Implement secure, scalable, and fully HIPAA-compliant cloud infrastructure without having to establish in-house technical teams and manage all aspects of healthcare regulations.
HIPAA-compliant cloud infrastructure is a customizable solution that allows the rapid provision of healthcare solutions on AWS. Built as a highly scalable, readily available, and secure infrastructure, such solutions are reinforced through complementary services for access control, monitoring, reporting, and audibility.
Not only does the solution help migrate HIPAA-compliant systems to the cloud, but it also provides a solid background for developing HIPAA solutions from scratch.
Flexible and easily customizable, the HIPAA-compliant cloud infrastructure solution can simplify and accelerate the migration of your on-premises infrastructure and workloads to the cloud.
Outpace the competition by cutting on time and resources your organization needs to design, build, and deploy a HIPAA-compliant infrastructure.
Drive competitive advantage by shortcutting straight to a HIPAA-compliant cloud infrastructure that aligns with your business goals and needs.
Reviewing the technology behind your systems for HIPAA compliance, we assess your organization’s readiness for pervasive technical audits.
With 10+ years of experience in driving solutions for healthcare, we provide you with top-notch experts to establish HIPAA compliance organization-wide.
Used for billing and role-based access control in the organization. It does not contain any resources.
Used to collect and audit CloudTrail logs. It can support instances and buckets for data management, resource management, and network access control if required. It contains a CI/CD server based either on CodePipeline or third-party solutions, such as CircleCI, Gitlab, Jenkins, etc. To display the account’s stats in the BI dashboard, Amazon QuickSight is used.
Used as a limited access environment; engages with the customer data and the current version of the application. The app’s fundamental design is based on ELB (load balancing and BLUE/GREEN deployment with 0-downtime upgrade). Amazon EKS orchestrates the app in containers, while Amazon RDS with HA replicas is used as a data layer. The app’s logs are saved and stored in Amazon CloudWatch, with audits done in Amazon CloudTrail, AWS Trusted Advisor, and AWS Lambda. Alerts and notifications are managed with Amazon SNS. Amazon Macie is utilized to monitor and track sensitive data stored in the Amazon S3 bucket.
Used as an environment almost identical to PROD. Unlike PROD, however, it does not contain any customer data, and it is used strictly by software developers and QA engineers assigned to the project.
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