Cloud Cloning accelerates automated cross-cloud infrastructure replication
Cloud Cloning takes an active-service snapshot of an existing cloud estate and translates it into native constructs for another provider. The system inspects APIs and inventories networking, compute, storage, IAM, managed databases, and Kubernetes control planes. The product then performs automated mapping into the target cloud’s semantics and emits reproducible Terraform configurations. The vendor reports a capture rate of 60%+ of source artifacts compared with typical migration tooling at 10–30%. That higher fidelity reduces the manual rework usually required to match policies and runtime behaviour. Cloud Cloning also compares equivalent functionality and cost across providers, surfacing where a move could cut bills by as much as 50%. The product schedules recurring state captures by default every 24 hours and produces a detailed changelog for drift analysis. For identity layers, it translates policy intent rather than copying IAM rules verbatim, because provider models differ widely. For storage and databases, the tool flags semantics that require re‑architecture instead of blind replication. The automated conversion targets Azure, GCP, and AWS primitives, reinterpreting constructs like autoscaling groups, VM scale sets, and instance groups to preserve availability intent. By combining translation, cost modeling, and drift monitoring, Cloud Cloning positions itself as a single-pane solution for portability, governance, and finops-driven migration decisions.
Read Our Expert Analysis
Create an account or login for free to unlock our expert analysis and key takeaways for this development.
By continuing, you agree to receive marketing communications and our weekly newsletter. You can opt-out at any time.
Recommended for you
Neoclouds Challenge Hyperscalers with Purpose-Built AI Infrastructure
A new class of specialized cloud providers—neoclouds—are tailoring hardware, networking, and pricing specifically for AI workloads, undercutting hyperscalers on cost and operational fit. This shift emphasizes inferencing performance, predictable latency, and flexible billing models, reshaping where companies run model training, tuning, and production inference.

Adaptive6 debuts code‑centric platform to detect and auto‑remediate hidden cloud waste, raising $44M
A startup called Adaptive6 announced a $44 million funding haul and launched a platform that traces inefficient cloud resources back to the code that created them, then delivers automated fixes to engineers’ workflows. The company positions cloud cost waste as an engineering vulnerability, claiming 15–35% customer savings by preventing and repairing inefficiencies across multi‑cloud and AI workloads.


