The Agentic AI Lead is responsible for driving research, development, and deployment of semi-autonomous AI agents to solve complex enterprise challenges. This role requires hands-on experience with LangGraph, leading initiatives to build multi-agent AI systems with greater autonomy, adaptability, and decision-making capabilities. The ideal candidate will have deep expertise in LLM orchestration, knowledge graphs, reinforcement learning (RLHF/RLAIF), and real-world AI applications. Responsibilities include architecting and scaling agentic AI solutions using LangGraph, building memory-augmented AI agents, implementing scalable architectures for LLM-powered agents, and applying techniques like knowledge graphs, vector databases, and RAG. The role also involves driving AI innovation through research in agentic AI and LLM orchestration, prototyping self-learning AI agents, translating AI capabilities into enterprise solutions, and leading AI proof-of-concept projects. Additionally, the position requires mentoring AI Engineers and Data Scientists and establishing best practices for model evaluation and responsible AI deployment.
Good To Have:- Hypothesis Testing
- T-Test, Z-Test
- Regression (Linear, Logistic)
- Python/PySpark
- SAS/SPSS
- Statistical analysis
- Probabilistic Graph Models
- Forecasting
- ML Frameworks (TensorFlow, PyTorch, Sci-Kit Learn, CNTK, Keras, MXNet)
- Distance metrics
Must Have:- LangGraph experience
- Multi-agent AI systems development
- LLM orchestration expertise
- Knowledge graphs implementation
- Reinforcement learning (RLHF/RLAIF)
- Agent orchestration workflow development
- Vector databases (Pinecone, Weaviate, FAISS)
- Retrieval-augmented generation (RAG)
- Research in Agentic AI
- Mentoring AI teams