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@jnschaeffer
Created February 27, 2018 02:55
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Caffe OpenCL failing test
"""This script is made from pieces of the example in examples/00-classification.ipynb"""
import caffe
import os
import numpy as np
# This should be run from the caffe distribution root.
caffe_root = './'
model_def = caffe_root + 'models/bvlc_reference_caffenet/deploy.prototxt'
model_weights = caffe_root + 'models/bvlc_reference_caffenet/bvlc_reference_caffenet.caffemodel'
net = caffe.Net(model_def, # defines the structure of the model
model_weights, # contains the trained weights
caffe.TEST) # use test mode (e.g., don't perform dropout)
# load the mean ImageNet image (as distributed with Caffe) for subtraction
mu = np.load(caffe_root + 'python/caffe/imagenet/ilsvrc_2012_mean.npy')
mu = mu.mean(1).mean(1) # average over pixels to obtain the mean (BGR) pixel values
print 'mean-subtracted values:', zip('BGR', mu)
# create transformer for the input called 'data'
transformer = caffe.io.Transformer({'data': net.blobs['data'].data.shape})
transformer.set_transpose('data', (2,0,1)) # move image channels to outermost dimension
transformer.set_mean('data', mu) # subtract the dataset-mean value in each channel
transformer.set_raw_scale('data', 255) # rescale from [0, 1] to [0, 255]
transformer.set_channel_swap('data', (2,1,0)) # swap channels from RGB to BGR
# set the size of the input (we can skip this if we're happy
# with the default; we can also change it later, e.g., for different batch sizes)
net.blobs['data'].reshape(1, # batch size
3, # 3-channel (BGR) images
227, 227) # image size is 227x227
image = caffe.io.load_image(caffe_root + 'examples/images/cat.jpg')
transformed_image = transformer.preprocess('data', image)
# copy the image data into the memory allocated for the net
net.blobs['data'].data[...] = transformed_image
caffe.set_device(0)
caffe.set_mode_gpu()
### perform classification
# Crashes here with message:
# ViennaCL: FATAL ERROR: Kernel start failed for 'fill_float'.
# ViennaCL: Smaller work sizes could not solve the problem.
# Crashes with a different kernel failure elswhere in the example.
output = net.forward()
output_prob = output['prob'][0] # the output probability vector for the first image in the batch
print 'predicted class is:', output_prob.argmax()
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