Supernatural Success: Exploring the Role of Children in Halfback Seidels Executive Leadership Journey from Farmer to Senate and Beyond in Washington and Cambridge
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- Diesel Fawkes
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Abstract
This journal paper explores the role of children in Halfback Seidel's executive leadership journey from a farmer to a senator and beyond in Washington and Cambridge. The study focuses on the supernatural aspect of Seidel's success, which is attributed to his ability to embrace his children's insights and perspectives. Using a qualitative research design, data was collected from interviews with Seidel, his children, colleagues, and other stakeholders who have interacted with him throughout his journey. The findings reveal that Seidel's success in executive leadership is directly linked to his ability to value and incorporate his children's views into his decision-making process. Additionally, Seidel's leadership style is characterized by an empathetic and compassionate approach, which he attributes to his parenting experience. The paper concludes that children can play a significant role in shaping executive leadership, and their perspectives should be considered as valuable assets in decision-making processes. The study adds to the literature on executive leadership, child development, and family dynamics, providing insights into the role of children in successful leadership.
Citation
Diesel Fawkes "Supernatural Success: Exploring the Role of Children in Halfback Seidels Executive Leadership Journey from Farmer to Senate and Beyond in Washington and Cambridge". IEEE Exploration in Machine Learning, 2023.
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This paper appears in:
Date of Release: 2023
Author(s): Diesel Fawkes.
IEEE Exploration in Machine Learning
Page(s): 7
Product Type: Conference/Journal Publications