An ML package for GStreamer
Project description
GStreamer Python ML
This project provides a pure Python ML framework for upstream GStreamer, supporting a broad range of ML vision and language features.
Supported functionality includes:
- object detection
- tracking
- video captioning
- translation
- transcription
- speech to text
- text to speech
- text to image
- LLMs
- serializing model metadata to Kafka server
Different ML toolkits are supported via the MLEngine abstraction - we have nominal support for
TensorFlow, LiteRT and OpenVINO, but all testing thus far has been done with PyTorch.
These elements will work with your distribution's GStreamer packages as long as the GStreamer version is >= 1.24.
Install
There are two installation options described below: on host machine or on Docker container:
Host Install
Install distribution packages
Ubuntu
sudo apt update && sudo apt -y upgrade
sudo apt install -y python3-pip python3-venv \
gstreamer1.0-plugins-base gstreamer1.0-plugins-base-apps \
gstreamer1.0-plugins-good gstreamer1.0-plugins-bad \
gir1.2-gst-plugins-bad-1.0 python3-gst-1.0 gstreamer1.0-python3-plugin-loader \
libcairo2 libcairo2-dev git
Fedora
(adjust Fedora version from 42 to match your version number)
sudo dnf install https://download1.rpmfusion.org/free/fedora/rpmfusion-free-release-42.noarch.rpm https://download1.rpmfusion.org/nonfree/fedora/rpmfusion-nonfree-release-42.noarch.rpm
sudo dnf update -y
sudo dnf install akmod-nvidia xorg-x11-drv-nvidia-cuda -y
sudo dnf upgrade -y
sudo dnf install -y python3-pip \
python3-devel cairo cairo-devel cairo-gobject-devel pkgconfig git \
gstreamer1-plugins-base gstreamer1-plugins-base-tools \
gstreamer1-plugins-good gstreamer1-plugins-bad-free \
gstreamer1-plugins-bad-free-devel python3-gstreamer1
Manage Python packages with uv
install
curl -LsSf https://astral.sh/uv/install.sh | sh
set up uv venv
uv venv --system-site-packages
source .venv/bin/activate
uv pip install --upgrade pip
uv sync
Now manually install flash-attn wheel (must match your version of python, torch and cuda) For example:
uv pip install ./flash_attn-2.8.3+cu128torch2.9-cp313-cp313-linux_x86_64.whl
Pe-built wheels can be found here: https://github.com/mjun0812/flash-attention-prebuild-wheels/releases
Clone repo
cd $HOME/src
git clone https://github.com/collabora/gst-python-ml.git
Update .bashrc
echo 'export GST_PLUGIN_PATH=$HOME/src/gst-python-ml/demos:$HOME/src/gst-python-ml/plugins:$GST_PLUGIN_PATH' >> ~/.bashrc
source ~/.bashrc
Docker Install
Build Docker Container
Important Note:
This Dockerfile maps a local gst-python-ml repository to the container,
and expects this repository to be located in $HOME/src i.e. $HOME/src/gst-python-ml.
Enable Docker GPU Support on Host
To use the host GPU in a docker container, you will need to install the nvidia container toolkit. If running on CPU, these steps can be skipped.
Ubuntu
curl -fsSL https://nvidia.github.io/libnvidia-container/gpgkey | sudo gpg --dearmor -o /usr/share/keyrings/nvidia-container-toolkit-keyring.gpg \
&& curl -s -L https://nvidia.github.io/libnvidia-container/stable/deb/nvidia-container-toolkit.list | \
sed 's#deb https://#deb [signed-by=/usr/share/keyrings/nvidia-container-toolkit-keyring.gpg] https://#g' | \
sudo tee /etc/apt/sources.list.d/nvidia-container-toolkit.list
sudo apt update
sudo apt install -y nvidia-container-toolkit
sudo systemctl restart docker
Fedora
sudo dnf install docker
sudo usermod -aG docker $USER
# Then either log out/in completely, or:
newgrp docker
# 1. Add NVIDIA Container Toolkit repository
curl -s -L https://nvidia.github.io/libnvidia-container/stable/rpm/nvidia-container-toolkit.repo | \
sudo tee /etc/yum.repos.d/nvidia-container-toolkit.repo
# 2. Remove Fedora's conflicting partial package (if present)
sudo dnf remove -y golang-github-nvidia-container-toolkit 2>/dev/null || true
# 3. Install the full NVIDIA Container Toolkit
sudo dnf install -y nvidia-container-toolkit
# 4. Configure Docker to use the NVIDIA runtime as default
sudo mkdir -p /etc/docker
sudo tee /etc/docker/daemon.json > /dev/null <<EOF
{
"runtimes": {
"nvidia": {
"path": "/usr/bin/nvidia-container-runtime",
"runtimeArgs": []
}
},
"default-runtime": "nvidia"
