Python bindings for whisper.cpp with a simple Pythonic API on top of it.
- For the best performance, you need to install the package from source:
pip install git+https://github.com/absadiki/pywhispercpp
- Otherwise, Basic Pre-built CPU wheels are available on PYPI
pip install pywhispercpp # or pywhispercpp[examples] to install the extra dependencies needed for the examples
[Optional] To transcribe files other than wav, you need to install ffmpeg:
# on Ubuntu or Debian
sudo apt update && sudo apt install ffmpeg
# on Arch Linux
sudo pacman -S ffmpeg
# on MacOS using Homebrew (https://brew.sh/)
brew install ffmpeg
# on Windows using Chocolatey (https://chocolatey.org/)
choco install ffmpeg
# on Windows using Scoop (https://scoop.sh/)
scoop install ffmpeg
To Install the package with CUDA support, make sure you have cuda installed and use GGML_CUDA=1
:
GGML_CUDA=1 pip install git+https://github.com/absadiki/pywhispercpp
Install the package with WHISPER_COREML=1
:
WHISPER_COREML=1 pip install git+https://github.com/absadiki/pywhispercpp
Install the package with GGML_VULKAN=1
:
GGML_VULKAN=1 pip install git+https://github.com/absadiki/pywhispercpp
** Feel free to update this list and submit a PR if you tested the package on other backends.
from pywhispercpp.model import Model
model = Model('base.en')
segments = model.transcribe('file.wav')
for segment in segments:
print(segment.text)
You can also assign a custom new_segment_callback
from pywhispercpp.model import Model
model = Model('base.en', print_realtime=False, print_progress=False)
segments = model.transcribe('file.mp3', new_segment_callback=print)
- The model will be downloaded automatically, or you can use the path to a local model.
- You can pass any
whisper.cpp
parameter as a keyword argument to theModel
class or to thetranscribe
function. - Check the Model class documentation for more details.
Just a straightforward example Command Line Interface. You can use it as follows:
pwcpp file.wav -m base --output-srt --print_realtime true
Run pwcpp --help
to get the help message
usage: pwcpp [-h] [-m MODEL] [--version] [--processors PROCESSORS] [-otxt] [-ovtt] [-osrt] [-ocsv] [--strategy STRATEGY]
[--n_threads N_THREADS] [--n_max_text_ctx N_MAX_TEXT_CTX] [--offset_ms OFFSET_MS] [--duration_ms DURATION_MS]
[--translate TRANSLATE] [--no_context NO_CONTEXT] [--single_segment SINGLE_SEGMENT] [--print_special PRINT_SPECIAL]
[--print_progress PRINT_PROGRESS] [--print_realtime PRINT_REALTIME] [--print_timestamps PRINT_TIMESTAMPS]
[--token_timestamps TOKEN_TIMESTAMPS] [--thold_pt THOLD_PT] [--thold_ptsum THOLD_PTSUM] [--max_len MAX_LEN]
[--split_on_word SPLIT_ON_WORD] [--max_tokens MAX_TOKENS] [--audio_ctx AUDIO_CTX]
[--prompt_tokens PROMPT_TOKENS] [--prompt_n_tokens PROMPT_N_TOKENS] [--language LANGUAGE] [--suppress_blank SUPPRESS_BLANK]
[--suppress_non_speech_tokens SUPPRESS_NON_SPEECH_TOKENS] [--temperature TEMPERATURE] [--max_initial_ts MAX_INITIAL_TS]
[--length_penalty LENGTH_PENALTY] [--temperature_inc TEMPERATURE_INC] [--entropy_thold ENTROPY_THOLD]
[--logprob_thold LOGPROB_THOLD] [--no_speech_thold NO_SPEECH_THOLD] [--greedy GREEDY] [--beam_search BEAM_SEARCH]
media_file [media_file ...]
