


OpenAI successfully registered the 'GPT-5' trademark in China and had previously applied for it in the United States.
According to the information on the official website of the Trademark Office of the State Intellectual Property Office, OPENAI OPCO, LLC applied for registration of two trademarks "GPT-5" at the end of last month, belonging to categories 9 and 5 of the international classification respectively. Category 42 (scientific instruments, design research), the current trademark status is pending
According to information from the United States Patent and Trademark Office (USPTO), OpenAI was approved last month Application for registered trademark "GPT-5" on the 18th. The trademark is expected to provide multiple functions such as text generation, natural language understanding, speech transcription, translation and analysis
OpenAI Chief Executive Sam Altman said at a conference hosted by the Economic Times of India in early June this year that they have not yet started training GPT-5 because there is still a lot of work to be done before starting and are working on new ideas that are needed, but They're definitely not ready to start.
OpenAI's GPT-4 large model has also applied for the corresponding trademark registration in China and the international classification of "WHISPER" as a website service in the first half of this year. ( WHISPER is the neural network previously released by OpenAI, which is claimed to be approaching human-level performance in English speech recognition.)
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