Sr. Director, Machine Learning Engineering (Remote-Eligible)
Hobbsnews
- United States
- United States
About
Team Description The Consumer Engagement Platform organization at Capital One empowers rapid financial product innovation at scale and delivers developer joy for all Capital One’s consumer products and organizations, by providing well‑managed, self‑service, experimentation‑driven, and personalized product development vehicles. Hyper Personalization org is building the intelligence and infrastructure that will enable Capital One to deliver truly individualized, real‑time customer experiences at scale — turning every channel into a context‑aware decisioning surface, from home feeds to marketing and servicing messages. The org’s mission is to move Capital One to deliver always‑on, cohort‑of‑one personalization, powered by resilient data foundations, production‑grade ML and GenAI systems, and low‑latency application‑platforms that make it easy for teams across the company to experiment, innovate, and serve the right experience to every customer at the right moment.
What you’ll do in the role
Lead and scale a high‑performing engineering organization responsible for the Personalization Platform that powers real‑time, personalized product experiences and multi‑channel targeted user messaging across Capital One products and services.
Define the technical strategy, delivery roadmap, and operating model for a portfolio spanning recommendation systems, ranking, decisioning, GenAI infrastructure, MLOps, and low‑latency application‑serving systems.
Build, develop, and manage engineers and engineering leaders; set a high bar for hiring, performance, talent density, coaching, and succession planning across the organization.
Partner cross‑functionally with Product, Data Science, Cloud Infrastructure, and Machine Learning Platform teams to align strategy, prioritize investments, and co‑develop advanced recommendation systems and algorithms serving Capital One users.
Drive the design, buildout, and operation of robust ML infrastructure and pipelines supporting feature extraction, model training, testing, guardrails, evaluation, deployment, and both real‑time and batch inference with strong reliability, scalability, and operational rigor.
Architect low‑latency, event‑driven systems for real‑time personalization and decisioning based on streaming data, user behavior, and contextual signals.
Drive the evolution of MLOps practices through automated, metrics‑backed deployment workflows, validation and testing systems, model lifecycle governance, and scalable observability.
Guide the adoption of state‑of‑the‑art AI and LLM optimization techniques to improve scalability, cost, latency, throughput, and reliability of large‑scale production AI systems.
Provide organizational technical and people leadership by influencing architecture, engineering standards, delivery excellence, incident management, and cross‑team strategy while mentoring managers, tech leads, and senior engineers.
Make high‑judgment build‑vs‑buy decisions across a broad stack of Open Source and SaaS AI technologies such as AWS Ultraclusters, Huggingface, VectorDBs, Nemo Guardrails, PyTorch, and more.
Attract and retain top talent in the AI industry and nurture personal and professional development for your team. Foster a culture of learning and staying abreast of the state‑of‑the‑art in AI.
Basic Qualifications
Bachelor’s degree in Computer Science, Engineering, or AI plus at least 10 years of experience developing or leading AI and ML algorithms or technologies, or Master’s degree plus at least 8 years of experience developing or leading AI and ML algorithms or technologies.
At least 5 years of people leadership experience.
Preferred Qualifications
7 years of experience managing and leading an engineering team.
8+ years of experience deploying scalable, responsible AI solutions on major cloud platforms (AWS, GCP, Azure).
Master’s or PhD in Computer Science or a relevant technical field. Proven expertise designing, implementing, and scaling personalization platforms and recommendation systems across feed personalization, ads ranking, or targeted marketing messaging.
Proficiency in Python, Java, C++, or Golang; hands‑on experience with ML frameworks (PyTorch, TensorFlow) and orchestration tools (Databricks, Airflow, Kubeflow).
Experience optimizing large‑scale training and inference systems for hardware utilization, latency, throughput, and cost.
Deep expertise in cloud‑native engineering, containerization (Docker, Kubernetes), and automated CI/CD deployment. Deep experience with MLOps, model observability, and production ML lifecycle management.
Strong track record building organizations, developing managers and senior engineers, and leading through scale and ambiguity. Excellent communication and presentation skills, with the ability to influence senior stakeholders and articulate complex AI concepts clearly.
Proven leadership in driving platform strategy, cross‑functional execution, and technical direction across a large organization.
Excellent communication and presentation skills, with the ability to articulate complex AI concepts to peers.
Employment Sponsorship Capital One will consider sponsoring a new qualified applicant for employment authorization for this position.
Salary and Benefits Remote (Regardless of Location): $286,200 – $326,700 for Sr. Dir, Machine Learning Engineering
McLean, VA: $314,800 – $359,300 for Sr. Dir, Machine Learning Engineering
This role is also eligible to earn performance‑based incentive compensation, which may include cash bonus(es) and/or long‑term incentives (LTI). Incentives could be discretionary or non‑discretionary depending on the plan.
Capital One offers a comprehensive, competitive, and inclusive set of health, financial and other benefits that support your total well‑being. Eligibility varies based on full or part‑time status, exempt or non‑exempt status, and management level.
Equal Opportunity Capital One is an equal opportunity employer (EOE, including disability/vet) committed to non‑discrimination in compliance with applicable federal, state, and local laws. Capital One promotes a drug‑free workplace. Capital One will consider for employment qualified applicants with a criminal history in a manner consistent with the requirements of applicable laws regarding criminal background inquiries, including, to the extent applicable, Article 23‑A of the New York Correction Law; San Francisco, California Police Code Article 49, Sections 4901‑4920; New York City’s Fair Chance Act; Philadelphia’s Fair Criminal Records Screening Act; and other applicable federal, state, and local laws and regulations regarding criminal background inquiries.
For technical support or questions about Capital One’s recruiting process, please send an email to Careers@capitalone.com.
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Languages
- English
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