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This repository has been archived by the owner on Sep 30, 2024. It is now read-only.
This looks like a Python 2 / Python 3 discrepancy but theoretically "".format() works in Pyhon 2.7. i do not have an immediate answer. I will have to test under Python 2.7.6.
Hi Martin
I study many script and code in tensorflow and python. It is obvious in all of them they use tf.reduce _mean() function after tf.nn.softmax_cross_entropy_with_logits to make loss but you don't, my question is Why????????
@mahmood431226 it is because on a mini-batch of input images, you get one loss per image. The loss is supposed to be a single scalar though so you average them.
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When run rnn_train.py, I got the following error:
Traceback (most recent call last):
File "/tensorflow-rnn-shakespeare/rnn_train.py", line 148, in
txt.print_learning_learned_comparison(x, y, l, bookranges, bl, acc, epoch_size, step, epoch)
File "/tensorflow-rnn-shakespeare/my_txtutils.py", line 180, in print_learning_learned_comparison
footer = format_string.format('INDEX', 'BOOK NAME', 'TRAINING SEQUENCE', 'PREDICTED SEQUENCE', 'LOSS')
ValueError: Invalid conversion specification
I use Python 2.7.6 and tensorflow 1.1.0 on Ubuntu 14.04. How can I fix this? Any reply will be very much appreciated.
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