Dover, Delaware — Cloudamize today announced the release of its AI-Augmented Automated Infrastructure Grouping capability, a major advancement designed to streamline and safeguard enterprise cloud migrations. As organizations face increasingly sprawling infrastructure, legacy architectures, and tightly coupled applications, traditional manual methods of grouping servers into migration waves have become slow, error-prone, and risky. Ensuring workloads are cloud-ready while maintaining security, compliance, and governance across the transition adds further complexity.

Cloudamize’s new capability addresses these challenges by combining high-resolution infrastructure discovery with advanced machine learning and reasoning-focused Large Language Models (LLMs). This approach delivers data-driven automation that accelerates migration planning while reducing the likelihood of disruption.

A Unified Data- and AI-Driven Approach to Server Grouping

Cloudamize begins each engagement by collecting live, high-resolution operational and dependency data. Using port-based application discovery, the platform constructs a detailed interaction graph, detects recurring patterns and hidden dependencies, and clusters unknown machines based on communication similarity. The system then leverages an LLM to evaluate application relationships, network connection density, workload behavior, and security requirements. AI models refine, validate, and explain these proposed groupings, enabling teams to confidently construct optimized migration waves informed by empirical evidence—not subjective assumptions.

AI Augmented Planning

Security-Focused Grouping for Enterprise Environments

The solution also incorporates advanced connectivity and network log analysis to uncover dependencies often missed by manual review. By scoring connection density, mapping client-server flows, and identifying critical communication hubs, Cloudamize builds a complete picture of how workloads operate within the environment. Final grouping and wave sequencing are then aligned with enterprise security and compliance mandates, including sensitive databases, regulated workloads, DMZ placement, and firewall-restricted zones. The result is a cohesive set of move-groups that represent truly tightly coupled workloads.

Key Benefits

  • Automates workload grouping based on real-time data analysis 
  • Reduces manual dependency mapping errors 
  • Optimizes migration waves to minimize downtime 
  • Enhances security by enforcing compliance-based grouping 
  • Identifies and classifies all connected machines for a complete migration strategy 

Cloudamize’s AI-Augmented Automated Infrastructure Grouping marks a major step toward frictionless, intelligence-driven cloud migrations, empowering enterprises to move faster with greater clarity and control. Interested in leveraging this new capability? Contact us to begin the conversation

Author

Ben Horine
Partner & CEO