Private AI
Keep AI architecture inside customer-controlled or approved infrastructure where scope allows.
Sovereign AI Infrastructure
Design AI environments where data, models, access, and operations are shaped by enterprise governance and deployment scope.
This solution connects private cloud, GPU planning, governed data access, and private AI service patterns without making unsupported readiness claims.

Architecture
Subject to validation
Use this solution where the business driver, workload boundary, operating responsibility, and validation path are clear.
Keep AI architecture inside customer-controlled or approved infrastructure where scope allows.
Connect approved data sources through validation-led retrieval and access patterns.
Define model, endpoint, logging, and support responsibilities before commitment.
Each solution should move through assessment, design, and validation before publication or commitment.
Separate training, inference, RAG, and endpoint requirements.
Map GPU, data, network, access, and operations requirements.
Validate model support, endpoint behavior, data handling, and operating boundaries.
Next step
Start with your workloads, operating model, and control requirements.