Job Description

Senior AI Architect (GenAI, LLM, Agentic Systems)


Experience: 10+ years overall, 3–5+ years in hands‑on AI/LLM/GenAI


We are looking for a Senior AI Architect in India with strong hands‑on experience in Generative AI (GenAI) , Large Language Models (LLMs) , agentic AI systems , and enterprise‑scale retrieval architectures .


This role focuses on building production‑ready GenAI solutions , including RAG pipelines , LLM‑powered chatbots , multi‑agent AI workflows , and LLM orchestration using LangChain and LangGraph .

You will play a key role in defining AI architecture, GenAI strategy, and enterprise AI transformation initiatives .

Key Responsibilities – Generative AI & LLM Architecture

  • Architect and deliver Generative AI solutions using LLMs, RAG architectures, and agentic AI frameworks
  • Build end‑to‑end GenAI pipelines for:
  • Retrieval‑Augmented Generation (RAG)
  • LLM‑based search and conversational AI
  • Autonomous agents and multi‑agent systems
  • Develop and optimize LLM orchestration workflows using LangChain, LangGraph , and similar frameworks
  • Design and scale enterprise retrieval systems , including:
  • Embeddings generation
  • Intelligent chunking strategies
  • Vector indexing and semantic search
  • Reranking for accuracy and relevance
  • Work hands‑on with vector databases such as Pinecone, PGVector, Azure AI Search, Amazon Titan
  • Lead prompt engineering , prompt optimization, evaluation, benchmarking, and LLM fine‑tuning
  • Design secure, scalable, and compliant AI architectures aligned with enterprise IT and data platforms
  • Integrate LLMs and GenAI APIs into enterprise applications using microservices and APIs
  • Implement GenAIOps / LLMOps / MLOps practices , including CI/CD, monitoring, guardrails, and continuous improvement
  • Collaborate with data scientists, ML engineers, architects, product managers, and business stakeholders

Required Skills & Experience – GenAI, LLM, Agentic AI

Generative AI & LLM Expertise

  • Strong hands‑on experience with Generative AI and Large Language Models (LLMs)
  • Experience working with OpenAI GPT‑4o , Claude , Llama , and open‑source LLMs
  • Deep understanding of RAG architecture , LLM‑based summarization, search, and content generation
  • Expertise in prompt engineering , prompt tuning, and LLM optimization

Agentic AI & Orchestration

  • Hands‑on experience building agentic AI systems
  • Experience creating tool‑calling agents, autonomous agents, and multi‑agent workflows
  • Strong experience with LangChain, LangGraph , or similar AI orchestration frameworks

Vector Databases & Retrieval Systems

  • Experience with vector databases and semantic search platforms , including:
  • Pinecone
  • PGVector
  • Azure AI Search
  • Amazon Titan
  • Strong knowledge of embedding models, chunking strategies, indexing, and retrieval optimization

Cloud & Enterprise AI Architecture

  • Experience deploying GenAI solutions on cloud platforms :
  • AWS (SageMaker, Bedrock)
  • Azure (Azure ML, Azure OpenAI)
  • Google Cloud (Vertex AI)
  • Strong understanding of enterprise AI architecture, security, governance, and responsible AI
  • Experience integrating AI solutions into large‑scale enterprise systems

MLOps / GenAIOps

  • Experience with LLMOps / GenAIOps pipelines
  • Knowledge of CI/CD for LLM workflows , evaluation frameworks, monitoring, and AI safety layers

Collaboration & Leadership

  • Ability to collaborate across AI research, ML engineering, data, product, and business teams
  • Strong communication skills to explain GenAI architecture and LLM design decisions
  • Experience influencing AI strategy and architecture in enterprise environments

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