Welcome to Bigtable

Google Cloud Tech · Beginner ·🔄 Data Engineering ·2mo ago

Key Takeaways

Introduces Bigtable as a scalable, low latency NoSQL database for real-time workloads

Original Description

Get started today with a 10 day trial. → https://goo.gle/3QEsBhk Need a database that can handle massive scale without sacrificing speed? See how Bigtable, Google's scalable, low latency NoSQL database designed for real time workloads, powers major services like Google Search, YouTube, and Maps. Watch along and learn about scaling to hundreds of petabytes with predictable latency, to optimizing costs with automatic versioning and tiered storage. Plus, discover how Bigtable tackles diverse use cases like time series telemetry, machine learning feature stores, and live in application reporting with streaming ecosystems like Apache Flink and Kafka. See how pairing it with BigQuery connects historical insights with immediate action. 🔔 Subscribe to Google Cloud Tech → https://goo.gle/GoogleCloudTech #GoogleCloud #Bigtable #NoSQL Speakers: Gabe Weiss Products Mentioned: Bigtable, BigQuery, Apache Flink, Apache Spark, Apache Kafka, Apache Beam
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