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Awe: The New Science of Everyday Wonder

Dacher Keltner's 2023 synthesis of two decades of awe research — the book that established the two-component model, the small self, and the ecology of wonder as accessible frameworks for understanding human flourishing.
Awe: The New Science of Everyday Wonder and How It Can Transform Your Life, published in 2023, is Keltner's culminating work on awe — the synthesis of two decades of empirical research presented for a broad audience without sacrificing scientific precision. The book develops the two-component model in depth, documents the small-self response and its prosocial consequences, explores the dark side of awe in overwhelming form, and proposes the ecology-of-wonder framework for cultivating the capacity in daily life. Its publication coincided with the emergence of publicly available large language models, making its framework unexpectedly urgent for understanding the AI transition.
Awe: The New Science of Everyday Wonder
Awe: The New Science of Everyday Wonder

In The You On AI Encyclopedia

The book is structured around what Keltner calls the 'eight wonders of life' — the eight domains in which awe most reliably occurs: moral beauty, collective effervescence, nature, music, visual design, spirituality, ideas, and encounters with life and death. This taxonomy emerged from the awe diary studies and represents the first systematic empirical mapping of awe's triggers across cultures.

Central to the book's argument is the distinction between peak awe and everyday awe. The dominant image of awe — the Grand Canyon, the mystical vision, the astronaut's view — had created a misperception that awe is rare. The diary studies showed that awe is frequent in ordinary life, and the book shifted emphasis accordingly. This shift made awe accessible: not something to be pursued in extreme circumstances but cultivated in daily attention.

Two-Component Model of Awe
Two-Component Model of Awe

The book's relevance to the AI transition was not its original focus, but the framework it provides maps with precision onto the transition's psychological challenges. The two-component model diagnoses the transition. The small-self research specifies the psychological work it demands. The dark-side analysis warns about the conditions under which the encounter with AI's vastness produces fragmentation rather than growth. The ecology-of-wonder framework proposes the institutional response.

The book integrates Keltner's work with adjacent research on flow (Csikszentmihalyi), moral elevation (Haidt), gratitude (Emmons), and self-transcendent experience (Yaden) — presenting awe as part of a family of emotions that promote prosocial behavior and flourishing. This integration positions awe not as an exotic emotion but as central to the psychology of meaning.

Origin

The book was published by Penguin Press in January 2023, eight weeks after ChatGPT's public release. This coincidence gave the book unexpected relevance to the AI discourse, though its argument was developed before the technology's public arrival. The writing drew on Keltner's accumulated research as well as the death of his brother Rolf in 2019, which brought the question of grief-and-wonder into personal focus.

Key Ideas

Two-component model. The book's theoretical backbone: vastness plus accommodation.

Small Self
Small Self

Eight wonders of life. The empirical taxonomy of awe's domains.

Peak to everyday. The shift from rare to frequent that made awe accessible.

Dark side acknowledged. The book is careful to document overwhelming awe alongside productive awe.

Personal and scientific. Interwoven with Keltner's grief for his brother, making the science inseparable from the lived experience.

Further Reading

  1. Keltner, D. (2023). Awe: The New Science of Everyday Wonder. Penguin Press.
  2. Reviews in The New York Times, The Atlantic, The Guardian.
  3. Related: Keltner, D. (2009). Born to Be Good.
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