positional arguments:
media_file The path of the media file or a list of filesseparated by space
options:
-h, --help show this help message and exit
-m MODEL, --model MODEL
Path to the `ggml` model, or just the model name
--version show program's version number and exit
--processors PROCESSORS
number of processors to use during computation
-otxt, --output-txt output result in a text file
-ovtt, --output-vtt output result in a vtt file
-osrt, --output-srt output result in a srt file
-ocsv, --output-csv output result in a CSV file
--strategy STRATEGY Available sampling strategiesGreefyDecoder -> 0BeamSearchDecoder -> 1
--n_threads N_THREADS
Number of threads to allocate for the inferencedefault to min(4, available hardware_concurrency)
--n_max_text_ctx N_MAX_TEXT_CTX
max tokens to use from past text as prompt for the decoder
--offset_ms OFFSET_MS
start offset in ms
--duration_ms DURATION_MS
audio duration to process in ms
--translate TRANSLATE
whether to translate the audio to English
--no_context NO_CONTEXT
do not use past transcription (if any) as initial prompt for the decoder
--single_segment SINGLE_SEGMENT
force single segment output (useful for streaming)
--print_special PRINT_SPECIAL
print special tokens (e.g. <SOT>, <EOT>, <BEG>, etc.)
--print_progress PRINT_PROGRESS
print progress information
--print_realtime PRINT_REALTIME
print results from within whisper.cpp (avoid it, use callback instead)
--print_timestamps PRINT_TIMESTAMPS
print timestamps for each text segment when printing realtime
--token_timestamps TOKEN_TIMESTAMPS
enable token-level timestamps
--thold_pt THOLD_PT timestamp token probability threshold (~0.01)
--thold_ptsum THOLD_PTSUM
timestamp token sum probability threshold (~0.01)
--max_len MAX_LEN max segment length in characters
--split_on_word SPLIT_ON_WORD
split on word rather than on token (when used with max_len)
--max_tokens MAX_TOKENS
max tokens per segment (0 = no limit)
--audio_ctx AUDIO_CTX
overwrite the audio context size (0 = use default)
--prompt_tokens PROMPT_TOKENS
tokens to provide to the whisper decoder as initial prompt
--prompt_n_tokens PROMPT_N_TOKENS
tokens to provide to the whisper decoder as initial prompt
--language LANGUAGE for auto-detection, set to None, "" or "auto"
--suppress_blank SUPPRESS_BLANK
common decoding parameters
--suppress_non_speech_tokens SUPPRESS_NON_SPEECH_TOKENS
common decoding parameters
--temperature TEMPERATURE
initial decoding temperature
--max_initial_ts MAX_INITIAL_TS
max_initial_ts
--length_penalty LENGTH_PENALTY
length_penalty
--temperature_inc TEMPERATURE_INC
temperature_inc
--entropy_thold ENTROPY_THOLD
similar to OpenAI's "compression_ratio_threshold"
--logprob_thold LOGPROB_THOLD
logprob_thold
--no_speech_thold NO_SPEECH_THOLD
no_speech_thold
--greedy GREEDY greedy
--beam_search BEAM_SEARCH
beam_search
This is a simple example showcasing the use of pywhispercpp
to create an assistant like example.
The idea is to use a Voice Activity Detector (VAD) to detect speech (in this example, we used webrtcvad), and when some speech is detected, we run the transcription.
It is inspired from the whisper.cpp/examples/command example.
You can check the source code here or you can use the class directly to create your own assistant:
from pywhispercpp.examples.assistant import Assistant
my_assistant = Assistant(commands_callback=print, n_threads=8)
my_assistant.start()
Here, we set the commands_callback
to a simple print function, so the commands will just get printed on the screen.
You can also run this example from the command line.
$ pwcpp-assistant --help
usage: pwcpp-assistant [-h] [-m MODEL] [-ind INPUT_DEVICE] [-st SILENCE_THRESHOLD] [-bd BLOCK_DURATION]
options:
-h, --help show this help message and exit
-m MODEL, --model MODEL
Whisper.cpp model, default to tiny.en
-ind INPUT_DEVICE, --input_device INPUT_DEVICE
Id of The input device (aka microphone)
-st SILENCE_THRESHOLD, --silence_threshold SILENCE_THRESHOLD
he duration of silence after which the inference will be running, default to 16
-bd BLOCK_DURATION, --block_duration BLOCK_DURATION
minimum time audio updates in ms, default to 30
- Check the examples folder for more examples.
- First check the API documentation for more advanced usage.
- If you are a more experienced user, you can access the exposed C-APIs directly from the binding module
_pywhispercpp
.
import _pywhispercpp as pwcpp
ctx = pwcpp.whisper_init_from_file('path/to/ggml/model')
If you find any bug, please open an issue.
If you have any feedback, or you want to share how you are using this project, feel free to use the Discussions and open a new topic.
This project is licensed under the same license as whisper.cpp (MIT License).