Model Detail
cohere-transcribe-03-2026
—cohere-transcribe-03-2026 is a code generation model with 1.0B parameters released by CohereLabs. The model is registered under the automatic-speech-recognition pipeline tag on Hugging Face, distributed under the permissive apache-2.0 license.
cohere-transcribe-03-2026 ships with 1.0B parameters. Total weight footprint is approximately 2.1 GB, which is the relevant figure when planning local-inference VRAM. The apache-2.0 license is permissive, allowing commercial deployment and derivative work without per-seat fees, though attribution requirements still apply.
Downloads of cohere-transcribe-03-2026 have moved +41.9% over the trailing seven days, +118.0% over the trailing thirty days. That puts the model in active uptrend territory; a sustained move of this size usually reflects a recent release, a viral integration, or a benchmark surprise rather than steady-state demand. These numbers are signal, not guarantee — week-over-week download counts on Hugging Face also reflect mirror traffic, CI scrapes, and one-off benchmarking runs.
cohere-transcribe-03-2026 is best fit for code completion, repository-scale Q&A, and pair-programming integrations. It is a less obvious choice for one-shot generation of security-critical code without review. Treat this as a starting matrix rather than a benchmark verdict — the right deployment usually depends on the specific evaluation suite that mirrors your workload.
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