Sr. Product Manager - Data Science

New York
US$175000 - US$185000 per annum

Sr. Data Product Manager - Data Science
eCommerce | Internet
New York, NY
$175,000 - $185,000 + Benefits + Equity

A high-growth, leading eCommerce company is looking for an experienced Sr. Data Product Manager to successfully manage the roadmap for the company's recommendation engine as well as leverage an array of Machine Learning models to meet business growth in New York City.


As Sr. Data Product Manager, you will be the Product Analytics Lead and work closely alongside both the data engineering and data science teams in building various innovative data products for directing marketing efforts to better target new segments of customers. You will be responsible for:

  • Collecting, cleaning, and preparing large amounts of data using SQL and Google Analytics
  • Developing architectural designs for existing & new infrastructure and/or tooling
  • Working cross-functionally with Data Engineering & Data Science in developing ML models
  • Serving as SME, and delivering actionable, data-driven insights to a variety of key stakeholders


  • Progressive Data Science, Machine Learning & Product Analytics experience in eCommerce/tech
  • Proficient in developing/updating a broad range of Machine Learning (ML) algorithms and models
  • Proficient in Artificial Intelligence (AI) & Big Data tools (i.e., Airflow, AWS, Databricks, Jira, Spark)
  • Proficient in Advanced Analytics/Data Science tools such as Python, R, and SQL
  • Familiar with Web Analytics tools such as Adobe Analytics and/or Google Analytics
  • Proficient in Business Intelligence (BI) tools such as Looker, Power BI, and or Tableau
  • Proven commercial experience sitting within a Data Science and/or Machine Learning team
  • Proven commercial experience managing data products and/or recommendation engines
  • Proven experience leading cross-functional projects (both technical & non-technical audiences)
  • Strong verbal/written communication, negotiation, and presentation skills across the business
  • Bachelor's degree in Economics, Mathematics, Physics, Psychology, Statistics, or related field; M.S. and/or Ph.D. preferred


As Sr. Data Product Manager, you can make up to $185,000 base salary (depending on experience).


Please register your interest by submitting your resume to George Little via the apply link on this page.


Data Science, Machine Learning (ML), Artificial Intelligence (AI), Advanced Analytics, Business Intelligence (BI), Data Product, Data Platform, Recommendation Engine, Technical Product, Product Analytics, Platform Analytics, Python, R, SQL, Tableau, Looker, Power BI, Jira, Databricks, AWS, GCP, BigQuery, Spark, Airflow, Product Management, eCommerce, Clickstream Data, Google Analytics, Adobe Analytics, Predictive Analytics, Predictive Model, Statistical Analysis, Statistical Model, Product Roadmap, Data Engineering, KPI, Internet, Tech, New Media, Digital, Subscription, NYC, New York, Consultant, Consulting, Project Management, Customer Analytics, Marketing Analytics, Digital Analytics, Forecasting

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