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And we still have a lot of great sessions covering other hot topics: digital transformation, security, AI, machine learning, blockchain, etc. Boris has unique expertise in that area – especially in BigData applications. which would be great to attend to keep up with recent developments and their impact on my area.
Heading into 2024, SQL databases will remain essential in data management, increasingly using distributed systems to meet growing needs for scalability and reliability. They keep the features that developers like but can handle much more data, similar to NoSQL systems.
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However, ClickHouse is super efficient for timeseries and provides “sharding” out of the box (scalability beyond one node). Currently, an issue has been opened to make the “tailing” based on the primary key much faster: slow order by primary key with small limit on bigdata.
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