INFINITE_TOOLKIT_ENG

Funded by the European Union. Views and opinions expressed are however those of the author(s) only and do not necessarily reflect those of the European Union or the European Education and Culture Executive Agency (EACEA). Neither the European Union nor EACEA can be held responsible for them. Project number: 2023-1-NL01-KA220-HED-000155675. literacy, and fostering collaboration, provide a roadmap for educators to successfully integrate AI into their classrooms while upholding ethical standards and maximising its benefits for students. Practical Example: Using AI-powered Adaptive Learning for Personalised Instruction Scenario: A primary school wants to personalise maths instruction for students using an Intelligent Tutoring System (ITS). The school implements an ITS that adapts maths problems to each student's individual learning pace and style. The system uses data on student performance, engagement, and errors to predict their knowledge level and tailor subsequent problems accordingly. Implementation following the Framework: Understanding AI Systems Purpose: The school clearly defines the purpose - to provide personalised maths instruction and track student progress. Autonomy: The ITS has a degree of autonomy in adapting problems, but human teachers still oversee the learning process and provide guidance. Environment: The school considers the age and developmental level of students, ensuring the ITS is appropriate for their cognitive abilities. AI Competency: Teachers receive training on the ITS to understand its capabilities and limitations, as well as how to interpret student data.

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