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Quantitative Risk Manager Jobs in Baltimore, MD (NOW HIRING)

Identify outliers and trends to help track systems as they move through the Risk Management ... Bachelor's and master's degree or higher from an accredited college or university in a quantitative ...

Utilizing a collaborative process, will identify (using quantitative and qualitative methods ... Keep leadership abreast of potential issues. 9. Utilizes all risk and predictive analytic tools ...

Utilizing a collaborative process, will identify (using quantitative and qualitative methods ... Keep leadership abreast of potential issues. 9. Utilizes all risk and predictive analytic tools ...

Utilizing a collaborative process, will identify (using quantitative and qualitative methods ... Keep leadership abreast of potential issues. 9. Utilizes all risk and predictive analytic tools ...

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Quantitative Risk Manager information

See Baltimore, MD salary details

$51.2K

$110.8K

$168.9K

How much do quantitative risk manager jobs pay per year?

As of Jul 13, 2026, the average yearly pay for quantitative risk manager in Baltimore, MD is $110,846.00, according to ZipRecruiter salary data. Most workers in this role earn between $89,400.00 and $128,200.00 per year, depending on experience, location, and employer.

What can I do with a quantitative risk management degree?

A degree in quantitative risk management prepares individuals for roles such as risk analyst, risk manager, or quantitative analyst in finance, insurance, or consulting firms. These roles involve assessing and modeling financial risks using statistical tools, programming languages like Python or R, and risk management frameworks. Professionals in this field often work with regulatory compliance and may pursue certifications like FRM or PRM.

What is the salary of a quant risk manager?

A quantitative risk manager's salary typically ranges from $100,000 to $200,000 annually, with higher compensation often associated with experience, advanced degrees, and certifications such as FRM or CFA. In addition to base salary, bonuses and performance incentives can significantly increase total compensation in this role.

What does a quantitative risk manager do?

A quantitative risk manager analyzes financial data and models to identify, measure, and manage risks within an organization. They use statistical techniques, programming skills, and risk management tools to develop strategies that minimize potential losses and ensure regulatory compliance.

How does a Quantitative Risk Manager typically collaborate with other departments within a financial institution?

Quantitative Risk Managers work closely with teams such as trading, compliance, IT, and senior management to identify, measure, and mitigate financial risks. They often translate complex quantitative models into actionable insights for non-technical stakeholders and facilitate the integration of risk metrics into daily decision-making processes. Collaboration is essential for ensuring that risk assessments align with business objectives and regulatory requirements, often requiring regular cross-functional meetings and clear communication.

What are the key skills and qualifications needed to thrive as a Quantitative Risk Manager, and why are they important?

To thrive as a Quantitative Risk Manager, you need strong analytical abilities, a deep understanding of statistics and financial mathematics, and typically an advanced degree in finance, mathematics, or a related field. Proficiency in programming languages like Python or R, experience with risk modeling software, and certifications such as FRM or CFA are highly valuable. Exceptional problem-solving, communication, and collaboration skills help you convey complex risk metrics to stakeholders and work effectively in cross-functional teams. These skills ensure accurate risk assessments, regulatory compliance, and informed decision-making in dynamic financial environments.

How much do quant risk managers make?

Quantitative risk managers typically earn between $100,000 and $200,000 annually, with senior roles and those in major financial centers earning higher salaries. Compensation often includes bonuses and benefits, and strong skills in mathematics, programming, and risk modeling are essential for higher-paying positions.

What is a Quantitative Risk Manager?

A Quantitative Risk Manager is a professional who uses mathematical models, statistical analysis, and quantitative techniques to identify, measure, and manage financial risks within an organization. They often work in banks, investment firms, or insurance companies to analyze market, credit, and operational risks. Their responsibilities include developing risk models, monitoring risk exposures, and advising senior management on risk mitigation strategies. They play a key role in ensuring that organizations make informed decisions and comply with regulatory requirements.

What is the difference between Quantitative Risk Manager vs Quantitative Analyst?

AspectQuantitative Risk ManagerQuantitative Analyst
Primary FocusAssessing and managing risk exposure across financial portfoliosDeveloping models and algorithms for investment strategies
Required CredentialsAdvanced degrees in finance, mathematics, or related fields; certifications like FRM or CFADegrees in finance, mathematics, or statistics; often pursuing CFA or similar
Work EnvironmentFinancial institutions, risk management departmentsInvestment firms, hedge funds, banks
Key SkillsRisk assessment, regulatory knowledge, quantitative modelingData analysis, programming, financial modeling

While both roles involve quantitative skills and financial knowledge, Quantitative Risk Managers focus on identifying and mitigating risks within organizations, whereas Quantitative Analysts primarily develop models to inform investment decisions. Understanding these differences helps professionals choose the right career path or job search focus.

What are popular job titles related to Quantitative Risk Manager jobs in Baltimore, MD? For Quantitative Risk Manager jobs in Baltimore, MD, the most frequently searched job titles are:
What job categories do people searching Quantitative Risk Manager jobs in Baltimore, MD look for? The top searched job categories for Quantitative Risk Manager jobs in Baltimore, MD are:
What cities near Baltimore, MD are hiring for Quantitative Risk Manager jobs? Cities near Baltimore, MD with the most Quantitative Risk Manager job openings:
Senior Credit Model Development Analyst - Consumer Portfolio (Hybrid - see description for potent...

Senior Credit Model Development Analyst - Consumer Portfolio (Hybrid - see description for potent...

