SentiLink logo
SentiLink

SentiLink Stops Identity Fraud

Staff Applied ML Scientist

Machine Learning EngineerMachine Learning EngineerOtherRemoteLeadTeam 51-200Since 2017H1B SponsorCompany SiteLinkedIn

Location

United States

Posted

92 days ago

Salary

$200K - $240K / year

Seniority

Lead

English

Job Description

Staff Applied ML Scientist

SentiLink

This description is a summary of our understanding of the job description. Click on 'Apply' button to find out more. Role Description As a Staff Applied ML Scientist at SentiLink, you will build our core products: models that identify fraudsters and advance our growing suite of products in financial risk. You will: - Be technically capable and the definitive owner of your respective domain. - Work on projects with high visibility and impact that require deep domain understanding, critical thinking, and strong technical abilities. - Collaborate with teams across the company to research new types of fraud, develop new products, and provide analysis to drive sales and marketing. - Engage in a full-stack data science role, involving model development, analysis, and writing production code. - Have end-to-end ownership in a fast-moving environment where deep domain understanding drives development. We have open roles on multiple teams including: - Emerging Products: focuses on 0-to-1 development of new offerings brought to market. - Application Fraud: analyzes the foundational elements of consumer financial applications to detect all forms of fraud. - Identity: resolves identities across massive, often conflicting data sources (both digital and physical) and generates risk models from limited information. Technologies: Python 3, PostgreSQL, and AWS infrastructure (EC2, S3, RDS, Redshift, etc.) Responsibilities: - Develop and maintain SentiLink’s fraud detection models through the full model development lifespan. - Build foundational modeling to drive SentiLink’s expanding suite of Fraud and Financial Risk products. - Research new types of fraud and develop new SentiLink products around identity verification. - Achieve success by researching / developing through iteration, integration of new data sources, and inventive feature engineering. - Write production-ready code for real-time decision making by our partners. - Design, perform, and present analyses that will inform data acquisition, product development, risk operations priorities, marketing, and sales efforts. - Work with engineering, risk operations, and data acquisitions to access necessary data, maintain data quality, and support data access. Qualifications - 6+ years relevant work experience & relevant PhD or 8+ years & relevant Masters. - Proven track record of solving complex / high profile business problems with DS / ML solutions. - Experience in communicating outcomes / progress to senior management / stakeholders. - Very strong in “end to end” DS development. - Strong practical ML / Stats knowledge. - Interest in developing deep domain expertise for product-focused work. - Experience writing production code and tests. - Detail oriented and thoughtful. - Bonus for familiarity with identity solutions, fintech, or adjacent industries. - Experience working at a startup strongly preferred. - Thrive in a fast-paced environment characterized by the need to solve extremely varied, high impact, open-ended problems. - Candidates must be legally authorized to work in the United States and must live in the United States. Requirements - Salary Range: $200,000/year - $240,000/year + equity + benefits. Benefits - Employer paid group health insurance for you and your dependents. - 401(k) plan with employer match (or equivalent for non US-based roles). - Flexible paid time off. - Regular company-wide in-person events. - Home office stipend, and more! Corporate Values - Follow Through - Deep Understanding - Whatever It Takes - Do Something Smart

Job Requirements

  • 6+ years relevant work experience & relevant PhD or 8+ years & relevant Masters.
  • Proven track record of solving complex / high profile business problems with DS / ML solutions.
  • Experience in communicating outcomes / progress to senior management / stakeholders.
  • Very strong in “end to end” DS development.
  • Strong practical ML / Stats knowledge.
  • Interest in developing deep domain expertise for product-focused work.
  • Experience writing production code and tests.
  • Detail oriented and thoughtful.
  • Bonus for familiarity with identity solutions, fintech, or adjacent industries.
  • Experience working at a startup strongly preferred.
  • Thrive in a fast-paced environment characterized by the need to solve extremely varied, high impact, open-ended problems.
  • Candidates must be legally authorized to work in the United States and must live in the United States.
  • Salary Range: $200,000/year - $240,000/year + equity + benefits.

Benefits

  • Employer paid group health insurance for you and your dependents.
  • 401(k) plan with employer match (or equivalent for non US-based roles).
  • Flexible paid time off.
  • Regular company-wide in-person events.
  • Home office stipend, and more!
  • Corporate Values
  • Follow Through
  • Deep Understanding
  • Whatever It Takes
  • Do Something Smart

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