Abstract
Responding to the demand for automated learning tools in the Bangla language, this work introduces PROSHNO BINNASH, a unique contextual multi-label question answering dataset designed for low-resource natural language processing (NLP) tasks. The dataset comprises 4069 carefully curated entries sourced from true Bengali texts, along with query banks, literature, and historical narratives. Every entry carries a context, a question, its corresponding answer, and a set of multi-label annotations across ten categories: Sports, Health & Exercise, Literature, Prominent Person, Movie, Science, Liberation War, Politics, Artist, and History. PROSHNO BINNASh is entirely human-generated, without relying on machine-generated or translated content. The type schema permits one-to-many relationships among questions and classes, taking into account the nuanced expertise of educational content material. Contexts, questions, and answers were annotated and demonstrated with the useful resource of location experts to ensure accuracy and relevance. This data set is particularly useful for education and Bangla analytics, multi-label class structures, and academic chatbot comparisons. Via contributing a wealthy, native-language, useful resource, PROSHNO BINNASH aims to fill an essential hole in Bangla NLP research and help the advancement of inclusive, AI-pushed educational technology for hundreds of thousands of Bengali speakers.