You will design and implement analytical frameworks for commercial pharma data science problems.
Responsibilities
Develop predictive and prescriptive models using healthcare and commercial biopharma data sources like claims, HCP interaction logs, and prescription data.
Lead the design and execution of advanced machine learning and causal inference models to optimize omnichannel engagement strategies.
Apply causal inference techniques, such as causal impact analysis, uplift modeling, and DoWhy, to marketing and engagement analytics.
Exercise independent judgment on data science projects, owning the process from problem definition through model implementation.
Required Skills
12+ years of professional experience in a data science role.
Proficiency in Python, R, and SQL.
Strong background in predictive modeling, classification, segmentation, and optimization.
Extensive experience working in the Azure Cloud environment.
Experience applying causal inference techniques to marketing and engagement analytics.