Principal Applied AI ML Engineer
Company: JPMorganChase
Location: Seattle
Posted on: April 3, 2026
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Job Description:
Description Your opportunity to make a real impact and shape the
future of financial services is waiting for you. Let’s push the
boundaries of what's possible together. As a Principal AI/ML at
JPMorgan Chase within the Corporate Sector – AI/ML & Data
Platforms, you will lead a specialized technical area, driving
impact across teams, technologies, and projects. In this role, you
will leverage your deep knowledge of machine learning, software
engineering, and product management to spearhead multiple complex
ML projects and initiatives, serving as the primary decision-maker
and a catalyst for innovation and solution delivery. You will be
responsible for hiring, leading, and mentoring a team of Machine
Learning and Software Engineers, focusing on best practices in ML
engineering, with the goal of elevating team performance to produce
high-quality, scalable ML solutions with operational excellence.
You will engage deeply in technical aspects, reviewing code,
mentoring engineers, troubleshooting production ML applications,
and enabling new ideas through rapid prototyping. Your passion for
parallel distributed computing, big data, cloud engineering,
micro-services, automation, and operational excellence will be key.
Job Responsibilities Design and implement agentic AI reference
architectures, including orchestration, retrieval, memory,
guardrails, and evaluation harnesses. Write production-quality
Python code (PyTorch or TensorFlow as needed) and review
critical-path code Create reusable components for prompt
management, evaluators, safety filters, connectors, embeddings
pipelines, and memory stores Build and operate LLM-powered APIs and
microservices integrated into advisor, client, and internal
workflows Own the end-to-end ML lifecycle: experimentation, CI/CD,
automated testing, monitoring, drift detection, versioning, and
rollback Optimize inference for latency, throughput, caching,
batching, model selection, and cost per inference Partner with data
teams on structured and unstructured data pipelines, document
ingestion, metadata, and access controls Embed responsible AI
practices: safety, policy enforcement, audit logging,
explainability, and monitoring Set engineering standards for
agentic AI systems and lead design reviews Mentor senior engineers
through code reviews and architecture discussions Influence roadmap
and priorities through technical insight and delivery Required
Qualifications, Capabilities, and Skills: 10 years of experience
building applied machine learning systems, with recent hands-on
work in LLMs or agentic AI Strong Python engineering skills;
experience with PyTorch or TensorFlow Expertise working with Vector
storage systems and designing memory for Agents Expertise
developing long running agents that run autonomously using tools,
skills and human in the loop Proven experience deploying LLM-backed
services to production (APIs, microservices) Deep MLOps experience,
including CI/CD, monitoring, incident response, and model
governance Cloud-native AI deployment experience (AWS or Azure),
with cost and performance optimization Ability to lead technically
and influence outcomes without formal authority Experience creating
reusable platforms and patterns that accelerate delivery
Demonstrated commitment to responsible AI practices and operational
excellence Strong communication and collaboration skills, working
across product, risk, legal, and compliance teams Experience
optimizing inference and ML system performance Preferred
Qualifications, Capabilities, and Skills: Experience with
fine-tuning, adapters, or custom evaluation frameworks Background
operating AI systems in regulated environments (finance,
healthcare, etc.) Experience with prompt engineering and LLM
orchestration Knowledge of safety filters, audit logging, and
explainability in production systems Experience mentoring senior
engineers and leading architecture discussions Demonstrated ability
to influence technical roadmaps and priorities FEDERAL DEPOSIT
INSURANCE ACT: This position is subject to Section 19 of the
Federal Deposit Insurance Act. As such, an employment offer for
this position is contingent on JPMorganChase’s review of criminal
conviction history, including pretrial diversions or program
entries. LI-RB3 AIMLTECH
Keywords: JPMorganChase, Everett , Principal Applied AI ML Engineer, IT / Software / Systems , Seattle, Washington