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Commit 9da44850 authored by Neal Wu's avatar Neal Wu
Browse files

Fixes to inception README

parent f778fe93
......@@ -37,13 +37,12 @@ The code base provides three core binaries for:
errors to fine tune the network weights.
The training procedure employs synchronous stochastic gradient descent across
multiple GPUs. The user may specify the number of GPUs they wish harness. The
multiple GPUs. The user may specify the number of GPUs they wish to harness. The
synchronous training performs *batch-splitting* by dividing a given batch across
multiple GPUs.
The training set up is nearly identical to the section [Training a Model Using
Multiple GPU Cards]
(https://www.tensorflow.org/tutorials/deep_cnn/index.html#training-a-model-using-multiple-gpu-cards)
Multiple GPU Cards](https://www.tensorflow.org/tutorials/deep_cnn/index.html#launching_and_training_the_model_on_multiple_gpu_cards)
where we have substituted the CIFAR-10 model architecture with Inception v3. The
primary differences with that setup are:
......@@ -52,8 +51,7 @@ primary differences with that setup are:
* Specify the model architecture using a (still experimental) higher level
language called TensorFlow-Slim.
For more details about TensorFlow-Slim, please see the [Slim README]
(inception/slim/README.md). Please note that this higher-level language is still
For more details about TensorFlow-Slim, please see the [Slim README](inception/slim/README.md). Please note that this higher-level language is still
*experimental* and the API may change over time depending on usage and
subsequent research.
......@@ -71,8 +69,7 @@ downloading and converting ImageNet data to TFRecord format. Downloading and
preprocessing the data may take several hours (up to half a day) depending on
your network and computer speed. Please be patient.
To begin, you will need to sign up for an account with [ImageNet]
(http://image-net.org) to gain access to the data. Look for the sign up page,
To begin, you will need to sign up for an account with [ImageNet](http://image-net.org) to gain access to the data. Look for the sign up page,
create an account and request an access key to download the data.
After you have `USERNAME` and `PASSWORD`, you are ready to run our script. Make
......@@ -101,9 +98,9 @@ The final line of the output script should read:
2016-02-17 14:30:17.287989: Finished writing all 1281167 images in data set.
```
When the script finishes you will find 1024 and 128 training and validation
files in the `DATA_DIR`. The files will match the patterns `train-????-of-1024`
and `validation-?????-of-00128`, respectively.
When the script finishes, you will find 1024 training files and 128 validation
files in the `DATA_DIR`. The files will match the patterns
`train-?????-of-01024` and `validation-?????-of-00128`, respectively.
[Congratulations!](https://www.youtube.com/watch?v=9bZkp7q19f0) You are now
ready to train or evaluate with the ImageNet data set.
......
......@@ -26,7 +26,7 @@
# data_dir/train-00000-of-01024
# data_dir/train-00001-of-01024
# ...
# data_dir/train-00127-of-01024
# data_dir/train-01023-of-01024
#
# and
#
......
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