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Level 2: Understanding your dataset To find connected insights in your business data, you need to first understand what data is contained in the dataset. Spotter quickly translates your datasets into business-friendly terminology so business users can confidently explore their data through natural language conversations.
Kafka is designed for streaming events, but Fluss is designed for streaming analytics. Architecture Difference The first difference is the Data Model. On the other hand, Fluss is a Kappa Architecture ; it stores one copy of data and presents it as a stream or a table, depending on the use case.
Now, data engineers barely have to investigate the issue because the root cause is right in front of you,” said Kineret Kimhi, BI and Data Engineering Manager, BlaBlaCar. As the leaked Google memo says, “data quality scales better than data size” for these types of projects which can save time by training on “small, highly curated datasets.”
Now, data engineers barely have to investigate the issue because the root cause is right in front of you,” said Kineret Kimhi, BI and Data Engineering Manager, BlaBlaCar. As the leaked Google memo says, “data quality scales better than data size” for these types of projects which can save time by training on “small, highly curated datasets.”
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