tbparse0.0.9
Published
Load tensorboard event logs as pandas DataFrames; Read, parse, and plot tensorboard event logs with ease!
pip install tbparse
Package Downloads
Authors
Project URLs
Requires Python
>=3.8
Dependencies
- pandas
>=1.3.0
- tensorboard
>=2.12.0
- pytest
; extra == "testing"
- mypy
; extra == "testing"
- flake8
; extra == "testing"
- pylint
; extra == "testing"
- sphinx
; extra == "testing"
- sphinx-rtd-theme
; extra == "testing"
- torch
; extra == "testing"
- tensorboardX
==2.6; extra == "testing"
- seaborn
; extra == "testing"
- soundfile
; extra == "testing"
- pytest-cov
; extra == "testing"
- sphinx-tabs
; extra == "testing"
- nbsphinx
; extra == "testing"
tbparse
A simple yet powerful tensorboard event log parser/reader.
- Supports parsing tensorboard event scalars, tensors, histograms, images, audio, hparams, and text.
- Supports event generated by PyTorch, Tensorboard/Keras, and TensorboardX, with their respective usage examples documented in detail.
- Allows parsing multiple tensorboard event files in a hierarchical directory structure.
- Provides plotting examples for each type of events.
- Stores the data in pandas.DataFrame to allow advanced filtering.
- Both the documentation and code have high test coverage rate.
- Follows PEP 484 with full type hints.
Installation:
pip install -U tbparse # requires Python >= 3.8
We suggest using an additional virtual environment for parsing and plotting the tensorboard events. So no worries if your training code uses Python 3.6 or older versions.
Reading one or more event files with tbparse only requires 5 lines of code:
from tbparse import SummaryReader
log_dir = "<PATH_TO_EVENT_FILE_OR_DIRECTORY>"
reader = SummaryReader(log_dir)
df = reader.scalars
print(df)
If you want an additional column with directory names (i.e., run names), change line 3 above to the following:
reader = SummaryReader(log_dir, extra_columns={'dir_name'})
For further information, start from the page: Parsing Scalars.
Gallery
Event Type | Tensorboard Dashboard | tbparse |
---|---|---|
Scalars | ||
Tensors | ||
Histograms | ||
Images | ||
Audio | ||
HParams | ||
Text |
All events above are generated and plotted in gallery-pytorch.ipynb.
Installation
pip install tensorflow # optional, only required if you want to parse images and audio
pip install -U tbparse # requires Python >= 3.8
Note: For details on when TensorFlow is required, see Installing without TensorFlow.
Testing the Source Code
Test source code:
python3 -m pip install tox
python3 -m tox
Test and build documentation:
cd docs
make clean
# sphinx-tabs seems to require html be built before doctest
make html
make doctest
Generate test coverage:
python3 -m pip install pandas tensorflow torch tensorboardX pytest pytest-cov
python3 -m pytest --cov=./ --cov-report html
License
tbparse is distributed under the Apache License 2.0.
The tbparse PyPI package depends on (imports) the following third-party package. Each third-party software package is provided under its own license:
- pandas is distributed under the BSD-3-Clause License
- tensorboard is distributed under the Apache License 2.0