Vice President - Ai/ml Technical Developer

JPMorgan Chase JPMorgan Chase · Banking · Bengaluru, Karnataka, India · Consumer & Community Banking

Vice President role focused on building and scaling an AI/ML technical developer role within a finance agentic platform product team. The role involves translating prototypes into production-ready implementations, owning the end-to-end onboarding lifecycle for AI/ML and LLM use cases, defining and promoting the agentic framework roadmap, and standardizing patterns for RAG, agents, evaluations, guardrails, and observability. Responsibilities include building platform components in Python, applying LLM techniques, partnering with delivery teams, ensuring operational stability, and communicating technical topics to stakeholders while adhering to responsible AI governance.

What you'd actually do

  1. You will support the end-to-end onboarding of AI/ML and LLM use cases from decision science and product teams onto the finance agentic platform. This includes establishing a clear intake and onboarding process, translating requirements into repeatable integration patterns, and ensuring each use case meets production readiness expectations for reliability, maintainability, and regulated operations.
  2. You will define, prioritise, and drive the agentic framework roadmap in alignment with product strategy and platform adoption goals. You will identify capability gaps, translate them into well-scoped epics and stories with clear acceptance criteria, and ensure the roadmap delivers standards and reusable components that materially accelerate onboarding and reuse.
  3. You will partner closely with technology delivery teams to deliver prioritised roadmap items on time. You will support joint planning and sequencing, manage cross-team dependencies, surface risks and trade-offs early, escalate issues appropriately, and coordinate release readiness so deliveries are predictable and aligned to stakeholder expectations.
  4. You will build and maintain high-quality platform components in Python, applying modern engineering practices including automated testing, thoughtful design patterns, structured code reviews, and disciplined version control. You will contribute to architecture decisions for platform services, SDKs, templates, and integration scaffolding, making pragmatic trade-offs across reliability, latency, cost, and long-term maintainability.
  5. You will apply LLM techniques, including prompt engineering, retrieval-augmented generation (RAG), fine-tuning, and agentic frameworks and skills patterns, in ways that standardise how finance use cases are implemented on the platform. You will define evaluation methods and success criteria that connect model and agent behaviour to business outcomes and measurable quality metrics.

Skills

Required

  • 5+ years of professional experience building and delivering AI/ML solutions in production environments
  • Applied experience working with agentic platforms or agentic frameworks
  • Understanding of architectural and operational considerations for agentic AI systems
  • Python development experience
  • Experience with modern engineering practices (automated testing, design patterns, code reviews, version control)
  • Experience with LLM techniques (prompt engineering, RAG, fine-tuning)
  • Experience with evaluation methods and success criteria for AI/ML models and agents
  • Experience communicating complex technical topics to senior stakeholders
  • Understanding of governance, risk, and control requirements for responsible AI

Nice to have

  • Experience with AI coding tools (e.g., Claude Code, GitHub Copilot)
  • Experience with monitoring, tracing, and incident response for ML/agentic systems

What the JD emphasized

  • end-to-end ownership from design through to operational stability
  • applied experience working with agentic platforms or agentic frameworks
  • regulated environment

Other signals

  • finance agentic platform
  • production-ready implementations
  • end-to-end onboarding lifecycle for AI/ML and LLM use cases
  • agentic framework roadmap
  • standardise patterns for RAG and agents, evaluation harnesses, guardrails, observability
  • apply LLM techniques—including prompt engineering, retrieval-augmented generation, fine-tuning, and agentic frameworks