Staff Data Scientist - Riskos

Socure Socure · Vertical AI · Miami, FL · Data Science & AI

Staff Data Scientist role focused on building and deploying Generative AI solutions, including LLMs and agents, for fraud prevention and risk analytics on the RiskOS platform. The role involves end-to-end ownership from data exploration and modeling to production deployment and monitoring, with a strong emphasis on evaluation frameworks and collaboration with engineering and product teams. Experience with ML pipelines, experimentation, and ensuring compliance in a regulated fintech environment is required.

What you'd actually do

  1. Develop and implement advanced analytics on top of noisy, heterogeneous RiskOS data to understand user behavior, product usage, fraud patterns, and workflow effectiveness; translate findings into concrete product and risk strategy improvements.
  2. Architect and build scalable data pipelines and production ML workflows, collaborating with data engineering to ensure robust, reliable, and efficient data processing for both batch and streaming use cases.
  3. Lead the design, execution, and analysis of experimentation frameworks to optimize user journeys, feature adoption, and workflow performance across the RiskOS platform.
  4. Lead the creation and evaluation of Generative AI solutions (LLMs, agents, prompt‑based tools) that automate analytics, power case review and investigation assistants, streamline documentation, and enhance RiskOS workflows and reporting.
  5. Define rigorous evaluation frameworks for GenAI solutions, including offline benchmarks, human‑in‑the‑loop review, safety and hallucination checks, and impact measurement in production.

Skills

Required

  • Python
  • SQL
  • scikit-learn
  • XGBoost
  • TensorFlow
  • PyTorch
  • OpenAI/Anthropic APIs
  • Hugging Face
  • Generative AI
  • LLM-based applications
  • agents
  • retrieval-augmented generation
  • workflow assistants
  • data-insight copilots
  • prompt design and optimization
  • safety and guardrail techniques
  • quantitative/qualitative evaluation of LLM outputs
  • fraud prevention
  • risk analytics
  • complex decisioning systems
  • ML frameworks
  • data pipelines
  • experimentation frameworks
  • model evaluation
  • production ML workflows

Nice to have

  • MLOps
  • feature stores
  • model-serving APIs
  • monitoring frameworks
  • explainability
  • data privacy
  • security

What the JD emphasized

  • own end‑to‑end development
  • production deployment
  • monitoring
  • Generative AI
  • LLM
  • agents
  • evaluation frameworks
  • fraud prevention
  • risk analytics
  • regulated fintech
  • compliance

Other signals

  • Generative AI
  • LLM
  • agents
  • fraud prevention
  • risk analytics
  • production deployment
  • ML pipelines