×
Register Here to Apply for Jobs or Post Jobs. X

Principal Data Scientist, Fraud Modelling

Job in Cape Town, 7100, South Africa
Listing for: impact.com
Full Time position
Listed on 2026-03-04
Job specializations:
  • IT/Tech
    Data Analyst, Data Scientist, Data Science Manager
Job Description & How to Apply Below

About

is the world’s leading commerce partnership marketing platform, transforming the way businesses grow by enabling them to discover, manage, and scale partnerships across the entire customer journey. From affiliates and influencers to content publishers, brand ambassadors, and customer advocates,  empowers brands to drive trusted, performance‑based growth through authentic relationships. Its award‑winning products—Performance (affiliate), Creator (influencer), and Advocate (customer referral)—unify every type of partner into one integrated platform.

As consumers increasingly rely on recommendations from people and communities they trust,  helps brands show up where it matters most. Today, over 5,000 global brands, including Walmart, Uber, Shopify, Lenovo, L’Oréal, and Fanatics, rely on  to power more than 225,000 partnerships that deliver measurable business results.

About

The Role

We're seeking a Senior Data Scientist specializing in Fraud and Risk to join our Cape Town Data Science team. In this role, you'll be at the forefront of protecting our affiliate marketing ecosystem by researching, developing, and deploying ML models that detect and prevent fraud across attribution, lead quality, and partner compliance. You'll work on high‑impact problems spanning traditional fraud patterns and emerging threats—from attribution manipulation to browser extension abuse—while building production systems that scale.

This is an opportunity to combine rigorous analytical work with tangible business impact in a fast‑moving, adversarial domain.

Core Responsibilities
  • Conduct R&D on fraud detection and risk monitoring across the digital advertising ecosystem, including attribution fraud, lead fraud, click injection, browser extension abuse, brand safety violations, and creator authenticity verification.
  • Design, prototype, and validate ML models and rule‑based systems for fraud detection, partner risk scoring, compliance monitoring, and trust & safety workflows.
  • Research and apply graph‑based fraud detection techniques (community detection, link analysis, behavioral clustering) and explore graph database applications for modeling relationships between users, devices, transactions, and partners to uncover coordinated fraud rings and suspicious network patterns.
  • Stay ahead of emerging fraud patterns through continuous learning—monitoring industry trends, reviewing academic literature, exploring data for novel anomalies, and collaborating closely with Product, Compliance, and Trust & Safety teams.
Production deployment & iteration
  • Deploy Fraud and Risk ML models to production; own the end‑to‑end delivery from ETL, feature engineering, model training, deployment, to monitoring.
  • Iterate on live models by adding new features, improving performance (precision/recall/F1), and reducing false positives.
  • Partner with MLOps and Engineering to ensure models are robust, scalable, and production‑ready (testing, alerts, drift monitoring, retraining pipelines).
Data analytics & insights
  • Perform deep‑drive analyses on fraud trends, partner behavior, and risk patterns to inform model strategy and business decisions.
  • Translate analytical findings into actionable recommendations for Product, Marketing, and Finance stakeholders.
  • Build dashboards and reports to communicate model performance, fraud impact, and risk metrics to leadership.
Cross‑functional collaboration
  • Work closely with Product, Engineering, Compliance, and Finance to scope requirements, prioritize work, and align on success metrics.
  • Communicate technical work clearly to non‑technical audiences; present findings and tradeoffs in planning forums and reviews.
  • Contribute to a culture of experimentation, documentation, and knowledge sharing within the Data Science team.
Qualifications

Required

  • Experience:

    5+ years in data science, ML, or advanced analytics, with at least 2+ years focused on fraud detection, risk modeling, or anomaly detection in production environments.
  • Fraud & risk domain expertise:
    Demonstrated experience building and deploying fraud or risk models (classification, anomaly detection, time‑series analysis, graph‑based methods).
  • Technical skills:
    • Strong Python and SQL;…
Note that applications are not being accepted from your jurisdiction for this job currently via this jobsite. Candidate preferences are the decision of the Employer or Recruiting Agent, and are controlled by them alone.
To Search, View & Apply for jobs on this site that accept applications from your location or country, tap here to make a Search:
 
 
 
Search for further Jobs Here:
(Try combinations for better Results! Or enter less keywords for broader Results)
Location
Increase/decrease your Search Radius (miles)

Job Posting Language
Employment Category
Education (minimum level)
Filters
Education Level
Experience Level (years)
Posted in last:
Salary