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Azure AI (Agentic) Specialist - Team Lead (Remote)

Role overview

Qualifications

  • 10+ years experience with a focus on Azure OpenAI API
  • Proven expertise in building RAG pipelines using Azure AI Search
  • Solid understanding of Knowledge Graphs and semantic modeling
  • Strong background in Python and cloud-native development

Responsibilities

  • Design and deploy LLM-powered applications using Azure OpenAI
  • Build and optimize Retrieval-Augmented Generation (RAG) pipelines using Azure AI Search
  • Develop Agentic AI systems leveraging frameworks and tool-based reasoning approaches
  • Architect multi-tenant AI deployments with scalability, security, and cost-efficiency

About the company

NorthBay Solutions logo

NorthBay Solutions

NorthBay is AWS Premier Consulting Partner and also partnered with VMware, CloudRail and SAP in support of our Customers’ AWS cloud journeys. NorthBay helps companies transform their business by unlocking the value of their data in the cloud so they can gain agility and speed in their decision making and innovation. Our specialities include Cloud Migration and Modernization Services, Cloud Application Development, Big Data, Data Lake/Data Warehouse, Machine Learning & AI, DevOps Enablement, Staff Augmentation, Performance & Optimization.

Company details

Company size201 - 500

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Job description

Role: Team Lead - Azure AI (Agentic) Engineer

Location: India (Remote)

Client: Middle East (Government)

About the Role:

NorthBay Solutions, an AWS global Consulting Partner with distributed teams across the US, Canada, UAE, India, and Pakistan, is hiring a high-caliber Azure AI Specialist (Team Lead) with deep expertise in building enterprise-grade Generative AI, RAG, and Agentic AI solutions on the Azure ecosystem.

This role requires hands-on experience in designing scalable, multi-tenant AI systems, integrating LLMs, and building intelligent pipelines using Azure-native services.

Key Responsibilities

  • Design and deploy LLM-powered applications using Azure OpenAI for enterprise use cases
  • Build and optimize Retrieval-Augmented Generation (RAG) pipelines using Azure AI Search (vector + hybrid search)
  • Develop Agentic AI systems leveraging frameworks and tool-based reasoning approaches
  • Implement custom Document Intelligence models for high-accuracy data extraction (e.g., IDs, structured documents)
  • Architect multi-tenant AI deployments with scalability, security, and cost-efficiency in mind
  • Develop and manage Knowledge Graphs for structured reasoning and contextual intelligence
  • Apply advanced prompt engineering techniques (Few-shot, Chain-of-Thought, ReAct)
  • Use Prompt Flow in Azure AI Studio for experimentation, testing, and versioning
  • Design intelligent conversational systems with fallback handling and contextual memory
  • Build and manage MLOps pipelines using Azure Machine Learning

Required Skills & Experience

  • Overall 10+ years experience, with a focus on Azure OpenAI API (deployments, scaling, optimization)
  • Proven expertise in building RAG pipelines using Azure AI Search
  • Experience with vector databases and hybrid search architectures
  • Practical experience in Agentic AI / multi-agent systems
  • Hands-on with Azure AI Document Intelligence (Form Recognizer)
  • Solid understanding of Knowledge Graphs and semantic modeling
  • Expertise in prompt engineering & LLM optimization techniques
  • Experience with Prompt Flow (Azure AI Studio)
  • Strong background in Python and cloud-native development
  • Experience with Azure ML / MLOps pipelines
  • Ability to design scalable and secure enterprise AI architectures

Nice to Have

  • Experience with LangChain, Semantic Kernel, or similar frameworks
  • Exposure to multi-agent orchestration tools
  • Prior experience working with enterprise clients or large-scale AI deployments

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MR

Marcus Rivera

Chief Revenue Officer

m.rivera@company.com
linkedin.com/in/marcusrivera
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