Amazon EKS's Dynamic Security Certification Checks for Regulated Industries
Keywords:
Amazon EKS, compliance checks, regulated industries, financeAbstract
Strict security & compliance are necessary in regulated sectors like healthcare & finance to safeguard open data & adhere to laws like PCI -DSS & HIPAA. Although cloud native environments that have made Amazon Elastic Kubernetes Service (EKS) as a popular option for managing containerized apps & maintaining compliance in such dynamic environments that may be difficult. This study suggests a system for automating real-time compliance checks & also their security monitoring that uses AWS products, including Config, CloudTrail & Security Hub. The framework minimizes human labour, guarantees regulatory standards are fulfilled & streamlines audits by integrating compliance into the development process & by utilizing automation. It provides a workable, scalable solution for safe, legal operations that balances cloud native technology's flexibility & regulatory requirements.
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