USING NEURAL NETWORKS AND AI IN TRANSLATION: CHATGPT, DEEPL AND OTHER TECHNOLOGIES
Keywords:
neural machine translation, artificial intelligence, machine translation, ChatGPT, DeepL, automationAbstract
In recent years, artificial intelligence (AI) and neural network technologies have revolutionized the field of translation. Modern tools such as ChatGPT, DeepL, Google Translate, and others have automated the translation process, increasing both speed and accuracy. However, despite these clear advantages, the use of AI in translation faces several challenges, including handling cultural and contextual nuances, the need for post-editing, and ethical concerns. This article explores the principles behind neural machine translation systems, their strengths and limitations, and prospects for their future development in professional translation.
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