Responsibilities
- Elicit, analyze, and document business requirements, translating them into clear functional specifications and user stories.
- Design, develop, and support LLM-powered solutions, including RAG pipelines, prompt strategies, and retrieval workflows.
- Build proof-of-concepts and collaborate closely with engineering teams using LangChain and LangGraph for orchestration.
- Perform data analysis using Python and SQL to ensure data quality, relevance, and readiness for AI-driven solutions.
- Design, optimize, and manage vector database schemas and retrieval strategies for efficient information access.
- Develop and maintain BI dashboards using Power BI or Tableau to track performance metrics and generate actionable insights.
- Apply prompt engineering best practices to ensure accuracy, grounding, safety, and reliability of LLM outputs.
- Work within Agile delivery frameworks, managing backlogs, sprint planning, and stakeholder communication.
- Ensure adherence to governance, security, and ethical AI standards across all solutions.
Requirements
- Experience with LangSmith or other LLM observability and monitoring tools.
- Strong understanding of hybrid search, re-ranking, and advanced retrieval techniques.
- Familiarity with LLMOps/MLOps practices, including prompt versioning and model lifecycle management.
- Exposure to Azure data platforms (Data Factory, Synapse, Databricks) and/or Snowflake.
- Advanced business intelligence skills, including DAX, data modeling, and KPI design.
- Solid understanding of embedding models, chunking strategies, and metadata-based filtering.
- Domain experience in BFSI, Retail, Healthcare, or related industries is preferred.
