Studying at the University of Verona
Here you can find information on the organisational aspects of the Programme, lecture timetables, learning activities and useful contact details for your time at the University, from enrolment to graduation.
Study Plan
This information is intended exclusively for students already enrolled in this course.If you are a new student interested in enrolling, you can find information about the course of study on the course page:
Laurea in Matematica applicata - Enrollment from 2025/2026The Study Plan includes all modules, teaching and learning activities that each student will need to undertake during their time at the University.
Please select your Study Plan based on your enrollment year.
1° Year
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2° Year activated in the A.Y. 2023/2024
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3° Year activated in the A.Y. 2024/2025
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Legend | Type of training activity (TTA)
TAF (Type of Educational Activity) All courses and activities are classified into different types of educational activities, indicated by a letter.
Computer Programming with Laboratory (2022/2023)
Teaching code
4S02751
Academic staff
Coordinator
Credits
12
Language
Italian
Scientific Disciplinary Sector (SSD)
INF/01 - INFORMATICS
Period
Semester 1, Semester 2
Learning objectives
This course proposes providing the fundamentals skills in order to analyze and resolve problems by means of developing programs. The general objectives of this module are - the knowledge of the principles of programming and of programming languages, - the mastery of fundamental techniques for analyzing problems and developing their algorithmic solutions, - the introduction to the methods for the evaluation of correctness and efficiency of algorithms. In the laboratory, we will practice the above principles by means of a programming activity.
Prerequisites and basic notions
Knowledge and mathematical and scientific skills provided by the upper secondary school.
In particular:
- Sets, functions, relations and graphs.
- Numerical sets and their fundamental properties.
- Plane geometry and Cartesian representation of geometric elements.
- Representation of data, relations and functions.
Program
INTRODUCTION
- Problems and Solutions.
- Models of Computations: abstract machine, compiler and interpreter.
- Programming languages: formal languages, compiler, interpreter.
- Laboratory: introduction to linux and to the developing environment.
PART I - Problems, algorithms and programs.
- Imperative programming
- Elementary of programming: basic instructions and development of simple programs; variables, expressions and assignment.
- Data types. The general concept of data type: characterisation and data representation. Abstract Data Types.
- Primitive data types: characterisation, use and related problems.
- Structured data types: array, record, file, pointer, string and other data structures.
- Program structure. Fundamental instructions. Sub-programs: structure, parameters and visibility. Recursion.
- Object Oriented Programming.
- Basics of objects: classes, objects, attributes, constructors, modifiers.
- Advanced data structures: representation of sequences, vector and matrices; inductive and dynamic data structures; introduction to lists, trees and graphs.
PART II - Analysis of Algorithms
- Correctness: termination, logic properties; methods for the correctness verification.
- Efficiency of algorithms.
- Introduction to the complexity. Performance of algorithms. Evaluation of efficiency. Computational costs.
- Asymptotic estimation of the complexity in time and space. The worst and medium case.
- Amortised analysis.
- Study of fundamental examples.
- Sequences: static and dynamic implementation and algorithms.
- Research and Sorting Algorithms: basic search, binary search, insertion and selection sort, merge sort, quick sort.
- Matrices and Vectors: implementation, operations and algorithms.
- Dynamic sequences: abstract definition and implementation; basic operations.
- Trees. Abstract definition and implementation. Basic operation. Binary research trees.
- Introduction to algorithms on graphs.
PRACTICAL PART.
During the practical activities that take place in the Laboratory, all the techniques necessary to apply the topics developed in theory lessons are introduced through the use of programming languages. The principles of imperative programming with the Python language are introduced and the fundamental aspects of object programming with the Java language are explored.
The primary objective of the Laboratory activity is the construction of the solution of a problem through the use of a specific programming language. We address the steps that starting from the informal description of the problem lead to its resolution through the characterisation of the problem, the design of the solution and its coding.
Particular attention is paid to the use of methods and techniques that improve the legibility, maintainability and reuse of the code.
Bibliography
Didactic methods
The teaching consists of lessons and exercises in the classroom and in the laboratory with the possible use of a computer.
Some learning activities have to be carried out as homeworks.
Additional resources will be available in the reserved area of the course.
Learning assessment procedures
The final exam consists of an oral exam: in order to be admitted to the final exam, the student must pass a preliminary written test.
The written test can be partially replaced by ongoing tests and activities.
The assessment methods could change according to the evolution of the general health situation and the academic rules.
Evaluation criteria
The exams are aimed at verifying:
- the general knowledge of the fundamental constructs of imperative and object-oriented programming;
- the ability to use a programming language effectively and correctly;
- the ability to manage the problem solving process: description and rigorous characterization of problems, design of the data representation, design and development of the solution code, analysis of the efficiency and correctness of the solution.
Criteria for the composition of the final grade
The final grade is obtained as the average of the assessments of the three scheduled tests: written, practical and oral.
NOTE: to pass the final exam it is necessary to obtain a positive evaluation - at least 60% of the score - in each of the three tests indicated.
Exam language
Italiano