CODE | 104072 |
---|---|
ACADEMIC YEAR | 2023/2024 |
CREDITS | |
SCIENTIFIC DISCIPLINARY SECTOR | MAT/08 |
LANGUAGE | English |
TEACHING LOCATION |
|
SEMESTER | 1° Semester |
TEACHING MATERIALS | AULAWEB |
OVERVIEW
This course aims to introduce the basic computational paradigms of data science and technology, with specific focus on the three pillars of Artificial Intelligence for the data world, i.e. numerical simulation, inverse problems theory and machine learning. Then the course will describe some applications in biochemistry, involving pattern recognition methods for image processing in Scanning Tunnelling Microscopy, the mathematical modelling of tracer kinetics in nuclear medicine and the use of Molecular Interaction Maps in oncology.
AIMS AND CONTENT
LEARNING OUTCOMES
The general objective of the course is to provide students with a first overview of the main issues related to modern data science and its cultural background. The course has also two more specific objectives. The first one is to illustrate some computational tools representing the methodological basis for any artificial intelligence approach to data analysis problems. The second one is to describe three applications concerned with the use of data science methods in chemistry and biochemistry: the problem of the automatic recognition and classification of atomic species in Scanning Tunnelling Microscopy; the modelling of glucose metabolism by means of nuclear medicine data; the simulation of the chemical reaction network at the basis of a specific cellular transition in oncogenesis.
AIMS AND LEARNING OUTCOMES
The general objective of the course is to provide students with a first overview of the main issues related to modern data science and its cultural background. The course has also two more specific objectives. The first one is to illustrate some computational tools representing the methodological basis for any artificial intelligence approach to data analysis problems. The second one is to describe three applications concerned with the use of data science methods in chemistry and biochemistry: the problem of the automatic recognition and classification of atomic species in Scanning Tunnelling Microscopy; the modelling of glucose metabolism by means of nuclear medicine data; the simulation of the chemical reaction network at the basis of a specific cellular transition in oncogenesis.
PREREQUISITES
Students attending the course should know in advance the basics of
- Linear Algebra (vectors, matrices and their norms; linear systems; inversion of a matrix; eigenvalues)
TEACHING METHODS
lectures and computational laboratory activity
SYLLABUS/CONTENT
The course is characterized by the following three parts:
Computational tools: harmonizing competences (8 hours)
- Basics of numerical analysis (2 hours)
- Basics of Bayesian theory (3 hours)
- Basics of regularization theory (3 hours)
Artificial Intelligence: the many aspects of data modeling (10 hrs)
- Numerical Simulation (2 hours)
- Inverse Problems (4 hours)
- Machine Learning (4 hours)
Applications to chemical and biochemical data (6 hrs)
- STM imaging (2 hrs)
- Tracer kinetics (2 hrs)
- Chemical Reaction Networks (2 hrs)
RECOMMENDED READING/BIBLIOGRAPHY
slides provided by the professor
TEACHERS AND EXAM BOARD
Ricevimento: Office hours by appointment via email (piana@dima.unige.it)
Exam Board
MICHELE PIANA (President)
LESSONS
LESSONS START
18 September 2023
Class schedule
L'orario di tutti gli insegnamenti è consultabile all'indirizzo EasyAcademy.
EXAMS
EXAM DESCRIPTION
oral
ASSESSMENT METHODS
questions about the course syllabus