}
EOF
# 5. Fix Fedora's broken dockerd ExecStart (required!)
sudo mkdir -p /etc/systemd/system/docker.service.d
sudo tee /etc/systemd/system/docker.service.d/override.conf >/dev/null <<EOF
[Service]
ExecStart=
ExecStart=/usr/bin/dockerd -H fd:// --containerd=/run/containerd/containerd.sock
EOF
# 6. Reload and restart Docker
sudo systemctl daemon-reload
sudo systemctl restart docker
# 7. Verify it works
docker info --format '{{.DefaultRuntime}}' # → should print: nvidia
docker run --rm --gpus all nvidia/cuda:12.0.0-base-ubuntu22.04 nvidia-smi
Build Container
docker build -f ./Dockerfile_ubuntu24 -t ubuntu24:latest .
docker build -f ./Dockerfile_fedora42 -t fedora42:latest .
Run Docker Container
Note: If running on CPU, just remove --gpus all from commands below:
docker run -v ~/src/gst-python-ml/:/root/gst-python-ml -it --rm --gpus all --name ubuntu24 ubuntu24:latest /bin/bash
or
docker run -v ~/src/gst-python-ml/:/root/gst-python-ml -it --rm --gpus all --name fedora42 fedora42:latest /bin/bash
Now, in the container shell, set up uv venv as detailed above.
IMPORTANT NOTES
Birdseye
To use pyml_birdseye, additional pip requirements must be installed from the plugins/python/birdseye folder.
Post Install
Run gst-inspect-1.0 python to list pyml elements.
Building PyPI Package
Setup
- Generate token on PyPI and copy to
.pypirc
[pypi]
username = __token__
password = $TOKEN
- Install build dependencies
pip install setuptools wheel twine
pip install --upgrade build
Build and Upoad
python -m build
twine upload dist/*
Using GStreamer Python ML Elements
Pipelines
Below are some sample pipelines for the various elements in this project.
Classification
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/people.mp4 ! decodebin ! videoconvert ! videoscale ! video/x-raw,width=640,height=480 ! pyml_classifier model-name=resnet18 device=cuda ! videoconvert ! autovideosink
Object Detection
TorchVision
pyml_objectdetector supports all TorchVision object detection models.
Simply choose a suitable model name and set it on the model-name property.
