Fraud Researcher

Plaid · Fintech · New York, NY · Product

Senior Fraud Researcher at Plaid, focusing on using financial network data, transaction patterns, and device signals to detect and prevent fraud. The role involves leading investigations, translating findings into detection improvements, and collaborating with Data Science, ML/AI, and Product teams to shape fraud capabilities. It emphasizes applied research, signal utilization, and ecosystem monitoring to stay ahead of adversaries, directly driving features, model inputs, and product design.

What you'd actually do

  1. Lead investigations into complex fraud cases across identities, accounts, devices, and transaction surfaces
  2. Operate across Plaid's fraud tooling — dashboards, alerting systems, network signals, and analytics platforms — to detect and validate anomalies
  3. Collaborate with Data Science, ML/AI, and Product teams to improve labeling, feature sets, evaluation frameworks, and model decay monitoring
  4. Conduct longitudinal and structural analysis of how fraud types manifest in Plaid network data — entity linkages, temporal patterns, attack rotations, tool chains
  5. Continuously survey external fraud trends, adversary techniques, tooling, and emerging threat vectors

Skills

Required

  • 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)

Nice to have

  • 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

What the JD emphasized

  • applied fraud experience
  • end-to-end investigation experience
  • post-containment incident response experience
  • deep emphasis on post-mortems and root cause analysis
  • Dark and grey-web navigation and investigation experience

Other signals

  • fraud detection
  • applied data science
  • product innovation
  • ML/AI collaboration
  • network data analysis