Lead Data Scientist - Experimentation

Data ScientistData ScientistFull TimeRemoteLeadTeam 10,001+Since 1961H1B SponsorCompany SiteLinkedIn

Location

United States

Posted

5 days ago

Salary

$142.3K - $195.7K / year

Seniority

Lead

Job Description

Lead Data Scientist - Experimentation

Humana

Role Description The Lead Data Scientist (Experimentation) designs and operates the learning engine of the CAHPS & HOS teams, ensuring actions produce reliable learning. This role owns study design and measurement strategy across CAHPS & HOS, builds lightweight testing frameworks, and accelerates feedback loops to ensure every action becomes an opportunity to generate insight, reduce uncertainty, and improve future decisions. The Lead Data Scientist (Experimentation) is responsible for developing and maintaining robust study designs and measurement strategies for interventions impacting CAHPS & HOS. This role partners with operations teams and external vendors to ensure sound methodology and rapid, continuous measurement for pilots and interventions. This position exercises independent judgment and decision-making on complex issues regarding study design, analytics, and learning strategies, working under minimal supervision to ensure that insights reliably drive action and improvement. Key Responsibilities - Develop and own rigorous study designs and measurement plans for CAHPS & HOS interventions, pilots, and programs. - Build, maintain, and scale lightweight A/B testing frameworks to facilitate rapid, consistent experimentation and learning. - Create and maintain a centralized inventory of experiments, insights, and learnings to support organizational knowledge and strategy. - Partner with operations teams and external vendors to ensure methodological integrity and effective, continuous measurement. - Conduct early and consistent evaluation of causal impact, ensuring actionable insights are generated and communicated to stakeholders. - Iterate on study and measurement approaches to accelerate feedback loops and reduce uncertainty in decision-making. Qualifications - Bachelor’s degree in Data Science, Statistics, Epidemiology, or related field. - 5+ years of experience in study design, experimentation, or applied data science. - Expertise in A/B testing, causal inference, and measurement strategies. - Proficiency in programming languages and statistical tools (e.g., Python, SQL). - Demonstrated ability to articulate ideas effectively in both written and oral forms with strong collaboration skills. - Ability to work independently and exercise sound judgment on complex analytic issues. Preferred Qualifications - Master’s degree or PhD in a quantitative discipline. - Experience in healthcare analytics, survey research, or Stars performance measurement. - Familiarity with automation tools for experiment workflow. - Knowledge of learning design principles and rapid feedback methodologies. Requirements - At minimum, a download speed of 25 Mbps and an upload speed of 10 Mbps is required; wireless, wired cable or DSL connection is suggested. - Satellite, cellular and microwave connection can be used only if approved by leadership. - Employees who live and work from Home in the state of California, Illinois, Montana, or South Dakota will be provided a bi-weekly payment for their internet expense. - Humana will provide Home or Hybrid Home/Office employees with telephone equipment appropriate to meet the business requirements for their position/job. - Work from a dedicated space lacking ongoing interruptions to protect member PHI / HIPAA information. - Occasional travel to Humana's offices for training or meetings may be required. Benefits - Medical, dental and vision benefits. - 401(k) retirement savings plan. - Time off (including paid time off, company and personal holidays, volunteer time off, paid parental and caregiver leave). - Short-term and long-term disability. - Life insurance and many other opportunities. Scheduled Weekly Hours 40 Pay Range The compensation range below reflects a good faith estimate of starting base pay for full time (40 hours per week) employment at the time of posting. The pay range may be higher or lower based on geographic location and individual pay will vary based on demonstrated job related skills, knowledge, experience, education, certifications, etc. $142,300 - $195,700 per year. This job is eligible for a bonus incentive plan based upon company and/or individual performance. Application Deadline 06-22-2026 Equal Opportunity Employer It is the policy of Humana not to discriminate against any employee or applicant for employment because of race, color, religion, sex, sexual orientation, gender identity, national origin, age, marital status, genetic information, disability or protected veteran status.

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