Senior Data Scientist (Experimentation & Causal Inference)
Arohana Tech Solutions Private Limited
Calgary, Alberta, Canada دوام كامل
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- خبرة
- 7 سنوات فأكثر
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- 1
- تم النشر
- • 3 أفراد
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- في المكتب
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- درجة البكالوريوس
- الأهلية
- Candidates with a bachelor’s degree in a quantitative field and substantial experience in experimentation or causal inference can apply. The role also favors applicants with a master’s degree plus 5+ years of relevant experience, or a PhD plus 3+ years of relevant experience. Experience in subscrip…
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Overview
An opportunity is open for a seasoned Senior Data Scientist focused on experimentation and causal inference. In this position, you will shape the design, execution, and interpretation of large-scale experiments and analytical studies that guide business strategy. The role works closely with product, engineering, and business stakeholders to turn complex data into practical decisions.
What you will do
- Own experimentation programs from the initial hypothesis through deployment, analysis, and final business recommendations, including A/B tests and geo-based experiments.
- Create statistically sound experiment designs and choose the right methodology for each business question.
- Estimate sample sizes, statistical power, and minimum detectable effect to support reliable testing.
- Handle multiple hypothesis testing and use false discovery rate control methods where needed.
- Use Bayesian and frequentist techniques based on the analytical context.
- Apply advanced causal inference methods such as difference-in-differences, propensity score matching, synthetic controls, instrumental variables, doubly robust estimation, meta learners, and uplift modeling.
- Check and validate assumptions to ensure statistical integrity in all causal analyses.
- Develop predictive and inferential models using regression, classification, time series forecasting, and other statistical approaches.
- Build reusable experimentation and causal inference frameworks that can be applied across different business areas.
- Create Python/R libraries and analytical packages that improve productivity and consistency.
- Automate analytical workflows and prepare production-ready data science solutions.
- Work with stakeholders to identify optimization opportunities through experiments and advanced analytics.
- Convert statistical results into clear, actionable recommendations for business leaders.
- Present insights to senior and executive stakeholders in a simple, compelling way.
- Support strategic decisions through data-driven storytelling.
- Guide junior data scientists and analysts on statistical methods, experimentation practices, and scalable solution design.
- Encourage innovation, quality, experimentation, and continuous improvement across teams.
- Lead cross-functional work involving analytics, engineering, and business functions.
Required qualifications
- A bachelor’s degree in Statistics, Economics, Computer Science, Engineering, Mathematics, Physics, or another quantitative discipline.
- At least 7 years of experience with a strong emphasis on experimentation, statistical modeling, and causal inference.
- Strong hands-on knowledge of regression analysis, classification, time series forecasting, experimental design, and statistical inference.
- Deep expertise in propensity score methods, synthetic controls, difference-in-differences, instrumental variables, doubly robust estimation, meta learners, and uplift modeling.
- Solid experience in A/B test design, geo experiments, power analysis, sample size estimation, minimum detectable effect, multiple testing corrections, false discovery rate control, Bayesian statistics, and frequentist statistics.
- Advanced proficiency in Python and R.
- Experience working with scikit-learn, LightGBM, and statistical analysis package development.
- Excellent written and verbal communication skills.
- Ability to explain complex analytical ideas to both technical and non-technical audiences.
- Experience presenting recommendations to senior executives.
- Strong stakeholder management and cross-functional collaboration skills.
- Ability to independently drive analytical projects from idea generation through implementation.
Preferred background
- A master’s degree in Computer Science, Statistics, Mathematics, or another quantitative field with at least 5 years of relevant experience.
- Alternatively, a PhD in a quantitative discipline with at least 3 years of relevant experience in experimentation or causal inference.
- Exposure to ETL development, data extraction, data transformation, data integration, and data quality management.
- Experience with CI/CD pipelines, production deployment, model monitoring, experiment monitoring, and automated reporting.
- Hands-on familiarity with Databricks, Jupyter Notebook, Snowflake, and GitHub.
- Prior work supporting subscription-based business models is a strong plus.
- Understanding of customer analytics, market trends, and consumer behavior is desirable.
- Ability to connect analysis with business strategy and commercial outcomes.
- Experience leading cross-functional projects and managing stakeholders and timelines in fast-moving environments.
- Track record of mentoring data science teams and encouraging strong analytical and engineering practices.
Additional information
Location: Glendale, CA. This is a full-time onsite role. The posting does not specify salary, stipend, number of openings, start date, or application deadline.
Education options mentioned
The role explicitly welcomes candidates with a bachelor’s degree in a quantitative field and also notes preferred master’s and PhD pathways with relevant experience.