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At Home Data Scientist Risk Jobs in Henrico, VA (NOW HIRING)

... credit risk models? Koalafi is seeking an experienced Data Scientist to lead the development, deployment, and monitoring of machine learning models that sit at the core of our portfolio ...

... credit risk models? Koalafi is seeking an experienced Data Scientist to lead the development, deployment, and monitoring of machine learning models that sit at the core of our portfolio ...

As a Data Scientist at Capital One, you'll be part of a team that's leading the next wave of ... Team Description In Capital One's Model Risk Office, we defend the company against model failures ...

As a Data Scientist at Key Cyber Solutions, your primary responsibility will be to analyze and ... To confirm if your home address is within a HUBZone, please visit * ***Please note in your cover ...

If you want to apply, click the Apply Now button at the top or bottom of this page. After you click ... risk and also provide consultation to business leaders and other stakeholders on how to leverage ...

Has experience applying data science to credit risk management * Can make your team better every ... Our comprehensive benefits package provides the support you need to thrive at work and at home.

As a Data Scientist at Capital One, you'll be part of a team that's leading the next wave of disruption at a whole new scale, using the latest in computing and machine learning technologies and ...

Staff Data Scientist, Credit

Richmond, VA · On-site +1

$147K - $179K/yr

... sound risk management. You are a person who: * Has created, deployed, and managed supervised ... Our comprehensive benefits package provides the support you need to thrive at work and at home.

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Showing results 1-20

At Home Data Scientist Risk information

See Henrico, VA salary details

$34K

$111.4K

$178.3K

How much do at home data scientist risk jobs pay per year?

As of May 28, 2026, the average yearly pay for at home data scientist risk in Henrico, VA is $111,399.00, according to ZipRecruiter salary data. Most workers in this role earn between $89,400.00 and $123,400.00 per year, depending on experience, location, and employer.

What is the difference between At Home Data Scientist Risk vs At Home Data Analyst Risk?

AspectAt Home Data Scientist RiskAt Home Data Analyst Risk
Required CredentialsTypically requires a master's or Ph.D. in data science, statistics, or related fieldsUsually requires a bachelor's degree in data analysis, statistics, or related areas
Work EnvironmentRemote, often involves complex modeling and predictive analyticsRemote, focuses on data interpretation and reporting
Employer & Industry UsageUsed in tech, finance, healthcare for advanced analyticsCommon in retail, marketing, and business sectors for reporting

The main difference between At Home Data Scientist Risk and At Home Data Analyst Risk lies in the complexity of tasks and required credentials. Data Scientists typically handle advanced modeling and require higher education, while Data Analysts focus on data reporting and analysis with more accessible qualifications. Both roles are remote and industry-specific, but Data Scientists often work on predictive analytics, whereas Data Analysts interpret existing data for decision-making.

What are popular job titles related to At Home Data Scientist Risk jobs in Henrico, VA? For At Home Data Scientist Risk jobs in Henrico, VA, the most frequently searched job titles are:
What job categories do people searching At Home Data Scientist Risk jobs in Henrico, VA look for? The top searched job categories for At Home Data Scientist Risk jobs in Henrico, VA are:
What cities near Henrico, VA are hiring for At Home Data Scientist Risk jobs? Cities near Henrico, VA with the most At Home Data Scientist Risk job openings:
Infographic showing various At Home Data Scientist Risk job openings in Henrico, VA as of May 2026, with employment types broken down into 2% As Needed, 4% Full Time, 82% Part Time, and 12% Contract. Highlights an 97% Physical, and 3% Remote job distribution, with an average salary of $111,399 per year, or $53.6 per hour.
Senior Data Scientist

Senior Data Scientist

Koalafi

Richmond, VA

Full-time

Medical, Dental, Vision, Retirement, PTO

Posted 20 days ago


Job description

At Koalafi, we believe in a world where no one has to put an important purchase on hold. That's why we're making it easier for more people to pay for big purchases over time.

Retailers across the country rely on us to offer flexible lease-to-own financing to their non-prime consumers, while increasing sales and strengthening customer loyalty. Their 2M+ customers love us because we provide a flexible way for them to make payments and give them an opportunity to improve their credit. Our 200+ Koalafi teammates enjoy inspiring and challenging work that accelerates their careers.

