June 14
• We’re looking for an expert in statistical analysis focused on Experimentation and Causal Inference to join the Growth team at Wave. • In this role, you will design, run, and analyze experiments in collaboration with product and operations teams to improve the product and customer experience. • The aim is to apply rigorous statistical methods of causal inference and machine learning to grow our user base and optimize product features. • You can work remotely from anywhere (between UTC -5 and +2) with reliable internet access. • You’re willing to travel to one of our key markets once per year for ~6 days (Wave covers all costs). We also provide a yearly stipend of $800 to meet with coworkers. • Our salaries are competitive and are calculated using a transparent formula. For this role, depending on your level, we offer a competitive base salary, plus a generous equity package. • We run performance reviews twice a year and award bonuses or promotions to strong performers who have been with the company for more than six months. • You might be a good fit if you are proficient in SQL and Python/R, have a deep understanding of experimental methods and causal analysis, are a self-starter that excels at exploring problems and collaborating closely with operations teams to drive growth through data, and like to ask questions of data and just have to find out the answers.
• Minimum Bachelor's degree in a quantitative field such as Statistics, Mathematics, Economics, Quantitative Social Science, Applied Psychology, or a related discipline. A Master's or PhD is a plus. • 5+ years experience in applied data analytics or similar experience. • Demonstrated experience running product A/B tests, field experiments, and marketing experiments and conducting causal inference analyses. • Experience collaborating with and supporting cross-functional teams on data analysis and execution of experiments. • Deep knowledge of statistics and econometrics. • Expertise in experimental design including sampling, randomisation, stratification, and clustered designs. • Knowledge of non-experimental causal inference methodologies, such as propensity score matching, difference-in-differences analysis, and instrumental variable analysis. • Strong SQL skills with expertise in querying, manipulating and analyzing data. • Strong Python skills with expertise in data cleaning, manipulation, and statistical analysis (strong R skills are also acceptable and a willingness to quickly adapt to Python). • Proficiency applying machine learning methods for optimization and analysis of experimental data. • Familiarity with data visualization libraries.
• Subsidized health insurance for you and your dependents and retirement contributions (both vary from country to country). • 6 months of fully paid parental leave and subsidized fertility assistance. • Flexible vacation, with most folks taking between 30-40 days per year. • $10,000 annual charitable donation matching.
Apply Now