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Staff Fraud AI Scientist - Fintech Consumer Risk Fraud

LinkedIn Intuit Oakland, CA
Mid-Senior level Posted April 3, 2026 3 variants Job link
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Requirements
  • 7-10 years of work experience in AI Science / Machine Learning and related areas
  • Authoritative knowledge of Python and SQL
  • Relevant work experience in fintech fraud risk, with deep understanding of money movement products, banking, lending, and fraud detection data
  • Relevant work experience in credit risk and/or financial fraud risk, with deep understanding of payment systems, money movement products, banking, and lending
  • Experience with and deep understanding of developing, deploying, monitoring and maintaining a variety of machine learning techniques, including but not limited to, deep learning, tree-based models, reinforcement learning, clustering, time series, causal analysis, and natural language processing.
  • Deep understanding of fraud risk modeling concepts, including fraud score calibration, label bias correction, case disposition logic, and network or graph-based link analysis for identifying organized or collusive fraud patterns.
  • Ability to quickly develop a deep statistical understanding of large, complex datasets
  • Expertise in designing and building efficient and reusable data pipelines and framework for machine learning models
  • Strong business problem solving, communication and collaboration skills
  • Ambitious, results oriented, hardworking, team player, innovator and creative thinker
  • Proven experience defining and driving end-to-end modeling frameworks, methodologies, or best practices across multiple product teams or domains.
  • Demonstrated ability to evaluate and integrate emerging AI/ML technologies, contributing to the company’s external technical visibility and innovation agenda.
Preferred Skills
  • Proficiency in deep learning ML frameworks such as TensorFlow, PyTorch, etc.
  • Work experience with public cloud platforms (especially GCP or AWS) and workflow orchestration tools like Apache Airflow
  • Strong background in MLOps infrastructure and tooling, particularly Vertex AI or AWS SageMaker, including pipelines, automated retraining, monitoring, and version control
  • Experience with experimentation design and analysis, including A/B testing and statistical analysis.
Education
  • (Not required) – Advanced Degree (Ph.D. / MS) in Computer Science, Data Science, AI, Mathematics, Statistics, Physics or a related quantitative discipline
  • (Not required) – 7-10 years of work experience in AI Science / Machine Learning and related areas