We are seeking a highly motivated Agentic AI Data Scientist to lead the design and deployment of next-generation AI agents that drive end-to-end planning and operational optimization within SMAI (Smart Manufacturing & AI). This role focuses on building goal-driven, multi-step AI systems (“agents”) that can autonomously plan, decide, and execute workflows across manufacturing planning, capacity optimization, and operations intelligence—unlocking cycle time reduction, capacity improvements, and decision automation at scale. Key Responsibilities 1. Agentic AI Design & Development Design and develop agent-based AI systems capable of: Multi-step reasoning (planning + decision-making + execution) Autonomous orchestration across workflows and platforms Build multi-agent architectures for complex planning and operations use cases Develop agents that integrate: Optimization models (OR / mathematical programming) LLM-based reasoning and tool usage Ensure agents align with enterprise data, domain knowledge, and planning constraints 2. Planning & Operations Use Case Delivery Apply Agentic AI to key business problems such as: Capacity planning and capital investment optimization Production flow optimization and cycle time reduction Scenario simulation and decision support Translate business requirements into: Structured optimization problems AI-driven decision workflows 3. AI System Integration & Deployment Integrate agents into: Existing SMAI platforms and tools Data pipelines and enterprise systems Develop reusable frameworks for: Agent orchestration Knowledge retrieval (RAG / knowledge graph) Drive deployment strategy (embedded vs standalone agents depending on use case) 4. Cross-Functional Collaboration Partner with: Planning, Operations, and Manufacturing teams Data Engineering, MLOps, and Platform teams Translate domain knowledge into AI logic and workflows Communicate technical solutions to business stakeholders Required Skillsets Core AI / Software Engineering Strong programming skills in Python (preferred), plus familiarity with modern AI frameworks Experience with LLMs / GenAI ecosystems (e.g., agent frameworks, tool-use, orchestration) Solid understanding of: Prompt engineering Retrieval-Augmented Generation (RAG) Multi-agent systems Optimization & Decision Science (Critical) Strong background in Operations Research / Optimization , including: Linear / Mixed Integer Programming Heuristics / metaheuristics Simulation models Experience translating real-world planning problems into mathematical models Agentic AI & System Design Understanding of agentic AI principles : Goal-based and utility-based agents Planning + reasoning + execution loops Experience designing: Autonomous workflows Multi-step decision systems Tool-using AI agents Data & Systems Integration Experience working with: Structured and unstructured data APIs and enterprise systems integration Familiarity with: Data pipelines (e.g., Spark, SQL) MLOps / deployment pipelines Business & Domain Skills (Preferred) Experience in manufacturing, supply chain, or planning domains Strong problem-solving skills with ability to: Connect AI solutions to business value Quantify impact (capacity, cost, cycle time) Minimum Qualifications Bachelor’s or Master’s degree in: Computer Science, Data Science, Industrial Engineering, Operations Research, or related field 3–5+ years of experience in: AI/ML engineering, or Optimization / decision science, or Advanced analytics in operations/planning Proven experience building production-grade AI or optimization solutions Preferred Qualifications PhD in AI, Machine Learning, or Operations Research Experience with: Agent frameworks (LangChain, AutoGen, CrewAI, etc.) Reinforcement learning or adaptive systems Knowledge graphs and domain-specific AI tuning Experience in semiconductor or advanced manufacturing environments