Python programming project with AI (5cr)
Code: C-02509-TT00DN75-3001
General information
- Enrollment
- 01.12.2025 - 28.02.2026
- Registration for the implementation has ended.
- Timing
- 12.01.2026 - 30.04.2026
- Implementation is running.
- Number of ECTS credits allocated
- 5 cr
- Institution
- Turku University of Applied Sciences, Kupittaan kampus
- Teaching languages
- English
- Seats
- 0 - 15
- Course
- C-02509-TT00DN75
Unfortunately, no reservations were found for the realization Python programming project with AI C-02509-TT00DN75-3001. It's possible that the reservations have not yet been published or that the realization is intended to be completed independently.
Evaluation scale
H-5
Content scheduling
In this course, students gain a strong foundational understanding of programming and are introduced to AI-assisted learning and coding. The course combines traditional programming studies with modern AI tools (vibe coding environments), which help students understand programming more quickly, identify errors, and learn best practices. Students will gain hands-on experience in how artificial intelligence can support programming and enhance the learning process. These skills are applied to a personal project throughout the course. CONTENTS: * Introduction to programming and computational thinking * Setting up the development environment and AI-assisted tools (e.g., ChatGPT, GitHub Copilot, Replit, or other vibe coding environments) * Basic syntax, variables, and data types in Python * Input and output operations, expressions, and operators * Conditional statements and control flow * Loops and iteration structures * Functions and modular programming * Lists, dictionaries, and other basic data structures * Debugging and error handling with AI support * Code style, commenting, and best practices * Applying AI tools for code generation, optimization, and explanation * Designing and implementing a small personal programming project using AI-assisted methods
Objective
In this course, students gain a strong foundational understanding of programming and are introduced to AI-assisted learning and coding. The course combines traditional programming studies with modern AI tools (vibe coding environments), which help students understand programming more quickly, identify errors, and learn best practices. Students will gain hands-on experience in how artificial intelligence can support programming and enhance the learning process. These skills are applied to a personal project throughout the course. By the end of the course, students will: * Understand the basic concepts and logic of programming * Write simple Python programs * Use conditional statements, loops, and functions * Utilize basic data structures and types * Solve problems with AI assistance and evaluate AI-generated code * Use AI tools for code generation, optimization, and error handling * Apply learned skills to in a wider context (personal project)
Content
* Introduction to programming and computational thinking * Setting up the development environment and AI-assisted tools (e.g., ChatGPT, GitHub Copilot, Replit, or other vibe coding environments) * Basic syntax, variables, and data types in Python * Input and output operations, expressions, and operators * Conditional statements and control flow * Loops and iteration structures * Functions and modular programming * Lists, dictionaries, and other basic data structures * Debugging and error handling with AI support * Code style, commenting, and best practices * Applying AI tools for code generation, optimization, and explanation * Designing and implementing a small personal programming project using AI-assisted methods
Materials
To be published later
Teaching methods
- Participation in lectures and demonstrations - Reading the learning materials - Individual practical assignments and project work
Exam schedules
There is no exam in this course
International connections
The course content includes responsible and safe use of artificial intelligence as part of learning programming in Python. In this context, aspects of sustainable development are also addressed.
Completion alternatives
No alternative completion methods
Student workload
5 credits: 27 * 5 = 135 hours of work Duration: 12.1. - 30.4.2025 (14-15 weeks + winter break on week 8) 20 h reading and watching course material approx. 36 h contact lessons (30 hours of lectures + 6 hours of demonstrations) 48 h personal exercises approx. 30 h personal project work
Qualifications
No prerequisites