Whisper is OpenAI’s general-purpose automatic speech recognition (ASR) model. You can use it for audio transcription, translation, and language identification. You can run Whisper on the NPU of your Dragonwing development board using Qualcomm’s VoiceAI ASR, or on the CPU using whisper.cpp.
Running Whisper on the NPU with VoiceAI ASR
1. Installing SDKs
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Open a terminal on your development board, and set up the base requirements for this example:
sudo apt install -y cmake pulseaudio-utils
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Install the AI Runtime SDK - Community Edition:
# Install the SDK
wget -qO- https://cdn.edgeimpulse.com/qc-ai-docs/device-setup/install_ai_runtime_sdk.sh | bash
# Use the SDK in your current session
source ~/.bash_profile
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Install VoiceAI ASR - Community Edition:
cd ~/
wget https://softwarecenter.qualcomm.com/api/download/software/sdks/VoiceAI_ASR_Community/All/2.3.0.0/VoiceAI_ASR_Community_v2.3.0.0.zip
unzip VoiceAI_ASR_Community_v2.3.0.0.zip -d voiceai_asr
rm VoiceAI_ASR_Community_v2.3.0.0.zip
cd voiceai_asr/2.3.0.0/
# Put the path to VoiceAI ASR in your bash_profile (so it's available under VOICEAI_ROOT)
echo "" >> ~/.bash_profile
echo "# Begin VoiceAI ASR" >> ~/.bash_profile
echo "export VOICEAI_ROOT=$PWD" >> ~/.bash_profile
echo "# End VoiceAI ASR" >> ~/.bash_profile
echo "" >> ~/.bash_profile
# Re-load the environment variables
source ~/.bash_profile
# Symlink Whisper libraries
cd $VOICEAI_ROOT/whisper_sdk/libs/npu/rpc_libraries/linux/whisper_all_quantized/
sudo ln -s $PWD/*.so /usr/lib/
2. Download models from AI Hub
With the SDKs installed, you can download precompiled Whisper models from AI Hub. When downloading a model select the following device:
- RB3 Gen 2 Vision Kit: ‘Qualcomm QCS6490 (Proxy)’
- RUBIK Pi 3: ‘Qualcomm QCS6490 (Proxy)’
- IQ-9075 EVK: ‘Qualcomm QCS9075 (Proxy)’
After downloading, rename the encoder model to encoder_model_htp.bin and the decoder model to decoder_model_htp.bin.
To download the Whisper-Small-Quantized model directly on your development board:
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RB3 Gen 2 Vision Kit / Rubik Pi 3:
mkdir -p ~/whisper_models/ai_hub_small_quantized/
cd ~/whisper_models/ai_hub_small_quantized/
# Models from https://aihub.qualcomm.com/models/whisper_small_quantized for QCS6490 (Proxy) target
wget -O encoder_model_htp.bin https://huggingface.co/qualcomm/Whisper-Small-Quantized/resolve/0e21411/precompiled/qualcomm-qcs6490-proxy/Whisper-Small-Quantized_WhisperSmallEncoderQuantizable_w8a16.bin
wget -O decoder_model_htp.bin https://huggingface.co/qualcomm/Whisper-Small-Quantized/resolve/0e21411/precompiled/qualcomm-qcs6490-proxy/Whisper-Small-Quantized_WhisperSmallDecoderQuantizable_w8a16.bin
# Vocab file is not in AI Hub yet, grab from our CDN
wget -O vocab.bin https://cdn.edgeimpulse.com/qc-ai-docs/models/whisper/vocab.bin
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IQ-9075 EVK:
mkdir -p ~/whisper_models/ai_hub_small_quantized/
cd ~/whisper_models/ai_hub_small_quantized/
# Models from https://aihub.qualcomm.com/models/whisper_small_quantized for QCS9075 (Proxy) target
wget -O encoder_model_htp.bin https://huggingface.co/qualcomm/Whisper-Small-Quantized/resolve/0e21411/precompiled/qualcomm-qcs9075-proxy/Whisper-Small-Quantized_WhisperSmallEncoderQuantizable_w8a16.bin
wget -O decoder_model_htp.bin https://huggingface.co/qualcomm/Whisper-Small-Quantized/resolve/0e21411/precompiled/qualcomm-qcs9075-proxy/Whisper-Small-Quantized_WhisperSmallDecoderQuantizable_w8a16.bin
# Vocab file is not in AI Hub yet, grab from our CDN
wget -O vocab.bin https://cdn.edgeimpulse.com/qc-ai-docs/models/whisper/vocab.bin
3. Compiling and running examples
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Build the
npu_rpc_linux_sample/voice-ai-ref example:
cd $VOICEAI_ROOT/whisper_sdk/sampleapp/npu_rpc_linux_sample/voice-ai-ref
# Overwrite the LogUtil.h function to log to stdout
wget -O include/LogUtil.h https://cdn.edgeimpulse.com/qc-ai-docs/code/voiceai_asr/2.3.0.0/whisper_sdk/sampleapp/npu_rpc_linux_sample/voice-ai-ref/include/LogUtil.h
# Overwrite the main.cpp example to add microphone selection
wget -O src/main.cpp https://cdn.edgeimpulse.com/qc-ai-docs/code/voiceai_asr/2.3.0.0/whisper_sdk/sampleapp/npu_rpc_linux_sample/voice-ai-ref/src/main.cpp
# Symlink Whisper libraries for build
mkdir -p libs/arm64-v8a/
cd libs/arm64-v8a/
ln -s $VOICEAI_ROOT/whisper_sdk/libs/npu/rpc_libraries/linux/whisper_all_quantized/*.so .
