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The error was in the model_fn. The following lines have to be moved down to the # TRAIN mode part of the function gt,fg = tf.unstack(labels,num=2,axis=1) gt.set_shape([1]+params['input_size']) fg.set_shape([1]+params['input_size']) Estimator.predict will feed only the features and None instead of labels, therefore tf.unstack will throw an ...


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predictor({"inputs":[model_input1, model_input2]}) works but that requires enumerating the data manually into multiple tf.train.Example instances


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Note: I think your problem is on Predict Model part. In that part you have used x_test[0] which is not matching with the pre-trained model array dimension. You have to use x_test instead of x_test[0]. enter image description here #Use This Code TO Solve Your Problem import tensorflow as tf # deep learning library. Tensors are just multi-...


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To answer my own question, it seems that the solution is to provide a function which, when called does both the preprocessing and calls the model. Example here: # tensorflow 2.0.0 import tensorflow as tf import numpy as np hidden_layers = [4,4] feature_columns = [fc.numeric_column(name) for name in ['x1', 'x2', 'logx1']] # construct a simple sequential ...


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I had a similar problem (using tensorflow 1.15 in a colab notebook). In my case, saving and loading the model (in a new cell) solved the problem. model.save_weights("weights.h5", overwrite=True) # in a new cell model = create_model() model.load_weights("weights.h5") y_pred = np.array(model.predict(x_test))


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It is very easy: you simply need, inside your _parse function, to get the global_step tensor from the graph using tf.train.get_or_create_global_step(). Here is a working example import tensorflow as tf import numpy as np # Synth dataset with 10 values x = np.arange(10) # This function replaces 'x' by the current step def step_dependant_preprocessing(x):...


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You can view the saved model using the below command: saved_model_cli show --all --dir <path to/bert_0.3/1564572852> This will show the dtype,shape and name of inputs and outputs. Please try to use tf.placeholder() instead of tf.FixedLenFeature inside serving_input_receiver_fn() as follows: input_ids = tf.placeholder(tf.int32, [None, 128], name='...


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You can modify the hidden layer's activation function by assigning new activation function to the activation_fn argument when you instantiate DNNClassifier. classifier = tf.estimator.DNNClassifier(feature_columns=feature_columns, hidden_units=[10, 20, 10], activation_fn=tf.nn....


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Subclass only if you absolutely need to. I personally prefer following the following order of implementation. If the complexity of the model you are designing, can not be achieved using the first two options, then of course subclassing is the only option left. tf.keras Sequential API tf.keras Functional API Subclass tf.keras.Model


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Seems like a reasonable thing to do: https://www.tensorflow.org/guide/keras/custom_layers_and_models https://www.tensorflow.org/api_docs/python/tf/keras/Model guide


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The binary_classification_head() has the logit dimension of "1", because the probability of a binary classification is [alpha, 1-alpha] for the two classes. According to the tensorflow binary_classification_head doc, if 'label_vocabulary' is not given, labels must be float Tensor with values in the interval [0, 1]. However, I tested the head with wrapping ...


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Your model should be saved in the model_dir path according to the official documentation. Please specify a real directory path to model_dir while instantiating BoostedTreesRegressor. Furthermore, you can save model using export_saved_model method. # Saving estimator model serving_input_fn = tf.estimator.export.build_parsing_serving_input_receiver_fn( tf....


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Google released migration guide from TF 1 to TF 2, section Converting Models. Recommended way to build models Guide (section "Models based on tf.layers") recommends to convert tf.layers models to tf.keras.layers: The conversion was one-to-one because there is a direct mapping from v1.layers to tf.keras.layers. Build models without Keras The option is ...


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You are making use of tf.data's Dataset api where data is not necessarily loaded into memory and hence there is no way to know how long is the dataset and consequently, the number of batches cannot be calculated. Hence, in the first epoch, it comes as unknown, but after the first epoch, the denominator will be shown the correct number. Or else if you wish ...


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