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Autonomous tools and design: a triple-loop approach to human-machine learning

Published:19 December 2018Publication History
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Abstract

In addition to having a detailed understanding of the artifacts they intend to create, designers need to guide the software tools they use.

References

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  1. Autonomous tools and design: a triple-loop approach to human-machine learning

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              • Published in

                cover image Communications of the ACM
                Communications of the ACM  Volume 62, Issue 1
                January 2019
                109 pages
                ISSN:0001-0782
                EISSN:1557-7317
                DOI:10.1145/3301004
                Issue’s Table of Contents

                Copyright © 2018 Owner/Author

                This work is licensed under a Creative Commons Attribution International 4.0 License.

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                Association for Computing Machinery

                New York, NY, United States

                Publication History

                • Published: 19 December 2018

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