Mercury

Senior Model Risk Manager - AI/ML

Mercury$200K — $250K *
Finance & Insurance
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • Bachelor's in a quantitative field with 6-10 years of experience in AI/ML model development or validation, preferably in fintech
  • Proficient in Python, SQL, and modern ML tooling (e.g. scikit-learn), with familiarity in LLMs and AI frameworks
  • Experience in evaluating machine learning models, especially in fraud detection and generative AI systems
  • Solid understanding of model risk governance principles and regulatory expectations
  • Ability to synthesize complex information in ambiguous environments and make sound judgments
  • Exceptional attention to detail in documentation and quantitative analysis
  • Strong communication skills for diverse audiences, from technical teams to regulators

Responsibilities

  • Maintain and enhance the model governance framework for AI/ML
  • Conduct independent validation of predictive models and identify risks
  • Serve as an advisor on model risk throughout the AI/ML lifecycle
  • Evaluate new AI use cases for compliance and governance requirements
  • Develop AI-enabled tools to improve model governance and validation workflows
  • Champion the role of model risk management in enabling safe AI adoption
  • Cultivate model risk literacy across various teams

Benefits

  • Competitive base salary and equity structure
  • Comprehensive benefits package
  • Work in a fast-paced, innovative environment
  • Collaborate with cross-functional teams
  • Opportunity to shape industry standards for AI/ML governance
Full Job Description
As Senior Model Risk Manager - AI/ML, you will define what model governance looks like for AI/ML at Mercury. That means continuously building and enhancing the frameworks, not just inheriting them. You will own validation, monitoring, and governance of Mercury's AI/ML model portfolio, but more than that, you will be a thought leader in an industry-wide conversation about how MRM must evolve in the context of AI. You will partner closely with data scientists, engineers, compliance leads, and product teams, and you will help shape not just Mercury's approach, but set a standard for what rigorous, forward-looking MRM on AI can look like in fintech. Here are some of the things you will do: Model Governance & Monitoring Oversight • Maintain and enhance Mercury's model governance framework, including inventory standards, documentation templates, validation standards, and issue management. • Assess whether first-line monitoring efforts are effective, proportionate to model risk, and sufficient to keep models fit for purpose over time. Model Validation • Perform independent validation across predictive ML models, generative AI systems, and agentic workflows, covering data, assumptions, methodology, testing, and monitoring. • Assess risks in LLM-powered applications, including RAG pipelines, tool use, autonomy boundaries, human oversight, and hallucination risk. • Identify and document model limitations, failure modes, and emerging AI risks including drift, instability, fairness, and robustness concerns MRM Advisory • Serve as a trusted advisor to data scientists, engineers, product teams, and risk partners throughout the AI/ML lifecycle to provide practical guidance on model risk, governance expectations, and control design without slowing responsible innovation. • Evaluate new AI use cases for regulatory implications, materiality, and governance requirements prior to deployment. • Help shape Mercury's responsible AI standards, including explainability, bias assessment, testing, human oversight, and documentation. AI Enablement for MRM • Develop and maintain AI-enabled automation tools to improve the speed, scale, and effectiveness of model governance and validation workflows. • Modernize the MRM function to operate effectively in a fast-moving AI environment while maintaining strong governance standards. Culture and Advocacy • Champion MRM as a strategic enabler of safe and scalable AI/ML adoption, not simply a control function. • Build model risk literacy across engineering, product, data science, compliance, and risk teams. There are many paths that could lead you here. We think the strongest candidates will bring some combination of the following: • Bachelor's degree in a quantitative field (e.g. Computer Science, Engineering, Statistics, Mathematics, etc.) with 6-10 years of meaningful hands-on experience developing or validating AI/ML models and systems, ideally in financial services or fintech. • Strong technical foundations in Python, SQL, and modern ML tooling (e.g. scikit-learn, XGBoost); familiarity with LLMs, RAG systems, prompt engineering, and AI agent frameworks. • Experience in evaluating and testing machine learning models (e.g. in fraud detection) and generative AI systems, including custom evals, red-teaming, or frameworks. • Solid understanding of model risk governance principles and regulatory expectations (e.g. SR 11-7 / OCC 2011-12, SR 26-2). • Deep appreciation of disciplined model governance and independent effective challenge. • A healthy dose of skepticism combined with a constructive, solution-oriented approach. • Comfort operating in ambiguity: capable of synthesizing fragmented technical, operational, and business context into a clear understanding of how complex models and AI systems actually work, and making sound judgments even without a complete playbook or perfect documentation. • High agency and adaptability: able to operate effectively in a fast-moving environment where priorities evolve quickly, new ad hoc problems emerge regularly, and role boundaries are intentionally broad. You can operate effectively without tightly-defined scope, find the highest-leverage work, and get it done. • Exceptional attention to detail across documentation, code base, testing artifacts and quantitative analysis. • Strong written and verbal communication skills; you can explain model risk to a data scientist and to a regulator, and use different language for each. The total rewards package at Mercury includes base salary, equity, and benefits. Our salary and equity ranges are highly competitive within the SaaS and fintech industry and are updated regularly using the most reliable compensation survey data for our industry. New hire offers are made based on a candidate's experience, expertise, geographic location, and internal pay equity relative to peers. Our target new hire base salary ranges for this role are the following: • US employees (any location): $200,700 - $250,900 • Canadian employees (any location): CAD $189,700 - $237,100 #LI-MZ1

About Mercury

Mercury is a banking and financial services company that provides a range of products and services to individuals and businesses. Their offerings include checking and savings accounts, loans, credit cards, and investment services. The company was founded in 2000 and has since grown to become a leading player in the financial industry. Mercury's mission is to help people and businesses achieve their financial goals, and they are committed to providing excellent customer service and innovative solutions.
Learn more about Mercury
Size
5,000 employees
Industry

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