Vice President – Data Scientist Lead (llm/genai)

JPMorgan Chase JPMorgan Chase · Banking · Bengaluru, Karnataka, India · Commercial & Investment Bank

Lead the design and delivery of LLM-powered solutions for commercial banking use cases like content extraction, enterprise search, reasoning, summarization, and recommendations. Partner with engineering and product teams to deploy reliable, scalable, and governed GenAI capabilities using Amazon Bedrock and Cortex, with a strong emphasis on evaluation, guardrails, and production-grade MLOps.

What you'd actually do

  1. Develop and deliver GenAI/LLM solutions for problems such as content extraction, semantic search, question answering, summarization, reasoning, and recommendation.
  2. Design, deploy, and manage prompt-based and RAG-based systems, including orchestration patterns and agentic workflows (tool use, structured outputs, multi-step reasoning).
  3. Build comprehensive evaluation and testing frameworks (offline + online) to measure accuracy, faithfulness, robustness, latency, and cost; implement red-teaming and safety checks where applicable.
  4. Leverage Amazon Bedrock to prototype and productionize LLM applications, including model selection, prompt templates, routing, and deployment patterns.
  5. Work hands-on with Cortex (e.g., Cortex Analyst) to enable governed analytics experiences and GenAI-assisted workflows.

Skills

Required

  • Advanced degree (Masters preferred) in Data Science, Computer Science, Machine Learning, Statistics, or related quantitative field (or equivalent practical experience).
  • 5 -7 years of relevant applied experience building ML/NLP solutions, including production deployment in a fast-paced environment.
  • Proven NLP + LLM experience, including prompt engineering, RAG, and evaluation methodologies.
  • Hands-on experience with Amazon Bedrock (or equivalent managed LLM platform) for building and deploying GenAI solutions.
  • Experience with Cortex (e.g., Cortex Analyst and related workflows) in an enterprise setting.
  • Strong Python skills; familiarity with ML/DL frameworks such as PyTorch or TensorFlow, and standard ML tooling (pandas, NumPy, scikit-learn).
  • Experience building APIs and integrating LLM/NLP solutions into applications and services.
  • Data pipeline experience for structured/unstructured data processing; strong understanding of embeddings, vector search, indexing, and retrieval patterns.
  • Solid software engineering practices: Git/version control, code quality, testing, and CI/CD fundamentals.
  • Excellent communication and stakeholder management skills; ability to present tradeoffs, risks, and results concisely.
  • Strong analytical skills and working knowledge of financial services / markets / asset management concepts.

Nice to have

  • Deep understanding of Large Language Model (LLM) techniques, including Agents, Planning, Reasoning, and related methods.
  • MLOps experience: experiment tracking, model registry, monitoring, drift/performance tracking, incident management, rollback.
  • Experience with cloud deployment patterns (AWS preferred) and production runtime environments (containers/orchestration).

What the JD emphasized

  • production deployment
  • production-grade MLOps
  • production runtime environments

Other signals

  • LLM-powered solutions
  • enterprise search & Q&A
  • reasoning
  • summarization
  • recommendations
  • reliable, scalable, and governed GenAI capabilities
  • evaluation, guardrails, and production-grade MLOps