How to evaluate a quantized graph that has a placeholder op on a tfrecord?
What I have: A quantized graph, in PB format, that has a placeholder op for feeding batch of images. Imagenet data in tfrecord format. What I want to do: Evaluate the quantized graph on Imagenet validation set in tfrecord format. The point is: After import the quantized graph, it seems we can not modify it any more (like inserting a tfrecord reader). with tf.Graph().as_default() as graph: tf.import_graph_def(graph_def)
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