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Microsoft Principal Data Science Manager 
India, Telangana, Hyderabad 
496752280

25.06.2024

You will be delivering results through innovation and persistence when similar candidates have given up.

Qualifications
  • Experience that spans the full software/service delivery lifecycle – SW engineering, Program Management and Data Science/Engineering.
  • 10+ years of experience shipping services
  • Candidate would be hypothesis driven, with a passion for data and a bias for action.
  • Candidates should be experienced in framing and participating in data-driven business decisions, including measuring, and evaluating outcomes.
  • Candidates must be able to communicate complex ideas and concepts to leadership and deliver results.
  • Candidates must be comfortable in manipulating and analyzing complex, high dimensional data from varying sources to solve difficult problems.
  • The Team player with proven ability to build trusted relationships.
  • Demonstrated ability to work efficiently, prioritize workflow, and meet demanding deadlines.
  • Bachelors or higher degrees in Computer Science, Statistics, Mathematics, Physics, Engineering, or related disciplines.
Responsibilities
  • Works with executives, product engineering leaders, researchers and other data scientists to formulate data-driven answers to hard business and decision-making problems, applying a wide variety of data and techniques to help drive the engineering investments at a strategic and tactical level.
  • Identifies data sources, integrates multiple sources or types of data, and develops expertise with multiple data sources to tell a story and to compensate for missing data, identify new patterns and business opportunities, and communicate visually and verbally with clear and compelling data-driven stories.
  • Interprets results and develops insights into formulated problems within the business/customer context and provides guidance on risks and limitations.
  • Validates, monitors, and drives continuous improvement to methods, and proposes enhancements to data sources that improve usability and results.