
Azure AI Search: Powering Enterprise AI and RAG
Failed to add items
Add to basket failed.
Add to Wish List failed.
Remove from Wish List failed.
Follow podcast failed
Unfollow podcast failed
-
Narrated by:
-
By:
About this listen
Welcome back to TechTalks with Manoj — the show where we unpack the tech that’s actually shaping modern systems — not just trending on social feeds.
In today’s episode, we’re diving deep into a service that doesn’t get nearly enough credit: Azure AI Search.
You’ve probably heard of vector search. Maybe semantic search. But Azure AI Search? It’s doing all of that — and then some — powering everything from hybrid retrieval to LLM grounding, and transforming how enterprises mine value from unstructured data.
This isn’t “just” search. It’s an intelligent retrieval engine — stacked with full-text, vector, semantic, and hybrid capabilities — plus a built-in AI enrichment pipeline that turns PDFs, blobs, and images into knowledge-ready chunks.
Here’s what we’re covering:
* The full retrieval stack — from Lucene to vectors to semantic reranking
* How hybrid search + semantic captions give LLMs real-world grounding
* When to use built-in vs custom enrichment, and how to host your own skills
* Why Reciprocal Rank Fusion (RRF) changes the game for RAG precision
* Practical tips for scaling, caching, and index tuning in production
* Security, compliance, and when not to use Customer Managed Keys
* And how to build an enterprise-grade, RAG-ready architecture using Azure AI Search, OpenAI, and your own data lake
If you're building copilots, internal bots, or search experiences that actually work — Azure AI Search is your silent MVP.
Let’s get into it.
Thanks for reading! Subscribe for free to receive new posts and support my work.
This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit manojknewsletter.substack.com