List of the Top 3 SQL Databases for Veeam Backup for AWS in 2026
Reviews and comparisons of the top SQL Databases with a Veeam Backup for AWS integration
Below is a list of SQL Databases that integrates with Veeam Backup for AWS. Use the filters above to refine your search for SQL Databases that is compatible with Veeam Backup for AWS. The list below displays SQL Databases products that have a native integration with Veeam Backup for AWS.
Amazon Relational Database Service (Amazon RDS) streamlines the creation, administration, and scaling of relational databases in the cloud. It presents a budget-friendly and flexible capacity option while handling time-consuming management activities such as hardware setup, database configuration, applying updates, and conducting backups. This enables you to focus on enhancing your applications, ensuring they deliver optimal performance, robust availability, security, and compatibility. Amazon RDS provides a variety of database instance types tailored for memory, performance, or I/O optimization and supports a range of six popular database engines, including Amazon Aurora, PostgreSQL, MySQL, MariaDB, Oracle Database, and SQL Server. Furthermore, the AWS Database Migration Service simplifies the process of moving or replicating your current databases to Amazon RDS, ensuring an easy and efficient transition. Ultimately, Amazon RDS equips organizations with powerful database solutions while alleviating the complexities associated with management tasks. By choosing this service, businesses can gain more agility and focus on innovation instead of maintenance.
Amazon Aurora is a cloud-native relational database designed to work seamlessly with both MySQL and PostgreSQL, offering the high performance and reliability typically associated with traditional enterprise databases while also providing the cost-effectiveness and simplicity of open-source solutions. Its performance is notably superior, achieving speeds up to five times faster than standard MySQL databases and three times faster than standard PostgreSQL databases. Moreover, it combines the security, availability, and reliability expected from commercial databases, all at a remarkably lower price point—specifically, only one-tenth of the cost. Managed entirely by the Amazon Relational Database Service (RDS), Aurora streamlines operations by automating critical tasks such as hardware provisioning, database configuration, patch management, and backup processes. This database features a fault-tolerant storage architecture that can automatically scale to support database instances as large as 64TB. Additionally, Amazon Aurora enhances performance and availability through capabilities like up to 15 low-latency read replicas, point-in-time recovery, continuous backups to Amazon S3, and data replication across three separate Availability Zones, all of which improve data resilience and accessibility. These comprehensive features not only make Amazon Aurora an attractive option for businesses aiming to harness the cloud for their database requirements but also ensure they can do so while enjoying exceptional performance and security measures. Ultimately, adopting Amazon Aurora can lead to reduced operational overhead and greater focus on innovation.
Amazon Redshift is a high-performance cloud data warehouse platform from AWS designed to power modern analytics, business intelligence, and agentic AI workloads across enterprise environments. The platform enables organizations to unify and analyze structured and unstructured data from Amazon Redshift warehouses, Amazon S3 data lakes, and third-party or federated data sources through an integrated lakehouse architecture within Amazon SageMaker. Redshift delivers strong scalability and industry-leading price-performance, helping businesses process large-scale analytics workloads while optimizing infrastructure costs and operational efficiency. AWS Graviton-powered Redshift RG instances significantly improve throughput and query performance while reducing per-vCPU costs and supporting native processing of open data formats such as Apache Iceberg and Apache Parquet. The platform also offers Redshift Serverless, which allows organizations to quickly run and scale analytics without provisioning, configuring, or managing infrastructure resources manually. Zero-ETL integrations simplify data movement by connecting streaming services, operational databases, and enterprise applications directly into analytics workflows for near real-time insights without the need for complex pipelines. Amazon Redshift integrates with Amazon SageMaker to support SQL analytics, machine learning workflows, and unified access to enterprise data across hybrid analytics environments. The solution also integrates with Amazon Bedrock, enabling organizations to use Redshift as a structured knowledge base that enhances the accuracy and contextual relevance of generative AI applications. Businesses can use Amazon Redshift for a variety of use cases including financial forecasting, demand planning, business intelligence optimization, machine learning acceleration, and data monetization strategies.
Previous
You're on page 1
Next
Categories Related to SQL Databases Integrations for Veeam Backup for AWS