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A self-compassion blueprint for leaders who are closed-off, constantly on the verge of burnout, and/or trapped in the myth of perfectionism.
Through this 6-step framework, leaders will learn that self-compassion is for the strong, to separate their title from their person, and how to care for themselves in order to care for others.
So many leadership and compassion books seek to remind leaders to “behave human” and treat those around them with care. But the truth is that leaders are human. They’re not playing at being human or calling forth their humanity on demand. Their struggle in marrying leadership and compassion stems from leaders ignoring self-care—the lack of compassion toward their subordinates is just a symptom.
Human First, Leader Second introduces leaders to the practice of self-compassion through a 6-step framework designed to ease even the most hard-headed and hard-assed leaders into thoughtful, and productive, introspection.
Backward: Biography, Biology, BackstoryForward: Purpose, Values, PrioritiesInward: Intentions, Feelings, ThoughtsOutward: Intent, Actions, BehaviorsLeeward: Self-care and Personal AccountabilityWayward: Regret and Self-forgiveness
Offering strategies for a personalized exploration of self-compassion—and what works best for the individual—this book will help leaders grow awareness to the importance of self-care while debunking the myth that compassion equals weakness. Regardless of our title or influence, we are all humans first, who need compassion.
From the Publisher
Publisher : Berrett-Koehler Publishers (September 10, 2024)
Language : English
Paperback : 264 pages
ISBN-10 : 1523007052
ISBN-13 : 978-1523007059
Item Weight : 12.8 ounces
Dimensions : 5.5 x 0.63 x 8.5 inches
Customers say
Customers find the book’s leadership style and practical insights relatable. They describe it as a transformative read for anyone in leadership or personal development. The author’s personal anecdotes are also appreciated.
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