133 lines
4.4 KiB
Python
133 lines
4.4 KiB
Python
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# Copyright 2019 The TensorFlow Authors. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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# ==============================================================================
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"""Public APIs for the HParams plugin.
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This module supports a spectrum of use cases, depending on how much
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structure you want. In the simplest case, you can simply collect your
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hparams into a dict, and use a Keras callback to record them:
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>>> from tensorboard.plugins.hparams import api as hp
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>>> hparams = {
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... "optimizer": "adam",
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... "fc_dropout": 0.2,
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... "neurons": 128,
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... # ...
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... }
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>>>
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>>> model = model_fn(hparams)
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>>> callbacks = [
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>>> tf.keras.callbacks.TensorBoard(logdir),
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>>> hp.KerasCallback(logdir, hparams),
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>>> ]
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>>> model.fit(..., callbacks=callbacks)
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The Keras callback requires that TensorFlow eager execution be enabled.
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If not using Keras, use the `hparams` function to write the values
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directly:
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>>> # In eager mode:
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>>> with tf.create_file_writer(logdir).as_default():
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... hp.hparams(hparams)
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>>>
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>>> # In legacy graph mode:
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>>> with tf.compat.v2.create_file_writer(logdir).as_default() as w:
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... sess.run(w.init())
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... sess.run(hp.hparams(hparams))
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... sess.run(w.flush())
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To control how hyperparameters and metrics appear in the TensorBoard UI,
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you can define `HParam` and `Metric` objects, and write an experiment
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summary to the top-level log directory:
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>>> HP_OPTIMIZER = hp.HParam("optimizer")
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>>> HP_FC_DROPOUT = hp.HParam(
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... "fc_dropout",
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... display_name="f.c. dropout",
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... description="Dropout rate for fully connected subnet.",
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... )
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>>> HP_NEURONS = hp.HParam("neurons", description="Neurons per dense layer")
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>>>
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>>> with tf.summary.create_file_writer(base_logdir).as_default():
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... hp.hparams_config(
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... hparams=[
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... HP_OPTIMIZER,
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... HP_FC_DROPOUT,
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... HP_NEURONS,
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... ],
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... metrics=[
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... hp.Metric("xent", group="validation", display_name="cross-entropy"),
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... hp.Metric("f1", group="validation", display_name="F₁ score"),
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... hp.Metric("loss", group="train", display_name="training loss"),
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... ],
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... )
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You can continue to pass a string-keyed dict to the Keras callback or
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the `hparams` function, or you can use `HParam` objects as the keys. The
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latter approach enables better static analysis: your favorite Python
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linter can tell you if you misspell a hyperparameter name, your IDE can
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help you find all the places where a hyperparameter is used, etc:
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>>> hparams = {
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... HP_OPTIMIZER: "adam",
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... HP_FC_DROPOUT: 0.2,
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... HP_NEURONS: 128,
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... # ...
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... }
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>>>
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>>> model = model_fn(hparams)
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>>> callbacks = [
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>>> tf.keras.callbacks.TensorBoard(logdir),
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>>> hp.KerasCallback(logdir, hparams),
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>>> ]
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Finally, you can choose to annotate your hparam definitions with domain
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information:
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>>> HP_OPTIMIZER = hp.HParam("optimizer", hp.Discrete(["adam", "sgd"]))
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>>> HP_FC_DROPOUT = hp.HParam("fc_dropout", hp.RealInterval(0.1, 0.4))
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>>> HP_NEURONS = hp.HParam("neurons", hp.IntInterval(64, 256))
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The TensorBoard HParams plugin does not provide tuners, but you can
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integrate these domains into your preferred tuning framework if you so
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desire. The domains will also be reflected in the TensorBoard UI.
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See the `Experiment`, `HParam`, `Metric`, and `KerasCallback` classes
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for API specifications. Consult the `hparams_demo.py` script in the
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TensorBoard repository for an end-to-end MNIST example.
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"""
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from tensorboard.plugins.hparams import _keras
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from tensorboard.plugins.hparams import summary_v2
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Discrete = summary_v2.Discrete
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Domain = summary_v2.Domain
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HParam = summary_v2.HParam
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IntInterval = summary_v2.IntInterval
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Metric = summary_v2.Metric
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RealInterval = summary_v2.RealInterval
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hparams = summary_v2.hparams
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hparams_pb = summary_v2.hparams_pb
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hparams_config = summary_v2.hparams_config
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hparams_config_pb = summary_v2.hparams_config_pb
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KerasCallback = _keras.Callback
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del _keras
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del summary_v2
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