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As the Senior Director, Data Analytics, you'll be the strategic analytics leader for Marketing and Product. You'll lead a newly combined organization that brings together data-driven insights across the customer lifecycle, from acquisition through adoption and expansion. Reporting to the Vice President, Enterprise Data, you'll partner closely with senior leaders to improve how teams make decisions, measure performance, and drive outcomes, with a focus on shared views of usage and consumption models and major product launches. You'll oversee two critical functions: Marketing Analytics (including demand generation, lifecycle marketing, brand, web, developer relations, localization, monetization, and campaign and event effectiveness) and Product Data Insights (including DevOps, Security, Platforms, AI products, new usage and consumption models, product adoption, feature usage, and customer behavior analysis).