Page 223 - Ai_417_V3.0_C9_Flipbook
P. 223

The feedback loop continues as the deployed model's performance is monitored, and insights gathered are used
                 to refine future iterations of the AI solution.


                               Task                                            #Problem Solving & Logical Reasoning



                   Activity: Implementing the AI Project Cycle for Personalised Education

                   Objective
                   Students will apply the AI project cycle to design a personalised education solution. For this, they use the
                   6 steps of the AI project cycle.

                   Description
                      • Individuals have unique thinking levels and personalities.
                      • Different learners require targeted attention in various areas of their education.

                      • A generalised education system cannot meet these individual needs.
                   Steps to perform

                   1.  Understand the problem:
                        ✶ Discuss how a one-size-fits-all education system fails to address the diverse needs of students.
                        ✶ Identify the specific challenges students face in a generalised education system.

                   2.  Explore developments in the field:
                        ✶ Research advancements in AI that address personalised learning.

                        ✶ Study existing AI models used in education and their impact.
                   3.  Complete the AI Project Cycle Mapping Template:

                        ✶ Fill out each step of the AI project cycle with respect to the problem of personalised education.

                                                     AI Project Cycle Mapping Template


                           Problem           Data           Data        Modelling       Evaluation    Deployment
                            Scoping      Acquisition    Exploration




























                                                                         AI Reflection, Project Cycle and Ethics  221
   218   219   220   221   222   223   224   225   226   227   228