A DevOps team uses Terraform to provision MLPS 2.0-compliant infrastructure (VPC, ECS, RDS, OSS, Elasticsearch), layers IDaaS for end-user authentication and PAI for ML model training, then deploys a fully custom RAG system with fine-tuned domain LLM and embedding models—delivering a complete enterprise intelligent search platform with secure user login from infrastructure to inference.
A DevOps team uses Terraform to provision MLPS 2.0-compliant infrastructure (VPC, ECS, RDS, OSS, Elasticsearch), layers IDaaS for end-user authentication and PAI for ML model training, then deploys a fully custom RAG system with fine-tuned domain LLM and embedding models—delivering a complete enterprise intelligent search platform with secure user login from infrastructure to inference.
See _combos/compliant-enterprise-infra-custom-rag-stack-08191c.
See _combos/full-production-stack-with-ssl-and-rag-search-50664b.
See _combos/terraform-enterprise-stack-with-ssl-search-and-c-5ec574.
See _combos/compliant-infra-with-ml-search-and-identity-148b67.
Q: How do I deploy an MLPS 2.0-compliant enterprise platform with authentication and a custom RAG system? A: You can provision this environment by using Terraform to build MLPS 2.0-compliant infrastructure and layer IDaaS for user authentication alongside PAI for machine learning. This workflow automatically sets up core resources like VPC, ECS, RDS, OSS, and Elasticsearch before deploying a fully custom RAG system with fine-tuned domain LLMs and embedding models. The integrated stack delivers a complete enterprise intelligent search platform with secure user login spanning from infrastructure to inference.