DescriptionWe are building the next generation of AI-enabled automation for a payments platformβusing data, machine learning, and agentic AI to improve reliability, reduce operational risk, and accelerate resolution of payment issues at scale.
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As a Product Manager / AI Product Manager in the Payments Platform team, you will define and drive the product strategy for AI-powered automation, partnering closely with engineers, operations leads, and control partners. This is a high-visibility role at the intersection of payments domain workflows, ML (especially anomaly detection), and LLM-based systems (RAG, agentic orchestration).
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Job responsibilities
- Own the AI automation roadmap for the payments platform, focused on measurable outcomes (e.g., reduced exceptions, faster triage, fewer breaks, improved STP, improved detection/precision).
- Identify and prioritize high-impact payment workflows suitable for AI augmentation or automation (investigation, reconciliation support, exception classification, root-cause suggestions, alert deduplication, etc.).
- Lead rapid proof-of-concept (PoC) development using AI/ML to validate value quickly, then scale successful PoCs into production-grade capabilities.
- Drive anomaly detection strategy (signals, feature sets, model approach, thresholds, monitoring) to detect payment issues, ops anomalies (as applicable), and process breaks early.
- Translate business and user needs into clear product requirements (PRDs/user stories), acceptance criteria, and phased delivery plans.
- Partner with engineering/ML teams to design LLM + RAG solutions (knowledge grounding, context retrieval, evaluation, safety/controls, feedback loops).
- Define and track success metrics (precision/recall for anomalies, false positives, latency, automation rate, operational savings, reliability, control posture).
- Drive alignment across stakeholders (operations, technology, data, risk/controls) and own end-to-end delivery from discovery to launch and iteration.
- Leads end-to-end product delivery processes including intake, dependency management, release management, product operationalization, delivery feasibility decision-making, and product performance reporting, while escalating opportunities to improve efficiencies and functional coordination
- Leads the completion of change management activities across functional partners and ensures adherence to the firmβs risk, controls, compliance, and regulatory requirements
- Effectively manages timelines and dependencies while monitoring blockers, ensuring adequate resourcing, and liaising with stakeholders and functional partnersΒ
Required qualifications, capabilities, and skills
- Experience in product management (or equivalent role) delivering data/AI-enabled products from concept to launch.
- Deep understanding of machine learning models, with particular strength in anomaly detection techniques and operationalization (monitoring, drift, retraining strategy, alert quality).
- Hands-on fluency with Python and SQL (enough to partner effectively, prototype, validate datasets/outputs, and reason about implementation).
- Strong understanding of LLMs, including RAG, prompt/context design, evaluation approaches, and common failure modes.
- Familiarity with agentic AI systems (tool-using agents, orchestration patterns, guardrails, human-in-the-loop designs).
- Ability to work with structured and semi-structured data and to define data requirements (quality, lineage, access patterns) for ML/LLM systems.
- Strong stakeholder management skills in complex environments; able to drive decisions, tradeoffs, and execution.5+ years of experience or equivalent expertise in product delivery or a relevant domain area
- Demonstrated ability to execute operational management and change readiness activities
- Strong understanding of delivery and a proven track record of implementing continuous improvement processes
- Experience in product or platform-wide release management, in addition to deployment processes and strategiesΒ
Preferred qualifications, capabilities, and skills
- Payments industry knowledge (payment flows, exceptions, investigations, reconciliation, messaging/clearing concepts, operational risk).
- Experience productizing ML in regulated environments (model risk, controls, explainability, auditability, reliability).
- Experience building/leading evaluation frameworks (offline tests, golden datasets, human review, online monitoring).
- Prior work delivering automation in high-scale operational platforms (workflow orchestration, case management, alerting systems).Proficient knowledge of the product development life cycle, design, and data analytics
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