COMPUTER PROGRAMMING AND DATA MANAGEMENT - 1

Anno accademico
2020/2021 Programmi anni precedenti
Titolo corso in inglese
COMPUTER PROGRAMMING AND DATA MANAGEMENT - 1
Codice insegnamento
EM1404 (AF:338400 AR:179564)
Modalità
Blended (in presenza e online)
Crediti formativi universitari
6 su 12 di COMPUTER PROGRAMMING AND DATA MANAGEMENT
Livello laurea
Laurea magistrale (DM270)
Settore scientifico disciplinare
INF/01
Periodo
1° Periodo
Anno corso
1
Sede
VENEZIA
Spazio Moodle
Link allo spazio del corso
This course covers part of the "quantitative" aspects of the master program, and aims to provide the student with knowledge and skills on the computational aspects fundamental for the data science field.

More specifically, the goal of this course is to teach students how to approach problems with an algorithmic approach. Students will learn some basic techniques for problem solving and how to use a programming language to provide a sound and formal description of a designed problem solution. The problems discussed will deal with data transformation, data cleaning and simple data analyses.
The course provides an introduction to the basics of computer science and to programming.
Programming is intended as a way to model real-world problems and to design algorithmic solutions to solve them.

This course teaches students problem solving techniques and algorithmic thinking.
Technical topics cover algorithms, data structures, and Python programming. The course also aims at providing some technical skills about coding/scripting aspects of the R framework.

The students will achieve the following objectives:

Knowledge: i) learn basic problem solving techniques to address algorithmic problems; ii) understand and interpret computer programs written in the Python programming language;

Application of knowledge: i) analyze problems and design formal algorithmic solutions; ii) translate algorithmic solutions into computer programs.

Communication: i) generate basic data visualizations for preliminary analysis.

No specific pre-requirements.
1. Introduction
2. Python Data Types
3. Simple programs
4. Functions and Conditional Statements
5. Iterative Computation
6. Python Strings
7. Python Lists
8. Python Dictionaries
9. Structuring the code with modules and classes
10. File read and write
11. Introduction to matplotlib
12. Problem Solving and Basic Algorithms
13. From Python to R
- "Think Python. How to Think Like a Computer Scientist (2e)". Allen Downey. Green Tea Press (available online).
- Learning Python. O'Reilly. Mark Lutz.
- Python for Data Analysis: Data Wrangling with Pandas, NumPy, and IPython. O'Reilly. Wes McKinney
The written exam is aimed at assessing the programming skill and the problem solving capability, through the solution of exercises on the course subjects.
Theoretical and practical lectures.
Exercise lectures.
Inglese
scritto
Il programma è ancora provvisorio e potrà subire modifiche.
Data ultima modifica programma: 07/02/2021