TrueReason: An Exemplar Personalised Learning System Integrating Reasoning with Foundational Models
- URL: http://arxiv.org/abs/2502.10411v1
- Date: Thu, 23 Jan 2025 13:25:44 GMT
- Title: TrueReason: An Exemplar Personalised Learning System Integrating Reasoning with Foundational Models
- Authors: Sahan Bulathwela, Daniel Van Niekerk, Jarrod Shipton, Maria Perez-Ortiz, Benjamin Rosman, John Shawe-Taylor,
- Abstract summary: We present TrueReason, an exemplar personalised learning system that integrates a multitude of specialised AI models.<n>The proposed system demonstrates the first step in building sophisticated AI systems.
- Score: 14.861568843321598
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Personalised education is one of the domains that can greatly benefit from the most recent advances in Artificial Intelligence (AI) and Large Language Models (LLM). However, it is also one of the most challenging applications due to the cognitive complexity of teaching effectively while personalising the learning experience to suit independent learners. We hypothesise that one promising approach to excelling in such demanding use cases is using a \emph{society of minds}. In this chapter, we present TrueReason, an exemplar personalised learning system that integrates a multitude of specialised AI models that can mimic micro skills that are composed together by a LLM to operationalise planning and reasoning. The architecture of the initial prototype is presented while describing two micro skills that have been incorporated in the prototype. The proposed system demonstrates the first step in building sophisticated AI systems that can take up very complex cognitive tasks that are demanded by domains such as education.
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