Opportunity Lens: An Alternative end-to-end Deep Learning Framework for Automated Skill Assessment and Learning Optimization
Abstract
The Opportunity Lens is an AI-powered career as sessment system designed to generate personalized, skill-based multiple-choice questions (MCQs). Our solution combines a fine tuned T5 transformer model for question and answer generation with the Gemini API to produce contextually relevant distractors. Users begin by selecting or entering a skill, after which the system retrieves related information, formulates MCQs, and evaluates responses to identify strengths and weaknesses. Based on the user’s performance, the system maps their skill profile to a curated knowledge base and recommends tailored career paths and learning resources. This approach supports adaptive testing and targeted learning, aiming to streamline professional development and reduce bias in traditional assessments.
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