Interested in learning more about how we're transforming the financing experience and joining our team?

What You'll Do

Are you a senior-level data scientist with a passion for building and deploying high-impact fraud or credit risk models? Koalafi is seeking an experienced Data Scientist to lead the development, deployment, and monitoring of machine learning models that sit at the core of our portfolio's profitability. This role requires someone who thrives in an end-to-end environment—designing predictive models, operationalizing them in production, and ensuring they continue to perform in a dynamic market.

You will be a key contributor to Koalafi's decisioning ecosystem, owning models that directly influence credit outcomes, fraud mitigation, and the financial performance of the company. Beyond technical expertise, you will bring strong business intuition, enabling you to translate modeling insights into strategic decisions. This position reports to the Manager of Data Science and regularly partners with senior leaders across Risk, Fraud, Analytics, and Technology.

Responsibilities
  • Build, deploy, and maintain production-grade credit and fraud models that are foundational to our real-time decisioning platform and essential to portfolio profitability
  • Own the full MLOps lifecycle—from feature engineering, model training, and experiment management to production deployment, performance monitoring, drift detection, and continuous optimization
  • Architect and scale end-to-end ML pipelines, ensuring reliability, reproducibility, and seamless integration with core decisioning services
  • Design robust model monitoring frameworks that enable tracing, profiling, explainability, and rapid root-cause analysis for production incidents or model degradation
  • Partner with data science, risk, and engineering leaders to shape modeling strategy, improve credit policy, and strengthen fraud defenses in response to customer behavior and macroeconomic trends
  • Drive continuous improvement of existing models, incorporating new data sources, advanced techniques, and rigorous validation processes
  • Communicate complex model logic and insights to non-technical stakeholders, clearly linking modeling decisions to business outcomes and strategic priorities

About You

  • 5+ years of hands-on experience building and deploying machine learning models, with a strong grasp of the end-to-end modeling lifecycle from feature engineering to validation and productionization
  • 5+ years of professional experience writing performant, maintainable Python code in a collaborative production environment, leveraging core data science libraries like pandas, numpy, xgboost, and scikit-learn
  • 2+ Years of experience working on Credit or Fraud risk models
  • Proficient in SQL for querying, transforming, and analyzing large datasets, and comfortable working across relational databases and cloud-based data platforms
  • Strong understanding of data structures, algorithms, and software engineering principles, and apply them to build robust and scalable data solutions
  • Bachelor's degree in a quantitative or STEM field (e.g., Statistics, Mathematics, Computer Science, Engineering) and demonstrate strong analytical and problem-solving skills in your work
  • Location Requirement: This position requires regular in-person attendance at one of our two office locations (Richmond, VA or Arlington, VA). Candidates must already be located within a commutable distance to either location, as relocation assistance is not available at this time

Preferred Qualifications

  • Advanced technical and analytical background, ideally with a Master's or PhD in a quantitative or STEM field, and a strong understanding of probability, statistics, and predictive modeling algorithms (e.g., Boosting, Random Forests, Decision Trees, Bayesian models)
  • Exposure to data and compute platforms such as Snowflake and Databricks
  • Background in financial services or experience working in fast-moving, high-growth environments such as startups
  • Experience with modern ML infrastructure and tooling, including MLOps frameworks (e.g., MLflow, BentoML), CI/CD automation, and model observability, monitoring, and lifecycle management
  • Familiarity with large language models (LLMs) and their deployment in production environments

Why choose Koalafi: A career at Koalafi means opportunities to tackle exciting challenges every single day. We take pride in a culture of innovation, trust, and ownership. You'll get outside your comfort zone, build meaningful relationships, and most of all, take charge of projects that ultimately help people get the things they need most.

Benefits:

At Koalafi, you will have a direct impact on our products and help shape the company's success. We offer competitive compensation & benefits packages to keep you at your best:

  • Comprehensive medical, dental, and vision coverage
  • 20 PTO days + 11 paid holidays
  • 401(k) retirement with company matching
  • Student Loan & Tuition Reimbursement
  • Commuter assistance
  • Parental leave (maternal + paternal)
  • Inclusion and Associate Engagement Programs

Who we are & what we value:

  • We focus on what's most important
  • We set clear expectations and deliver
  • We embrace challenges to reach our full potential
  • We ask, "How can this be better?"
  • We move fast together