https://store-images.s-microsoft.com/image/apps.50.c20a8e1a-4b48-4b49-8792-d6aacea7c0c4.51fd1bd4-1f22-4a5c-982b-a36976978aa7.ba787501-79c2-49d8-8215-581a4cdef8d5
CoreStack NextGen Cloud Assessments
CoreStack
CoreStack NextGen Cloud Assessments
CoreStack
CoreStack NextGen Cloud Assessments
CoreStack
Simplify and Streamline Well-Architected Assessments
Part of the CoreStack NextGen Cloud Governance portfolio, CoreStack Assessments is a set of point-in-time assessments against Well-Architected Framework (WAF) best practices.
CoreStack Assessments automate testing, identify issues, and enable visibility and reporting for Azure. It offers automated issue discovery, step-by-step guides for remediation, drift identification, and modification of best practices. Gain comprehensive visibility and detailed assessment reports for continuous monitoring and improvement.
CoreStack Assessments help organizations Discover, Optimize, Secure, and Manage their cloud workloads with ease. By performing Well-Architected Assessments, users can identify critical workloads and create measurable architectures, saving progress and milestones along the way. With auto discovery and remediation capabilities, CoreStack can identify and fix issues using policies and best practices and provide step-by-step guidance to address identified issues. Additionally, users can customize best practices and frameworks with manual or automated checks, and gain deep visibility into workload assessments over time to monitor and track drift. With detailed assessment reports and executive risk management capabilities, CoreStack enables organizations to minimize risk and ensure their cloud architectures are secure and optimized.
For additional information, or to request a demo, please contact CoreStack at corestack.io/discover
https://store-images.s-microsoft.com/image/apps.46066.c20a8e1a-4b48-4b49-8792-d6aacea7c0c4.a77a3b97-483a-46af-91b7-0c54037e6a48.e8b25d62-cb6e-4f0f-8cbf-7262323fa354
https://store-images.s-microsoft.com/image/apps.46066.c20a8e1a-4b48-4b49-8792-d6aacea7c0c4.a77a3b97-483a-46af-91b7-0c54037e6a48.e8b25d62-cb6e-4f0f-8cbf-7262323fa354