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In my case I had validation accuracy of 0.0000e+00 throughout training (using Keras and CNTK-GPU backend) when my batch size was 64 but there were only 120 samples in my validation set (divided into three classes). After I changed the batch size to 60, I got normal accuracy values.


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The Dropout layer takes a training parameter that controls whether or not it is in training mode. Looking at the code on github, in the absence of the training parameter it should use the learning phase that has been set explicitly. However, maybe this behaviour has changed somehow. This github thread suggests setting the training parameter explicitly, for ...


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Your code looks about right. And since Tensorflow Lite looks at tensors in row-major format, your way of assigning inputs seems reasonable. You probably don't need this: int output = interpreter->outputs()[0]; printf("%d ", output); Otherwise, things look okay. If you pre-process the input image/spectogram the same way you did during training, you ...


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You can get a better understanding of how to perform the pre-processing for image files (atleast for ImageNet-style models) from the TFLite Android example here. They convert a Bitmap using this function: private void convertBitmapToByteBuffer(Bitmap bitmap) { if (imgData == null) { return; } imgData.rewind(); bitmap.getPixels(...


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You need an 'inference graph' to convert to TFLite. For that, you need to export a graph that has all the variables converted to constants (since TFLite won't really be doing any training). The instructions for this conversion are here, specifically this snippet of code: import os, argparse import tensorflow as tf # The original freeze_graph function # ...


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All right, I figured out the answer here: build TensorFlowLiteC framework from the root tensorflow folder: bazel build --config=ios_fat -c opt //tensorflow/lite/experimental/ios:TensorFlowLiteC_framework The result can be found here: bazel-bin/tensorflow/lite/experimental/ios/TensorFlowLiteC_framework.zip Unzip the file and add the contents to the new ...


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When you persist your architecture using model.to_json, the method get_config is called so that the layer attributes are saved as well. As you are using a custom class without that method, the default value for padding is being used when you call model_from_json. Using the following code for ReflectionPadding2D should solve your problem, just save and ...


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The mlflow autologging will log whatever metrics are specified for the keras model, e.g. as in https://keras.io/metrics/ and https://github.com/mlflow/mlflow/blob/master/examples/keras/train.py#L66. Are those metrics specified but not logged?


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One problem I see is X, y = train[:, :-2], train[:, -1] You are losing your last feature column here, it should likely be X, y = train[:, :-1], train[:, -1] What makes this script confusing is the redefinition of train, X and y in the function body. This program should never get to the error you post, because X2 is not defined by the time it is used. I'd ...


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You must create the model in each of the processes and set equal weights, and keep the models there without closing the processes. You will need to control the train flow between them, making the processes wait for the main thread and vice-versa. This is probably way too hard and there are other options. You don't need processes to pass parallel batches, ...


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Please note that tf.contrib has been dropped in TF 2.0. Source Removal of tf.contrib - These features have been either moved to TensorFlow Core, or to tensorflow/addons, or are no longer part of the TensorFlow build but are developed and maintained by their respective owners. Updated and revised documentation, examples, and website, including ...


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you can use tf.map_fn to apply a function to each row of a matrix variable def knnVote(A): nearest_k_y, idx, votes = tf.unique_with_counts(A) majority = tf.argmax(votes) predict_res = tf.gather(nearest_k_y, majority) return predict_res sess = tf.Session() with sess.as_default(): B = tf.constant([[1, 1, 2, 4, 4, 4, 7, 8, 8], [2, ...


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I came up with the following solution, I will accept the answer once I confirmed it's doing what it should: I tiled target_features so it has shape [B, N, T, L] Then I do: features_picked = tf.batch_gather(target_features, indices=pick) where features_picked has shape [B, N, 1, L]


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I eventually figured this out myself. There's probably a more elegant way to do this that only requires parsing out the bit of the response that I want, and that doesn't require converting to JSON and then to a Python object to get out the part that I want. But this worked, so I'm going to post it. By reverse engineering the REST API code, I figured out ...


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Node inputs are automatically loaded by Kedro from the DataCatalog before being passed to the node function. Node outputs are consequently saved to the DataCatalog after the node successfully produces some data. DataCatalog configuration by default is taken from conf/base/catalog.yml. In your example model_path is produced by Create Dataset, Train and Save ...


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Your model only has one output. That means that only one "label" is produced for each pair of inputs. Using standard loss functions, this label can only be compared to a single ground truth label, so each pair of inputs can only have one label. To fix this, you have several options, but none are a quick and easy fix. Figure out how to combine each pair of ...


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It doesn't look as if your loss function is differentiable? You may want to add a smoothing constant to it.


