Expertise – The Limits of “I’ll Know It When I See It”

#Intuition
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Sean Murphy will share the challenges and strategies of navigating the limits of intuitive understanding in the realms of engineering and entrepreneurship. It offers a roadmap for blending human expertise with automation, effective delegation, and the creation of a shared mission. Aiming to equip leaders and innovators with the tools to transform intuition into actionable insight and collective achievement.

Uncover how to move beyond “I will know it when I see it,” fostering a culture of precision, collaboration, and innovation in your projects and organizations.

Practical tips for:

  • Exploration and verification
  • Recognizing opportunities
  • Recognizing and managing the limits of intuition
  • Delegating tasks and problems
  • Blending human expertise with automation


  Date and Time

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  • Date: 06 Mar 2025
  • Time: 07:00 PM to 08:00 PM
  • All times are (UTC-08:00) Pacific Time (US & Canada)
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  • Starts 15 February 2025 05:00 PM
  • Ends 06 March 2025 07:00 PM
  • All times are (UTC-08:00) Pacific Time (US & Canada)
  • No Admission Charge


  Speakers

Sean Murphy of SKMurphy, Inc.

Biography:

Sean Murphy has taken an entrepreneurial approach to life since he could drive. His firm, SKMurphy, Inc., helps early-stage startups and consultants market and sell their products and services. His clients have offerings in electronic design, artificial intelligence, web-enabled collaboration, proteomics, text analytics, legal services automation, and medical services workflow.

Before founding SKMurphy, Inc. in 2003, Sean has worked in a variety of roles for more than two decades: software engineer, engineering manager, project manager, business development, product marketing, and customer support. He has worked directly for Cisco Systems, 3Com, AMD, MMC Networks, and VLSI Technology. He has a BS in Mathematical Sciences and an MS in Engineering-Economic Systems from Stanford.