INTRODUCTION TO CODING AND DATA MANAGEMENT-2

Academic year
2019/2020 Syllabus of previous years
Official course title
INTRODUCTION TO CODING AND DATA MANAGEMENT-2
Course code
ET7006 (AF:304932 AR:169750)
Modality
On campus classes
ECTS credits
6 out of 12 of INTRODUCTION TO CODING AND DATA MANAGEMENT
Degree level
Bachelor's Degree Programme
Educational sector code
INF/01
Period
4th Term
Course year
1
Where
RONCADE
The goal of this course is to teach students how to cleanse, process and visualize data. In particular, the students will learn how to use a programming language to read and write data from standard formats, process it to extract useful information, and visualize and plot it in order to show and explain its content.
The course introduces basic tools in the field of data management through 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 students will achieve the following objectives:

Knowledge: i) learn how to use common libraries (e.g., NumPy and Pandas) and complex data structures to address specific problems; ii) understand common data visualizations techniques and how to use common library (Seaborn) objects to create data visualizations; iii) understand how to organize code into modules and classes.

Application of knowledge: i) use complex library structures to organize, cleanse and analyze data to solve formal algorithmic problems; ii) organize solution code into modules and classes.

Communication: i) generate various data visualizations for preliminary analysis and final presentation.
Understanding of content in Introduction to Coding and Data Management – I, and in particular the basics of Python programming and of complex data structures.
• Structuring the code with modules and classes
• Data representation (txt, csv, json, …)
• File read and write
• Data cleansing
• Basics of data processing, analysis and visualization with Panda (series, dataframes, operation, mapping, join) and NumPy (matrices, operations, statistical functions)
• Basics of data visualization (data dimensionality, graphs, charts, maps) with Seaborn
Python for Data Analysis. O'Reilly. Wes McKinney.

Instructor notes.
The student will be evaluated based on their capability to analyze a problem, model a solution, and translate it into a computer program.

Students are evaluated based on an oral discussion of their team project design, project code and knowledge of course content.
Lectures and hands-on sessions.
oral
Definitive programme.
Last update of the programme: 28/01/2020