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Currently I have a neural network that convolutes and pools images. However, right before I make my densely connected layer, I want to add some information. Currently, I reshape my image to a flat tensor with tf.reshape(image, [width * length * channels]), but I was wondering how I could append a couple of tf.float32 values to the end of the tensor?

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You can reshape to a vector using tf.reshape with -1:

tf.reshape(image, [-1])

and append the new values as Tensors using tf.concat:

tf.concat([image, new_val1, new_val2], 0)

This will return a Tensor resulting from concatenation of the input tensors.

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