ModelsAudio

Cohere Transcribe Arabic

About this model

Cohere Transcribe Arabic is a finetuned version of Cohere Transcribe that is optimized for Arabic audio inputs. Like Cohere Transcribe, it is a 2B parameters dedicated audio-in, text-out, automatic speech recognition (ASR) model available open source. The model is designed to accurately capture the diversity of dialects, accents, and acoustic conditions among Arabic speakers during transcription.

Model details

  • Input: Audio waveform
  • Output: Text
  • Model name: cohere-transcribe-arabic-07-2026
  • Languages covered: Arabic, English
  • Multidialectal support: Yes
  • Code-switching support: Yes
  • Maximum file size: 25MB
  • License: Apache 2.0

Availability

You can access Cohere Transcribe Arabic via our API for free, low-setup experimentation subject to rate limits.

For production deployment without rate limits, provision a dedicated Model Vault. This enables low-latency, private cloud inference without having to manage infrastructure. Pricing is calculated per hour-instance, with discounted plans for longer-term commitments. Contact our team to discuss your requirements.

Strengths

Cohere Transcribe Arabic achieves state-of-the-art transcription accuracy for Arabic speech. These results are robust to diverse or variable audio inputs, including: bilingual dialogues (Arabic-English); regional dialects and phrasing, and enterprise-specific vocabulary. Like its parent model, Cohere Transcribe Arabic has been optimized for high-throughput, production inference, and is at the frontier for far-field (where the speaker is not close to the receiver) transcription tasks.

Key Limitations

  • Timestamps: The model does not output timestamps alongside transcripts.
  • Speaker diarization: The model does not automatically identify individual speakers in a multispeaker audio file.

Model architecture

Cohere Transcribe is built on a speech-optimized Transformer variant: a Conformer. Input audio waveforms are converted into a Mel spectrogram and then processed by a Conformer encoder that holds the majority of the model’s parameters. The encoder’s representations are then passed to a lightweight Transformer decoder that generates text tokens. Cohere Transcribe is trained using standard supervised cross-entropy.

Further Resources