List of AWS Database Migration Customers
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Since 2010, our global team of researchers has been studying AWS Database Migration customers around the world, aggregating massive amounts of data points that form the basis of our forecast assumptions and perhaps the rise and fall of certain vendors and their products on a quarterly basis.
Each quarter our research team identifies companies that have purchased AWS Database Migration for Data Migration from public (Press Releases, Customer References, Testimonials, Case Studies and Success Stories) and proprietary sources, including the customer size, industry, location, implementation status, partner involvement, LOB Key Stakeholders and related IT decision-makers contact details.
Companies using AWS Database Migration for Data Migration include: NextEra Energy, a United States based Utilities organisation with 16800 employees and revenues of $24.75 billion, Thomson Reuters, a Canada based Professional Services organisation with 26400 employees and revenues of $7.48 billion, Flagstar Bank, a United States based Banking and Financial Services organisation with 6993 employees and revenues of $2.58 billion, Sallie Mae, a United States based Banking and Financial Services organisation with 1740 employees and revenues of $1.81 billion, AJE Group, a Peru based Consumer Packaged Goods organisation with 10000 employees and revenues of $1.30 billion and many others.
Contact us if you need a completed and verified list of companies using AWS Database Migration, including the breakdown by industry (21 Verticals), Geography (Region, Country, State, City), Company Size (Revenue, Employees, Asset) and related IT Decision Makers, Key Stakeholders, business and technology executives responsible for the software purchases.
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| Logo | Customer | Industry | Empl. | Revenue | Country | Vendor | Application | Category | When | SI | Insight |
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AJE Group | Consumer Packaged Goods | 10000 | $1.3B | Peru | Amazon Web Services (AWS) | AWS Database Migration | Data Migration | 2019 | CloudHesive |
In 2019, AJE Group implemented AWS Database Migration as a central component of a corporate initiative to consolidate disparate on premises data assets and build a centralized analytics platform on Amazon Web Services, using Data Migration tooling to standardize ingestion across its 22 country footprint. The Data Migration program was executed with support from AWS partner CloudHesive and focused on moving SQL databases into a cloud native analytics architecture to improve data availability and cross‑functional access.
The implementation used AWS Database Migration Service to migrate on premises SQL databases into a cloud data architecture, Amazon S3 as the storage backbone for the data lake, AWS Glue to orchestrate and serverlessly manage ETL and discovery, and Amazon Redshift as the cloud data warehouse and universal repository. Amazon Redshift was configured to analyze structured and semi structured data across the data warehouse and data lake, and AWS Glue automated discovery and transformation tasks to accelerate ingestion and reduce extract transform load times by 35 percent.
Integration work centered on a data pipeline that fused AWS Database Migration Service replication with the S3 data lake and Glue job orchestration, feeding analytic models and the Amazon Redshift warehouse used by regional and country reporting. The deployment architecture emphasizes a centralized corporate data platform that consolidates metrics for commercial, sales, and customer-facing teams, enabling near real time availability of prior‑day information to operational users.
Governance and process changes accompanied the technical rollout, with the platform positioned as the single source of truth to support a data driven culture and to standardize data models across markets. Project governance involved centralizing access controls, cataloging via Glue discovery, and operationalizing Redshift as the canonical analytics store to reduce report fragmentation and improve cross‑team visibility.
Explicit outcomes reported from the implementation include a 35 percent reduction in ETL times, 15 percent savings in infrastructure costs from cloud consumption models, increased scalability to support expansion across countries, and faster access to data for internal teams, which improved data delivery timelines. With the core Data Migration and analytics platform in place, AJE Group is positioned to expand predictive analytics and AI use cases using the consolidated data lake and Redshift analytics layer.
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Altair Engineering | Professional Services | 3300 | $666M | United States | Amazon Web Services (AWS) | AWS Database Migration | Data Migration | 2018 | n/a |
In 2018, Altair Engineering implemented AWS Database Migration to support a targeted Data Migration initiative into Amazon-managed stores. The work was executed as part of an AWS-centric infrastructure program that spanned Development, QA, UAT and Production environments and was integrated into existing CI/CD pipelines.
The AWS Database Migration configuration focused on creating Amazon RDS instances and invoking AWS Database Migration Service to move datasets into S3 buckets, with AWS Lambda functions built to perform object-level analysis and Amazon CloudWatch used to surface analysis results. Infrastructure as code was used extensively, with Terraform modules written to provision highly available EC2 instances and AWS EKS clusters, and nested CloudFormation stacks implemented to standardize repeatable stacks. Continuous integration and delivery was orchestrated through Jenkins pipelines integrated with Terraform, Git-based source control, and Ansible playbooks for application configuration and deployment automation.
Integrations included core AWS services VPC, EC2, S3, RDS, IAM, Elastic Load Balancing, Auto Scaling, CloudFront, Elastic Beanstalk, ECS and EKS, while operational tooling leveraged ELK stack, Nagios and Zenoss monitoring. IAM governance was used to manage users and groups and to restrict permissions for CI processes, and security groups were applied to control access to EC2 and RDS resources. Container orchestration and deployment used AWS ECS task and service definitions and EKS clusters, with Ansible playbooks automating changes to task counts and service configuration.
Operational governance included modular Ansible roles and inventories for repeatable deployments, Terraform modules and custom plugins to extend provisioning behavior, and automated scaling policies based on CPU and memory. The implementation was embedded into the product release cycle with DevOps ownership for environment management and build failure resolution, ensuring AWS Database Migration operated as a coordinated component of Altair Engineering’s cloud platform.
