DaaS / Products / Production Personalized RAG with Full Infrastructure

Production Personalized RAG with Full Infrastructure

A team trains custom embedding models and fine-tunes LLMs on PAI, deploys a hybrid retrieval pipeline with AIRec-powered personalized recommendations via OpenSearch, then provisions and delivers the complete application using Terraform on ECS/RDS, Cloudflare CDN, Vercel frontend, and Supabase backend — covering the full lifecycle from ML training through personalized production delivery.

Products involved

Scenario

A team trains custom embedding models and fine-tunes LLMs on PAI, deploys a hybrid retrieval pipeline with AIRec-powered personalized recommendations via OpenSearch, then provisions and delivers the complete application using Terraform on ECS/RDS, Cloudflare CDN, Vercel frontend, and Supabase backend — covering the full lifecycle from ML training through personalized production delivery.

How the products combine

  1. alinux+bailian+alinux+bailian+alinux+pai+bailian+bailian+es+es+opensearch+oss+oss+pai+es+opensearch+oss+oss+pai+bailian+es+es+opensearch+oss+oss+pai+bailian+pai+bailian+pai+es+alinux+bailian+bailian+pai+es+opensearch+es+opensearch+alinux+oss+rds+alinux+oss+rds+ecs+oss+terraform+ecs+rds+terraform+alinux+rds+ecs+oss+terraform+alinux+rds+es+opensearch+oss+es+rds+es+supabase+bailian+es+es+opensearch+oss+oss+pai+es+rds+terraform+es+vercel+alinux+pai+bailian+es+es+opensearch+oss+oss+pai+bailian+pai+bailian+pai · custom-rag-with-optimized-search-relevance-707e4a — Custom RAG with Optimized Search Relevance
  2. See _combos/custom-rag-with-optimized-search-relevance-707e4a.

  3. alinux+bailian+alinux+bailian+alinux+pai+bailian+bailian+es+es+opensearch+oss+oss+pai+es+opensearch+oss+oss+pai+bailian+es+es+opensearch+oss+oss+pai+bailian+pai+bailian+pai+es+alinux+bailian+bailian+pai+es+opensearch+es+opensearch+alinux+oss+rds+alinux+oss+rds+ecs+oss+terraform+ecs+rds+terraform+alinux+rds+ecs+oss+terraform+alinux+rds+es+opensearch+oss+es+rds+es+supabase+bailian+es+es+opensearch+oss+oss+pai+es+rds+terraform+es+vercel+alinux+pai+bailian+es+es+opensearch+oss+oss+pai+bailian+pai+bailian+pai+bailian+es+es+opensearch+oss+oss+pai+es+opensearch+oss+es+oss+pai · full-stack-custom-rag-train-to-production-e68446 — Full-Stack Custom RAG: Train to Production
  4. See _combos/full-stack-custom-rag-train-to-production-e68446.

  5. es+oss+pai · ml-powered-semantic-search-pipeline-b3728a — ML-Powered Semantic Search Pipeline
  6. See _combos/ml-powered-semantic-search-pipeline-b3728a.

  7. airec+alinux+airec+opensearch+alinux+alinux+cloudflare+opensearch+pai+alinux+cloudflare+bailian+es+es+opensearch+oss+oss+pai+opensearch+alinux+es+airec+opensearch+alinux+bailian+alinux+bailian+alinux+pai+bailian+bailian+es+es+opensearch+oss+oss+pai+es+opensearch+oss+oss+pai+bailian+es+es+opensearch+oss+oss+pai+bailian+pai+bailian+pai+es+alinux+bailian+bailian+pai+es+opensearch+es+opensearch+alinux+oss+rds+alinux+oss+rds+ecs+oss+terraform+ecs+rds+terraform+alinux+rds+ecs+oss+terraform+alinux+rds+es+opensearch+oss+es+rds+es+supabase+bailian+es+es+opensearch+oss+oss+pai+es+rds+terraform+es+vercel+alinux+pai+bailian+es+es+opensearch+oss+oss+pai+bailian+pai+bailian+pai+bailian+es+es+opensearch+oss+oss+pai+es+opensearch+oss+es+oss+pai+bailian+es+es+opensearch+oss+oss+pai · custom-trained-rag-with-personalized-recommendat-224893 — Custom-Trained RAG with Personalized Recommendation Layer
  8. See _combos/custom-trained-rag-with-personalized-recommendat-224893.

Typical questions

FAQ

Q: How do you build and deploy a production-ready personalized RAG application with full infrastructure? A: You can build and deploy this architecture by training custom models on PAI, integrating AIRec-powered recommendations via OpenSearch, and provisioning the complete stack with Terraform, ECS, RDS, Supabase, Vercel, and Cloudflare. This setup covers the entire lifecycle from machine learning training through personalized production delivery. The implementation is structured around four core skill combos that address optimized search relevance, full-stack training pipelines, semantic search, and personalized recommendation layers.