L'intelligenza artificiale bloccherà lo sviluppo della motricità fine?
DOI:
https://doi.org/10.4454/graphos.101Keywords:
calligrapher AI, writing, artificial intelligence, coordination, motricityAbstract
Artificial intelligence is revolutionizing the world as well as the processes of education, the share of information and the teacher-learner interactions. Tools like Caligrapher AI simulate human handwriting from keyboard-typed words and seem to help people with writing disorders. However, the use of AI can compromise the development of motor skills related to handwriting which ipso facto are complex motor learning paths.. Handwriting is a crucial element for fine motor development and premature use of AI could prevent this maturation. It is suggested to limit these instruments till 12 years.
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