M&T Bank

Baltimore, MD • On-site

Full-time

Posted 4 days ago


M&T Bank rating

7.8

Company rating: 7.8 out of 10

Based on 183 frontline employees who took The Breakroom Quiz

76th of 149 rated banks


Job description

** Work Location/Arrangement: This is a hybrid position requiring in-office work four (4) days every week at an M&T office in Buffalo, NY, Bridgeport, CT, Wilmington, DE, Baltimore, MD, Washington, DC, Iselin, NJ, or possibly NY, NY.

*If the final candidate is not near one of the above referenced locations, there might be a possibility for a remote arrangement.

Overview:

Develops, implements, maintains and analyzes quantitative/econometric behavioral models used for credit risk, interest rate risk and liquidity risk management, as well as balance sheet and capital planning. Provides independent contribution to team, including data analysis, model development efforts and ad-hoc analysis as appropriate. Provides guidance and direction to less experienced personnel.

Primary Responsibilities:
  • Research and develop quantitative behavioral models used for credit risk, interest rate risk and liquidity risk management, as well as balance sheet and capital planning, including but not limited to, loan delinquency, default and loss models, loan prepayment and utilization models, deposit attrition models and financial instrument valuation methods.
  • Prepare, manage and analyze large customer loan, deposit and/or financial data sets for statistical analysis in Structured Query Language (SQL) or similar tool to properly specify and estimate econometric models to understand customer or Bank behavior for purposes of credit, interest rate, liquidity or stressed capital risk management. Understand the context of the Bank's data and businesses to ensure properly developed models.
  • Run regressions (including time series and logistic regression), programming routines and other econometric analyses to specify models using appropriate statistical software; communicate results, including graphic and tabular forms, to fellow team members, Treasury management and Bank-wide stakeholders, including the business lines and Risk Management colleagues to demonstrate key risk drivers and dynamics of model output.
  • Execute models in production environment; communicate analytical results to Bank-wide stakeholders. Track portfolio performance, model performance, campaign tracking and risk strategy results. Incorporate observations and data into existing models to improve predictive results. Identify deviations from forecast/expectations and explain variances. Identify risk and/or opportunities.
  • Develop and maintain satisfactory model documentation, including process narratives and performance monitoring guidelines to serve as reference source.
  • Provide financial analysis and data support to other groups/departments across the Bank as required. Support engagements with colleagues in Model Risk Management for model validation exercises.
  • Provide guidance and direction to less experienced personnel regarding all aspects of data and financial analysis and development and management of predictive statistical models.
  • Conduct business in compliance with regulatory guidance including SR (Supervision and Regulation Letters) 10-1, SR 10-6, SR 11-7, Enhanced Prudential Standards, etc. Adhere to applicable compliance/operational/model risk controls and other second line of defense and regulatory standards, policies and procedures.
  • Understand and adhere to the Company's risk and regulatory standards, policies and controls in accordance with the Company's Risk Appetite. Identify risk-related issues needing escalation to management.
  • Promote an environment that supports belonging and reflects the M&T Bank brand.
  • Maintain M&T internal control standards, including timely implementation of internal and external audit points together with any issues raised by external regulators as applicable.
  • Complete other related duties as assigned.
Scope of Responsibilities:

The position serves as senior analyst in the use of statistical programming languages to analyze Bank datasets and develop, implement and maintain behavioral models. It is important for the position to communicate with clear narratives, compelling data visualization and technical precision, both in-person and in writing, to enable audiences to understand analysis and forecasts. The position partners and collaborates with colleagues in related functions, including Credit Risk Management, Asset Liability and Liquidity Management, Model Risk Management and business lines to develop, implement and understand models for Bank use. The position may lead team-based projects related to model development or implementation. This role is highly technical in nature and requires demonstrated attention to detail, execution and follow-up on multiple initiatives with Treasury and across the Bank. The ability to identify, analyze, rationalize and communicate complex business, data and statistical problems and recommend corresponding solutions is a key factor of success in this role.

Supervisory/Managerial Responsibilities:

Not Applicable

Education and Experience Required:

  • Bachelor's degree and a minimum of 2 years' proven quantitative behavioral modeling experience, or in lieu of a degree, a combined minimum of 6 years' higher education and/or work experience, including a minimum of 2 years' proven quantitative behavioral modeling experience
  • Minimum of 2 years' on-the-job experience with Python.
  • Model Development experience, including credit model development experience, is required.
  • Logistic Regression experience required.
  • Minimum of 2 years' on-the-job experience with data management environment, such as SQL Server Management Studio
  • Minimum of 2 years' experience analyzing large data sets and explaining results of analysis through concise written and verbal communication as well as charts/graphs

Education and Experience Preferred:

  • Masters of Science or Doctorate degree in Statistics, Economics, Finance, or related field in the quantitative social, physical, or engineering sciences, with proven coursework proficiency in statistics, econometrics, economics, computer science, finance, or risk management
  • Experience in consumer credit model development, for example: underwriting scorecards, account management models, loss forecasting models.
  • Three (3) or more years' statistical analysis programming experience, including Python experience.
  • Fluency and high proficiency in econometric/statistical techniques, especially logistic regression, (required) survival analysis, time-series analysis (EDIT)
  • Knowledge and familiarity with key aspects of model risk management and model validation, including SR-11-7 guidance on model risk management
  • Proven track record for being able to work autonomously and within a team environment
  • Demonstrated leadership skills
  • Strong desire to learn and contribute to a group
Physical Requirements:M&T Bank is committed to fair, competitive, and market-informed pay for our employees. The pay range for this position is $85,800.00 - $143,000.00 Annual (USD). The successful candidate's particular combination of knowledge, skills, and experience will inform their specific compensation.LocationBuffalo, New York, United States of America

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