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What you're doing doesn't affect performance, you're creating layers perfectly fine. There is no problem in any of your two approaches, but if you do want to make it work as an actual layer, transform it into a model. This may not work in every keras version: class LayerBlock(tensorflow.keras.Model): #not sure if it works in normal keras (without tf) ...


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There are two ways to solve it: 1. update PyTorch to 1.3.0 and above: conda way: conda install pytorch torchvision cudatoolkit=9.2 -c pytorch pip way: pip3 install torch==1.3.0+cu92 torchvision==0.4.1+cu92 -f https://download.pytorch.org/whl/torch_stable.html 2. install tensorboardX instead: uninstall tensorboard: if your tensorboard is ...


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As mentioned in the docs, XLA stands for "accelerated linear algebra". It's Tensorflow's relatively new optimizing compiler that can further speed up your ML models' GPU operations by combining what used to be multiple CUDA kernels into one (simplifying because this isn't that important for your question). To your question, my understanding is that XLA is ...


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Question 1 and 2 Case 1, your data fits in your memory Just load the data into arrays and pad the data: import pandas as pd import numpy as np import os from keras.preprocessing.sequence import pad_sequences #your class folders - choose the correct names folder0 = "class0" folder1 = "class1" #x and y initially as lists fileContents = [] fileClasses = [] ...


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Should I use the same image for multiple records? No, because anything in the image that is not annotated as an object is classified as background, which is an implicit object type/class. So when you train your model with an image that has an object, but that object is not annotated correctly, the performance of the model decreases (because the model ...


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If you're using conda try conda install -c conda-forge tensorflow, I heard that Tensorflow is not great on Windows so if you're installing it just to use Keras I would suggest to install Theano instead.


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def download_blob(bucket_name, source_blob_name, destination_file_name): storage_client = storage.Client() bucket = storage_client.get_bucket(bucket_name) blob = bucket.blob(source_blob_name) blob.download_to_filename(destination_file_name) def handler(request): download_blob(BUCKET_NAME,'redbull/output_inference_graph.pb/frozen_inference_graph.pb','/...


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You can. It is called regression problem (in contrast to classification). Your model should just end in linear layer with required dimension and loss function could be mean squared error. I would recommend to check out some introduction to ML, e.g. Andrew Ng's MOOC on coursera. It will give you general understanding on what you can or can not do with ...


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When people (like myself) come from python to java world, everything is strange! here is how I solved my problem regarding all linking errors: I assumed you already have simple hello Tensorflow project, explained here Download and copy tensorflow JNI files to :/usr/lib/tensorflow Download and copy desired version of tensorflow Lib jar file to: /usr/lib/...


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Layers.pop(0) or anything like that doesn't work. You have two options that you can try: 1. You can create a new model with the required layers. A relatively easy way to do this is to i) extract the model json configuration, ii) change it appropriately, iii) create a new model from it, and then iv) copy over the weights. I'll just show the basic idea. ...


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You can do that with tf.scatter_nd like this (function works for TF 1.x and 2.x): import tensorflow as tf def make_tensor(a): a = tf.convert_to_tensor(a) s = tf.shape(a) n = s[0] m = s[1] out_shape = [1 + (m - 1) * n, n] r = tf.expand_dims(tf.range(n), 1) idx_row = r * (m - 1) + tf.range(m) idx_col = tf.tile(r, [1, m]) ...


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Assuming all values in target_values are in values, this is one simple way to do that (TF 2.x, but the function should work the same for 1.x): import tensorflow as tf values = [101, 103, 105, 109, 107] target_values = [105, 103] # Assumes all values in target_values are in values def find_in_array(values, target_values): values = tf.convert_to_tensor(...


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Saying that you named your layer with name="output" you can get the specific output with the following. output = graph.get_tensor_by_name('output:0') where graph is the default graph, obtained with graph = tf.get_default_graph(). However, note that output is a tensor. I imagine that you would like to do some manipulations/visualizations of the output. In ...


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As the error is pointing, your Cuda 10.1 version is incompatible with TensorFlow. So, uninstall it completely and install Cuda 10.0. You must follow the exact installation requirements mentioned here for TF to work. From here you can download Cuda version 10.0


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You first have to know, if it is sensible to use CNN for your dataset. You could use sliding 1D-CNN if the features are sequential eg) ECG, DNA, AUDIO. However I doubt that this is not the case for you. Using a Fully Connected Neural Net would be a better choice.


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I have the same problem,my tf version is 1.13,then I upgraded to version 1.14,there's also a same error. Finally, I change ignore_liver_threads=False to ignore_liver_threads=True in both ../tensorflow/contrib/slim/python/slim/learning.py and ../tensorflow/python/training/supervisor.py.


