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The systems around you are not just predicting your clicks; they are forming theories about your mind. This book shows, in plain language, how those theories are made, how they shape what you see next, and how to take back the driver’s seat.
It explains how modern models infer goals and shortcuts from your every action, why those inferences can become self-fulfilling, and what it takes to interrupt harmful loops. Drawing on cognitive science, product reality, and lived examples, it gives you a field guide to read any major AI system as a claim about you. If you have ever wondered why your feed narrows, why outrage travels faster than nuance, or how to make better-than-default choices, this is your map.
- Understand AI and human behaviour without hype or panic
- Spot cognitive bias in algorithms and how your own habits train it
- Practise data psychology to manage what systems learn about you
- Break algorithmic feedback loops with simple, durable routines
- Build predictive models and agency that work in your favour
- Use explainable AI for users to decode outputs as hypotheses
- Reclaim your recommender systems and choice with deliberate exploration
- Safeguard digital identity and reputation scores with practical audits
- Connect neuroscience and machine learning to everyday decisions
- See exactly how AI learns from data and how to teach it better things
By the end, you will hold a clear mental model for reading predictions, resetting patterns, and steering systems that are learning you. Not by opting out, but by opting in with craft.

The Thinking Web

SKU: 9789374120743
$29.99 Regular Price
$22.10Sale Price
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  • Kenji Takahashi writes to make complex systems legible to ordinary life. Raised between code and culture, he is drawn to the places where numbers pretend to be neutral and people become data. His work looks past hype to the quiet mechanics of attention, decision-making, and design, asking how technologies learn from us and what they teach back. Influenced by Japanese aesthetics of restraint and clarity, and by a long tradition of thinkers who treated tools as mirrors of the mind, he favours careful language, tested ideas, and humane outcomes. He spends time with researchers, product teams, and readers who want their choices to outsmart their feeds. This book continues his central question: in an age of prediction, how do we stay surprising to ourselves?

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