Machine Learners: Archaeology of a Data Practice (MIT Press)

Machine Learners: Archaeology of a Data Practice (MIT Press)

作者: Adrian Mackenzie
出版社: MIT
出版在: 2017-11-16
ISBN-13: 9780262036825
ISBN-10: 0262036827
裝訂格式: Hardcover
總頁數: 272 頁





內容描述


If machine learning transforms the nature of knowledge, does it also transform the practice of critical thought?Machine learning -- programming computers to learn from data -- has spread across scientific disciplines, media, entertainment, and government. Medical research, autonomous vehicles, credit transaction processing, computer gaming, recommendation systems, finance, surveillance, and robotics use machine learning. Machine learning devices (sometimes understood as scientific models, sometimes as operational algorithms) anchor the field of data science. They have also become mundane mechanisms deeply embedded in a variety of systems and gadgets. In contexts from the everyday to the esoteric, machine learning is said to transform the nature of knowledge. In this book, Adrian Mackenzie investigates whether machine learning also transforms the practice of critical thinking.Mackenzie focuses on machine learners -- either humans and machines or human-machine relations -- situated among settings, data, and devices. The settings range from fMRI to Facebook; the data anything from cat images to DNA sequences; the devices include neural networks, support vector machines, and decision trees. He examines specific learning algorithms -- writing code and writing about code -- and develops an archaeology of operations that, following Foucault, views machine learning as a form of knowledge production and a strategy of power. Exploring layers of abstraction, data infrastructures, coding practices, diagrams, mathematical formalisms, and the social organization of machine learning, Mackenzie traces the mostly invisible architecture of one of the central zones of contemporary technological cultures.Mackenzie's account of machine learning locates places in which a sense of agency can take root. His archaeology of the operational formation of machine learning does not unearth the footprint of a strategic monolith but reveals the local tributaries of force that feed into the generalization and plurality of the field.




相關書籍

Feature Engineering for Machine Learning: Principles and Techniques for Data Scientists

作者 Alice Zheng Amanda Casari

2017-11-16

資料分析輕鬆學: Data Power Today使用手冊

作者 Data Analyst編輯委員會

2017-11-16

機器學習:基於OpenCV和Python的智能圖像處理

作者 高敬鵬 趙娜 江志燁

2017-11-16