Top Benefits
Flexible PTO
Employee equity
Learning & development
About the role
Who you are
- You’re a builder and a communicator. You’re equally comfortable writing a regression pipeline and walking a VP of Customer Success through what the outputs mean. You don’t think you have it all figured out; you’re hungry, flexible, and excited to adapt and grow,
- Hands-on experience building and deploying supervised machine learning models, specifically regression and tree-based classification methods (gradient boosting, random forests, etc.)
- Strong Python skills; SQL is a must for working directly with large datasets and data warehouses
- A solid foundation in statistical analysis. Hypothesis testing, causal inference, and time series methods
- Experience interpreting and explaining model outputs (e.g., SHAP / Shapley values) to non-technical stakeholders
- The ability to take a complex model or analytical finding and break it down into something a business audience can understand and act on
- Comfort working cross-functionally with CS, product, and data engineering teams
- A genuine bias for action; you don’t wait to be told what to analyze next
- You’ve managed the full ML lifecycle in production: training, deployment, inference, and retraining pipelines
- You have experience with containerization and model hosting (Docker, AWS)
- You’ve worked with natural language processing or text/sentiment analysis (e.g., Voice of Customer programs)
- You have experience with data warehouses like BigQuery or Snowflake
- You have TypeScript or front-end exposure that helps you collaborate with product and engineering
- You’ve worked alongside data engineering teams on the client side and can hold your own in a conversation about data pipelines and warehousing
What the job involves
- The Data Scientist owns the full lifecycle of custom machine learning models that power how Totango’s customers understand and act on their data
- This isn’t a dashboard job or a reporting role. It’s deep, hands-on modeling work: building, tuning, deploying, and iterating on predictive models that real customers use to make real decisions about churn, health, and growth
- You’ll partner directly with customer-facing teams and client stakeholders to translate messy business questions into rigorous analytical frameworks, then communicate findings in ways that non-technical audiences can act on. You’re the bridge between the math and the mission
- Custom ML models end-to-end: scoping, training, calibration, and ongoing maintenance
- Exploratory and secondary analysis that generates population-level insights customers use to run their operations
- Model interpretability: Ensuring that every prediction comes with an explanation a customer can act on
- Statistical analysis in service of client hypotheses: running tests, validating hunches, and reporting findings with clarity
- Collaboration with customer-facing teams and client stakeholders to surface insights and translate them into action
- Slide decks and written reports that communicate complex findings to non-technical audiences
- Staying close to production: monitoring deployed models and triggering retraining as needed
Benefits
- Flexible PTO
- Employee equity
- Learning & development
- Remote first, hybrid friendly
- 401(k) with employer matching
- Team celebrations
- Generous parental leave
- Comprehensive health & wellness plans