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AI in the Enterprise: How People Use M365 Copilot Chat

Author

Listed:
  • Scott Counts
  • Yan Chen
  • Jing Dong
  • Himanshu Sharma
  • Andrey Zaikin
  • Rui Hu
  • Alperen Kok
  • Gorkem Ozer Yilmaz
  • Siddharth Suri
  • Kiran Tomlinson
  • Sonia Jaffe
  • Will Wang

Abstract

M365 Copilot is used every week by millions of people across more than a million companies around the world as part of their workflows. Uniquely positioned in the AI landscape given its near-exclusive use for work purposes, M365 Copilot can offer a clear picture of how people use AI for work and where that usage may expand next. This paper characterizes that usage through direct classification of user interactions with M365 Copilot Chat. Based on an anonymized and privacy-preserving analysis of a sample of approximately 5.5 million sessions, we combine a learned classification of user intent with a classification of O*NET work activities done with M365 Copilot Chat. We find that M365 Copilot is emerging as an everyday assistant for knowledge work: writing dominates, but users also rely on it for information retrieval, analysis, decision making and strategizing, and evaluating and diagnosing programs and systems, among others. Information seeking tasks remain common, but time trends suggest a relative shift away from ``chat as search'' and toward content and communication-related work. Comparisons across occupational groupings and to work done in the labor market further show that usage is broad but uneven, where the relative share of work done with M365 Copilot Chat cuts across jobs in some cases and is occupation-specific in others. Areas of relative underrepresentation in the labor market suggest the next frontier for enterprise AI adoption.

Suggested Citation

  • Scott Counts & Yan Chen & Jing Dong & Himanshu Sharma & Andrey Zaikin & Rui Hu & Alperen Kok & Gorkem Ozer Yilmaz & Siddharth Suri & Kiran Tomlinson & Sonia Jaffe & Will Wang, 2026. "AI in the Enterprise: How People Use M365 Copilot Chat," Papers 2605.23958, arXiv.org.
  • Handle: RePEc:arx:papers:2605.23958
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    References listed on IDEAS

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    3. Kiran Tomlinson & Sonia Jaffe & Will Wang & Scott Counts & Siddharth Suri, 2025. "Working with AI: Measuring the Applicability of Generative AI to Occupations," Papers 2507.07935, arXiv.org, revised Dec 2025.
    4. Aaron Chatterji & Thomas Cunningham & David J. Deming & Zoe Hitzig & Christopher Ong & Carl Yan Shan & Kevin Wadman, 2025. "How People Use ChatGPT," NBER Working Papers 34255, National Bureau of Economic Research, Inc.
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