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Senior Staff Software Engineer, Risk and Compliance Infrastructure & Data Science

LinkedIn LinkedIn Mountain View, CA
Mid-Senior level Posted April 3, 2026 Job link
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Requirements
  • ᐧ 7+ years of relevant industry experience.
  • ᐧ Experience with SQL/Relational databases.
  • ᐧ Background in at least one programming language (e.g., R, Python, Java, Scala, PHP, JavaScript, Python, Java and Scala).
  • ᐧ 7+ years in technical leadership roles for large-scale platforms.
  • ᐧ Deep experience mapping technical systems to compliance/risk frameworks.
  • ᐧ Experience developing analytics and ML pipelines using tools such as Spark, Databricks, Snowflake, or equivalent distributed compute frameworks.
  • ᐧ Experience authoring and orchestrating data pipelines with workflow tools such as Airflow, Prefect, Flyte, or dbt.
  • ᐧ Familiarity with anomaly detection, control drift analysis, predictive modeling, and quantitative risk techniques (e.g., Monte Carlo simulation, Bayesian inference, VaR).
  • ᐧ Experience using BI and reporting platforms (e.g., Tableau, Power BI, Looker) to produce executive-ready dashboards and audit artifacts.
  • ᐧ Knowledge of programming languages such as Python, Scala, R, or TypeScript, and experience with ML libraries (e.g., scikit-learn, TensorFlow, PyTorch).
  • ᐧ Familiarity with integration patterns across systems of record, transformation, and insight, including data contracts, encryption, authentication, and secrets management.
  • ᐧ Experience with cloud-native compute and storage platforms (e.g., AWS, Azure, GCP), data lakes (e.g., S3, ADLS), and Git-based source control workflows.
  • ᐧ Knowledge of CI/CD, MLOps, and infrastructure-as-code concepts for secure, reliable model and platform deployment.
  • ᐧ Experience with GRC, compliance, or security automation platforms (e.g., ServiceNow, Archer, OneTrust) and shift-left security practices within the SDLC.
  • ᐧ Familiarity with designing high-volume, high-reliability data foundations in large, distributed software environments.
  • ᐧ Experience creating data visualizations and communicating technical concepts clearly to engineering, InfoSec, audit, and business stakeholders.
  • ᐧ Demonstrated ability to mentor engineers and collaborate cross-functionally with legal, security, and platform teams.
  • ᐧ Background working in regulated or highly audited environments (e.g., finance, healthcare, government, SaaS).
  • ᐧExperience building data science or machine learning platforms.
  • ᐧExperience writing RESTful / GRPC APIs with modern frameworks.
  • ᐧHands-on experience in building data pipelines to transform unstructured data into structured formats, with emerging knowledge of leveraging Large Language Models (LLMs) to enhance data processing and transformation workflows.
Preferred Skills
  • ᐧ 7+ years in technical leadership roles for large-scale platforms.
  • ᐧ Deep experience mapping technical systems to compliance/risk frameworks.
  • ᐧ Proven success launching and scaling analytics/compliance systems.
  • ᐧ Experience designing and governing data models, schemas, metadata standards, and data quality controls for structured and unstructured security/compliance data.
  • ᐧ Knowledge of data lineage, lifecycle management, and privacy/regulatory frameworks (e.g., GDPR, CCPA, HIPAA, SOX).
  • ᐧ Experience developing analytics and ML pipelines using tools such as Spark, Databricks, Snowflake, or equivalent distributed compute frameworks.
  • ᐧ Experience authoring and orchestrating data pipelines with workflow tools such as Airflow, Prefect, Flyte, or dbt.
  • ᐧ Familiarity with anomaly detection, control drift analysis, predictive modeling, and quantitative risk techniques (e.g., Monte Carlo simulation, Bayesian inference, VaR).
  • ᐧ Experience using BI and reporting platforms (e.g., Tableau, Power BI, Looker) to produce executive-ready dashboards and audit artifacts.
  • ᐧ Knowledge of programming languages such as Python, Scala, R, or TypeScript, and experience with ML libraries (e.g., scikit-learn, TensorFlow, PyTorch).
  • ᐧ Familiarity with integration patterns across systems of record, transformation, and insight, including data contracts, encryption, authentication, and secrets management.
  • ᐧ Experience with cloud-native compute and storage platforms (e.g., AWS, Azure, GCP), data lakes (e.g., S3, ADLS), and Git-based source control workflows.
  • ᐧ Knowledge of CI/CD, MLOps, and infrastructure-as-code concepts for secure, reliable model and platform deployment.
  • ᐧ Experience with GRC, compliance, or security automation platforms (e.g., ServiceNow, Archer, OneTrust) and shift-left security practices within the SDLC.
  • ᐧ Familiarity with designing high-volume, high-reliability data foundations in large, distributed software environments.
  • ᐧ Experience creating data visualizations and communicating technical concepts clearly to engineering, InfoSec, audit, and business stakeholders.
  • ᐧ Demonstrated ability to mentor engineers and collaborate cross-functionally with legal, security, and platform teams.
  • ᐧ Background working in regulated or highly audited environments (e.g., finance, healthcare, government, SaaS).
  • ᐧExperience building data science or machine learning platforms.
  • ᐧExperience writing RESTful / GRPC APIs with modern frameworks.
  • ᐧHands-on experience in building data pipelines to transform unstructured data into structured formats, with emerging knowledge of leveraging Large Language Models (LLMs) to enhance data processing and transformation workflows.
Education
  • (Not required) – ᐧ Bachelor’s Degree in a quantitative discipline{{:}} Computer Science, Statistics, Operations Research, Informatics, Engineering, Applied Mathematics, Economics, etc.
  • (Not required) – ᐧ BS and 11+ years of relevant work experience, MS and 9+ years of relevant work experience, or Ph.D. and 7+ years of relevant work/academia experience working with large amounts of data.