amazon_aurora

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Amazon Aurora

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TLDR: Amazon Aurora, introduced in 2014, is a fully managed relational database engine by AWS designed for high performance, scalability, and compatibility with MySQL Database and PostgreSQL Database. It provides enhanced durability and availability by replicating data across multiple availability zones, ensuring low-latency and high-throughput for mission-critical applications. Amazon Aurora integrates seamlessly with a variety of cloud database architectures, supporting large-scale data analytics and transactional workloads.

Amazon Aurora offers advanced features like automated backups, continuous monitoring, and SQL-based query language capabilities, making it accessible to developers and data science teams. It supports advanced security measures, including encryption at rest and in transit, and integrates with a variety of programming terms like Python, Java, and C Sharp. Widely adopted in industries such as finance, e-commerce, and gaming, Amazon Aurora is ideal for building scalable, reliable, and high-performance applications in hybrid and cloud database environments.

https://github.com/aws/aurora

https://aws.amazon.com/rds/aurora

https://en.wikipedia.org/wiki/Amazon_Aurora


Amazon Aurora was launched in 2014. It is a fully managed relational database engine designed for MySQL and PostgreSQL compatibility. Aurora offers enhanced performance and availability, claiming up to five times the speed of standard MySQL.

The service includes features like read replicas, automatic backups, and multi-AZ deployment for fault tolerance. Amazon Aurora integrates with AWS Lambda and Amazon Redshift, making it a central component for modern application architectures.


Snippet from Wikipedia: Amazon Aurora

Amazon Aurora is a proprietary relational database offered as a service by Amazon Web Services (AWS) since October 2014. Aurora is available as part of the Amazon Relational Database Service (RDS).

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amazon_aurora.txt · Last modified: 2025/02/01 07:22 by 127.0.0.1

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