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Mike Pierovich

Director of Analytics and Data for Product
San Francisco, California, United States
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Mike Pierovich is a seasoned professional with over ten years of experience in product leadership, management, growth marketing, and analytics. He specializes in leveraging data and analytics to enhance products. Mike excels in building data-driven product practices by setting metric-driven goals, establishing meaningful KPIs, and implementing pipelines and reports to monitor progress. His expertise includes fostering experimentation, A/B testing, and iterative build-measure-learn cycles while enhancing data capabilities, reliability, and governance.

Mike has a proven track record of shipping customer reporting products, data products, and data-focused APIs. He conducts in-depth research to address user issues and identifies the necessary data and algorithms for solutions. Mike leads the deployment, optimization, and scaling of these solutions to drive business success.

In addition to his technical skills, Mike excels in team leadership. He has a talent for recruiting top-tier professionals such as product managers, product analysts, and data scientists. Mike keeps his teams motivated, focused, and productive by defining visions, setting goals, and establishing roadmaps for product analytics. He excels in discovering, grooming, and prioritizing impactful work, ensuring timely delivery through effective collaboration.

Mike Pierovich brings a wealth of knowledge in various tools, techniques, and methodologies including Lean product development, experimentation, A/B testing, growth marketing, growth hacking, Jobs to be Done, Design Thinking, Domain-Driven Design, Agile, and Scrum. His technical skills span Python, SQL, Jupyter, GitHub, Airflow, Spark, Tableau, Looker, AWS S3, AWS Athena, business intelligence, data warehousing, and OBIEE. Furthermore, Mike is well-versed in statistical models like regression, time-series analysis, decision trees, naive Bayes, clustering, and principal component analysis.

This public profile is provided courtesy of Clay. All information found here is in the public domain.