Large Language Models<\/a> (LLMs) have proven their usefulness for streamlining workflows, optimizing linguistic assets, and shortening quality assurance cycles, among many other applications.<\/p>\n Through LLMs, AI is not just automating tasks, but also reshaping how language service providers<\/a> (LSPs) and localization divisions at the enterprise operate, deliver value, and grow their businesses.<\/p>\n These changes and the overall impact of AI in translation are being felt across the language industry, and the second edition of Slator Pro Guide: Translation AI<\/a> captures new and updated use cases illustrating this rapid evolution.<\/p>\n The guide examines not only impact, but also value, implementation effort, technology involved, business opportunities, and user perspectives for 20 use cases.<\/p>\n Highlighting the wide-ranging applications of AI in translation, from core machine translation<\/a> (MT) to sophisticated production and linguistic tasks, a few primary business areas appear to be influenced by AI, though its impact is certainly not limited to these:<\/p>\n To find out how LLMs can be used to enhance translation quality, streamline workflows, optimize linguistic assets, and produce customized, industry-specific translations with ease, get your copy of the practical Slator Pro Guide: Translation AI<\/a>.<\/p>\n<\/div>\n2024 Slator Pro Guide: Translation AI<\/h2>\n
\n