Self-Tracking Self-Tracking

Beschreibung des Verlags

What happens when people turn their everyday experience into data: an introduction to the essential ideas and key challenges of self-tracking.
People keep track. In the eighteenth century, Benjamin Franklin kept charts of time spent and virtues lived up to. Today, people use technology to self-track: hours slept, steps taken, calories consumed, medications administered. Ninety million wearable sensors were shipped in 2014 to help us gather data about our lives. This book examines how people record, analyze, and reflect on this data, looking at the tools they use and the communities they become part of. Gina Neff and Dawn Nafus describe what happens when people turn their everyday experience—in particular, health and wellness-related experience—into data, and offer an introduction to the essential ideas and key challenges of using these technologies. They consider self-tracking as a social and cultural phenomenon, describing not only the use of data as a kind of mirror of the self but also how this enables people to connect to, and learn from, others.

Neff and Nafus consider what's at stake: who wants our data and why; the practices of serious self-tracking enthusiasts; the design of commercial self-tracking technology; and how self-tracking can fill gaps in the healthcare system. Today, no one can lead an entirely untracked life. Neff and Nafus show us how to use data in a way that empowers and educates.

GENRE
Gewerbe und Technik
ERSCHIENEN
2016
24. Juni
SPRACHE
EN
Englisch
UMFANG
246
Seiten
VERLAG
MIT Press
ANBIETERINFO
Random House, LLC
GRÖSSE
1,2
 MB
The Quantified Self The Quantified Self
2016
Big Data Now: 2012 Edition Big Data Now: 2012 Edition
2012
Human-Centered Data Science Human-Centered Data Science
2022
Data Selves Data Selves
2019
Data Conscience Data Conscience
2022
97 Things About Ethics Everyone in Data Science Should Know 97 Things About Ethics Everyone in Data Science Should Know
2020
Human-Centered Data Science Human-Centered Data Science
2022
Venture Labor Venture Labor
2012
Surviving the New Economy Surviving the New Economy
2015
Deep Learning Deep Learning
2019
Data Science Data Science
2018
Machine Learning, revised and updated edition Machine Learning, revised and updated edition
2021
Algorithms Algorithms
2020
The Technological Singularity The Technological Singularity
2015
Virtual Reality Virtual Reality
2019