tensorflowjs: The Python Package for TensorFlow.js
The tensorflowjs pip package contains libraries and tools for
TensorFlow.js.
Use following command to install the library with support of interactive CLI:
pip install tensorflowjs[wizard]
Then, run the following to see a list of CLI options
tensorflowjs_converter --help
or, use the wizard
tensorflowjs_wizard
Alternatively, run the converter via its Bazel target. This must be run from withing the tfjs repo:
yarn bazel run //tfjs-converter/python/tensorflowjs/converters:converter -- --help
Development
The python tests are run with Bazel.
yarn bazel test //tfjs-converter/python/...
Alternatively, run yarn run-python-tests
to run the above command.
To debug a specific test case, use the --test_filter
option. For example,
yarn bazel test //tfjs-converter/python/tensorflowjs/converters:tf_saved_model_conversion_v2_test --test_filter=ConvertTest.test_convert_saved_model_v1
Interactive debugging with breakpoints is supported by debugpy
in VSCode.
To enable debugging, put this code at the top of the test file you want to
debug.
import debugpy
debugpy.listen(('localhost', 5724))
print("Waiting for debugger to connect. See tfjs-converter python README")
debugpy.wait_for_client()
You may also need to add the following dependency to the test target in the
Bazel BUILD
file if it's not already present.
"//tfjs-converter/python/tensorflowjs:expect_debugpy_installed"
Then, run the test with bazel run --config=debugpy
and connect
the VSCode debugger by selecting the Python: Attach (Converter)
option.