Usability of Computer-Aided Translation Software Based on Deep Learning Algorithms

In recent years, due to the development of computer technology and information technology, web technology has changed the mode of translation at an alarming rate. The rapid development of information technology and globalization has increased the demand for translation, especially technical translat...

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Main Author: Junjun Liu
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Advances in Multimedia
Online Access:http://dx.doi.org/10.1155/2022/9047053
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author Junjun Liu
author_facet Junjun Liu
author_sort Junjun Liu
collection DOAJ
description In recent years, due to the development of computer technology and information technology, web technology has changed the mode of translation at an alarming rate. The rapid development of information technology and globalization has increased the demand for translation, especially technical translation, and the use of computer-assisted translation software can greatly improve the quality and efficiency of translation work. The purpose of this article is that under the premise of continuous advancement in computer technology, computer-assisted translation can effectively improve the translation efficiency of translators and the quality of translated text. This article references the practicality of computer translation software as the benchmark and uses computer-aided translation software based on deep learning as the core. At the same time, it introduces the current popular microservice concept to build an electronic computer-assisted translation software based on microservice architecture. Based on the performance of the system, the high availability and scalability of the system are enhanced, so that the entire system can provide stable and efficient computer-assisted translation services for users. At the same time, the usability test method is used to compare and evaluate two common computer-aided translation software, Trados and Wordfast. By observing, recording, and analyzing user behavior and related data, the five attributes of usability can be learned and memorable. The experiments show that the effect of this study on computer-aided software with the help of deep learning knowledge can produce good results, and the robustness and scalability of the software have been enhanced, increasing the competitiveness of the software itself in translation software.
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spelling doaj-art-e591bdd24a784f6eb2dae1cfc1249b2b2025-02-03T01:06:33ZengWileyAdvances in Multimedia1687-56992022-01-01202210.1155/2022/9047053Usability of Computer-Aided Translation Software Based on Deep Learning AlgorithmsJunjun Liu0School of Foreign LanguagesIn recent years, due to the development of computer technology and information technology, web technology has changed the mode of translation at an alarming rate. The rapid development of information technology and globalization has increased the demand for translation, especially technical translation, and the use of computer-assisted translation software can greatly improve the quality and efficiency of translation work. The purpose of this article is that under the premise of continuous advancement in computer technology, computer-assisted translation can effectively improve the translation efficiency of translators and the quality of translated text. This article references the practicality of computer translation software as the benchmark and uses computer-aided translation software based on deep learning as the core. At the same time, it introduces the current popular microservice concept to build an electronic computer-assisted translation software based on microservice architecture. Based on the performance of the system, the high availability and scalability of the system are enhanced, so that the entire system can provide stable and efficient computer-assisted translation services for users. At the same time, the usability test method is used to compare and evaluate two common computer-aided translation software, Trados and Wordfast. By observing, recording, and analyzing user behavior and related data, the five attributes of usability can be learned and memorable. The experiments show that the effect of this study on computer-aided software with the help of deep learning knowledge can produce good results, and the robustness and scalability of the software have been enhanced, increasing the competitiveness of the software itself in translation software.http://dx.doi.org/10.1155/2022/9047053
spellingShingle Junjun Liu
Usability of Computer-Aided Translation Software Based on Deep Learning Algorithms
Advances in Multimedia
title Usability of Computer-Aided Translation Software Based on Deep Learning Algorithms
title_full Usability of Computer-Aided Translation Software Based on Deep Learning Algorithms
title_fullStr Usability of Computer-Aided Translation Software Based on Deep Learning Algorithms
title_full_unstemmed Usability of Computer-Aided Translation Software Based on Deep Learning Algorithms
title_short Usability of Computer-Aided Translation Software Based on Deep Learning Algorithms
title_sort usability of computer aided translation software based on deep learning algorithms
url http://dx.doi.org/10.1155/2022/9047053
work_keys_str_mv AT junjunliu usabilityofcomputeraidedtranslationsoftwarebasedondeeplearningalgorithms