Unit MACHINE LEARNING

Course
Informatics
Study-unit Code
A002051
Curriculum
In all curricula
Teacher
Valentina Poggioni
Teachers
  • Valentina Poggioni
Hours
  • 68 ore - Valentina Poggioni
CFU
9
Course Regulation
Coorte 2024
Offered
2024/25
Learning activities
Caratterizzante
Area
Discipline informatiche
Academic discipline
INF/01
Type of study-unit
Obbligatorio (Required)
Type of learning activities
Attività formativa monodisciplinare
Language of instruction
INGLESE
Contents
Introduction to deep learning. Advanced neural network models: CNN, LSTM, GRU.
Non-supervised learning: clustering, Anomaly detection, Dimensionality Reduction and Representation Learning.
Generative models. Attention Mechanism and Transformers.
Introduction to Adversarial Machine Learning.
Reference texts
Tan, Steinbach, Karpatne, Kumar.
Introduction to Data Mining, 2nd Edition
2019. Pearson

Charu C. Aggarwal.
Neural Networks and Deep Learning: a text book. Springer 2018
Educational objectives
The student will know the fundamentals and most important machine learning methods based on the supervised, semi-supervised and unsupervised approach.
He/she will know also some of the most known methods of deep learning , with a particular focus on computer vision and natural language processing application. He/she will able to design, implement, train and test intelligent systems for data classification, clustering and anomaly detection based on advanced neural network models.
He/she will know the main generative approaches, the attention mechanism and the transformer architecture that is at the base of modern Large Language Models
Prerequisites
Suggested courses:
"Introduction to artificial intelligence" e "ARTIFICIAL INTELLIGENT SYSTEMS (1 semester)"
Teaching methods
In-class lessons and hands-on in computer lab
Other information
For any other information www.unistudium.unipg.it
Learning verification modality
Oral exam and final project. Intermediate exams during the course
Extended program
Introduction to deep learning. Advanced neural network models: CNN, LSTM, GRU.
Non-supervised learning: clustering, Anomaly detection, Dimensionality Reduction and Representation Learning.
Generative models. Attention Mechanism and Transformers.
Introduction to Adversarial Machine Learning.
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