You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
Below are detailed issues about batch() should be called before map():
tensorflow_dl_models/official/wide_deep/wide_deep.py: dataset = dataset.batch(batch_size)(here) should be called before dataset = dataset.map(parse_csv, num_parallel_calls=5)(here).
tensorflow_dl_models/samples/outreach/blogs/blog_estimators_dataset.py: dataset = dataset.batch(32)(here) should be called before dataset = (tf.data.TextLineDataset(file_path).skip(1).map(decode_csv))(here).
tensorflow_dl_models/samples/outreach/blogs/blog_custom_estimators.py: .batch(32)(here) should be called before .map(decode_csv, num_parallel_calls=4)(here).
tensorflow_dl_models/samples/core/get_started/iris_data.py: dataset = dataset.shuffle(1000).repeat().batch(batch_size)(here) should be called before dataset = dataset.map(_parse_line)(here).
Besides, you need to check the function called in map()(e.g., _parse_line called in dataset = dataset.map(_parse_line)) whether to be affected or not to make the changed code work properly. For example, if _parse_line needs data with shape (x, y, z) as its input before fix, it would require data with shape (batch_size, x, y, z).
Below are detailed issues about tf.Session being defined repeatedly:
tensorflow_dl_models/tutorials/image/cifar10/cifar10_eval.py: with tf.Session() as sess:(here) is defined in function eval_once(here) which is repeatedly called in a loop while True:(here).
tensorflow_dl_models/research/object_detection/eval_util.py: sess = tf.Session(master, graph=tf.get_default_graph())(here) is defined in function _run_checkpoint_once(here) which is repeatedly called in a loop while True:(here).
tensorflow_dl_models/research/im2txt/im2txt/evaluate.py: with tf.Session() as sess:(here) is defined in function run_once(here) which is repeatedly called in a loop while True:(here).
tensorflow_dl_models/research/capsules/experiment.py: session = tf.Session(config=tf.ConfigProto(allow_soft_placement=True))(here) is defined in function run_experiment(here) which is repeatedly called in a loop while paused < 360:(here).
tensorflow_dl_models/research/street/python/vgsl_model.py: sess = tf.Session('')(here) is defined in a loop while True:(here).
tensorflow_dl_models/research/skip_thoughts/skip_thoughts/track_perplexity.py: with tf.Session() as sess:(here) is defined in function run_once(here) which is repeatedly called in a loop while True:(here).
tensorflow_dl_models/research/inception/inception/inception_eval.py: with tf.Session() as sess:(here) is defined in function _eval_once(here) which is repeatedly called in a loop while True:(here).
tensorflow_dl_models/research/slim/datasets/download_and_convert_cifar10.py: with tf.Session('') as sess:(here) is defined in function _add_to_tfrecord(here) which is repeatedly called in a loop for i in range(_NUM_TRAIN_FILES):(here).
deep-learning/GANs and Variational Autoencoders/BigGAN-PyTorch/scripts/tfhub/converter.py: sess = tf.Session()(here) is defined in function dump_tfhub_to_hdf5(here) and dump_tfhub_to_hdf5 is called in function convert_biggan(here) which is repeatedly called in a loop for res in RESOLUTIONS:(here).
deep-learning/udacity-deeplearning/weight-initialization/helper.py: with tf.Session() as session:(here) is defined in function _get_loss_acc(here) which is repeatedly called in a loop for i, (weights, label) in enumerate(weight_init_list):(here).
If you define tf.Session out of the loop and pass tf.Session as a parameter to the loop, your program would be much more efficient.
Looking forward to your reply. Btw, I am very glad to create a PR to fix it if you are too busy.
The text was updated successfully, but these errors were encountered:
Hello! I've found two types of performance issues in your program:
batch()
should be called beforemap()
.tf.Session
being defined repeatedly leads to incremental overhead.You can make your program more efficient by fixing the above two problems. Here are the tensorflow document and the Stack Overflow post to support this.
Below are detailed issues about
batch()
should be called beforemap()
:dataset = dataset.batch(batch_size)
(here) should be called beforedataset = dataset.map(parse_csv, num_parallel_calls=5)
(here).dataset = dataset.batch(32)
(here) should be called beforedataset = (tf.data.TextLineDataset(file_path).skip(1).map(decode_csv))
(here)..batch(32)
(here) should be called before.map(decode_csv, num_parallel_calls=4)
(here).dataset = dataset.shuffle(1000).repeat().batch(batch_size)
(here) should be called beforedataset = dataset.map(_parse_line)
(here).Besides, you need to check the function called in
map()
(e.g.,_parse_line
called indataset = dataset.map(_parse_line)
) whether to be affected or not to make the changed code work properly. For example, if_parse_line
needs data with shape (x, y, z) as its input before fix, it would require data with shape (batch_size, x, y, z).Below are detailed issues about
tf.Session
being defined repeatedly:with tf.Session() as sess:
(here) is defined in functioneval_once
(here) which is repeatedly called in a loopwhile True:
(here).sess = tf.Session(master, graph=tf.get_default_graph())
(here) is defined in function_run_checkpoint_once
(here) which is repeatedly called in a loopwhile True:
(here).with tf.Session() as sess:
(here) is defined in functionrun_once
(here) which is repeatedly called in a loopwhile True:
(here).session = tf.Session(config=tf.ConfigProto(allow_soft_placement=True))
(here) is defined in functionrun_experiment
(here) which is repeatedly called in a loopwhile paused < 360:
(here).sess = tf.Session('')
(here) is defined in a loopwhile True:
(here).with tf.Session() as sess:
(here) is defined in functionrun_once
(here) which is repeatedly called in a loopwhile True:
(here).with tf.Session() as sess:
(here) is defined in function_eval_once
(here) which is repeatedly called in a loopwhile True:
(here).with tf.Session('') as sess:
(here) is defined in function_add_to_tfrecord
(here) which is repeatedly called in a loopfor i in range(_NUM_TRAIN_FILES):
(here).sess = tf.Session()
(here) is defined in functiondump_tfhub_to_hdf5
(here) anddump_tfhub_to_hdf5
is called in functionconvert_biggan
(here) which is repeatedly called in a loopfor res in RESOLUTIONS:
(here).with tf.Session() as session:
(here) is defined in function_get_loss_acc
(here) which is repeatedly called in a loopfor i, (weights, label) in enumerate(weight_init_list):
(here).If you define
tf.Session
out of the loop and passtf.Session
as a parameter to the loop, your program would be much more efficient.Looking forward to your reply. Btw, I am very glad to create a PR to fix it if you are too busy.
The text was updated successfully, but these errors were encountered: