A new benchmark suite proposes leveraging Pānini's ancient grammar as a unifying framework for Indic language processing. This approach aims to improve accuracy, data efficiency, and transferability by grounding NLP tools in a shared morphosyntactic architecture. The framework raises questions about whether neural models internally represent Pānini's linguistic categories.