Responsibilities:
-
Lead investigations into complex fraud cases across identities, accounts, devices, and transaction surfaces
-
Provide support to day-to-day fraud operations including SEVs and alert triage
-
Reconstruct attacker sequences and hypothesize actor intent and tooling
-
Distill patterns from noisy signals into clear narratives and actionable insights
-
Bridge investigation outcomes to product and model improvements
-
Operate across Plaid's fraud tooling — dashboards, alerting systems, network signals, and analytics platforms — to detect and validate anomalies
-
Stress-test existing capabilities, identify systemic gaps, and define new detection primitives
-
Proactively identify gaps in internal fraud tooling and automation, driving enhancements to improve efficiency and scale
-
Collaborate with Data Science, ML/AI, and Product teams to improve labeling, feature sets, evaluation frameworks, and model decay monitoring
-
Surface data quality limitations and systematically formalize missing features
-
Translate exploratory research into reusable feature pipelines, model inputs, or rule augmentations
-
Participate in product discovery, roadmap planning, and post-launch evaluation to ensure fraud-awareness by design
-
Conduct longitudinal and structural analysis of how fraud types manifest in Plaid network data — entity linkages, temporal patterns, attack rotations, tool chains
-
Experiment with network/graph analysis, sequence mining, anomaly detection, and custom heuristics where off-the-shelf approaches fail
-
Continuously survey external fraud trends, adversary techniques, tooling, and emerging threat vectors
-
Proactively perform threat modeling of abuse surfaces and initiate research proposals when patterns emerge
-
Produce clear, evidence-backed technical reports and case studies for product, engineering, operations, legal, and executive stakeholders
-
Document investigation workflows, attack classifications, and proof-of-concept detection logic
-
Drive post-incident learning by capturing lessons from fraud incidents and feeding them back into defenses
Live Fraud Investigation & Reconstruction
Signal & Tool Utilization at Scale
Product & Model Partnership
Deep Applied Fraud Research
Ecosystem Monitoring & Knowledge Leadership
Case Studies & Reporting
Qualifications:
-
3+ years of applied fraud experience in a high-velocity environment (fintech, consumer payments, banking, SaaS, marketplace risk, or security research)
-
Investigator mindset: pattern synthesis, hypothesis testing, and skilled triage between signal and noise
-
End-to-end investigation experience reconstructing attacker intent and behavior in multi-step attack sequences across accounts, devices, and identities
-
Post-containment incident response experience with a deep emphasis on post-mortems and root cause analysis
-
Dark and grey-web navigation and investigation experience; ability to assess source credibility and translate external intelligence into actionable insights
-
Strong communication: ability to explain complex, ambiguous behavior to technical and non-technical audiences
-
Tool fluency with data environments and investigative toolchains (BI tools, anomaly detection, case trackers)
-
SQL for deep data querying and exploratory analysis
-
Python for scripting, rapid prototyping, and analytical workflows
-
Graph/network analysis experience to detect linked behavioral structures or actor networks
-
Familiarity with rule engines, signal gating, and large-scale monitoring systems
-
Experience applying AI tools and agents to accelerate investigations and research workflows
-
Ability to translate fraud research into actionable signals, rules, or labeled datasets that improve model performance
-
Fraud domain certifications (e.g., CFE)
-
Prior work on consumer identity, payments, or risk platform development
-
Exposure to production ML model lifecycles and metrics for drift/decay
-
Experience improving internal fraud tooling, automation, or case management systems
Required
Preferred
Nice to Have
Other opportunities
- See role
New York
Fraud Model Consulting Lead
- See role
New York
Product Lead - Account Verification
- See role
New York
Product Lead - Growth
- See role
New York
Product Lead - Money Movement
- See role
New York
Product Manager
- See role
New York
Product Security Engineer
- See role
New York
Senior Product Manager
- See role
New York
Staff Product Manager, Applied AI
- See role
New York
Staff Product Manager - Fraud
- See role
San Francisco
Fraud Model Consulting Lead
- See role
San Francisco
Product Lead - Account Verification
- See role
San Francisco
Product Lead - Growth
- See role
San Francisco
Product Lead - Money Movement
- See role
San Francisco
Product Manager
- See role
San Francisco
Product Security Engineer
- See role
San Francisco
Senior Product Manager
- See role
San Francisco
Staff Product Manager - AI Foundations
- See role
San Francisco
Staff Product Manager, Applied AI
- See role
San Francisco
Staff Product Manager - Fraud
- See role
Seattle, WA
Product Security Engineer
