AI ML Engineering Lead - Vice President - Wholesale Payments Operations
Listed on 2026-06-26
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Software Development
AI Engineer (Applied/Software), Machine Learning/ ML Engineer
Join a team applying modern artificial intelligence and machine learning to high-impact, high-scale payments workflows. You will work with large datasets and complex operational processes to deliver measurable outcomes. You will build production-grade solutions spanning natural language processing, document understanding, and LLM-enabled applications. You will collaborate closely with business and technology partners to take ideas from concept to deployment. You will help raise engineering standards and mentor others while shipping real solutions.
As an Applied AI/ML - Vice President in the Wholesale Payments Operations team, you will build and deliver enterprise AI/ML solutions that improve operational efficiency and decisioning. You will partner with senior stakeholders to frame problems, define success metrics, and plan roadmaps. You will design, implement, and deploy production services on Amazon Web Services (AWS) with strong engineering rigor. You will establish model governance, monitoring, and responsible AI practices in line with risk and control expectations.
You will mentor engineers and lead reviews that improve quality, reliability, and delivery speed.
Wholesale Payments supports global client payments across multiple methods, currencies, and geographies. The role focuses on building scalable AI/ML capabilities for operations use cases, including document processing and workflow automation. You will contribute to reusable platforms and patterns that enable teams to safely deploy and operate models in production.
Job responsibilities- Partner with senior business stakeholders to frame problems, define success metrics, and align AI/ML roadmaps to priorities
- Lead architecture, design, and end-to-end delivery of enterprise AI/ML solutions for Wholesale Payments Operations
- Write clean, performant, production-quality code andsetengineering standards across the team
- Champion modern software development life cycle (SDLC), continuous integration and continuous delivery (CI/CD), and Dev Ops practices
- DeployandoperateAI/ML services on AWS at scale
- Apply advanced techniques including data/text mining, document analysis, classification, optical character recognition (OCR), natural language processing (NLP), and LLM workflows (including retrieval-augmented generation and fine-tuning)
- Designandimplementscalable, secure data pipelines to support model training and inference
- DefineandenforceMLOps, model governance, monitoring, and responsible AI practices;represent the team in architecture and risk forums
- Evaluate model performance in production, including drift management and reproducibility
- Mentor engineers,conduct code and design reviews, andsupportrecruiting and talent development
- Master’s degree in Computer Science, Engineering, Mathematics, or a related quantitative field
- 6 years of professional software engineering experience delivering production systems
- 4 years of advanced Python development in production environments, including use of AI-assisted coding tools (e.g.,Git Hub Copilot ,Claude Code) to improve throughput while preserving code quality
- 4 years of hands‑on experience designing and deploying production machine learning systems on Amazon Web Services (AWS) (for example: Sage Maker, Lambda, ECS/EKS, S3)
- Demonstrated experience delivering AI/ML solutions with measurable business outcomes at scale
- Experience with object‑oriented design, distributed systems, and performance engineering
- Demonstrated experience building and deploying LLM‑based applications, including retrieval‑augmented generation and fine‑tuning workflows
- Hands‑on experience in natural language processing (NLP), computer vision, optical character recognition (OCR), or document AI solutions in production
- Experience implementing MLOps practices using tools such as MLflow, Kubeflow, Airflow, feature stores, or model registries
- Demonstrated experience mentoring engineers and driving execution against multi‑quarter roadmaps
- Strong communication skills, including translating business needs into technical deliverables for senior
- Experience delivering AI/ML solutions in wholesale payments, transaction banking, or financial services
- Experience with model risk management frameworks, model governance, and responsible AI practices
- Experience with Kubernetes and infrastructure‑as‑code (for example: Terraform)
- Experience with real‑time or streaming inference use cases
- Contributions to open‑source machine learning ecosystems or peer‑reviewed publications
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