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Welcome to the `AITutor-AssessmentKit`! With the remarkable advancements in large language models (LLMs), there is growing interest in leveraging these models as AI-powered tutors. However, the field lacks robust evaluation methodologies and tools to systematically assess the pedagogical capabilities of such systems. The `AITutor-AssessmentKit` is the first open-source toolkit specifically designed to evaluate the pedagogical performance of AI tutors in *Student Mistake Remediation* tasks.

Project description

AITutor-AssessmentKit

A toolkit for evaluating AI-based tutoring systems. This package includes various evaluation metrics and methods to assess the performance of language models as tutors.

Installation

To install the package, use:

pip install aitutor-assessmentkit

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