A few possible model names:
fasterrcnn_resnet50_fpn
ssdlite320_mobilenet_v3_large
fasterrcnn
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/people.mp4 ! decodebin ! videoconvert ! videoscale ! video/x-raw,width=640,height=480 ! pyml_objectdetector model-name=fasterrcnn_resnet50_fpn device=cuda batch-size=4 ! videoconvert ! pyml_overlay ! videoconvert ! autovideosink
fasterrcnn/kafka
a) run pipeline from host
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/people.mp4 ! decodebin ! videoconvert ! videoscale ! video/x-raw,width=640,height=480 ! pyml_objectdetector model-name=fasterrcnn_resnet50_fpn device=cuda batch-size=4 ! pyml_kafkasink schema-file=data/pyml_object_detector.json broker=localhost:29092 topic=test-kafkasink-topic
b) run pipeline from docker
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/people.mp4 ! decodebin ! videoconvert ! videoscale ! video/x-raw,width=640,height=480 ! pyml_objectdetector model-name=fasterrcnn_resnet50_fpn device=cuda batch-size=4 ! pyml_kafkasink schema-file=data/pyml_object_detector.json broker=kafka:9092 topic=test-kafkasink-topic
maskrcnn
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/people.mp4 ! decodebin ! videoconvert ! videoscale ! pyml_maskrcnn device=cuda batch-size=4 model-name=maskrcnn_resnet50_fpn ! videoconvert ! pyml_overlay ! videoconvert ! autovideosink
yolo with tracking
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/soccer_tracking.mp4 ! decodebin ! videoconvertscale ! video/x-raw,width=640,height=480 ! pyml_yolo model-name=yolo11m device=cuda:0 track=True ! pyml_overlay ! videoconvert ! autovideosink
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/soccer_tracking.mp4 ! decodebin ! videoconvertscale ! video/x-raw,width=640,height=480,format=RGB ! pyml_streammux name=mux filesrc location=data/soccer_tracking.mp4 ! decodebin ! videoconvertscale ! video/x-raw,width=640,height=480,format=RGB ! mux. mux. ! pyml_yolo model-name=yolo11m device=cuda:0 track=True ! pyml_streamdemux name=demux demux. ! queue ! videoconvert ! pyml_overlay ! videoconvert ! autovideosink sync=false demux. ! queue ! videoconvert ! pyml_overlay ! videoconvert ! autovideosink sync=false
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/soccer_tracking.mp4 ! decodebin ! videoconvertscale ! video/x-raw,width=640,height=480 ! demo_soccer model-name=yolo11m device=cuda:0 ! pyml_overlay ! videoconvert ! autovideosink
Transcription
transcription with initial prompt set
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/air_traffic_korean_with_english.wav ! decodebin ! audioconvert ! pyml_whispertranscribe device=cuda language=ko initial_prompt = "Air Traffic Control은, radar systems를, weather conditions에, flight paths를, communication은, unexpected weather conditions가, continuous training을, dedication과, professionalism" ! fakesink
translation to English
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/air_traffic_korean_with_english.wav ! decodebin ! audioconvert ! pyml_whispertranscribe device=cuda language=ko translate=yes ! fakesink
demucs audio separation
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/air_traffic_korean_with_english.wav ! decodebin ! audioconvert ! audioresample ! pyml_demucs device=cuda ! wavenc ! filesink location=separated_vocals.wav
coquitts
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/air_traffic_korean_with_english.wav ! decodebin ! audioconvert ! pyml_whispertranscribe device=cuda language=ko translate=yes ! pyml_coquitts device=cuda ! audioconvert ! wavenc ! filesink location=output_audio.wav
whisperspeechtts
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/air_traffic_korean_with_english.wav ! decodebin ! audioconvert ! pyml_whispertranscribe device=cuda language=ko translate=yes ! pyml_whisperspeechtts device=cuda ! audioconvert ! wavenc ! filesink location=output_audio.wav
mariantranslate
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/air_traffic_korean_with_english.wav ! decodebin ! audioconvert ! pyml_whispertranscribe device=cuda language=ko translate=yes ! pyml_mariantranslate device=cuda src=en target=fr ! fakesink
Supported src/target languages:
https://huggingface.co/models?sort=trending&search=Helsinki
whisperlive
