Sr. Model Governance Engineer

USFull-TimeSenior
Salary130000 - 150000 USD per year
Apply NowOpens the employer's application page

Job Details

Experience
5+ years
Required Skills
AWSPythonSQLGCPJavaAzureJSON

Requirements

  • Bachelor’s degree, or higher, in a technical or quantitative field (Computer Science, Engineering, Statistics, Mathematics, or similar)
  • 5+ years of experience in model governance, model validation, analytics, or related engineering roles
  • Experience managing model documentation, approvals, controls, or lifecycle tracking
  • Understanding of AI/ML models and how they are developed, tested, and used
  • Familiarity with model validation concepts and benchmarking approaches
  • Working knowledge of programming languages such as Java and Python
  • Familiarity with common data formats such as CSV and JSON
  • Experience writing or reviewing SQL and querying databases, including working with datasets for testing or validation
  • Understanding of application development concepts and software development lifecycles
  • Familiarity with SDKs, APIs, and integration patterns used in production systems
  • Experience working with or supporting systems deployed on cloud platforms (e.g., AWS, Azure, or GCP)
  • Ability to review technical implementations to understand how models are built, deployed, and monitored
  • Experience using documentation or tracking tools to support governance, review, or audit activities
  • Awareness of data privacy and security considerations when working with model data and datasets

Responsibilities

  • Maintain the enterprise model inventory, including model owners, purpose, risk rating, and deployment status
  • Apply model risk ratings and confirm required governance steps are completed
  • Coordinate model release approvals, evidence collection, and sign off processes
  • Manage versioning, archiving, and traceability for models and related documentation
  • Ensure models have complete and standardized documentation, such as Model Cards
  • Document model intent, assumptions, limitations, and known risks
  • Capture explainability considerations and any human in the loop processes used
  • Maintain data lineage and dataset information for training, validation, and monitoring
  • Ensure required validation evidence is available, including performance and testing results
  • Support stress testing or review activities for higher risk models
  • Help set up and support ongoing model monitoring activities
  • Trigger governance reviews when model, data, or scope changes occur
  • Partner with engineering, data science, risk, compliance, and governance teams
  • Produce clear and consistent governance documentation for both technical and non-technical audiences
  • Support the preparation and review of datasets used for model testing and validation
  • Support or participate in governance reviews, validations, or review meetings
View Full Description & ApplyYou'll be redirected to the employer's site
130000 - 150000 USD per year
Apply Now