MXBoard provides a set of APIs for logging
MXNet data for visualization in
TensorBoard.
The idea of this project comes from discussions with Zihao Zheng,
the author of
dmlc/tensorboard,
on delivering a visualization solution for MXNet users.
We aim at providing the logging APIs that can process MXNet data efficiently
and supporting most of the data types for visualization in the TensorBoard GUI.
We adapted the following low-level logging components from their Python and C++
implementations in TensorFlow: FileWriter
, EventFileWriter
,
EventsWriter
, RecordWriter
,
and _EventLoggerThread
. We also adapted the user-level logging APIs defined in SummaryWriter
from
tensorboard-pytorch.
The encoding algorithm used in writing protobuf objects into event files
is directly borrowed from
TeamHG-Memex/tensorboard_logger.
MXBoard supports a set of Python APIs for logging the following data types for TensorBoard to render. Logging APIs for other languages may be added in the future.
The corresponding Python APIs are accessible through a class called SummaryWriter
as follows:
mxboard.SummaryWriter.add_graph
mxboard.SummaryWriter.add_scalar
mxboard.SummaryWriter.add_histogram
mxboard.SummaryWriter.add_embedding
mxboard.SummaryWriter.add_image
mxboard.SummaryWriter.add_text
mxboard.SummaryWriter.add_pr_curve
mxboard.SummaryWriter.add_audio
pip install mxboard
git clone https://github.com/awslabs/mxboard.git
cd mxboard/python
python setup.py install
MXBoard is a logger for writing MXNet data to event files. To visualize those data in browsers, users still have to install TensorBoard separately.
pip install tensorboard
Use the following to verify that the TensorBoard binary has been installed correctly.
tensorboard --help
MXBoard relies on the following packages for data logging.
Please note that you need to install MXNet manually before using MXBoard. The other packages will be installed automatically when you install MXBoard via pip or building from source. If you want to build from source, please make sure that protobuf compiler is installed. Check this page for downloading the protobuf compiler whose file name starts with "protoc".
Now that you have installed all of the required packages, let's walk through a simple visualization example. You will see how
MXBoard enables visualizing MXNet NDArray
s with histograms.
Step 1. Logging event data to a file.
Prepare a Python script for writing data generated by the normal
operator to an event file.
The data is generated ten times with decreasing standard deviation and written to the event
file each time. It's expected to see the data distribution gradually become more centered around
the mean value. Note that here we specify creating the event file in the folder logs
under the current directory. We will need to pass this folder path to the TensorBoard binary.
import mxnet as mx
from mxboard import SummaryWriter
with SummaryWriter(logdir='./logs') as sw:
for i in range(10):
# create a normal distribution with fixed mean and decreasing std
data = mx.nd.normal(loc=0, scale=10.0/(i+1), shape=(10, 3, 8, 8))
sw.add_histogram(tag='norml_dist', values=data, bins=200, global_step=i)
Step 2. Launch TensorBoard to load the event file generated above.
Use the following command to start the TensorBoard server. It will use the logs that were generated in the current directory's logs
folder.
tensorboard --logdir=./logs --host=127.0.0.1 --port=8888
Note that in some situations,
the port number 8888
may be occupied by other applications and launching TensorBoard
may fail. You may choose a different available port number.
Step 3. Open TensorBoard in your browser.
In the browser, enter the address 127.0.0.1:8888
, and click the tab HISTOGRAMS
in the TensorBoard GUI. You will see data distribution changing as time progresses.
- Quick start for logging data of various types
- Monitoring training an MNIST model with MXBoard
- Visualizing filters of ConvNets
- Visualizing ConvNet codes as embeddings
- https://github.com/TeamHG-Memex/tensorboard_logger
- https://github.com/lanpa/tensorboard-pytorch
- https://github.com/dmlc/tensorboard
- https://github.com/tensorflow/tensorflow
- https://github.com/tensorflow/tensorboard
This library is licensed under the Apache 2.0 License.