The proprietary models are a collaboration between TED and SYSTRAN, pairing TED’s unique multilingual data and SYSTRAN’s AI expertise to advance TED data usage in wider applications. The TED-owned models are available on the SYSTRAN Marketplace, a catalog of specialized models for specific domains such as legal, finance, health, education, science/technology, and many more.
// WE TRANSFORM BUSINESSES
The neural translation models leverage TED’s unique data and SYSTRAN AI expertise to specifically adapt to business, educational, scientific, and technical content, enabling accurate and fluent translations.
To support your educational content across platforms, multilingual fluency is paramount.
Integrate machine translation into the core of your scientific content while breaking down language barriers.
Develop innovative services, achieve faster time-to-market, and maintain consistency with your technical content.
// IMPROVEMENTS IN ACCURACY AND FLUENCY
The SYSTRAN TED Translation Models provide businesses and professional users alike with high quality translations which can be further enhanced on-the-fly with SYSTRAN’s AI-powered proprietary linguistic technologies, developed over more than 50 years.
// REAL-TIME LANGUAGE SOLUTIONS
Available language pairs for SYSTRAN TED Models:
// Expanding Professional Applications Of Machine Translation
// BUSINESS & PROFESSIONAL APPLICATIONS
SYSTRAN is TED's first ever authorized partner in providing a commercial solution that enables enterprises to benefit from neural machine translation models.
Our current climate has shown us how widespread global impact can truly be. Our companies are imagining a world with far less boundaries – starting with the way we communicate.
The human evaluations also revealed unanticipated results, with 41% of the models scoring higher than the human reference translations.
This strategic partnership is about taking our shared goals of connecting people and cultures and facilitating multilingual engagement.
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