Country/Region:  IN
Requisition ID:  33199
Work Model: 
Position Type: 
Salary Range: 
Location:  INDIA - NOIDA- BIRLASOFT OFFICE

Title:  Sr Lead Architect

Description: 

Area(s) of responsibility

  • Architect end-to-end GenAI-first and Agentic AI solutions on Azure using:
    • Azure OpenAI Service
    • Azure AI Foundry
    • Azure Agents (Agent Service + Agent Runtime)
    • Microsoft Agent Framework SDK
    • Azure Machine Learning (Azure ML) for model lifecycle, fine-tuning & evaluation
  • Design multi-agent systems capable of planning, reasoning, memory management, tool invocation, and complex workflow execution.
  • Architect enterprise-grade RAG systems using:
    • Azure Cognitive Search
    • Azure AI Search Vector Stores
    • Cosmos DB + pgvector
    • Redis Enterprise on Azure
  • Build secure prompt pipelines, embeddings workflows, tool integration layers, and model evaluation frameworks optimized for Azure’s GenAI stack.

  • Build Python-based microservices (FastAPI/Django) tightly integrated with Azure AI and cloud-native components.
  • Implement enterprise-grade LLMOps using:
    • Azure ML Pipelines
    • Azure DevOps (ADO)
    • GitHub Actions for MLOps/LLMOps
    • Azure Monitor, App Insights, Log Analytics for observability
  • Establish engineering standards for:
    • Agent governance & safety
    • Content filters & guardrails (Azure OpenAI Safety Systems)
    • Secure model invocation via private endpoints
    • Latency reduction, performance tuning & cost governance
  • Optimize AI workloads using model caching, selective batching, adaptive routing, vector index optimization, and autoscaling strategies on AKS/Functions.
  • Lead architecture reviews, threat modeling, cost modeling, and performance benchmarking for large-scale GenAI workloads.

  • Evaluate new Azure GenAI capabilities, FMs, agent frameworks, vector databases, and orchestration tools.
  • Build internal accelerators and reusable reference architectures for:
    • Multi-agent orchestration with Azure Agents Framework, Langgraph, CrewAI
    • RAG 2.0 and context enrichment pipelines
    • Federated & hybrid retrieval patterns
    • Enterprise system/tool integration
  • Drive PoCs, prototypes, and tech spikes to validate emerging Azure GenAI capabilities and accelerate enterprise adoption.

 
  • Microsoft Certified Azure Solutions Architect Expert or equivalent Azure Architect certification.
  • Strong hands-on experience designing AI/ML or GenAI systems on Azure.