字幕列表 影片播放 列印英文字幕 If you need a library for a machine vision or a forecasting application, then Caffe might be a good choice. This library lets you build your own deep nets with a sophisticated set of layer configuration options. You can even access premade nets that were uploaded to a community website. Let’s take a look. The Caffe Deep Learning Library was created by Google’s Yangqing Jia, who won an ImageNet Challenge in 2014. Caffe was originally designed for machine vision tasks, so it’s well-suited for convolutional nets. However, recent versions of the library provide support for speech and text, reinforcement learning, and recurrent nets for sequence processing. Since the library is written in C++ with CUDA, applications can easily switch between a CPU and a GPU as needed. Matlab and Python interfaces are also available for Caffe. With Caffe, you can build a deep net by configuring its hyper-parameters. In fact, the layer configuration options are very sophisticated. You can create a net with many different types of layers, such as a vision layer, a loss layer, an activation layer, and a few others. So each layer can perform a different function or take on a different role. This flexibility allows you to develop extremely complex deep nets for your application. Caffe is supported by a large community where users can contribute their own deep net to a repository known as the “Model Zoo”. AlexNet and GoogleNet are two popular user-made nets available to the community. There are also a few educational resources like demos and slides, so if you’re going to use Caffe, it’s a great place to start. Caffe vectorizes input data through a special data representation called a “blob”. A “blob” is a type of array that speeds up data analysis and provides synchronization capabilities between a CPU and a GPU. Have you ever used the Caffe library in one of your own Deep Net projects? Please comment and share your experiences.
B1 中級 美國腔 Caffe - Ep.20 (Deep Learning SIMPLIFIED) (Caffe - Ep. 20 (Deep Learning SIMPLIFIED)) 217 23 alex 發佈於 2021 年 01 月 14 日 更多分享 分享 收藏 回報 影片單字