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Staff Machine Learning Modeler – Model Risk Management
Company | Block |
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Location | Oakland, CA, USA |
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Salary | $194500 – $343100 |
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Type | Full-Time |
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Degrees | Master’s |
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Experience Level | Senior |
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Requirements
- Advanced degree in Computer Science, Machine Learning, or related quantitative field
- 5+ years experience in model validation or risk management, with focus on machine learning models; or 3+ years and a graduate degree
- Strong software engineering practices and experience building maintainable, well-documented code
- Strong understanding of tree-based models, particularly gradient boosted decision trees and XGBoost
- Understanding of LLM capabilities, limitations, and validation requirements
- Experience with or strong understanding of: Feature importance analysis for tree-based models, Model interpretability techniques, Validation of training data quality, especially in cases of automated labeling, Performance metric selection and validation for different model types, Model governance in financial services
- Expertise in Python for building robust validation frameworks and automation tools
- Advanced SQL skills for data analysis and validation automation
- Experience with test automation and software testing frameworks
- Strong quantitative skills with the ability to identify patterns in validation processes
- Experience building modular, reusable code and tools
- High ethical standards with a commitment to integrity and professionalism
Responsibilities
- Build scalable validation frameworks for tree-based models, focusing on feature importance analysis, stability, and performance metrics
- Develop validation approaches for hybrid systems where LLMs support the ML pipeline
- Create governance frameworks for LLM applications, including: Reliability and consistency assessment methodologies, Prompt engineering validation approaches, Output quality control mechanisms, Drift detection for both traditional ML and LLM components
- Design testing frameworks that can adapt to different model types and use cases
- Create tools that help generate clear validation reports
- Set up systems to continuously monitor model performance
- Build tools that make model validation faster and more consistent
- Create validation components we can reuse across different projects
- Develop automated approaches for common tasks like: Checking model performance, Running statistical tests, Verifying data quality, Testing model assumptions, Tracking performance changes over time
- Assess machine learning models using rigorous validation methodologies
- Develop automated validation tools that can scale across different model types
- Set up comprehensive model monitoring systems
- Maintain clear validation documentation aligned with regulatory requirements
- Partner with model development teams to understand validation needs
- Build effective relationships while maintaining independent assessment standards
Preferred Qualifications
- Experience developing internal tools or validation frameworks
- Knowledge of software development best practices (version control, unit testing, CI/CD)
- Experience validating models in regulated domains
- Knowledge of model governance platforms and frameworks
- Experience with model inventory management systems
- Knowledge of emerging technology validation approaches
- Experience with data visualization tools (e.g., Looker) for monitoring and reporting