Devoted Health logo
Devoted Health

Our mission: to dramatically improve the health & well-being of older Americans by caring for everyone like family

Principal Data Scientist, Growth & Membership Operations

Data ScientistData ScientistFull TimeRemoteLeadTeam 1,001-5,000Since 2017H1B No SponsorCompany SiteLinkedIn

Location

United States

Posted

1 day ago

Salary

$133.9K - $187.1K / year

Seniority

Lead

Job Description

Principal Data Scientist, Growth & Membership Operations

Devoted Health

Role Description As a Principal Data Scientist, you'll be a senior analytical partner embedded across Growth and Membership Operations. Your work spans four domains: - Sales Operations (agent readiness, compliance, performance) - Marketing (prospect targeting, campaign attribution, spend optimization) - Telesales (call volume forecasting, agent productivity, workforce planning) - Membership Operations (enrollment processing, premium billing, CMS transactions, plan reconciliation) You will work across these teams to define ambiguous problems, determine what “good” looks like, and design the data systems that help us get there. You will combine deep technical skill, structured problem solving, and cross-functional partnership to turn messy operational challenges into clear, measurable, scalable solutions. Responsibilities and impact will include: - Framing ambiguous problems, defining what success looks like, and translating business challenges into measurable analytical strategies. - Owning and evolving scalable data models, pipelines, and core metrics that serve as the long-term foundations for operational performance in Sales and Membership Operations. - Building and iterating on analytical and modeling solutions, shipping quickly, learning from real-world feedback, and refining systems to drive measurable impact. - Leveraging emerging ML/AI tools thoughtfully, integrating them into production workflows where they add leverage, grounded in strong data fundamentals and clear business outcomes. Qualifications - Deep experience partnering with stakeholders across an organization to solve complex problems. - Comfort defining both the question and the measurement approach. - Ability to move fluidly between SQL, modeling, experimentation, and strategic conversations. - Enjoy building durable systems, not just running one-off analyses. - Collaborative and excited by hard problems. Requirements - Ability to thrive in a fast-paced, high-growth environment that values quick iteration. - 7+ years of individual technical contributor experience. - Strong SQL and experience working in modern data ecosystems (Snowflake, dbt, Python, Looker or similar). - Skilled at collaborating with cross-functional teams and influencing decisions with data-driven insights. - Comfort building scalable, maintainable data pipelines and performing deep statistical analysis, predictive modeling, or experimental design to drive business strategy. Desired Skills and Experience - Experience in healthcare, insurance, fintech, or other complex operational domains. - Familiarity with sales, marketing, or membership operations data or regulated environments. - Comfort performing live analysis or collaborative debugging with stakeholders. - Experience incorporating ML or AI tools into operational workflows. Benefits - Employer sponsored health, dental and vision plan with low or no premium. - Generous paid time off. - $100 monthly mobile or internet stipend. - Stock options for all employees. - Bonus eligibility for all roles excluding Director and above; Commission eligibility for Sales roles. - Parental leave program. - 401K program. - And more... Salary Range $133,942 - $187,083 annually plus eligibility for discretionary performance-based bonus paid out annually. Target bonus is 10% however the actual payout is based on the terms of the bonus plan. The total compensation for this role is $147,336 - $205,791 (base plus bonus).

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