CLCYJul 31, 2025

Beyond the Cloud: Assessing the Benefits and Drawbacks of Local LLM Deployment for Translators

arXiv:2507.23399v13 citationsh-index: 1Has Code
Originality Synthesis-oriented
AI Analysis

It addresses data privacy and accessibility issues for individual translators and small businesses, but is incremental in exploring local deployment models.

This paper assessed the feasibility and performance of locally deployable, free language models as an alternative to cloud-based AI for translators, finding benefits like enhanced data control and privacy, though with some challenges.

The rapid proliferation of Large Language Models presents both opportunities and challenges for the translation field. While commercial, cloud-based AI chatbots have garnered significant attention in translation studies, concerns regarding data privacy, security, and equitable access necessitate exploration of alternative deployment models. This paper investigates the feasibility and performance of locally deployable, free language models as a viable alternative to proprietary, cloud-based AI solutions. This study evaluates three open-source models installed on CPU-based platforms and compared against commercially available online chat-bots. The evaluation focuses on functional performance rather than a comparative analysis of human-machine translation quality, an area already subject to extensive research. The platforms assessed were chosen for their accessibility and ease of use across various operating systems. While local deployment introduces its own challenges, the benefits of enhanced data control, improved privacy, and reduced dependency on cloud services are compelling. The findings of this study contribute to a growing body of knowledge concerning the democratization of AI technology and inform future research and development efforts aimed at making LLMs more accessible and practical for a wider range of users, specifically focusing on the needs of individual translators and small businesses.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes