Real-time stealth meeting copilot for Windows with local ASR and BYOK LLM
MeetingCopilot is a Windows application that provides real-time transcription of the other party in meetings or interviews, using either local FunASR or cloud ASR. It displays suggested answers on a first-person teleprompter that is invisible to screen sharing, powered by a bring-your-own-key (BYOK) LLM. It solves the problem of needing discreet, real-time assistance during remote meetings without being detected.
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