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Quantitative Risk Analyst Jobs in Ohio (NOW HIRING)

... quantitative risk analysis, and reporting risk exposure across complex projects. * Experience working on large complex engineering project in a risk management role, ideally within the nuclear ...

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Quantitative Risk Analyst information

See Ohio salary details

$53.7K

$127.3K

$228.2K

How much do quantitative risk analyst jobs pay per year?

As of Jun 17, 2026, the average yearly pay for quantitative risk analyst in Ohio is $127,277.00, according to ZipRecruiter salary data. Most workers in this role earn between $106,000.00 and $138,300.00 per year, depending on experience, location, and employer.

What are some common challenges a Quantitative Risk Analyst faces when integrating new data sources into risk models?

Quantitative Risk Analysts often encounter challenges related to data quality, consistency, and compatibility when integrating new data sources into risk models. Ensuring that the data is accurate, timely, and relevant requires rigorous validation and sometimes complex data cleaning processes. Additionally, analysts must adapt existing risk models to accommodate new variables, which may involve re-calibrating parameters or even restructuring parts of the model. Effective collaboration with IT and data engineering teams is essential to streamline data integration and maintain model reliability.

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

To thrive as a Quantitative Risk Analyst, you need strong analytical and mathematical skills, experience with statistical modeling, and typically a degree in finance, mathematics, statistics, or a related field. Proficiency in programming languages such as Python, R, or MATLAB, and familiarity with risk management systems and financial databases are important technical requirements. Attention to detail, problem-solving abilities, and effective communication are vital soft skills for explaining complex analyses to stakeholders. These skills are crucial for accurately identifying, measuring, and mitigating financial risks in dynamic market environments.

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

AspectQuantitative Risk AnalystCredit Risk Analyst
Required CredentialsDegree in finance, economics, or mathematics; certifications like FRM or CFADegree in finance, economics, or related; certifications like FRM or CFA often preferred
Work EnvironmentFinancial institutions, investment firms, risk management departmentsBanks, lending institutions, credit agencies
Employer & Industry UsageUsed across finance sectors for risk modeling and analysisPrimarily in banking and lending for assessing creditworthiness
Comparison Search IntentUnderstanding differences in risk analysis rolesDistinguishing credit-specific risk roles from broader risk analysis

While both roles involve risk assessment and require similar credentials, a Quantitative Risk Analyst focuses on modeling and analyzing various financial risks using quantitative methods across multiple risk types. In contrast, a Credit Risk Analyst specializes in evaluating creditworthiness and managing credit risk specifically within lending and banking sectors.

What is a Quantitative Risk Analyst?

A Quantitative Risk Analyst is a professional who uses mathematical models, statistical techniques, and data analysis to assess and manage financial risks within an organization. They typically evaluate potential losses from market movements, credit defaults, or operational failures and help develop strategies to mitigate those risks. Their work is crucial in industries such as banking, investment, insurance, and asset management, where understanding and controlling risk is essential for financial stability and compliance. Quantitative Risk Analysts often work with complex financial instruments and large datasets, requiring strong analytical and programming skills.
What are the most commonly searched types of Quantitative Risk Analyst jobs in Ohio? The most popular types of Quantitative Risk Analyst jobs in Ohio are:
What are popular job titles related to Quantitative Risk Analyst jobs in Ohio? For Quantitative Risk Analyst jobs in Ohio, the most frequently searched job titles are:
What job categories do people searching Quantitative Risk Analyst jobs in Ohio look for? The top searched job categories for Quantitative Risk Analyst jobs in Ohio are:
Infographic showing various Quantitative Risk Analyst job openings in Ohio as of June 2026, with employment types broken down into 100% Full Time. Highlights an 100% In-person job distribution, with an average salary of $127,277 per year, or $61.2 per hour.
Senior Quantitative Credit Risk Analyst

Senior Quantitative Credit Risk Analyst

Wright-Patt Credit Union

Beavercreek, OH

Full-time

Posted 6 days ago


Wright-Patt Credit Union rating

5.8

Company rating: 5.8 out of 10

Based on 8 frontline employees who took The Breakroom Quiz


Job description

The Senior Quantitative Credit Risk Analyst leads advanced quantitative analysis that supports consumer credit risk management, underwriting strategy, portfolio monitoring, and executive decision-making. This role partners closely with Credit, Finance, Operations, Compliance, and data teams to identify emerging risk trends, define and monitor key credit metrics, evaluate strategy and policy changes, and deliver clear recommendations that balance growth, risk, and member outcomes. The Senior Quantitative Credit Risk Analyst operates with a high degree of autonomy, applies strong statistical and business judgment, and helps ensure that credit risk analysis is accurate, actionable, scalable, and aligned with governance and control expectations.