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Flagstar Bank | Banking and Financial Services | 6993 | $2.6B | United States | Amazon Web Services (AWS) | AWS Database Migration | Data Migration | 2021 | n/a |
In 2021, Flagstar Bank deployed AWS Database Migration as a Data Migration initiative to support ETL pipelines, database consolidation, and downstream analytics workloads. The engagement was led by the bank’s data management organization and centered on operationalizing continuous change data capture and targeted migrations into cloud-hosted repositories.
The implementation integrated AWS Database Migration with existing Infosphere DataStage ETL designs and complementary AWS services, explicitly using AWS DMS services and Lambda functions to orchestrate extracts and transforms into Postgres targets. Workstreams included reusing CDC stored procedures for incremental loads, instrumenting S3 as a landing zone, and connecting to Snowflake with Snowpipe and Streams for datamart ingestion, while maintaining data movement to Salesforce and other application endpoints.
Operational scope covered enterprise data warehouse and datamart pipelines, supporting corporate banking functions such as mortgage servicing, mortgage origination, commercial loan origination and servicing, community banking deposit feeds, and AML data feeds to Actimize. The configuration approach preserved existing Infosphere DataStage jobs where appropriate, and extended automation to include shell scripting for lineage extraction and partial ETL automation, reflecting hands-on administration of DataStage and ongoing platform patching and version upgrades.
Governance elements implemented alongside AWS Database Migration included role based access control and data masking policies in Snowflake, and time travel queries for data recovery and auditing. The program emphasized collaboration across internal teams and external vendors to resolve performance and security issues, and retained explicit controls for CDC orchestration, access controls, and pipeline monitoring to align Data Migration activities with Flagstar Bank’s data management standards.
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NextEra Energy | Utilities | 16800 | $24.8B | United States | Amazon Web Services (AWS) | AWS Database Migration | Data Migration | 2018 | n/a |
In 2018 NextEra Energy implemented AWS Database Migration as part of a Data Migration initiative to centralize operational and application data into cloud analytics stores. The AWS Database Migration work focused on ingesting transactional and ticketing data into Amazon S3, loading analytics stores in Amazon Redshift, and provisioning Postgres targets for downstream reporting and application consumption.
The technical implementation relied on Talend for ETL orchestration, with jobs built to extract records via ServiceNow APIs and to pull CRM data using the tSalesforceInput component. Talend integrated layer jobs moved staged files from AWS S3 into Redshift and Postgres, Big Data Talend components such as tHiveInput, tImpalaLoad and Spark related components were used to populate Hadoop data lake zones, and Sqoop was used for HDFS to relational database transfers.
Explicit integrations documented in the implementation included Salesforce, ServiceNow, SAP HANA and BW HANA sources, Oracle extracts, Amazon Redshift, Postgres, Hadoop HDFS, and ActiveMQ for route and queue monitoring. Operational coverage included Florida Power and Light as the internal business unit client, BI consumers accessing Postgres views for Power BI dashboards and SSRS ad hoc reports, and OLAP cubes developed in SQL Server Analysis Services for multidimensional analytics.
Governance and operational controls were put in place through Talend Development Standards, repository driven source code migrations, metadata driven SSIS packages with package configuration for multi environment deployment, and Talend Management Console scheduling with cron triggers and Job Conductor orchestration. Process level coordination included regular Business IT requirement sessions, weekly status meetings, hosted calls with regional teams, and collaboration with a Data Mapping Team to validate source to target mapping rules and maintain deployment consistency.
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Relay42 | Professional Services | 150 | $25M | Netherlands | Amazon Web Services (AWS) | AWS Database Migration | Data Migration | 2018 | n/a |
In 2018 Relay42 deployed AWS Database Migration to support its AWS-hosted data platform and to scale ingestion and replication for real time customer journey orchestration. The AWS Database Migration deployment addressed Data Migration requirements to sustain baseline throughput around 60,000 events per second and peaks up to 500,000 events per second while preserving data continuity across its commercial footprint.
Implementation focused on cloud native migration workflows common to the Data Migration category, including continuous replication, change data capture, and automated schema conversion and validation. Configuration emphasized programmatic provisioning and CI CD integration, with deployment pipelines tied into AWS CodeDeploy and CodeBuild to automate cutover and rollback actions and to reduce manual intervention during data flow changes.
The solution was integrated with a broad set of AWS platform services used by Relay42, notably AWS Kinesis and Kinesis Firehose for streaming ingestion, Amazon S3 for persistent staging, and EC2 for compute scaling, with AWS SageMaker retained for downstream machine learning uses. Rackspace Technology provided operational support and Fanatical Experience, and Relay42 used VMware CloudHealth for cloud cost visibility, operating across offices in Amsterdam, Singapore and London and servicing clients in more than 20 countries.
Governance tied the AWS Database Migration implementation to strict compliance controls required in financial services, leveraging AWS Inspector and AWS Shield for security posture management and a data protection agreement with Rackspace Technology to enable compliant support ticketing and issue resolution. CloudHealth driven cost optimization delivered explicit compute savings reported at eight thousand dollars per month, and operational controls were steered to preserve uptime and data fidelity rather than to rearchitect core orchestration logic.
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Banking and Financial Services | 1740 | $1.8B | United States | Amazon Web Services (AWS) | AWS Database Migration | Data Migration | 2020 | n/a |
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Professional Services | 26400 | $7.5B | Canada | Amazon Web Services (AWS) | AWS Database Migration | Data Migration | 2020 | n/a |
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