$112,000 - $200,860 a year
Job Details
Full job description
Job Requisition ID #
26WD97732
Position Overview
We are looking for a Senior Data Scientist to join our Customer Analytics team, with a strong focus on predictive analytics across product usage and customer lifecycle.
In this role, you will develop models and insights to understand user behavior, predict churn and expansion, and drive strategies that improve product adoption and customer outcomes. You will also bring familiarity with emerging AI techniques to enhance analytical approaches and unlock additional value from data.
You will work closely with Customer Success, Product, and Go-to-Market teams to turn data into actionable recommendations.
Responsibilities
Analyze product usage data to identify behavioral patterns, segmentation opportunities, and growth drivers
Develop predictive models to analyze customer churn, retention, expansion, and product adoption
Build customer health scores and predictive signals to support proactive customer success strategies
Apply appropriate AI/ML techniques (e.g., advanced segmentation, pattern detection, NLP where relevant) to enhance insights
Translate business questions into analytical frameworks and data science solutions
Partner with Customer Success and Product teams to identify opportunities to improve engagement and reduce churn
Generate actionable insights and recommendations to influence business decisions
Communicate complex analyses clearly to both technical and non-technical stakeholders
Collaborate with BI teams to embed predictive insights into dashboards and reporting
Minimum Qualifications
5–7+ years of experience in Data Science, Advanced Analytics, or similar roles
Strong proficiency in Python (preferred) or R for data analysis and modeling
Hands-on experience with predictive modeling techniques (e.g., regression, classification, clustering)
Strong SQL skills and experience working with large-scale datasets
Solid understanding of customer analytics concepts (churn modeling, segmentation, cohort analysis)
Working knowledge of machine learning/AI techniques and when to apply them to business problems
Strong analytical thinking and problem-solving skills with a focus on business impact
Bachelor’s or Master’s degree in Data Science, Statistics, Mathematics, Computer Science, or related field
Preferred Qualifications
Experience working with product usage / telemetry data
Experience in SaaS or subscription-based business models
Familiarity with customer lifecycle metrics (retention, LTV, engagement)
Exposure to AI applications such as NLP, recommendation systems, or unstructured data analysis
Experience with data visualization tools (Tableau, Power BI)
Strong stakeholder management and communication skills