
Machine Learning and technoecological conditions of sensing
Author(s) -
Irina Raskin
Publication year - 2019
Publication title -
a peer-reviewed journal about --
Language(s) - English
Resource type - Journals
ISSN - 2245-7755
DOI - 10.7146/aprja.v8i1.115412
Subject(s) - conversation , computer science , context (archaeology) , artificial intelligence , process (computing) , cognitive science , mode (computer interface) , machine learning , human–computer interaction , sociology , psychology , communication , operating system , paleontology , biology
In what way can machine learning be understood as a computational mode of sensing? How does the practice of making sense take place in the context of developing machine learning applications? What assumptions and conflicts are constitutive for that very process of sensing? Bringing case studies from machine learning into conversation with theoretical work primarily by Erich Hörl, Luciana Parisi, Wendy Hui Kyong Chun and Karen Barad, this article reflects on the re-configuration of sense in the course of the expansion of media-technology. It questions how computational expressions become relatable as well as the mechanisms for encapsulating the capacity of sensing for determining purposes.