Paze Product Data Scientist II

Early Warning ServicesNew York City, NY
$122,000 - $165,000Hybrid

About The Position

This role applies data science, statistical analysis, experimentation, and machine learning techniques to support consumer product strategy, product performance, customer experience, and growth opportunities. While the role includes model building and advanced quantitative methods, the primary focus is using data science to inform and improve the Paze product experience. Paze specific: Apply data science and statistical methods to evaluate Paze product performance, customer behavior, feature adoption, conversion, retention, and product friction. Partner with Product Management, Engineering, Fraud, Marketing, Design, Operations, and Data Engineering to define success metrics, evaluate hypotheses, and translate insights into product decisions. Develop analytical frameworks, experimentation approaches, segmentation, forecasting, or predictive models to support Paze product strategy and roadmap priorities. Translate complex data findings, statistical results, and model outputs into clear, actionable recommendations for product teams, business partners, and senior leadership. Perform data profiling and validation to ensure analysis is based on accurate, well-understood data; identify data quality issues, risks, and trends and recommend improvements.

Requirements

  • Bachelor’s Degree in Mathematics, Statistics, Computer Science, Operational Research or related field
  • Typically a minimum of 4 years data science, engineering, mathematics, or related work experience is required.
  • Experience developing data science pipelines & workflows in Python, R or equivalent programming language.
  • Experience in writing and tuning SQL.
  • Experience handling terabyte size datasets
  • Experience applying various machine learning techniques, and understanding the key parameters that affect their performance
  • Experience using ML libraries, such as scikit-learn, mllib, etc.
  • Experience using data visualization tools
  • Able to write production level code, which is well-written and explainable
  • Interest to do lots and lots of proof of concepts/rapid prototyping
  • Ability to effectively communicate findings from complex analyses to non-technical audiences.
  • Background and drug screen

Nice To Haves

  • PhD/MSc in Mathematics, Statistics, Computer Science, Operational Research or related field; Advanced degree preferred.
  • Knowledge of advanced ML algorithms
  • 2+ years of industry experience in machine learning
  • Demonstrable track record of dealing well with ambiguity, prioritizing needs, and delivering results in a dynamic environment
  • Experience exploring data and finding hidden patterns
  • Prior experience in payments, financial services, fintech, consumer product, marketplace, consulting, or another data-rich product environment.
  • Experience partnering directly with Product Managers, product leadership, or cross-functional product teams.
  • Experience with experimentation, A/B testing, causal inference, segmentation, funnel analysis, cohort analysis, forecasting, or predictive modeling.

Responsibilities

  • Explore and aggregate data independently to uncover data anomalies that impact algorithm performance
  • End to end feature engineering - brainstorm, create, validate, down-select, etc.
  • Write production level code in a dynamic, start-up environment
  • Solve complex problems using terabyte size data sets
  • Apply of a variety of machine learning techniques to a business problem to arrive at optimal approach
  • Partner with Product and Engineering teams to solve problems and identify trends and opportunities
  • Explain and visualize results and algorithm performance to non-technical audiences
  • Support the company's commitment to protect the integrity and confidentiality of systems and data.
  • Apply data science and statistical methods to evaluate Paze product performance, customer behavior, feature adoption, conversion, retention, and product friction.
  • Partner with Product Management, Engineering, Fraud, Marketing, Design, Operations, and Data Engineering to define success metrics, evaluate hypotheses, and translate insights into product decisions.
  • Develop analytical frameworks, experimentation approaches, segmentation, forecasting, or predictive models to support Paze product strategy and roadmap priorities.
  • Translate complex data findings, statistical results, and model outputs into clear, actionable recommendations for product teams, business partners, and senior leadership.
  • Perform data profiling and validation to ensure analysis is based on accurate, well-understood data; identify data quality issues, risks, and trends and recommend improvements.

Benefits

  • Competitive medical (PPO/HDHP), dental, and vision plans
  • Company contributions to your Health Savings Account (HSA) or pre-tax savings through flexible spending accounts (FSA) for commuting, health & dependent care expenses.
  • 401(k) Retirement Plan – Featuring a 100% Company Safe Harbor Match on your first 6% deferral immediately upon eligibility.
  • Flexible Time Off for Exempt (salaried) employees, as well as generous PTO for Non-Exempt (hourly) employees
  • 11 paid company holidays
  • Paid volunteer day
  • 12 weeks of Paid Parental Leave
  • Maven Family Planning – provides support through your Parenting journey including egg freezing, fertility, adoption, surrogacy, pregnancy, postpartum, early pediatrics, and returning to work.
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