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I solved this issue on Mac, simply copy the official examples to tensorflow_core/examples directory. pull the tensorflow code git clone https://github.com/tensorflow/tensorflow copy the examples to the system python3 directory cp -a tensorflow/examples/ /usr/local/lib/python3.7/site-packages/tensorflow_core/examples/


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In your backend python code, create 2 function, load() and predict() load() can be used to load your tf model into memory, you only need to call load once for the model. Once you get requests in from Flask, route it to call the predict() which will do the real inference with the model in load().


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You could use Tensorflow Serving. https://www.tensorflow.org/tfx/guide/serving


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Let me summarize everything first. What you want to do The "object" is on the conveyer belt The camera will take pictures of the object MaskRCNN will run to do the analyzing Here are some problems you're facing "The first problem is the time model takes to create segmentation masks, it varies from one object to another." -> if you want to reduce the ...


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According to the official doc In particular, tf.control_dependencies(tf.GraphKeys.UPDATE_OPS) should not be used (consult the tf.keras.layers.batch_normalization documentation). You should collect the update ops from tf.keras.layers.BatchNormalization() as follows. See discussion ... batch_normalizer = tf.keras.layers.BatchNormalization() ...


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The reason is because you total training samples is 55,796 and if your batch size is 64, you will have 871 steps with 52 remainder. After 871 steps, your generator will return you a tensor with shape of (52, 224, 224, 3) during next iteration. I would suggest after each epoch, shuffle the dataset and only keep 55,796//64 samples in your generator.


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I made a README detailing how to I built the Tensorflow dll and .lib file for the C++ API on Windows with GPU support building from source with Bazel. Tensorflow version 1.14 The tutorial is step by step and starts at the very beginning, so you may have to scroll down past steps you have already done, like checking your hardware, installing Bazel etc. Here ...


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I had the same problem in my linux laptop with tensorflow in python3 v3.6 Actually, you just need to change some lines in 2 files : - 1 ~/.local/lib/python3.6/site-packages/tensorflow/python/framework/dtypes.py in your case : C:\Users\PC\Anaconda3\envs\tut\lib\site-packages\tensorflow\python\framework\dtypes.py now change this code : (line 516) ...


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You can use tf.tensor_scatter_nd_update for this. For such an update to work, though target must be a tf.Variable, e.g. target = tf.Variable(...) Then, using your definition of rows, columns and values the sparse update would look like this: indices = tf.stack([rows, columns], axis=1) target_new = tf.tensor_scatter_nd_update(target, indices, values)


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It seems like there's more than code to you question so SO may not be the right place for it. That being said, I wrote a comprehensive tutorial in 2015 on how to deal with sequences in Keras. Some of it may be outdated but the main ideas are still relevant, especially regarding the dimensionality questions you have: https://vict0rs.ch/tutorials/keras/...


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You can do it in two ways. Option 1 (Preferred) raw_data1, raw_data2 = tf.unstack(raw_data, axis=1) train_dataset = tf.data.Dataset.from_tensor_slices((raw_data1, raw_data2)) Option 2 def map_fn(data): return tf.unstack(data, axis=0) train_dataset = tf.data.Dataset.from_tensor_slices(raw_data) train_dataset = train_dataset.map(map_fn)


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You have to make use of tf.data.TFRecordDataset to read your tfrecord files. Pass the features you created in your tfrecord file through the tf.io.parse_single_example as shown. Inside the tf.io.FixedLenFeature, you have to pass the shape of the input and label. I have assumed that they are 0-dimensional entries. Here is the code sample to get you started. ...


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As you can read here: https://github.com/tensorflow/tensorflow/issues/4291 There is a hard limit of 2GB for serializing individual tensors because of the 32bit signed size in protobuf. You should use tf.Dataset instead. The most straightforward way to do this is to create a TFRecord object. You can find examples on how to do this at https://www....


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split() function when passed with no parameter splits only based on white-space characters present in the string. The tfds.features.text.Tokenizer()'s tokenize() method has more ways of splitting text rather than only white space character. You can see that in the GitHub code repository. At present, there is no default reserved_tokens set but the property ...


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If I understand the problem correctly, the it might be an issue with multi-threading. Try setting threads = 1 in your ini file, if you want you may always scale up with increasing a number of processes, but not threads.


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You may do a forward pass, check the loss, and then do backward if you think the loss is acceptable. In TF 1.x it requires some tf.cond and manual calculation and application of gradients. The same in TF 2.0 only the control flow is easier, but you have to use gradient_tape and still apply gradients manually.


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