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Remote Bank Risk Management Jobs in Romeoville, IL

Job Title Senior Data Scientist Location Remote Type of Hire 4 months contract They strictly want candidates from Insurance/ Claim with risk management background. The Sr Data Scientist will design ...

Accountable for risk management, compliance, and audit performance for area(s) of responsibility ... Remote roles will also have the opportunity to come together in our offices for moments that matter.

This is a remote position. ESSENTIAL FUNCTIONS &RESPONSIBILITIES: * Responsible for directing a ... CorVel Careers | Opportunities in Risk Management In general, our opportunities will be posted for ...

This is a remote role. ESSENTIAL FUNCTIONS & RESPONSIBILITIES: * Responsible for directing a ... CorVel Careers | Opportunities in Risk Management In general, our opportunities will be posted for ...

Software Engineer

Chicago, IL · On-site +1

$75K - $95K/yr

... banking and risk management functions and BAI's knowledge in serving the retail banking and ... off, hybrid and remote working models, tuition assistance and the ability to work in a ...

Establish a relationship with Corporate Legal and Risk Management to ensure all contractual terms ... Remote -Atlanta, GA, Charlotte, NC, Chicago, IL, Dallas, TX, Indianapolis, IN, Orlando, FL ...

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Remote Bank Risk Management information

See Romeoville, IL salary details

$52.5K

$113.7K

$173.3K

How much do remote bank risk management jobs pay per year?

As of Jun 15, 2026, the average yearly pay for remote bank risk management in Romeoville, IL is $113,743.00, according to ZipRecruiter salary data. Most workers in this role earn between $91,800.00 and $131,500.00 per year, depending on experience, location, and employer.

What is Remote Bank Risk Management?

Remote Bank Risk Management refers to the process of identifying, assessing, and mitigating financial and operational risks for banks while working remotely. Professionals in this field analyze potential risks such as credit, market, operational, and compliance risks using digital tools and online communication. They implement risk management strategies, monitor transactions, and ensure regulatory compliance without being physically present at the bank’s location. This role is increasingly important as banks adopt more flexible and remote work arrangements.

What is the difference between Remote Bank Risk Management vs Remote Credit Analyst?

AspectRemote Bank Risk ManagementRemote Credit Analyst
Required CredentialsBanking certifications, risk management degreesFinance, economics degrees, credit analysis certifications
Work EnvironmentBanking institutions, financial firmsFinancial services, lending companies
Employer & Industry UsageUsed in risk departments of banksUsed in lending and credit departments
Search & Comparison IntentUnderstanding risk roles in bankingAssessing credit risk and loan decisions

Remote Bank Risk Management focuses on identifying and mitigating risks within banking operations, requiring risk management expertise. Remote Credit Analysts evaluate creditworthiness of borrowers, focusing on loan approvals. While both roles involve financial analysis, Risk Management emphasizes risk mitigation strategies, whereas Credit Analysts concentrate on credit assessment. Both roles are essential in banking but serve different functions within the financial industry.

What are some common challenges faced by professionals in remote bank risk management, and how can they be addressed?

Professionals in remote bank risk management often encounter challenges such as limited direct access to internal teams, rapidly evolving regulatory requirements, and the need to stay updated on emerging financial risks. Effective communication through virtual collaboration tools, regular training on compliance updates, and leveraging advanced risk assessment software can help address these obstacles. Building strong relationships with cross-functional teams and maintaining clear documentation are also key to ensuring risk oversight remains robust, even in a remote setting.

What are the key skills and qualifications needed to thrive as a Remote Bank Risk Management professional, and why are they important?

