Staff Machine Learning Engineer, Credit Products (Square Financial Services)
Description:
- Apply scientific and statistical methods to evaluate new customer segments and improve underwriting performance.
- Lead ML operations and infrastructure initiatives, including data ingestion scaling and support for more advanced model architectures.
- Design and implement the full credit modeling stack from data signal curation through production decisioning logic.
- Use data science techniques to turn messy external and internal data sources into usable modeling inputs.
- Identify and execute improvements to credit policy that improve customer outcomes and portfolio performance.
- Support updates to existing models and troubleshoot issues in a real-time production environment.
- Operate within the requirements of a regulated banking environment, balancing innovation with safety, soundness, and compliance.
Requirements:
- 8+ years of related experience with a bachelor's degree, 6+ years with a master's degree, or a PhD with 3+ years of experience in machine learning or statistical models deployed in production.
- Degree in a technical field such as Computer Science, Mathematics, Statistics, Physics, or Engineering.
- Strong quantitative intuition and data visualization skills.
- Proven ability to conduct sophisticated ad-hoc and exploratory analysis.
- Full-stack proficiency preferred, with the ability to work across data pipelines and production-grade software architecture.
- Ability to communicate clearly with both technical and non-technical audiences, including executive stakeholders.
- Pragmatic problem-solving approach with the ability to choose the right tool while navigating business, technical, and regulatory constraints.
- Experience with tree-based models and gradient boosting is helpful but not required.
- Demonstrated track record of scientific research or an advanced degree is strongly preferred.
Benefits:
- Market-based pay with U.S. salary zones; starting salary ranges from $194,500 to $343,100 USD depending on location.
- Remote work.
- Medical insurance.
- Flexible time off.
- Retirement savings plans.
- Modern family planning benefits.
- Reasonable accommodations during the recruitment process.
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