Azure AI Search on Future AGI
Vector Databases
Azure AI Search with vector and hybrid retrieval.
What you get
Everything traced, scored, and improvable
One install instruments Azure AI Search on OpenTelemetry. Future AGI then layers evaluators, optimisers, and simulations on top of the same trace tree — no second SDK, no double instrumentation.
Trace
Auto-instrumented spans
Every Azure AI Search call becomes a span — inputs, outputs, latency, tokens, cost, model name, tool args, retrieval results, and chain steps captured automatically.
Evaluate
70+ evaluators on every span
Attach Groundedness, Context Relevance, Prompt Injection, Toxicity, and 70+ more — purpose-built scorers powered by the Turing eval models, not generic LLM-as-judge.
Optimize
Closed-loop improvement
Pipe failed traces into agent-opt: GEPA, PromptWizard, ProTeGi, and Bayesian search rewrite your prompts with proof of measured gains.
Simulate
Adversarial scenarios at scale
Generate hundreds of personas and run them through your Azure AI Search agent before launch — text and voice, scripted or persona-driven.
Quickstart · <3 min
Instrument Azure AI Search in three steps
-
Step 1
Install the traceAI package
One package per language, ships from PyPI, npm, and Maven Central.
-
Step 2
Register the trace provider
Set
FI_API_KEYandFI_SECRET_KEY, then callAzureSearchInstrumentor().instrument(). -
Step 3
Run your existing Azure AI Search app
No code changes. Traces appear in the Future AGI dashboard within seconds.
Install
<dependency>
<groupId>ai.futureagi</groupId>
<artifactId>traceai-java-azure-search</artifactId>
<version>LATEST</version>
</dependency>Instrument
import ai.futureagi.fi.instrumentation.TraceProvider;
import ai.futureagi.traceai.azure_search.AzureSearchInstrumentor;
TraceProvider provider = TraceProvider.builder()
.projectName("azure_search_app")
.projectType("observe")
.build();
new AzureSearchInstrumentor().instrument(provider);
// Your existing Azure AI Search code runs unchanged.
// Every call is now an OpenTelemetry span in Future AGI.Pick a recipe
What do you want to do with Azure AI Search?
Each recipe is a copy-paste page with the exact code, the gotchas, and a working example you can clone.
Recipes for Azure AI Search
Adjacent integrations
Other vector databases
Pinecone
Managed vector database with hybrid search and metadata filtering.
Weaviate
Open-source vector database with built-in vectorizers and modules.
Qdrant
Vector search engine with payload filtering and quantisation.
Chroma
Embeddings database for AI applications with first-class collections.