Poster
in
Workshop: ICML 2025 Workshop on Collaborative and Federated Agentic Workflows (CFAgentic @ ICML'25)
Parrot: An Agentic Classroom AI
Kalena Dai · Arya Sarukkai
We introduce Parrot, an interpretable, multimodal AI agent designed to enhance real-time teaching and learning in classrooms. Parrot operates autonomously as both a curious student and an assistant lecturer, performing actions such as summarizing lecture content, detecting engagement via multimodal sentiment analysis, and generating context-aware questions. The system integrates Retrieval-Augmented Generation (RAG) grounded in curriculum materials, DeepPrivacy2 for real-time face anonymization, and adaptive learning capabilities. Each classroom instance locally adapts its strategies while contributing anonymized metadata to improve shared retrieval and prompt policies via federated collaboration. A dedicated Learner module continuously refines Parrot’s retrieval logic and prompting behaviors, enabling long-term improvement without compromising privacy. We present results from simulated deployments and discuss how Parrot exemplifies agentic intelligence in education through adaptability, transparency, and trustworthy autonomy.