TensorFlow Model Analysis (TFMA) can export a model's evaluation graph to a
special SavedModel
called EvalSavedModel
. (Note that the evaluation
graph is used and not the graph for training or inference.) The EvalSavedModel
contains additional information that allows TFMA to compute the same evaluation
metrics defined in the model in a distributed manner over a large amount of data
and user-defined slices.
To use an existing model with TFMA, first modify the model to export the
EvalSavedModel
. This is done by adding a call to
tfma.export.export_eval_savedmodel
and is similar to
estimator.export_savedmodel
. For example:
# Define, train and export your estimator as usual
estimator = tf.estimator.DNNClassifier(...)
estimator.train(...)
estimator.export_savedmodel(...)
# Also export the EvalSavedModel
tfma.export.export_eval_savedmodel(
estimator=estimator, export_dir_base=export_dir,
eval_input_receiver_fn=eval_input_receiver_fn)
eval_input_receiver_fn
must be defined and is similar to the
serving_input_receiver_fn
for estimator.export_savedmodel
. Like
serving_input_receiver_fn
, the eval_input_receiver_fn
function
defines an input placeholder example, parses the features from the example, and
returns the parsed features. It parses and returns the label.
The following snippet defines an example eval_input_receiver_fn
:
country = tf.contrib.layers.sparse_column_with_hash_buckets('country', 100)
language = tf.contrib.layers.sparse_column_with_hash_buckets(language, 100)
age = tf.contrib.layers.real_valued_column('age')
label = tf.contrib.layers.real_valued_column('label')
def eval_input_receiver_fn():
serialized_tf_example = tf.placeholder(
dtype=tf.string, shape=[None], name='input_example_placeholder')
# This *must* be a dictionary containing a single key 'examples', which
# points to the input placeholder.
receiver_tensors = {'examples': serialized_tf_example}
feature_spec = tf.contrib.layers.create_feature_spec_for_parsing(
[country, language, age, label])
features = tf.parse_example(serialized_tf_example, feature_spec)
return tfma.export.EvalInputReceiver(
features=features,
receiver_tensors=receiver_tensors,
labels=features['label'])
In this example you can see that:
labels
can also be a dictionary. Useful for a multi-headed model.- The
eval_input_receiver_fn
function will, most likely, be the same as yourserving_input_receiver_fn
function. But, in some cases, you may want to define additional features for slicing. For example, you introduce anage_category
feature which divides theage
feature into multiple buckets. You can then slice on this feature in TFMA to help understand how your model's performance differs across different age categories.
TFMA can perform large-scale distributed evaluation of your model by using Apache Beam, a distributed processing framework. The evaluation results can be visualized in a Jupyter notebook using the frontend components included in TFMA.
Use tfma.run_model_analysis
for evaluation. Since this uses Beam's local
runner, it's mainly for local, small-scale experimentation. For example:
# Note that this code should be run in a Jupyter Notebook.
# This assumes your data is a TFRecords file containing records in the format
# your model is expecting, e.g. tf.train.Example if you're using
# tf.parse_example in your model.
eval_result = tfma.run_model_analysis(
model_location='/path/to/eval/saved/model',
data_location='/path/to/file/containing/tfrecords',
file_format='tfrecords')
tfma.view.render_slicing_metrics(eval_result)
Compute metrics on slices of data by configuring the slice_spec
parameter.
Add additional metrics that are not included in the model with
add_metrics_callbacks
. For more details, see the Python help for
run_model_analysis
.
For distributed evaluation, construct an Apache Beam
pipeline using a distributed runner. In the pipeline, use the
tfma.ExtractEvaluateAndWriteResults
for evaluation and to write out the
results. The results can be loaded for visualization using
tfma.load_eval_result
. For example:
# To run the pipeline.
eval_shared_model = tfma.default_eval_shared_model(
model_path='/path/to/eval/saved/model')
with beam.Pipeline(runner=...) as p:
_ = (p
# You can change the source as appropriate, e.g. read from BigQuery.
| 'ReadData' >> beam.io.ReadFromTFRecord(data_location)
| 'ExtractEvaluateAndWriteResults' >>
tfma.ExtractEvaluateAndWriteResults(
eval_shared_model=eval_shared_model,
output_path='/path/to/output',
display_only_data_location=data_location))
# To load and visualize results.
# Note that this code should be run in a Jupyter Notebook.
result = tfma.load_eval_result(output_path='/path/to/out')
tfma.view.render_slicing_metrics(result)
Try the extensive end-to-end example featuring TensorFlow Transform for feature preprocessing, TensorFlow Estimators for training, TensorFlow Model Analysis and Jupyter for evaluation, and TensorFlow Serving for serving.