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σκοπό την εξέλιξή της ανάλογα με τις ανάγκες τους.

Μέσω της πλατφόρμας οι χρήστες μπορούν να εκπαιδεύσουν καινούργια μοντέλα Μη- χανικής Μάθησης είτε να χρησιμοποιήσουν προεκπαιδευμένα. Τα αποτελέσματα εμφανί- ζονται σε ένα διαδραστικό περιβάλλον όπου χρησιμοποιούνται μέθοδοι απεικόνισης των δεδομένων για την καλύτερη περιήγηση και ανάλυσή τους.

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