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, Among French actors currently known are MFP, ST501, Blue Elements, Dubbing Brothers, Titra Films, Imagine, etc. Challenges ? Fluidize/streamline the circulation of audiovisual (or video) programs through machine translation, while humans focus on the quality of work

, ? Machine translation would also make it easier for television channels to acquire new foreign customers and allow them to invest more easily in extra-European programs without investing too much in subtitling

, ? Encourage more synergies and convergence between subtitling and the development of multilingualism or the integration of foreigners (migrants for example) in a given country

, ? Develop AI tools for automatic translation to sign language, and from sign language to text ? Develop AI tools for robust automatic translation of subtitles

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?. ,

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