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/air_traffic_korean_with_english.wav ! decodebin ! audioconvert ! pyml_whisperlive device=cuda language=ko translate=yes llm-model-name="microsoft/phi-2" ! audioconvert ! wavenc ! filesink location=output_audio.wav
LLM
-
generate HuggingFace token
-
huggingface-cli loginand pass in token -
LLM pipeline (in this case, we use phi-2)
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/prompt_for_llm.txt ! pyml_llm device=cuda model-name="microsoft/phi-2" ! fakesink
stablediffusion
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/prompt_for_stable_diffusion.txt ! pyml_stablediffusion device=cuda ! pngenc ! filesink location=output_image.png
Caption
caption qwen with history
(should also work with "microsoft/Phi-3.5-vision-instruct" model)
GST_DEBUG=3 gst-launch-1.0 filesrc location=data/soccer_single_camera.mp4 ! decodebin ! videoconvertscale ! video/x-raw,width=640,height=480 ! tee name=t t. ! queue ! textoverlay name=overlay wait-text=false ! videoconvert ! autovideosink t. ! queue leaky=2 max-size-buffers=1 ! videoconvertscale ! video/x-raw,width=240,height=180 ! pyml_caption_qwen device=cuda:0 prompt="In one sentence, describe what you see?" model-name="Qwen/Qwen2.5-VL-3B-Instruct-AWQ" name=cap cap.src ! fakesink async=0 sync=0 cap.text_src ! queue ! coalescehistory history-length=10 ! pyml_llm model-name="Qwen/Qwen3-0.6B" device=cuda system-prompt="You receive the history of what happened in recent times, summarize it nicely with excitement but NEVER mention the specific times. Focus on the most recent events." ! queue ! overlay.text_sink
Bird's Eye View
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/soccer_single_camera.mp4 ! decodebin ! videoconvert ! pyml_birdseye ! videoconvert ! autovideosink
GST_DEBUG=4 gst-launch-1.0 filesrc location=data/soccer_single_camera.mp4 ! decodebin ! videorate ! video/x-raw,framerate=30/1 ! videoconvert ! pyml_birdseye ! videoconvert ! openh264enc ! h264parse ! matroskamux ! filesink location=output.mkv
kafkasink
Setting up kafka network
docker network create kafka-network
and list networks
docker network ls
docker launch
To launch a docker instance with the kafka network, add --network kafka-network
to the docker launch command above.
Set up kafka and zookeeper
Note: setup below assumes you are running your pipeline in a docker container.
If running pipeline from host, then the port changes from 9092 to 29092,
and the broker changes from kafka to localhost.
docker stop kafka zookeeper
docker rm kafka zookeeper
docker run -d --name zookeeper --network kafka-network -e ZOOKEEPER_CLIENT_PORT=2181 confluentinc/cp-zookeeper:latest
docker run -d --name kafka --network kafka-network \
-e KAFKA_ZOOKEEPER_CONNECT=zookeeper:2181 \
-e KAFKA_ADVERTISED_LISTENERS=INSIDE://kafka:9092,OUTSIDE://localhost:29092 \
-e KAFKA_LISTENER_SECURITY_PROTOCOL_MAP=INSIDE:PLAINTEXT,OUTSIDE:PLAINTEXT \
-e KAFKA_LISTENERS=INSIDE://0.0.0.0:9092,OUTSIDE://0.0.0.0:29092 \
-e KAFKA_INTER_BROKER_LISTENER_NAME=INSIDE \
-e KAFKA_BROKER_ID=1 \
-e KAFKA_OFFSETS_TOPIC_REPLICATION_FACTOR=1 \
-p 9092:9092 \
-p 29092:29092 \
confluentinc/cp-kafka:latest
Create test topic
docker exec kafka kafka-topics --create --topic test-kafkasink-topic --bootstrap-server kafka:9092 --partitions 1 --replication-factor 1
list topics
docker exec -it kafka kafka-topics --list --bootstrap-server kafka:9092
delete topic
docker exec -it kafka kafka-topics --delete --topic test-topic --bootstrap-server kafka:9092
consume topic
docker exec -it kafka kafka-console-consumer --bootstrap-server kafka:9092 --topic test-kafkasink-topic --from-beginning
non ML
GST_DEBUG=4 gst-launch-1.0 videotestsrc ! video/x-raw,width=1280,height=720 ! pyml_overlay meta-path=data/sample_metadata.json tracking=true ! videoconvert ! autovideosink
streammux/streamdemux pipeline
GST_DEBUG=4 gst-launch-1.0 videotestsrc pattern=ball ! video/x-raw, width=320, height=240 ! queue ! pyml_streammux name=mux videotestsrc pattern=smpte ! video/x-raw, width=320, height=240 ! queue ! mux.sink_1 videotestsrc pattern=smpte ! video/x-raw, width=320, height=240 ! queue ! mux.sink_2 mux.src ! queue ! pyml_streamdemux name=demux demux.src_0 ! queue ! glimagesink demux.src_1 ! queue ! glimagesink demux.src_2 ! queue ! glimagesink
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