Marek Sabo


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2024

pdf bib
Boosting Machine Translation with AI-powered terminology features
Marek Sabo | Judith Klein | Giorgio Bernardinello
Proceedings of the 25th Annual Conference of the European Association for Machine Translation (Volume 2)

Artificial intelligence (AI) is quickly becoming an exciting new technology for the translation industry in form of large language models (LLMs). AI-based functionality could be used to improve the output of neural machine translation (NMT). One main issue that impacts MT quality and reliability is incorrect terminology. This is why STAR is making AI-powered terminology control a priority for its translation products because of the significant gains to be made - greatly improving the quality of MT output, reducing post editing (PE) costs and efforts, and thereby boosting overall translation productivity.