A real-time web interface for monitoring NVIDIA GPUs.
pip install gpus
gpus start
- Real-time monitoring of NVIDIA GPU statistics
- Clean, modern, responsive web interface
- Historical utilization graphs
- Process monitoring
- Command-line interface
- Background server mode
- Python 3.6+
- NVIDIA GPU with installed drivers
- NVIDIA Management Library (NVML)
pip install gpus
# Start the web interface in the foreground (default port 5000)
gpus
# Specify a different port
gpus --port 8080
# or with the short option
gpus -P 8080
# Specify update interval (in seconds)
gpus --update-interval 2.0
# or with the short option
gpus -U 2.0
# Specify history length (in seconds)
gpus --history-length 600
# or with the short option
gpus -L 600
# Specify history resolution (in seconds)
gpus --history-resolution 1.0
# or with the short option
gpus -R 1.0
Then open your web browser and navigate to http://localhost:5000
(or the port you specified).
You can run the server in the background and manage it with subcommands:
# Start the server in the background
gpus start
# Check if the server is running
gpus status
# Stop the background server
gpus stop
The background server uses the same command-line options as the foreground server:
# Start the background server on a specific port
gpus -P 8080 start
from gpus.app import GPUMonitorApp
# Create the application
app = GPUMonitorApp(
update_interval=2.0,
history_length=300,
history_resolution=1.0
)
# Run the application
app.run(host='0.0.0.0', port=5000)
GPUs Cloud is a free cloud service that allows you to easily manage your GPUs on-the-go. Remotely monitor your GPUs from anywhere & get notified when your training runs fail (coming soon).
Warning
GPUs Cloud is currently in a limited beta stage. If you want early access (highly unstable), please DM me on X for an invite code. Expect some bugs, limited features, and high downtime.
Sign up for a free account (using Hugging Face login) on the GPUs Cloud website. Enter your invite code and add a device. Then run the following command to login:
gpus cloud login
To start sending GPU metrics to the cloud (in the background), run the following command:
gpus cloud start
To stop sending GPU metrics to the cloud, run the following command:
gpus cloud stop
To check the status of the cloud client, run the following command:
gpus cloud status
To send metrics to the cloud (in the foreground), run the following command:
gpus cloud
To logout of the cloud, run the following command:
gpus cloud logout
# Clone the repository
git clone https://github.com/fakerybakery/gpus
cd gpus
# Create a virtual environment
python -m venv venv
source venv/bin/activate # On Windows: venv\Scripts\activate
# Install in development mode
pip install -e .
If you encounter issues, please check the logs in the ~/.gpus
directory. If the problem persists, please create an issue on GitHub.
Note that GPUs has not been tested on Windows. Use at your own risk.
BSD-3-Clause