Forward
FinTech
RiskDataScientist
Neural analysis suggests this role is
optimal for Mid+ candidates.
“Risk Data Scientist at Forward. Skills: Machine Learning, Risk Modeling, Fraud Detection, AML. Build model-driven intelligence layer. Replace static rules with adaptive decisioning”
What You'll Achieve.
Improve measurably after model-driven decisioning; Meaningful lift within 6 months; Fraud loss rate trends down; Chargeback rates stay within thresholds; Early warning models give 30+ days lead time; False positive rate tracked; TM alert false positive rate below 40%; SAR filing timeliness is 100%; Model governance documentation current; Real-time fraud scoring under 100ms latency; Automated and safe model deployment; No production promotion without validated performance; Training-serving consistency guaranteed; No data leakage in training sets; Modeling architecture documented and transferable
Industry & Context.
Root cause analysis; Troubleshooting; Data-driven decision making
What They're Looking For.
Must Have
5+ years experience, Bachelor's degree, SQL proficiency, Experience with ML modeling
Nice to Have
PhD preferred, Specific ML framework experience, Cloud platform certs
What You'll Do.
Build model-driven intelligence layer
Replace static rules with adaptive decisioning
Own full modeling lifecycle
Define ML architecture
Build model governance framework
Set standard for ML use
Build merchant risk scoring model
Drive tier assignment for merchant applications
Design vertical-specific scoring variants
Build bust-out fraud detection models
Use GNN approaches for ring detection
Integrate model scores into rules
Measure outcomes in business terms
Build real-time transaction fraud scoring
Design feature engineering architecture
Build card testing detection models
Develop merchant behavioral baseline models
Build portfolio-level exposure models
Use unsupervised approaches for fraud typologies
Partner with Compliance team
Evolve rule-based monitoring to hybrid system
Build SAR prioritization models
Build structuring detection models
How You'll Work.
Team & Collaboration
Partner with Compliance team; Cross-functional teams
Communication Scope
Executive presentations; Technical documentation
Full Job Description
About the Role Forward processes payments for thousands of merchants across dozens of partner platforms. The Risk Data Scientist's job is to build the model-driven intelligence layer that replaces static rules with adaptive, evidence-based decisioning across three risk domains: merchant underwriting and approval optimization, real-time transaction fraud and anomaly detection, and AML/transaction monitoring and SAR prioritization. You will own the full modeling lifecycle - from problem framing and feature engineering to training, validation, deployment, monitoring, and regulatory governance. This is applied ML in a high-stakes, regulated financial context. Models you build will directly determine approval rates, fraud loss rates, chargeback exposure, and SAR filing quality. They will be scrutinized by bank sponsors, card networks, and regulators. The work demands both technical rigor and regulatory fluency: someone who understands why a gradient boosting ensemble outperforms logistic regression on imbalanced fraud data AND why SHAP explainability is a compliance requirement under ECOA adverse action rules. Forward is early in this journey. The person who takes this role will define the ML architecture, build the model governance framework, and set the standard for how Forward uses machine learning in regulated financial services. Key Responsibilities Merchant Risk: Underwriting and Approval Rate Optimization Build and own the merchant risk scoring model - the centerpiece of Forward's move from static rules to model-based decisioning. This model drives tier assignment (auto-approve, conditional approve, RFI, decline) for every merchant application, replacing hand-coded thresholds with evidence-based probability scores. Design vertical-specific scoring variants for contractor/home services, healthcare, and hospitality - each with distinct chargeback profiles, fraud patterns, and volume distribution that a single generalized model cannot capture. Build bust-out fraud de
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