Experience - 8 to 15 Years Location - Hyderabad (WFO)The AI Lead Engineer will design, build, and operate production-grade Generative AI solutions for complex enterprise scenarios. The role focuses on scalable LLM-powered applications, robust RAG pipelines, and multi-agent systems with MCP deployed across major cloud AI platforms. • Design and implement enterprise-grade GenAI solutions using LLMs (GPT, Claude, Llama and similar families). • Build and optimize production-ready RAG pipelines including chunking, embeddings, retrieval tuning, query rewriting, and prompt optimization. • Develop single- and multi-agent systems using LangChain, LangGraph, LlamaIndex and similar orchestration frameworks. • Design agentic systems with robust tool calling, memory management, and reasoning patterns. • Build scalable Python + FastAPI/Flask or MCP microservices for AI-powered applications, including integration with enterprise APIs. • Implement model evaluation frameworks using RAGAS, DeepEval, or custom metrics aligned to business KPIs. • Implement agent-based memory management using Mem0, LangMem or similar libraries. • Fine-tune and evaluate LLMs for specific domains and business use cases. • Deploy and manage AI solutions on Azure (Azure OpenAI, Azure AI Studio, Copilot Studio), AWS (Bedrock, SageMaker, Comprehend, Lex), and GCP (Vertex AI, Generative AI Studio). • Implement observability, logging, and telemetry for AI systems to ensure traceability and performance monitoring. • Ensure scalability, reliability, security, and cost-efficiency of production AI applications. • Deep understanding of RAG architectures, hybrid retrieval, and context engineering patterns. • Translate business requirements into robust technical designs, architectures, and implementation roadmaps. • Drive innovation by evaluating new LLMs, orchestration frameworks, and cloud AI capabilities (including Copilot Studio for copilots and workflow automation).
Job Title
Generative AI Engineer