Abstract
GENDE (http://www.gende.it) is a tool to allow designers, but also common people, to automatically design new products that evolve according to the principles of Genetic Algorithms (GAs). The selection of the products that will actually take part to the evolutionary process, relies on crowdsourcing mechanisms: only the most appreciated products survive. In the era of 3D-printing, GENDE can pave the way to a completely new class of mass products in which personalization become intrinsic to the design process and is driven by common users rather than being confined in the later stages of production and in the hands of professional designers. While GENDE has been originally thought as an automatic design tool, its unique process that involves users from the beginning of the design, can also be used as a powerful marketing tool.
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Acknowledgements
The author wish to thank the FABLAB ROMA http://www.laziofablab.it/, Via Casilina 3/T, 00182 Roma, for their kind support in the production of the prototype in Fig. 5.
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Vitaletti, A. (2017). GENDE: GENetic DEsign. In: Rinaldi, R., Bandinelli, R. (eds) Business Models and ICT Technologies for the Fashion Supply Chain. IT4Fashion 2016. Lecture Notes in Electrical Engineering, vol 413. Springer, Cham. https://doi.org/10.1007/978-3-319-48511-9_9
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DOI: https://doi.org/10.1007/978-3-319-48511-9_9
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