Location:-Bangalore
Experience:-4 to 9 Years
Hybrid Mode
AI Engineer – GenAI & Multi-Agent Systems
Role Overview
We are looking for a highly skilled AI Engineer specializing in Generative AI and Multi-Agent Systems to design and deploy intelligent, autonomous solutions. This role focuses on building LLM-powered, agent-driven architectures that can reason, collaborate, and execute complex workflows across enterprise systems.
You will work on cutting-edge Agentic AI frameworks, enabling systems that go beyond prediction to decision-making, orchestration, and autonomous execution.
Key Responsibilities
• Design and build multi-agent AI systems capable of planning, reasoning, and task execution
• Develop applications using LLMs (GPT, Claude, Llama, etc.) with advanced prompt engineering and orchestration
• Implement Agentic workflows (planner → executor → critic → memory loops)
• Build RAG (Retrieval-Augmented Generation) pipelines with vector databases for enterprise knowledge grounding
• Develop tool-using agents that integrate with APIs, databases, and enterprise systems
• Architect and deploy AI copilots and autonomous assistants for business workflows
• Optimize LLM performance using fine-tuning, prompt chaining, and caching strategies
• Implement short-term and long-term memory mechanisms (vector stores, knowledge graphs)
• Design multi-agent collaboration protocols (hierarchical, swarm, role-based agents)
• Deploy scalable solutions using MLOps + LLMOps practices (monitoring, evaluation, guardrails)
• Ensure AI safety, governance, and responsible AI practices
Required Skills & Qualifications
• Bachelor’s/Master’s in Computer Science, AI, or related field
• 3–8 years experience in AI/ML with strong focus on Generative AI
• Strong Python development skills
• Hands-on experience with:
o LLMs & GenAI frameworks: OpenAI, Hugging Face Transformers
o Agent frameworks: LangChain, AutoGen, CrewAI, Semantic Kernel
o RAG pipelines & vector DBs: FAISS, Pinecone, Weaviate
• Experience building API-driven, tool-integrated AI agents
• Strong understanding of:
o Prompt engineering & prompt optimization
o Chain-of-thought reasoning and tool augmentation
o Context management and token optimization
• Experience with cloud platforms (Azure OpenAI preferred, AWS/GCP acceptable)
• Knowledge of Docker, Kubernetes, CI/CD pipelines
Preferred Qualifications
• Experience building multi-agent orchestration systems with role-based coordination
• Exposure to agent planning algorithms (ReAct, Plan-and-Execute, Tree-of-Thought)
• Experience with LLM evaluation frameworks (RAGAS, TruLens, Promptfoo)
• Knowledge of graph-based reasoning / knowledge graphs
• Building autonomous systems or copilots in enterprise environments
• Domain experience in industrial, energy, or IoT environments
Key Competencies
• Systems thinking for designing autonomous AI architectures
• Strong problem decomposition for agent task design
• Ability to balance latency, cost, and accuracy in LLM systems
• Communication with business stakeholders to translate workflows into agent pipelines
• Innovation mindset with focus on applying agentic AI in production
Tech Stack (Modern GenAI Stack)
• Languages: Python
• Frameworks: LangChain, CrewAI, AutoGen, Semantic Kernel
• LLMs: OpenAI GPT, Azure OpenAI, Claude, Llama
• Vector DB: Pinecone, Weaviate, FAISS
• Orchestration: Airflow, Prefect
• Deployment: Docker, Kubernetes
• Cloud: Azure AI Studio / Azure ML (preferred)
KPIs / Success Metrics
• Autonomous task completion rate of agents
• Reduction in manual workflows via AI automation
• Latency and cost optimization of LLM pipelines
• Accuracy and reliability of agent outputs
• Adoption rate of AI copilots across teams
