How to use from the
Use from the
OpenASR library
# Install the openasr CLI: https://github.com/QuintinShaw/openasr/releases
openasr pull dolphin-base
openasr transcribe audio.wav --model dolphin-base

Dolphin Base Β· OpenASR

Multilingual speech recognition across 40 languages, base tier -- a compact 140M WeNet/ESPnet E-Branchformer (CTC + attention)

License Format Runtime Base model

Native speech-to-text in the OpenASR runtime β€” engineered for peak performance on CPU & GPU, no Python at inference time.


✨ Highlights

  • 🌏 40 languages, base tier β€” the same multilingual E-Branchformer coverage as Dolphin Small (South Asian, Southeast Asian, Central Asian/Turkic, Chinese/Cantonese), at a fraction of the size
  • πŸͺΆ 140M parameters β€” roughly a third the width of the small checkpoint (512 vs 768 d_model, fewer layers), for tighter RAM and faster CPU decode when the small tier is overkill
  • 🧩 Joint CTC + attention β€” the same E-Branchformer encoder + Transformer decoder recipe with CTC/attention rescoring, verified against a shape-derived runtime contract shared with the rest of the Dolphin family
  • 🐬 SentencePiece BPE vocab β€” a shared subword vocabulary across all 40 languages (distinct from the cn-dialect family's fixed character vocab)
  • πŸ¦€ Native in OpenASR β€” .oasr packs run with no Python at inference, engineered for peak performance on CPU & GPU

πŸš€ Quickstart

# 1. Install the OpenASR CLI  Β·  https://openasr.org
# 2. Pull a build (pick a quant β€” see the table below)
openasr pull dolphin-base:fp16

# 3. Transcribe
openasr transcribe audio.wav --model dolphin-base

All builds for this model:

openasr pull dolphin-base:fp16
openasr pull dolphin-base:q8
openasr pull dolphin-base:q4

πŸ“¦ Available builds

Quant File (.oasr) Size RAM peak RTF Β· M1 CPU RTF Β· M1 GPU Ξ”CER vs fp16
fp16 dolphin-base-fp16.oasr 287 MB 1.92 GB 0.15Γ— 0.14Γ— 0.0%
q8_0 dolphin-base-q8_0.oasr 158 MB 1.76 GB 0.15Γ— 0.16Γ— 0.0%
q4_k dolphin-base-q4_k.oasr 90 MB 1.70 GB 0.13Γ— 0.13Γ— 8.8%

RTF = real-time factor on the shared 11s JFK clip (out-of-distribution, drift signal only) plus an in-language Mandarin sanity clip (lower is faster); RAM peak measured per pack in an isolated subprocess. Ξ”CER compares each quantized build's JFK + zh sanity clip transcript to this model's fp16 JFK + zh sanity clip transcript, so it measures quantization drift rather than absolute recognition accuracy. fp16 is the recommended default β€” near-reference quality at a fraction of the footprint.

🧠 About Dolphin Base

Dolphin Base is the 140M "base" tier of DataoceanAI's multilingual Dolphin speech- recognition line, built on the same Dolphin / ESPnet recipe as the larger Dolphin Small: an E-Branchformer encoder + Transformer decoder trained with a joint CTC + attention objective over a shared SentencePiece BPE vocabulary spanning the card's advertised 40 languages (South Asian, Southeast Asian, Central Asian/Turkic, and Chinese including Cantonese as yue), at roughly a third of the small tier's encoder/decoder width -- a smaller RAM/CPU footprint for deployments where the small tier's accuracy headroom is not needed. Like dolphin-small, this checkpoint collapses this product's own Chinese-dialect granularity into a single zh (the dedicated dolphin-cn-dialect-small/-base packs cover per-dialect prompting). This OpenASR repo repackages the weights as .oasr packs that run natively in the OpenASR runtime -- no Python at inference, all decoding local. It ships in fp16 (maximum fidelity, recommended), q8_0, and q4_k builds.

Note: this model does not emit punctuation. Its upstream training corpus is transcribed without punctuation marks, so the decoder never predicts a punctuation token -- there is no setting to enable it. Transcripts are plain, unpunctuated text by design.

Verification status: this pack is staged in a private repo, not yet publicly listed. Local verification so far covers Mandarin (zh) sanity-checked against the upstream architecture and bit-stable at fp16/q8_0, with a small (~9% CER) drift at q4_k versus fp16 on the sanity clip; Japanese (ja), one of the 40 advertised languages, has not yet had a native-speaker listening review and must get one before this model is made public.

βš™οΈ How these packs were made

Converted from DataoceanAI/dolphin-base with the OpenASR importer:

openasr model-pack import dolphin <src> <out>.oasr \
  --package-id dolphin-base --quantization {fp16,q8-0,q4-k}

The .oasr container is GGUF-backed; packs use zero-copy mmap weight binding and graph buffer reuse to keep peak memory low.

βš–οΈ License

These packs inherit the upstream model's license: Apache-2.0 (source). OpenASR packaging retains the upstream copyright and NOTICE; the only modifications are format conversion and quantization.

πŸ™ Acknowledgements

This pack is a redistribution of Dolphin Base, created and open-sourced by DataoceanAI (DataoceanAI/dolphin-base). All credit for the original architecture, training, and weights belongs to the authors; the license is inherited from and identical to the upstream model (Apache-2.0). The model builds on the Dolphin multilingual ASR project and the ESPnet E-Branchformer / joint CTC-attention recipe -- thank you to the Dolphin and ESPnet teams and to DataoceanAI for releasing their work openly. OpenASR only performs format conversion, quantization, runtime verification, and local-inference adaptation.

πŸ”— Links

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