cd ../../
mkdir -p build
cd build
cmake ..
make -j`nproc`
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You can now transcribe .WAV files:
cd $VOICEAI_ROOT/whisper_sdk/sampleapp/npu_rpc_linux_sample/voice-ai-ref/build
# Download sample file
wget -O jfk.wav https://raw.githubusercontent.com/ggml-org/whisper.cpp/refs/heads/master/samples/jfk.wav
# Transcribe:
./voice-ai-ref -f jfk.wav -l en -t transcribe -m ~/whisper_models/ai_hub_small_quantized/
# ... Expected result:
# VoiceAIRef final result = And so my fellow Americans, ask not what your country can do for you, ask what you can do for your country. [language: English]
# Press Control-C to exit the running application.
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Or even do live transcription:
a. Connect a microphone to your development board.
b. Find the name of your microphone:
pactl list short sources
# 49 alsa_output.platform-sound.stereo-fallback.monitor PipeWire s24-32le 2ch 48000Hz SUSPENDED
# 76 alsa_input.usb-046d_C922_Pro_Stream_Webcam_C72F6EDF-02.analog-stereo PipeWire s16le 2ch 32000Hz SUSPENDED
# To use the USB webcam, use "alsa_input.usb-046d_C922_Pro_Stream_Webcam_C72F6EDF-02.analog-stereo" as the name
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Run live transcription:
./voice-ai-ref -r -l en -t transcribe -m ~/whisper_models/ai_hub_small_quantized/ -d "alsa_input.usb-046d_C922_Pro_Stream_Webcam_C72F6EDF-02.analog-stereo"
# VoiceAIRef final result = Hi, this is to see if I can do live transcription. [language: English]
Live transcription errors out immediately after the VAD determines that there is no speech, hopefully this will be fixed in a future update.
🚀 You now have fully offline transcription of audio on your development board! VoiceAI ASR does not have bindings to higher level languages (like Python), so if you want to use Whisper in your application it’s easiest to just spawn the voice-ai-ref binary, and read data from stdout.
Running Whisper on the CPU with whisper.cpp
Alternatively you can run Whisper on the CPU (with less performance) using whisper.cpp (or any of the other popular Whisper libraries).
Here’s instructions for whisper.cpp. Open the terminal on your development board, or an ssh session to your development board, and run:
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Install build dependencies:
sudo apt update
sudo apt install -y libsdl2-dev libsdl2-2.0-0 libasound2-dev
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Build whisper.cpp:
mkdir -p ~/dev/llm/
cd ~/dev/llm/
git clone https://github.com/ggml-org/whisper.cpp.git
cd whisper.cpp
git checkout v1.7.6
# Build (CPU)
cmake -B build-cpu -DWHISPER_SDL2=ON
cmake --build build-cpu -j`nproc` --config Release
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Add the whisper.cpp paths to your PATH:
cd ~/dev/llm/whisper.cpp/build-cpu/bin
echo "" >> ~/.bash_profile
echo "# Begin whisper.cpp" >> ~/.bash_profile
echo "export PATH=\$PATH:$PWD" >> ~/.bash_profile
echo "# End whisper.cpp" >> ~/.bash_profile
echo "" >> ~/.bash_profile
# To use the whisper.cpp files in your current session
source ~/.bash_profile
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You now transcribe some audio using whisper.cpp:
# Download model
cd ~/dev/llm/whisper.cpp
sh ./models/download-ggml-model.sh tiny.en-q5_1
# Transcribe text
whisper-cli -m models/ggml-tiny.en-q5_1.bin -f samples/jfk.wav
# [00:00:00.000 --> 00:00:10.480]
# and so my fellow Americans ask not what your country can do for you ask what you can do for your country
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You can also live transcribe audio:
a. Connect a microphone to your development board.
b. Find your microphone ID:
SDL_AUDIODRIVER=alsa whisper-stream -m models/ggml-tiny.en-q5_1.bin
# init: found 2 capture devices:
# init: - Capture device #0: 'qcm6490-rb3-vision-snd-card, '
# init: - Capture device #1: 'Yeti Stereo Microphone, USB Audio'
# If you want "Yeti Stereo Microphone, USB Audio" then the ID is 1
c. Start live transcribing:
SDL_AUDIODRIVER=alsa whisper-stream -m models/ggml-tiny.en-q5_1.bin -c 1
# main: processing 48000 samples (step = 3.0 sec / len = 10.0 sec / keep = 0.2 sec), 4 threads, lang = en, task = transcribe, timestamps = 0 ...
# main: n_new_line = 2, no_context = 1
#
# [Start speaking]
# This is a test to see if you can transcribe text live on your Qualcomm device
Running on the GPU with OpenCL
You can also build binaries that run on the GPU:
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First follow the steps in llama.cpp under “Install the OpenCL headers and ICD loader library”.
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Build a binary with OpenCL:
cd ~/dev/llm/whisper.cpp
cmake -B build-gpu -DGGML_OPENCL=ON -DWHISPER_SDL2=ON
cmake --build build-gpu -j`nproc` --config Release
# Find the binary in:
# build-gpu/bin/whisper-cli