同步操作将从 极客时间/TensorFlow-Course 强制同步,此操作会覆盖自 Fork 仓库以来所做的任何修改,且无法恢复!!!
确定后同步将在后台操作,完成时将刷新页面,请耐心等待。
This document is dedicated to explain how to run the python script for this tutorial.
WARNING:
If TensorFlow is installed in any environment(virtual environment, ...), it must be activated at first. So at first make sure the tensorFlow is available in the current environment using the following script:
cd code/
python TensorFlow_Test.py
Please root to the code/
directory and run the python script as the general form of below:
python [python_code_file.py] --log_dir='absolute/path/to/log_dir'
As an example the code can be executed as follows:
python 1-welcome.py --log_dir='~/log_dir'
The --log_dir
flag is to provide the address which the event files (for visualizing in Tensorboard) will be saved. The flag of --log_dir
is not required because its default value is available in the source code as follows:
tf.app.flags.DEFINE_string(
'log_dir', os.path.dirname(os.path.abspath(__file__)) + '/logs',
'Directory where event logs are written to.')
Since the code is ready-to-go, as long as the TensorFlow can be called in the IDE editor(Pycharm, Spyder,..), the code can be executed successfully.
TensorBoard is the graph visualization tools provided by TensorFlow. Using Google’s words: “The computations you'll use TensorFlow for - like training a massive deep neural network - can be complex and confusing. To make it easier to understand, debug, and optimize TensorFlow programs, we've included a suite of visualization tools called TensorBoard.”
The Tensorboard can be run as follows in the terminal:
tensorboard --logdir="absolute/path/to/log_dir"
此处可能存在不合适展示的内容,页面不予展示。您可通过相关编辑功能自查并修改。
如您确认内容无涉及 不当用语 / 纯广告导流 / 暴力 / 低俗色情 / 侵权 / 盗版 / 虚假 / 无价值内容或违法国家有关法律法规的内容,可点击提交进行申诉,我们将尽快为您处理。