Date
Publisher
arXiv
Introduction: Poor educational quality in Secondary Schools is still regarded
as one of the major struggles in 21st century Uganda - especially in rural
areas. Research identifies several problems, including low quality or absent
teacher lesson planning. As the government pushes towards the implementation of
a new curriculum, exiting lesson plans become obsolete and the problem is
worsened. Using a Retrieval Augmented Generation approach, we developed a
prototype that generates customized lesson plans based on the
government-accredited textbooks. This helps teachers create lesson plans more
efficiently and with better quality, ensuring they are fully aligned the new
curriculum and the competence-based learning approach.
Methods: The prototype was created using Cohere LLM and Sentence Embeddings,
and LangChain Framework - and thereafter made available on a public website.
Vector stores were trained for three new curriculum textbooks (ICT,
Mathematics, History), all at Secondary 1 Level. Twenty-four lessons plans were
generated following a pseudo-random generation protocol, based on the suggested
periods in the textbooks. The lesson plans were analyzed regarding their
technical quality by three independent raters following the Lesson Plan
Analysis Protocol (LPAP) by Ndihokubwayo et al. (2022) that is specifically
designed for East Africa and competence-based curriculums.
Results: Evaluation of 24 lesson plans using the LPAP resulted in an average
quality of between 75 and 80%, corresponding to "very good lesson plan". None
of the lesson plans scored below 65%, although one lesson plan could be argued
to have been missing the topic. In conclusion, the quality of the generated
lesson plans is at least comparable, if not better, than those created by
humans, as demonstrated in a study in Rwanda, whereby no lesson plan even
reached the benchmark of 50%.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
