Files
generic-docker-images/README.md
Your Name 275b7bccfb
All checks were successful
Gitea Actions Demo / Build (push) Successful in 21m21s
Add accelerated_base Docker image with Intel QuickSync and NVIDIA CUDA support
- Ubuntu 22.04 base with Python 3.11
- Intel Media Driver and VAAPI for QuickSync hardware acceleration
- NVIDIA CUDA support via container toolkit
- FFmpeg with hardware codec support
- OpenCV, PyTorch, and common ML/CV packages
- Non-root user setup for security
- Provides comprehensive base for ML/CV applications with hardware acceleration
2025-09-21 14:42:21 +12:00

1.7 KiB

Generic Docker Images

This repository contains reusable Docker base images for various purposes.

Available Images

debian-curl

Debian with curl installed.

accelerated_base

A comprehensive base image with hardware acceleration support for ML/CV applications.

Features:

  • Ubuntu 22.04 LTS base
  • Python 3.11 with pip
  • Intel QuickSync / VAAPI support for hardware video acceleration
  • NVIDIA CUDA support (when NVIDIA Container Toolkit is available)
  • FFmpeg with hardware acceleration codecs
  • OpenCV with Python bindings
  • PyTorch (CPU by default, GPU when NVIDIA runtime is available)
  • Common ML/CV Python packages (numpy, scipy, pandas, matplotlib, etc.)
  • Video and image codec libraries
  • Non-root user setup for security

Usage:

FROM gitea.jde.nz/public/accelerated_base:latest

# Your application-specific setup
COPY your_app.py /app/
CMD ["python", "/app/your_app.py"]

Hardware Acceleration:

  • Intel QuickSync: Automatically available when /dev/dri is mounted
  • NVIDIA GPU: Automatically available when using --runtime=nvidia or --gpus all

Environment Variables:

  • LIBVA_DRIVER_NAME=iHD - Intel Media Driver for VAAPI
  • FFMPEG_HWACCEL_PRIORITY="vaapi,cuda,auto" - Hardware acceleration preference
  • NVIDIA_VISIBLE_DEVICES=all - NVIDIA GPU visibility
  • NVIDIA_DRIVER_CAPABILITIES=compute,utility,video - NVIDIA capabilities

Size: ~2.5GB (includes Python, ML libraries, and video codecs)

Building

Images are automatically built and published when pushed to this repository.

Registry

Images are available at:

  • gitea.jde.nz/public/<image_name>:latest
  • gitea.jde.nz/public/<image_name>:latest-<arch> (architecture-specific)