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ScyllaDB Powers Low-Latency, Scalable Online Feature Stores for Real-Time ML

ScyllaDB Powers Low-Latency, Scalable Online Feature Stores for Real-Time ML



This story was originally published on HackerNoon at: https://hackernoon.com/scylladb-powers-low-latency-scalable-online-feature-stores-for-real-time-ml.
Discover how ScyllaDB enables fast, scalable online feature stores, integrating with Feast to deliver low-latency, high-throughput ML predictions.
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Feature stores centralize ML features for training and inference, but real-time workloads demand ultra-low latency. ScyllaDB’s shard-per-core design and Cassandra/DynamoDB compatibility make it an ideal online store, supporting single-digit ms queries and petabyte-scale throughput. With Feast integration, teams can avoid vendor lock-in and build scalable, real-time ML apps.


Published on 1 month, 2 weeks ago






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