20880 - MACHINE LEARNING LAB
Department of Computing Sciences
FRANCESCA BUFFA
Conoscenze pregresse consigliate
Mission e Programma sintetico
MISSION
PROGRAMMA SINTETICO
Introduction to the use of AI in the Life Sciences: Basics concepts, Open questions, Methods, Challenges
Lab work: the students will be asked to address an open question in the life sciences, and will be given access to a series of datasets to address this question. The student will learn how to explore the data, evaluate applicability and apply advanced ML methods, focusing on methods studied in the course associated with the lab, and write a final report discussing their choices and results.
Risultati di Apprendimento Attesi (RAA)
CONOSCENZA E COMPRENSIONE
- Handle complex databases
- Apply different types of algorithms for unsupervised and supervised data analysis: from basic algorithms to deep models
- Evaluate performance based on domain knowledge and rigorous tests.
CAPACITA' DI APPLICARE CONOSCENZA E COMPRENSIONE
- approach the solution to data analysis problems coming from a real world context,
- use fundamental machine learning algorithms, including deep learning.
- critically evaluate the results
Modalità didattiche
- Lezioni frontali
- Lavori/Assignment di gruppo
- Altre attivita' d'aula interattive on campus/online (role playing, business game, simulation, online forum, instant polls)
DETTAGLI
- Lectures and exercises: Concepts in data analysis using machine learning and deep learning to extract infomation from datasets of real world interest. The necessary domain specific knowledge will be provided.
- Group assignement: solve a real prediction problem
- Presentation of project as a group
Metodi di valutazione dell'apprendimento
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STUDENTI FREQUENTANTI E NON FREQUENTANTI
The assesment will be based on the outcome of the group projects. A written report will be required for the group. The group members will have to give an oral presentation together at the exam session. Individual assessmet: each student will be asked to present and discuss their contribution to the project and the report. Grading scheme: Group project: 50% Individual assessment: 50%
Materiali didattici
STUDENTI FREQUENTANTI E NON FREQUENTANTI
All data, instructions and study material will be provided during the course