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Pybind11 bindings for whisper.cpp
Install with pip:
pip install whispercpp
NOTE: We will setup a hermetic toolchain for all platforms that doesn't have a prebuilt wheels, (which means you don't have to setup anything to install the Python package) which will take a bit longer to install. Pass
-vvtopipto see the progress.
To use the latest version, install from source:
pip install git+https://github.com/aarnphm/whispercpp.git -vv
For local setup, initialize all submodules:
git submodule update --init --recursive
Build the wheel:
# Option 1: using pypa/build
python3 -m build -w
# Option 2: using bazel
./tools/bazel build //:whispercpp_wheel
Install the wheel:
# Option 1: via pypa/build
pip install dist/*.whl
# Option 2: using bazel
pip install $(./tools/bazel info bazel-bin)/*.whl
The binding provides a Whisper class:
from whispercpp import Whisper
w = Whisper.from_pretrained("tiny.en")
Currently, the inference API is provided via transcribe:
w.transcribe(np.ones((1, 16000)))
You can use any of your favorite audio libraries
(ffmpeg or
librosa, or
whispercpp.api.load_wav_file) to load audio files into a Numpy array, then
pass it to transcribe:
import ffmpeg
import numpy as np
try:
y, _ = (
ffmpeg.input("/path/to/audio.wav", threads=0)
.output("-", format="s16le", acodec="pcm_s16le", ac=1, ar=sample_rate)
.run(
cmd=["ffmpeg", "-nostdin"], capture_stdout=True, capture_stderr=True
)
)
except ffmpeg.Error as e:
raise RuntimeError(f"Failed to load audio: {e.stderr.decode()}") from e
arr = np.frombuffer(y, np.int16).flatten().astype(np.float32) / 32768.0
w.transcribe(arr)
You can also use the model transcribe_from_file for convience:
w.transcribe_from_file("/path/to/audio.wav")
The Pybind11 bindings supports all of the features from whisper.cpp, that takes inspiration from whisper-rs
The binding can also be used via api:
from whispercpp import api
# Binding directly fromn whisper.cpp
See DEVELOPMENT.md
WhisperWhisper.from_pretrained(model_name: str) -> WhisperLoad a pre-trained model from the local cache or download and cache if needed.
python
w = Whisper.from_pretrained("tiny.en")
The model will be saved to $XDG_DATA_HOME/whispercpp or
~/.local/share/whispercpp if the environment variable is not set.
Whisper.transcribe(arr: NDArray[np.float32], num_proc: int = 1)Running transcription on a given Numpy array. This calls full from
whisper.cpp. If num_proc is greater than 1, it will use full_parallel
instead.
python
w.transcribe(np.ones((1, 16000)))
To transcribe from a WAV file use transcribe_from_file:
python
w.transcribe_from_file("/path/to/audio.wav")
Whisper.stream_transcribe(*, length_ms: int=..., device_id: int=..., num_proc: int=...) -> Iterator[str][EXPERIMENTAL] Streaming transcription. This calls stream_ from
whisper.cpp. The transcription will be yielded as soon as it's available.
See stream.py for an example.
Note: The
device_idis the index of the audio device. You can usewhispercpp.api.available_audio_devicesto get the list of available audio devices.
apiapi is a direct binding from whisper.cpp, that has similar API to
whisper-rs.
api.ContextThis class is a wrapper around whisper_context
```python from whispercpp import api
ctx = api.Context.from_file("/path/to/saved_weight.bin") ```
Note: The context can also be accessed from the
Whisperclass viaw.context
api.ParamsThis class is a wrapper around whisper_params
```python from whispercpp import api
params = api.Params() ```
Note: The params can also be accessed from the
Whisperclass viaw.params
whispercpp.py. There are a few key differences here:
They provides the Cython bindings. From the UX standpoint, this achieves the
same goal as whispercpp. The difference is whispercpp use Pybind11
instead. Feel free to use it if you prefer Cython over Pybind11. Note that
whispercpp.py and whispercpp are mutually exclusive, as they also use
the whispercpp namespace.
whispercpp provides similar APIs as
whisper-rs, which provides a
nicer UX to work with. There are literally two APIs (from_pretrained and
transcribe) to quickly use whisper.cpp in Python.whispercpp doesn't pollute your $HOME directory, rather it follows the
XDG Base Directory Specification
for saved weights.
Using cdll and ctypes and be done with it?
This is also valid, but requires a lot of hacking and it is pretty slow comparing to Cython and Pybind11.
See examples for more information
$ claude mcp add whispercpp \
-- python -m otcore.mcp_server <graph>