Speech Recognition with OpenAI Whisper

Описание к видео Speech Recognition with OpenAI Whisper

Presenter - Niraj Kale, AI Researcher

Whisper is an open-source model published by OpenAI on Automatic Speech Recognition (ASR). It is trained on 680,000 hours of multilingual and multitask supervised data collected from the web. It approaches human level robustness and accuracy on English speech recognition. Also, it enables transcription in multiple languages, as well as translation from those languages into English.

Attend this Webinar to understand details of this cutting-edge algorithm and run a project on automatic speech recogntion with Whisper.

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