Semester 2 · 73069 · Corso di laurea magistrale in Informatica per la Data Science · 6CFU · EN
Dozenc: Alessandro Torcinovich, Sana Nadouri
Ores de ensegnament: 20
Ores de laboratore: 40
Oblianza de frecuenza: The course requires an active participation in the form of timely delivery of assignments, in-class discussion, and presentations. These activities constitute a relevant part of the assessment and must be completed within the required time frames.
Most of the work is organised in groups and non-attending students are encouraged to collaborate with attending colleagues to coordinate their contributions.
Hands-on Python and AI libraries:
Deep Learning:
Additional material covering specific topics and advanced techniques may be provided during the course, tailored to the students’ project work.
Subject Librarian: David Gebhardi, David.Gebhardi@unibz.it and Ilaria Miceli, Ilaria.Miceli@unibz.it
Project / Business Intelligence / Data Apps:
Hugging Face documentation and tutorials ()
Notes: Students are encouraged to use online tutorials, official documentation, and practical guides for libraries and frameworks to complement their project work.
Obietifs per n svilup sostenibel
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