Business Model Data Scientist
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About the Role
Overview
As a Staff Data Scientist, you will serve as a strategic thought partner to
Responsibilities
Define KPIs and Success Metrics: Establish key business indicators for projects, ensuring alignment with company objectives and clear measures of success.
Mentorship: Mentor junior team members and help shape the team’s analytical rigor and methodology standards in causal inference and A/B testing.
Leadership and Ownership: Demonstrate boundaryless leadership and extreme accountability - proactively drives outcomes across teams and leads with influence, not authority.
Qualifications
At least 6 years of experience applying statistical / econometric and modeling skills in decision making without an advanced degree, 2 years of experience with an advanced degree.
Demonstrated expertise in causal
A demonstrated ability to navigate through ambiguity and deliver results that significantly impact the business.
Excellent communication skills and the ability to work effectively with both technical and non-technical colleagues.
Proficiency in SQL and a statistical programming language such as Python and/or R.
Intuit provides a competitive compensation package with a strong pay for performance rewards approach. This position may be eligible for a cash bonus, equity rewards and benefits, in accordance with our applicable plans and programs (see more about our compensation and benefits at Intuit®: Careers | Benefits). Pay offered is based on factors such as job-related knowledge, skills, experience, and work location. To drive ongoing fair pay for employees, Intuit conducts regular comparisons across categories of ethnicity and gender. The expected base pay range for this position is:
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