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职位JPMorgan Chase

AI/ML Associate Engineer

JPMorgan Chase

AI/ML Associate Engineer

JPMorgan Chase

Dublin, Ireland, IE

·

On-site

·

Full-time

·

3w ago

The AI/ML Associate Engineer is a hands‑on software engineer who applies strong programming fundamentals to build, integrate, and support AI/ML solutions. The role focuses on writing production‑quality code while contributing to AI‑powered features, including (where applicable) solutions that leverage Microsoft 365 Copilot and Copilot Agents.

This role is ideal for engineers early in their AI/ML career who are solid coders and eager to work at the intersection of software engineering, applied ML, and enterprise AI platforms.

Key Responsibilities

  • Design, develop, test, and maintain production‑quality software supporting AI/ML solutions.
  • Implement and support AI‑enabled features using modern ML/LLM techniques, APIs, and services.
  • Contribute to Copilot‑enabled workflows (e.g., Teams, Outlook, Word, Excel) where applicable, including prompt refinement and agent‑based task automation.
  • Build and maintain backend services, APIs, and integrations that support AI/ML use cases.
  • Apply GenAI/LLM patterns: Build RAG pipelines, prompt management, evaluation harnesses, and safety mitigations. Integrate embeddings, vector stores, and caching strategies for latency/cost targets.
  • Participate in model integration and lifecycle activities: experimentation, evaluation, deployment, monitoring, and iteration. Instrument solutions for monitoring (quality, drift, bias, performance, cost).
  • Write unit tests, integration tests, and documentation to ensure reliability, security, and maintainability.
  • Collaborate closely with product managers, designers, and senior engineers to translate requirements into working solutions.
  • Follow enterprise standards for security, data handling, and governance when working with AI systems.

Required Qualifications

  • Bachelor’s degree in Computer Science, Engineering, or equivalent practical experience.
  • Strong programming background, especially in Python and/or at least one of Java, C#, or similar.
  • Solid understanding of software engineering fundamentals: data structures, APIs, version control, testing, and CI/CD.
  • Working knowledge of AI/ML fundamentals (machine learning concepts, LLMs, embeddings, evaluation basics) and tooling (scikit-learn, XGBoost, Py Torch/Tensor Flow, Pandas/Spark).
  • Experience building APIs/services (REST/gRPC), containerization (Docker), and orchestration (Kubernetes).
  • Exposure to MLOps practices: CI/CD, MLflow/Kubeflow, model registries, automated testing.

Preferred Qualifications

  • Experience using or integrating Microsoft 365 Copilot, Copilot Agents, or similar enterprise GenAI tools.
  • Exposure to prompt engineering, agent‑based workflows, or AI‑assisted productivity tools.
  • Familiarity with cloud platforms (Azure preferred), Power Platform, or Microsoft Graph integrations.
  • Experience supporting AI features in production systems.

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关于JPMorgan Chase

JPMorgan Chase

JPMorgan Chase & Co. is an American multinational banking institution headquartered in New York City and incorporated in Delaware. It is the largest bank in the United States, and the world's largest bank by market capitalization as of 2025.

300,000+

员工数

New York City

总部位置

$500B

企业估值

评价

3.8

10条评价

工作生活平衡

3.2

薪酬

4.1

企业文化

3.8

职业发展

3.0

管理层

2.5

65%

推荐给朋友

优点

Good benefits and compensation

Supportive and collaborative environment

Flexible work arrangements

缺点

Long hours and heavy workload

Management issues and lack of direction

High stress during peak times

薪资范围

41个数据点

Mid/L4

Senior/L5

Mid/L4 · Applied AI ML Associate

2份报告

$188,500

年薪总额

基本工资

$145,000

股票

-

奖金

-

$182,000

$195,000

面试经验

5次面试

难度

3.0

/ 5

时长

14-28周

录用率

40%

体验

正面 20%

中性 80%

负面 0%

面试流程

1

Application Review

2

HireVue Video Interview

3

Recruiter Screen

4

Superday/Panel Interview

5

Final Interview

6

Offer

常见问题

Behavioral/STAR

Technical Knowledge

Culture Fit

Past Experience

Case Study