Provides a collection of TFLite model analyzer tools.
Used in the notebooks
Example:
model = tf.keras.applications.MobileNetV3Large()
fb_model = tf.lite.TFLiteConverterV2.from_keras_model(model).convert()
tf.lite.experimental.Analyzer.analyze(model_content=fb_model)
# === TFLite ModelAnalyzer ===
#
# Your TFLite model has ‘1’ subgraph(s). In the subgraph description below,
# T# represents the Tensor numbers. For example, in Subgraph#0, the MUL op
# takes tensor #0 and tensor #19 as input and produces tensor #136 as output.
#
# Subgraph#0 main(T#0) -> [T#263]
# Op#0 MUL(T#0, T#19) -> [T#136]
# Op#1 ADD(T#136, T#18) -> [T#137]
# Op#2 CONV_2D(T#137, T#44, T#93) -> [T#138]
# Op#3 HARD_SWISH(T#138) -> [T#139]
# Op#4 DEPTHWISE_CONV_2D(T#139, T#94, T#24) -> [T#140]
# ...
Warning: Experimental interface, subject to change.
Methods
analyze
View source
@staticmethod
analyze(
model_path=None, model_content=None, gpu_compatibility=False, **kwargs
)
Analyzes the given tflite_model with dumping model structure.
This tool provides a way to understand users' TFLite flatbuffer model by
dumping internal graph structure. It also provides additional features
like checking GPU delegate compatibility.
Warning: Experimental interface, subject to change.
The output format is not guaranteed to stay stable, so don't
write scripts to this.
Args
model_path
TFLite flatbuffer model path.
model_content
TFLite flatbuffer model object.
gpu_compatibility
Whether to check GPU delegate compatibility.
**kwargs
Experimental keyword arguments to analyze API.
Returns
Print analyzed report via console output.