Staff Applied Machine Learning Engineer - Fraud & Abuse

Block Block · Fintech · CA · Remote · 10409 Engineering - AIDA

Staff Applied Machine Learning Engineer at Block, focusing on designing, building, and operating production ML decision systems to combat fraud and abuse across various Block brands. The role involves end-to-end ownership of ML systems, from data contracts and low-latency inference to monitoring and incident response, with an emphasis on AI-assisted operations and collaboration with cross-functional teams.

What you'd actually do

  1. Build and operate real-time and batch ML decisioning systems for payment fraud, scams, identity and account integrity, merchant and marketplace risk, and abuse prevention.
  2. Integrate behavioral, graph, device, network, event-stream, and third-party signals into low-latency model serving, decision APIs, and product controls.
  3. Own the production lifecycle for risk decisions, including data contracts, feature quality, online/offline consistency, monitoring, drift detection, safe rollout, rollback, and incident response.
  4. Develop feedback loops and verified AI-assisted workflows for triage, investigation support, alert clustering, graph exploration, simulation, and post-incident learning.
  5. Create reusable decision and evaluation capabilities that product services, internal tools, and AI-assisted workflows can safely consume.

Skills

Required

  • Python
  • Java
  • Kotlin
  • SQL
  • TensorFlow
  • PyTorch
  • XGBoost/LightGBM
  • embeddings
  • deep learning
  • tree-based modeling
  • event-streaming systems
  • batch data pipelines
  • feature stores
  • workflow orchestration
  • model-serving systems
  • Cloud infrastructure
  • Kubernetes
  • data warehouses/lakehouses
  • monitoring
  • observability
  • coding agents
  • evaluation harnesses
  • agent-assisted operations tooling

Nice to have

  • graph-based fraud detection
  • behavioral sequence models
  • entity resolution
  • anomaly detection
  • human-in-the-loop review
  • fraud operations tooling
  • regulated financial services
  • model governance
  • auditability
  • explainability
  • decision logging

What the JD emphasized

  • 12+ years building and operating production software and ML systems for business-critical products.
  • Deep expertise in fraud/risk domains such as payment fraud, identity/account integrity, merchant or marketplace risk, scams, trust & safety, abuse prevention, or compliance decisioning.
  • Strong production ML judgment across feature pipelines, model serving, evaluation, monitoring, low-latency integration, safe rollout, and incident response.
  • Sound judgment around false-positive tradeoffs, noisy labels, adversarial behavior, customer harm, and cross-functional decisions.
  • Experience using AI-assisted engineering tools with appropriate verification, testing, and review for high-stakes systems.

Other signals

  • production ML decision systems
  • low-latency inference
  • batch scoring
  • model deployment
  • monitoring
  • incident response
  • outcome feedback loops
  • AI-assisted operations