Job Description
Summary
Description
Experimentation: Improve quality of experimentation planning, design and analysis, use advanced techniques and processes to address statistical challenges and accelerate testing.
Metrics design: translate business requirements into analytical solutions, explore, validate, standardize and automate pipelines to increase coverage for appropriate KPIs in reporting tools.
Ad-hoc analysis to develop customer and product knowledge.
Presenting and communicating complex analytical concepts and findings in a clear and concise manner to stakeholders at all levels of the organization.
Minimum Qualifications
- 6+ years of relevant industry experience
- Master of Science degree in Data Science, Biostatistics, Statistics, Computer Science, related engineering field
- Must have: extensive background and proven expertise in statistical experimentation methods, such as AB testing, experimental design, power analysis and non-parametric statistics.
- Proficiency in: SQL, Spark, Python/R/Scala
- Deep understanding of common data science toolkits, such as pandas, NumPy, dplyr, etc.
- Experience using data visualization tools, such as Tableau, GGplot, matplotlib, seaborn, etc.
- Great communication skills and the ability to explain findings and concepts in layperson terms to key decision makers
- Proven track record of working openly and collaboratively in x-functional environment and lead multiple projects simultaneously
Preferred Qualifications
- PhD is preferred.
- Knowledge and/or experience in one or more in: Bayesian methods, multi-armed bandit, multivariate testing, and causal inference is a plus.
- Statistical modeling, Machine Learning experience is a plus.