# Use parameters pre-trained from Caffe in SINGA In this example, we use SINGA to load the VGG parameters trained by Caffe to do image classification. ## Run this example You can run this example by simply executing `run.sh vgg16` or `run.sh vgg19` The script does the following work. ### Obtain the Caffe model * Download caffe model prototxt and parameter binary file. * Currently we only support the latest caffe format, if your model is in previous version of caffe, please update it to current format.(This is supported by caffe) * After updating, we can obtain two files, i.e., the prototxt and parameter binary file. ### Prepare test images A few sample images are downloaded into the `test` folder. ### Predict The `predict.py` script creates the VGG model and read the parameters, usage: predict.py [-h] model_txt model_bin imgclass where `imgclass` refers to the synsets of imagenet dataset for vgg models. You can start the prediction program by executing the following command: python predict.py vgg16.prototxt vgg16.caffemodel synset_words.txt Then you type in the image path, and the program would output the top-5 labels. More Caffe models would be tested soon.