- Deep Learning with Microsoft Cognitive Toolkit Quick Start Guide
- Willem Meints
- 122字
- 2021-07-02 12:08:38
Using your GPU with CNTK
We looked at how to install the basic version of CNTK for use with your CPU. While the CNTK package is fast, it will run quicker on a GPU. But not all machines support this setup, and that's why I put the description of how to use your GPU into a separate section.
Before you attempt to install CNTK for use with a GPU, make sure you have a supported graphics card. Currently, CNTK supports the NVIDIA graphics card with at least CUDA 3.0 support. CUDA is the programming API from NVIDIA that allows developers to run non-graphical programs on their graphics cards. You can check whether your graphics card supports CUDA on this website: https://developer.nvidia.com/cuda-gpus.
推薦閱讀
- 數據存儲架構與技術
- Building Computer Vision Projects with OpenCV 4 and C++
- 數據庫應用實戰
- 復雜性思考:復雜性科學和計算模型(原書第2版)
- Mastering Ninject for Dependency Injection
- 使用GitOps實現Kubernetes的持續部署:模式、流程及工具
- 計算機信息技術基礎實驗與習題
- Voice Application Development for Android
- Learn Unity ML-Agents:Fundamentals of Unity Machine Learning
- 中國數字流域
- “互聯網+”時代立體化計算機組
- 大數據技術入門
- 數據科學工程實踐:用戶行為分析與建模、A/B實驗、SQLFlow
- 跨領域信息交換方法與技術(第二版)
- 新手學會計(2013-2014實戰升級版)