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FireRedTeam/FireRedASR2S

A SOTA Industrial-Grade All-in-One ASR system with ASR, VAD, LID, and Punc modules. FireRedASR2 supports Chinese (Mandarin, 20+ dialects/accents), English, code-switching, and both speech and singing ASR. FireRedVAD supports speech/singing/music in 100+ langs. FireRedLID supports 100+ langs and 20+ zh dialects. FireRedPunc supports zh and en.

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What it does

FireRedASR2S is a free, open-source toolkit that converts spoken audio into accurate text, with added tools to detect when someone is speaking, identify what language they're using, and add proper punctuation to the transcript. It handles over 100 languages including Mandarin Chinese with more than 20 regional dialects, English, and mixed-language speech, and even works on singing — outperforming well-known commercial and open-source alternatives in accuracy benchmarks.

Why it matters

For any product that needs voice input — customer service bots, meeting transcription, voice assistants, or content tools — this offers enterprise-grade accuracy at zero licensing cost, removing a major expense and vendor dependency. The combination of speech detection, language identification, transcription, and punctuation in one package means builders can ship a complete voice pipeline faster without stitching together multiple third-party services.

2Active

On the radar — signal detected

Stars
567
Forks
41
Contributors
0
Language
Python

Score updated May 8, 2026

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