採用
必須スキル
Python
AWS
PyTorch
TensorFlow
Azure
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 an Applied AI/GenAI ML Director within the Asset and Wealth Management Technology Team at JPMorgan Chase, you will provide deep engineering expertise and work across agile teams to enhance, build, and deliver trusted market-leading technology products in a secure, stable, and scalable way. You will leverage your deep expertise to consistently challenge the status quo, innovate for business impact, lead the strategic development behind new and existing products and technology portfolios, and remain at the forefront of industry trends, best practices, and technological advances. This role will focus on establishing and nurturing common capabilities, best practices, and reusable frameworks, creating a foundation for AI excellence that accelerates innovation and consistency across business functions
Job Responsibilities:
- Defines and owns reference architectures for agentic AI, including LLM orchestration, tool use, retrieval, guardrails, evaluation harnesses, and observability. Lead hands-on build in Python with Py Torch or Tensor Flow where needed.
- Establishes reusable components (prompt management, evaluators, safety filters, memory stores, connectors, RAG pipelines) to accelerate delivery across AWM and partner lines of business.
- Implements CI/CD, feature stores, experiment tracking, automated model testing, drift monitoring, versioning, lineage, and rollback. Ensure SLOs for latency, accuracy, resiliency, and cost per inference.
- Builds pipelines for structured and unstructured data, document ingestion, embeddings, and retrieval. Enforce data quality, metadata standards, and access controls.
- Integrates content safety, policy enforcement, audit logging, and role-based access. Align with model risk governance, privacy requirements, and responsible AI guidelines.
- Optimizes inference performance, caching, batching, prompt templates, and model selection. Manage cloud cost profiles and capacity planning (AWS or Azure).
- Drives engineering standards, code quality, design reviews, threat modeling, and incident response. Coach teams; remove blockers; enforce accountability on deliverables. Deliver APIs and microservices integrating LLM/agent capabilities into client and advisor workflows, internal ops, and analytics platforms.
- Defines product vision, multi-quarter roadmap, and portfolio priorities for agentic AI products aligned to AWM business outcomes (revenue, efficiency, risk reduction, client experience). Translates use cases into measurable outcomes with clear success metrics (e.g., hours automated, cycle-time reduction, error-rate reduction, risk control adherence, client NPS impact).
- Owns product backlog, value sizing, and sequencing across competing demands. Make firm trade-offs; set decision rights; escalate strategically. Engages senior business leaders, legal/compliance, risk, and operations. Communicate plans, progress, and KPIs clearly; secure approvals; manage expectations.
- Drives rollout plans, training, enablement assets, and support model. Ensure change readiness for advisors, operations, and technology stakeholders; track adoption funnel and usage. Embed responsible AI practices, explainability, and monitoring; partner with model risk, privacy, cyber, and third-party risk to ensure compliant deployment and sustained operations.
- Owns investment cases, budgets, and ROI tracking. Make build/buy/partner decisions; manage vendor engagements subject to firm approvals. Defines support processes, SLAs, and service management with Tech Ops/SRE. Establish documentation standards and knowledge base for ongoing product maintenance.
Required qualifications, capabilities, and skills:
- Formal training or certification on Machine Learning concepts and 10+ years applied experience. In addition, 5+ years of experience leading technologists to manage, anticipate and solve complex technical items within your domain of expertise.
- Hands-on experience building agentic AI solutions and LLM orchestration (prompt engineering, tool use, retrieval, evaluators, guardrails).
- Strong Python engineering skills; experience with Py Torch or Tensor Flow.
- Proven delivery of APIs/microservices integrating LLM/NLP with business applications.
- Data engineering experience for structured and unstructured data; embeddings and retrieval pipelines.
- Cloud deployment experience (AWS or Azure) for AI/ML workloads; reliability, scalability, and cost optimization.
- MLOps expertise: CI/CD, model governance, monitoring, incident response.
- Product leadership capabilities: roadmap ownership, backlog management, business case development, stakeholder engagement, and adoption/change management.
- Clear, concise communication with senior technical and business stakeholders; can present trade-offs and decisions.
- Familiarity with version control, secure SDLC practices, and enterprise controls.
Preferred Qualifications, Capabilities, and Skills:
- Experience with model fine-tuning, adapters, and evaluation frameworks.
- Knowledge of Asset & Wealth Management workflows and financial products; understanding of risk and compliance considerations for AI in finance.
- Experience defining and tracking product OKRs/KPIs (e.g., automation hours, cost per inference, adoption rates, control adherence).
- Experience managing vendor solutions and third-party risk within an enterprise environment.
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類似の求人
JPMorgan Chaseについて

JPMorgan Chase
PublicJPMorgan 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+
従業員数
New York City
本社所在地
$500B
企業価値
レビュー
3.8
10件のレビュー
ワークライフバランス
3.2
報酬
4.1
企業文化
3.8
キャリア
3.0
経営陣
2.5
65%
友人に勧める
良い点
Good benefits and compensation
Supportive and collaborative environment
Flexible work arrangements
改善点
Long hours and heavy workload
Management issues and lack of direction
High stress during peak times
給与レンジ
41件のデータ
Junior/L3
Mid/L4
Senior/L5
Junior/L3 · Analytics Solutions Associate
1件のレポート
$139,000
年収総額
基本給
$107,000
ストック
-
ボーナス
-
$139,000
$139,000
面接体験
5件の面接
難易度
3.0
/ 5
期間
14-28週間
内定率
40%
体験
ポジティブ 20%
普通 80%
ネガティブ 0%
面接プロセス
1
Application Review
2
HireVue Video Interview
3
Recruiter Screen
4
Superday/Panel Interview
5
Final Interview
6
Offer
よくある質問
Behavioral/STAR
Technical Knowledge
Culture Fit
Past Experience
Case Study
ニュース&話題
Spirepoint Private Client LLC Purchases 3,449 Shares of JPMorgan Chase & Co. $JPM - MarketBeat
MarketBeat
News
·
6d ago
As the world’s largest bank JP Morgan tests Anthropic’s AI tool Mythos, CEO Jamie Dimon admits 'threat'; - The Times of India
The Times of India
News
·
6d ago
Fortifying the enterprise: 10 actions to take now for AI-ready cyber resilience - JPMorganChase
JPMorganChase
News
·
6d ago
JPMorgan Chase & Co. Issues Pessimistic Forecast for Super Micro Computer (NASDAQ:SMCI) Stock Price - MarketBeat
MarketBeat
News
·
1w ago




