ€œModernโ€ architectures tend to involve data pipelines where downstream consumers of data make use of data generated upstream, often with built-for-purpose repositories at each stage. This session will explore how data that has come to rest can be put in motion again; how Kafka can keep it in motion longer; and how pipelined architectures might be created to make use of that data.

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