1)      Credit Risk Strategy and Executive Decision Support (30%): Serve as a primary analytics partner to Credit and business leadership by delivering quantitative analysis that informs underwriting strategy, portfolio management, line assignment, and other credit decisions.

a)       Lead complex analyses tied to portfolio performance, credit strategy, and emerging risk trends across consumer lending products.

b)      Translate business questions into analytical frameworks that evaluate risk, performance, and the expected impact of proposed strategy or policy changes.

c)       Quantify risk-reward tradeoffs, segment performance drivers, and opportunity areas to support sound credit decisions and portfolio actions.

                                                               i.      Credit Risk Management

                                                             ii.      Portfolio Management

                                                           iii.      Risk Appetite / Policy Support

                                                           iv.      Underwriting and Line Management Insights

                                                             v.      Loss Forecasting / Reserve Support

                                                           vi.      Vintage, Segmentation, and Stress Analysis

                                                          vii.      Regulatory / Governance Discipline

                                                        viii.      Decision Science tied to Credit Outcomes

d)      Deliver decision-ready insights that explain portfolio performance, key risks, root causes, and recommended actions for leadership.

2)      Portfolio Monitoring, Risk Measurement, and Governance (25%): Design and maintain credit risk measurement frameworks that support ongoing monitoring, consistent reporting, and accountability for portfolio performance.

a)       Define key credit metrics, portfolio segmentation approaches, and monitoring standards for delinquency, losses, recoveries, utilization, exposure, and related performance indicators.

b)      Establish baselines, thresholds, and reporting routines that allow leaders to track performance against forecast, plan, and risk tolerance.

c)       Build and enhance reporting that highlights vintage trends, segment migration, concentration risk, and early warning indicators across the portfolio.

d)      Ensure risk reporting integrity by validating assumptions, improving data consistency, and aligning analysis with policy, governance, and control requirements.

3)      Advanced Quantitative Analysis, Forecasting, and Statistical Rigor (20%): Strengthen decision-making by applying disciplined quantitative methods to understand performance drivers, evaluate changes, and forecast credit outcomes.

a)       Lead vintage, cohort, segmentation, roll-rate, and migration analysis to identify changes in portfolio quality and performance.

b)      Apply statistical methods such as regression, hypothesis testing, sensitivity analysis, and forecasting to interpret outcomes and support credit strategy decisions.

c)       Evaluate the impact of underwriting, pricing, line management, or collections strategy changes using structured analytical approaches and repeatable standards.

d)      Communicate confidence levels, limitations, and practical significance in a way that supports sound business judgment and governance decisions.

4)      Executive Reporting and Cross-Functional Influence (15%): Prepare concise, high-quality reports, presentations, and briefing materials that translate complex credit performance data into clear actions for senior leadership and risk stakeholders.

a)       Present portfolio insights, emerging risks, and strategy recommendations to senior leaders in a concise, business-focused format.

b)      Create clear summaries, dashboards, and recommendations that connect analytical results to decisions and risk outcomes.

c)       Communicate assumptions, tradeoffs, and limitations clearly so leaders understand the implications of decisions and changing conditions.

d)      Influence prioritization and action through strong stakeholder partnership, clear communication, and credible analytical support.

5)      Cross-Functional Collaboration, Data Enablement, and Control Support (10%): Partner with Credit, Finance, Operations, Compliance, Technology, and data teams to improve analytical efficiency, strengthen risk reporting, and support governed use of data and models.

a)       Develop reusable workflows and automation using SQL and Python to improve analysis speed, repeatability, and control.

b)      Partner with data and technology teams to improve data quality, dataset usability, and access to credit-relevant information.

c)       Support monitoring and alerting practices that surface meaningful changes in portfolio risk and performance in a timely manner.

d)      Interpret model outputs, performance trends, and analytical findings and translate them into practical recommendations for business partners.

e)      Ensure policies, procedures, risk mitigation activities, and operating controls are followed, and escalate gaps or concerns to leadership so risk is appropriately managed.