v0.16.0
Release Highlights
CV-CUDA v0.16.0 includes the following changes:
- New Features and Enhancements:
- Added support for Python 3.14, CUDA 13, GCC-12 to GCC-14 and Blackwell GPU architecture, including Jetson Thor
- Improved documentation, samples and framework interoperability examples
- Added new multi-architecture (x86_64, aarch64) Docker images for building (ManyLinux-based) and developing CV-CUDA (Ubuntu-based)
- Improved Python wheels generation and packaging
- Bug Fixes:
- Fixed Coverity security findings
- Deprecated Features:
- Dropped official support for CUDA 11
- Dropped official support for CUDA Compute Capability SM7 (Volta architecture)
- Dropped official support for Ubuntu 20.04
- Dropped official support for Python 3.8
Compatibility and Known Limitations
For the full list, see main README on CV-CUDA GitHub.
License
CV-CUDA is licensed under the Apache 2.0 license.
Resources
- CV-CUDA GitHub
- Optimizing Microsoft Bing Visual Search with NVIDIA Accelerated Libraries
- Accelerating AI Pipelines: Boosting Visual Search Efficiency
- Optimize Short-Form Video Processing Toward the Speed of Light
- CV-CUDA Increasing Throughput and Reducing Costs for AI-Based Computer Vision with CV-CUDA
- NVIDIA Announces Microsoft, Tencent, Baidu Adopting CV-CUDA for Computer Vision AI
- CV-CUDA helps Tencent Cloud audio and video PaaS platform achieve full-process GPU acceleration for video enhancement AI
Acknowledgements
CV-CUDA originated as a collaborative effort between NVIDIA and the ByteDance Machine Learning team.