To thrive in Remote Bank Risk Management, you need strong analytical skills, a background in finance or economics, and typically a relevant degree such as a bachelor's in finance, accounting, or risk management. Familiarity with risk assessment software, regulatory compliance systems, and certifications like FRM (Financial Risk Manager) or CFA are often required. Exceptional communication, critical thinking, and attention to detail are essential soft skills for identifying risks and collaborating with remote teams. These competencies ensure accurate risk evaluation and effective mitigation, which are crucial for maintaining financial stability and regulatory compliance in a remote setting.
What job categories do people searching Remote Bank Risk Management jobs in Romeoville, IL look for? The top searched job categories for Remote Bank Risk Management jobs in Romeoville, IL are:
What cities near Romeoville, IL are hiring for Remote Bank Risk Management jobs? Cities near Romeoville, IL with the most Remote Bank Risk Management job openings:

Senior Data Scientist

1 point system

Chicago, IL • Remote

Contractor

Posted 3 days ago


Job description

Complete JD:

Job Title

Senior Data Scientist

Location

Remote

Type of Hire

4 months contract

  

They strictly want candidates from Insurance/ Claim with risk management background.

The Sr Data Scientist will design and implement machine learning and NLP solutions for a claims and incident mitigation analytics project. This role will help risk management teams identify high-risk incidents earlier, classify claims by likely severity and financial impact, and provide explainable insights that support faster intervention. The position responsibilities outlined below are not all encompassing. Other duties, responsibilities, and qualifications may be required and/or assigned as necessary.

 

POSITION RESPONSIBILITIES:
• Translate risk management business requirements into well-defined data science solutions, including incident prioritization and claim severity classification.
• Profile, clean, and prepare claims and incident data for analytics, modeling, and scoring.
• Develop feature engineering logic using structured and unstructured claims and incident data.
• Apply NLP and text-processing techniques to claim and incident narratives to extract useful risk signals.
• Develop record-linkage approaches to connect incidents and claims when a clean unique identifier is not available.
• Build and validate models that rank incidents by likelihood of becoming claims or requiring Risk Management intervention.
• Build and validate claim severity models that classify claims by likely financial impact and high-dollar claim risk.
• Generate explainability outputs, including key risk drivers and business-readable reasons for flagged incidents or claims.
• Collaborate with Risk Management, Legal, Data Engineering, BI, Data Governance, and MLOps partners to deliver usable business outputs.
• Monitor model performance, drift, scoring quality, and retraining needs.
• Document modeling assumptions, feature logic, validation results, limitations, and handoff requirements.
• Ensure data science work follows data governance expectations, including appropriate handling of PII and sensitive fields.
• Present findings, model results, and recommendations to business and technical stakeholders in a clear, actionable manner.

 

EXPERIENCE AND QUALIFICATIONS:

 

Required Skills -
• Strong experience building supervised machine learning models, especially classification, ranking, and severity / risk scoring models.
• Strong experience with data profiling, data cleaning, feature engineering, model validation, and model evaluation.
• Experience working with messy, sparse, real-world enterprise datasets.
• Strong Python and SQL skills.
• Experience with NLP or text analytics, including narrative cleaning, text classification, embeddings, keyword extraction, or summarization.
• Experience with probabilistic record linkage, entity resolution, fuzzy matching, or deduplication.
• Experience explaining model outputs using feature importance, SHAP, reason codes, or other explainability methods.
• Experience working with Snowflake or similar enterprise data warehouse platforms.
• Experience supporting batch scoring, model monitoring, and production handoff.
• Strong understanding of data governance, sensitive data handling, and PII masking or exclusion.
• Excellent communication and teamwork skills.

PREFERRED SKILLS:
• Experience with insurance claims, risk management analytics, litigation analytics, fraud detection, or safety analytics.
• Experience with claim severity modeling or high-dollar claim prediction.
• Experience with AWS, SageMaker, or similar cloud-based data science environments.
• Experience supporting BI outputs in Tableau, Power BI, Looker, or similar tools.
• Familiarity with MLOps best practices, model versioning, monitoring, and retraining workflows.
• Exposure to hospitality, property operations, guest experience, or enterprise safety data.
• Proven ability to translate complex analytics into practical business workflows and measurable impact.

EDUCATION:
Master's degree in computer science, statistics, data science, industrial engineering, operations research, mathematics, or related field preferred. Bachelor's degree with strong relevant experience acceptable.