ARCHIVES

Original Article

Dhatu-Former: Redesigning Transformer Architectures Through Pan.ini’s As..tadhyay

Nagesh Jayanti1
1 Founder, Conscious Bridge Labs.

Published Online: January-April 2026

Pages: 344-349

Abstract

Contemporary large language models (LLMs) rely on sub-word tokenizers and at attention mechanisms that treat every language as a statistical surface-form distribution. This paper proposes Dhatu-Former, a transformer architecture that internalizes the formal linguistic machinery of Pan.ini’s As..tadhyay the oldest known generative grammar. We hypothesize that (i) morphologically-aware, root-based (dhatu-based) tokenization can reduce vocabulary size and sequence length by 40 60%, (ii) hierarchical attention guided by Pan.inian derivation trees can yield sparse, interpretable attention with O(nlogn) complexity, and (iii) a hybrid symbolic neural reasoning layer that executes sutra-style rewrite rules can substantially reduce hallucination while enabling uni ed language math logic reasoning. We further introduce a modular Retrieval-Augmented Generation (RAG) subsystem grounded in Sanskrit lexical databases (Amarakos.a, Dhatupat.ha) and a continual learning framework inspired by the paribhas.a sutra (meta-rules) of the As..tadhyay . We present order-of-magnitude parameter reduction estimates, architectural blueprints with TikZ diagrams, and a research roadmap for empirical validation. This is a position paper; no experiments have been conducted.

Related Articles

2026

Artificial Intelligence in Learning and Teaching

2026

Admin Assist: An AI – Driven Configuration and Orchestration for Enterprise Application

2026

Enhancing Blood Group Identification using pigeon inspired optimization: An Innovative Approach

2026

Eco-Genius: Power Up Smart, Power Down Waste

2026

Crowd-Sourced Disaster Response and Rescue Assistant

2026

Unveiling Deepfake Detection Using Vision Transformers: A Survey and Experimental Study

Share Article

X
LinkedIn
Facebook
WhatsApp

Or copy link

https://test.indjcst.com/archives/10.59256/indjcst.20260501047

*Instagram doesn't support direct link sharing from web. Copy the link and share it in your Instagram story or post.