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Main Authors: Gonçalves, João, Jelicic, Nick, Murgia, Michele, Stamhuis, Evert
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.06931
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author Gonçalves, João
Jelicic, Nick
Murgia, Michele
Stamhuis, Evert
author_facet Gonçalves, João
Jelicic, Nick
Murgia, Michele
Stamhuis, Evert
contents The current trend to improve language model performance seems to be based on scaling up with the number of parameters (e.g. the state of the art GPT4 model has approximately 1.7 trillion parameters) or the amount of training data fed into the model. However this comes at significant costs in terms of computational resources and energy costs that compromise the sustainability of AI solutions, as well as risk relating to privacy and misuse. In this paper we present the Erasmian Language Model (ELM) a small context specific, 900 million parameter model, pre-trained and fine-tuned by and for Erasmus University Rotterdam. We show how the model performs adequately in a classroom context for essay writing, and how it achieves superior performance in subjects that are part of its context. This has implications for a wide range of institutions and organizations, showing that context specific language models may be a viable alternative for resource constrained, privacy sensitive use cases.
format Preprint
id arxiv_https___arxiv_org_abs_2408_06931
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle The advantages of context specific language models: the case of the Erasmian Language Model
Gonçalves, João
Jelicic, Nick
Murgia, Michele
Stamhuis, Evert
Computation and Language
Artificial Intelligence
The current trend to improve language model performance seems to be based on scaling up with the number of parameters (e.g. the state of the art GPT4 model has approximately 1.7 trillion parameters) or the amount of training data fed into the model. However this comes at significant costs in terms of computational resources and energy costs that compromise the sustainability of AI solutions, as well as risk relating to privacy and misuse. In this paper we present the Erasmian Language Model (ELM) a small context specific, 900 million parameter model, pre-trained and fine-tuned by and for Erasmus University Rotterdam. We show how the model performs adequately in a classroom context for essay writing, and how it achieves superior performance in subjects that are part of its context. This has implications for a wide range of institutions and organizations, showing that context specific language models may be a viable alternative for resource constrained, privacy sensitive use cases.
title The advantages of context specific language models: the case of the Erasmian Language Model
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2408.06931