Enhancements in BlenderBot 3: Expanding Beyond a Singular Model Governance and Boosting Generational Performance

Author:

Kobza Ondrej1,Herel David1ORCID,Cuhel Jan1,Gargiani Tommaso1,Pichl Jan1ORCID,Marek Petr1,Konrad Jakub1,Sedivy Jan1

Affiliation:

1. Czech Institute of Informatics, Robotics and Cybernetics, Czech Technical University, 156 00 Prague, Czech Republic

Abstract

This paper provides a pioneering examination and enhancement of generative chat models, with a specific focus on the BlenderBot 3 model. Through meticulous interaction with a diverse set of human participants, we dissected the fundamental components of these models, unveiling several deficiencies, including long-term memory and entity recognition. Leveraging these insights, we engineered refined, streamlined iterations, culminating in a chatbot that transcends the capabilities of all existing models. Our work follows Occam’s razor principle and proves that, for tasks with relatively low complexity, using large overparameterized models instead of smaller ones does not bring significant benefits but increases latency, which may result in a lowered overall user experience. In upholding our commitment to transparency and the progression of shared knowledge, we have made our improved model universally accessible through open-source distribution.

Publisher

MDPI AG

Subject

Computer Networks and Communications

Reference34 articles.

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