• 【tensorflow-v2.0】如何查看模型的输入输出流的属性


     操作过程:

    1. 查看mobilenet的variables

    loaded = tf.saved_model.load('mobilenet')
    print('MobileNet has {} trainable variables: {},...'.format(
           len(loaded.trainable_variables),
           ', '.join([v.name for v in loaded.trainable_variables[:5]])))
    trainable_variable_ids = {id(v) for v in loaded.trainable_variables}
    non_trainable_variables = [v for v in loaded.variables if id(v) not in trainable_variable_ids]
    print('MobileNet also has {} non-trainable variables: {}, ...'.format(
           len(non_trainable_variables),
           ', '.join([v.name for v in non_trainable_variables[:3]])))

    输出:输出trainable_variables的后5个variables,non_trainable_variables的后3个variables.

    MobileNet has 83 trainable variables: conv1/kernel:0, conv1_bn/gamma:0, conv1_bn/beta:0, conv_dw_1/depthwise_kernel:0, conv_dw_1_bn/gamma:0,...
    MobileNet also has 54 non-trainable variables: conv1_bn/moving_mean:0, conv1_bn/moving_variance:0, conv_dw_1_bn/moving_mean:0, ...

    但是这种方法输出model/detector模型的variables却出错;

    Traceback (most recent call last):
      File "inspect_saved_model.py", line 59, in <module>
        len(facebox_model.trainable_variables),
    AttributeError: '_UserObject' object has no attribute 'trainable_variables'

    原因还没找出来,有知道的可以私信博主哈~

    2. 使用命令行查看模型的signatures

    usage: saved_model_cli show [-h] --dir DIR [--all]
    [--tag_set TAG_SET] [--signature_def SIGNATURE_DEF_KEY]

    例如

    saved_model_cli show --dir mobilenet/ --all
    or saved_model_cli show
    --dir model/detector/ --tag_set serve --signature_def serving_default

    输出

    (tf_test) ~/workspace/test_code/github_test/faceboxes-tensorflow$ saved_model_cli show --dir model/detector --all
    
    MetaGraphDef with tag-set: 'serve' contains the following SignatureDefs:
    
    signature_def['__saved_model_init_op']:
      The given SavedModel SignatureDef contains the following input(s):
      The given SavedModel SignatureDef contains the following output(s):
        outputs['__saved_model_init_op'] tensor_info:
            dtype: DT_INVALID
            shape: unknown_rank
            name: NoOp
      Method name is: 
    
    signature_def['serving_default']:
      The given SavedModel SignatureDef contains the following input(s):
        inputs['images'] tensor_info:
            dtype: DT_FLOAT
            shape: (-1, -1, -1, -1)
            name: serving_default_images:0
      The given SavedModel SignatureDef contains the following output(s):
        outputs['boxes'] tensor_info:
            dtype: DT_FLOAT
            shape: (-1, 100, 4)
            name: StatefulPartitionedCall:0
        outputs['num_boxes'] tensor_info:
            dtype: DT_INT32
            shape: (-1)
            name: StatefulPartitionedCall:1
        outputs['scores'] tensor_info:
            dtype: DT_FLOAT
            shape: (-1, 100)
            name: StatefulPartitionedCall:2
      Method name is: tensorflow/serving/predict

    这个是model/detector模型的输出;

     参考

    1. tensorflow1.x;

    2. tf_saved_model;

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  • 原文地址:https://www.cnblogs.com/happyamyhope/p/11822125.html
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