saver = tf.train.import_meta_graph("{}.meta".format(checkpoint_file)) saver.restore(sess, checkpoint_file) # Get the placeholders from the graph by name input_x = graph.get_operation_by_name("input_x").outputs[0] # input_y = graph.get_operation_by_name("input_y").outputs[0] dropout_keep_prob = graph.get_operation_by_name( "dropout_keep_prob").outputs[0] # Tensors we want to evaluate predictions = graph.get_operation_by_name( "output/predictions").outputs[0] # Generate batches for one epoch batches = df.batch_iter(list(x_test), FLAGS.batch_size, 1, shuffle=False) # Collect the predictions here all_predictions = [] for x_test_batch in batches: batch_predictions = sess.run(predictions, { input_x: x_test_batch, dropout_keep_prob: 1.0 }) all_predictions = np.concatenate( [all_predictions, batch_predictions]) # Print accuracy if y_test is defined if y_test is not None:
feed_dict = { cnn.input_x: x_batch, cnn.input_y: y_batch, cnn.dropout_keep_prob: 1.0 } step, summaries, loss, accuracy = sess.run( [global_step, dev_summary_op, cnn.loss, cnn.accuracy], feed_dict) time_str = datetime.datetime.now().isoformat() print("{}: step {}, loss {:g}, acc {:g}".format( time_str, step, loss, accuracy)) if writer: writer.add_summary(summaries, step) # Generate batches batches = data_function.batch_iter(list(zip(x_train, y_train)), FLAGS.batch_size, FLAGS.num_epochs) # Training loop. For each batch... for batch in batches: x_batch, y_batch = zip(*batch) train_step(x_batch, y_batch) current_step = tf.train.global_step(sess, global_step) if current_step % FLAGS.evaluate_every == 0: print("\nEvaluation:") dev_step(x_dev, y_dev, writer=dev_summary_writer) print("") if current_step % FLAGS.checkpoint_every == 0: path = saver.save(sess, checkpoint_prefix, global_step=current_step) print("Saved model checkpoint to {}\n".format(path)) if current_step == 10000: