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arXiv 提交日期: 2026-02-12
📄 Abstract - A technical curriculum on language-oriented artificial intelligence in translation and specialised communication

This paper presents a technical curriculum on language-oriented artificial intelligence (AI) in the language and translation (L&T) industry. The curriculum aims to foster domain-specific technical AI literacy among stakeholders in the fields of translation and specialised communication by exposing them to the conceptual and technical/algorithmic foundations of modern language-oriented AI in an accessible way. The core curriculum focuses on 1) vector embeddings, 2) the technical foundations of neural networks, 3) tokenization and 4) transformer neural networks. It is intended to help users develop computational thinking as well as algorithmic awareness and algorithmic agency, ultimately contributing to their digital resilience in AI-driven work environments. The didactic suitability of the curriculum was tested in an AI-focused MA course at the Institute of Translation and Multilingual Communication at TH Koeln. Results suggest the didactic effectiveness of the curriculum, but participant feedback indicates that it should be embedded into higher-level didactic scaffolding - e.g., in the form of lecturer support - in order to enable optimal learning conditions.

顶级标签: natural language processing llm model training
详细标签: translation technology ai curriculum technical literacy transformer networks vector embeddings 或 搜索:

面向翻译与专业沟通的语言导向人工智能技术课程 / A technical curriculum on language-oriented artificial intelligence in translation and specialised communication


1️⃣ 一句话总结

这篇论文设计了一套面向翻译与专业沟通领域的语言导向人工智能技术课程,旨在通过讲解向量嵌入、神经网络基础、分词和Transformer模型等核心概念,提升从业者的AI技术素养与数字适应力,并在教学实践中验证了其有效性。

源自 arXiv: 2602.12251