Data Scientist Ll - Digital Intelligence

Socure Socure · Vertical AI · US · Hybrid · AI and Data

Data Scientist II role focused on developing machine learning features, models, and analytical methods for digital identity verification and fraud prevention. The role involves working with complex telemetry data, analyzing risk signals, and partnering with cross-functional teams to improve production systems. Requires strong SQL, Python, and ML modeling skills, with experience in large-scale datasets and distributed processing.

What you'd actually do

  1. Develop machine learning features, models, and analytical methods for device, network, browser, mobile, session, and behavioral intelligence.
  2. Work on scoped fraud and identity risk problems where data quality, labels, telemetry coverage, and product tradeoffs need careful analysis.
  3. Build features from large-scale, high-cardinality, sparse, noisy, and platform-dependent telemetry.
  4. Analyze signal patterns such as spoofing, emulator behavior, automation, proxy/VPN usage, low-entropy fingerprints, telemetry gaps, and device or session fragmentation.
  5. Design and execute validation analyses, including train/test splits, holdout checks, leakage review, drift assessment, customer impact analysis, and feature stability review.

Skills

Required

  • Bachelor’s, Master’s, or Ph.D. in Computer Science, Machine Learning, Statistics, Mathematics, Data Science, or a related quantitative field, or equivalent practical experience.
  • 5+ years of experience in data science, applied machine learning, statistical modeling, analytics engineering, or a related technical role.
  • Experience building, evaluating, and improving machine learning models, features, analytical pipelines, or risk signals.
  • Strong SQL skills and experience working with large-scale, complex datasets.
  • Strong proficiency in Python and experience with data science libraries such as pandas, NumPy, scikit-learn, XGBoost, TensorFlow, PyTorch, or similar.
  • Experience with distributed data processing tools such as Spark, PySpark, Databricks, or equivalent frameworks.
  • Solid understanding of supervised learning, unsupervised learning, feature engineering, model evaluation, statistical validation, and experiment analysis.
  • Ability to work with noisy data, imperfect labels, missing values, instrumentation gaps, and changing data distributions.
  • Strong analytical judgment across data quality, feature design, model selection, explainability, and business impact.
  • Experience collaborating with engineering, product, analytics, or risk teams to move data science work toward production or operational use.
  • Clear communication skills, including the ability to explain technical work, assumptions, tradeoffs, and results to non-specialist stakeholders.
  • Ability to operate independently on defined problem areas while seeking guidance appropriately on ambiguous or high-risk decisions.

Nice to have

  • Background in fraud detection, identity verification, trust and safety, anomaly detection, cybersecurity, risk modeling, or another adversarial data domain.
  • Experience with device intelligence, browser/mobile fingerprinting, behavioral biometrics, network intelligence, VPN/proxy detection, or telemetry signal processing.
  • Experience developing features from high-cardinality categorical data using techniques such as aggregation, frequency encoding, target encoding, embeddings, graph features, or representation learning.
  • Familiarity with production ML workflows, model monitoring, feature monitoring, or batch and near-real-time decisioning systems.
  • Experience with dashboarding, model explainability, feature documentation, or customer-impact analysis.
  • Interest in adversarial behavior, fraud patterns, telemetry quality, and applied ML systems that operate in real-world production environments.

What the JD emphasized

  • production-oriented risk signals
  • partner with engineering, product, and risk teams to improve fraud detection
  • production rollout
  • production ML workflows
  • production environments

Other signals

  • develop machine learning features, models, and analytical methods
  • production-oriented risk signals
  • improve fraud detection, identity confidence, and customer outcomes
  • partner with engineering, product, and risk teams to improve fraud detection