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http://dbpedia.org/ontology/abstract Applications Technology (AppTek) is a U.S.Applications Technology (AppTek) is a U.S. company headquartered in McLean, Virginia that specializes in artificial intelligence and machine learning for human language technologies. The company provides both managed and professional services for natural language processing (NLP) technologies including automatic speech recognition (ASR), neural machine translation (MT), natural-language understanding (NLU) and neural speech synthesis. AppTek's automatic speech recognition covers over 45 languages and dialects. The neural MT engine covers over 1000 language pairs between languages. AppTek's Head of Science, Prof. Dr. -Ing Hermann Ney, was awarded the IEEE James L. Flanagan Speech and Audio Processing Award in 2019 and the ISCA Medal for Scientific Achievement in 2021 for his work in natural language processing.r his work in natural language processing.
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rdfs:comment Applications Technology (AppTek) is a U.S.Applications Technology (AppTek) is a U.S. company headquartered in McLean, Virginia that specializes in artificial intelligence and machine learning for human language technologies. The company provides both managed and professional services for natural language processing (NLP) technologies including automatic speech recognition (ASR), neural machine translation (MT), natural-language understanding (NLU) and neural speech synthesis. AppTek's automatic speech recognition covers over 45 languages and dialects. The neural MT engine covers over 1000 language pairs between languages.ver 1000 language pairs between languages.
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