AI Agents Applied Engineer - Senior Associate

JPMorgan Chase & Co.New York, NY

About The Position

As an AI Agents Applied Research/Engineering Senior Associate in our  The Digital Team, you will work with the team  to shape how millions of customers discover, decide, and act—turning multi-step financial tasks into simple conversations. You'll lead the end-to-end lifecycle of LLM-based agents: defining research directions in areas like multi-step planning, tool use, and safety; building production systems that perform under real-world latency, accuracy, and compliance constraints; and partnering with Product, Engineering, Design, and Risk teams to bring those systems to market. The problems here are genuinely unusual—building AI that must be not just accurate but auditable, explainable, and safe in a highly regulated, high-stakes domain. Transform how millions of customers manage their money, make decisions, and get more from their financial relationships through a human-centered approach that blends cutting-edge AI with clear, trustworthy experiences.

Requirements

  • BS with 3+ years or M.S. with 2+ years building and deploying AI systems in production
  • Applied GenAI experience with LLMs including fine-tuning, prompt engineering, and RAG.
  • Experience scaling LLM systems with caching, batching, governance, and evaluation.
  • Strong foundation in ML, deep learning, statistical modeling, and experimental design.
  • Experience in Information Retrieval (indexing, ranking, retrieval) and/or recommendation systems.
  • Proficiency in Python and ML frameworks (PyTorch/TensorFlow, Hugging Face, scikit-learn)
  • Demonstrated ability to set a technical research agenda and drive it from concept through production deployment.

Nice To Haves

  • 2+ years developing conversational AI systems, virtual assistants or LLM-based systems in production.
  • Experience with multi-agent orchestration, supervisor agents, and specialized toolkits.
  • Experience with reinforcement learning, bandit algorithms, and preference-based optimization (DPO, IPO), with practical exposure to data collection, labeling, and evaluation pipelines.
  • MLOps/LLMOps experience with CI/CD, monitoring, versioning, A/B testing, and rollbacks.
  • Track record of data-driven product development and experimentation.
  • Publications in top-tier AI/ML venues and/or open-source contributions

Responsibilities

  • Perform research and deployment of agentic AI systems with multi-step workflows, tool calling, and multi-agent orchestration.
  • Fine-tune and optimize LLMs using parameter-efficient fine-tuning (PEFT), distillation, and quantization to meet production constraints such as latency, memory, and cost.
  • Apply reinforcement learning and preference optimization to improve personalization and dialogue policies.
  • Scale LLM systems through caching, batching, prompt governance, and evaluation frameworks.
  • Implement privacy, safety, and security controls including PCI compliance, jailbreak resistance, and auditability.
  • Design rigorous experiments with strong baselines and meaningful metrics.
  • Define and track success metrics for agent performance, including task completion rate, accuracy, latency, and customer satisfaction.

Benefits

  • comprehensive health care coverage
  • on-site health and wellness centers
  • a retirement savings plan
  • backup childcare
  • tuition reimbursement
  • mental health support
  • financial coaching
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