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TensorFlow is an open source library for machine learning and machine intelligence. TensorFlow uses data flow graphs with tensors flowing along edges. For details, see https://www.tensorflow.org. TensorFlow is released under an Apache 2.0 License.

4 votes
5 answers
7k views

Applying a keras model working with greyscale images to RGB images

I followed this basic classification TensorFlow tutorial using the Fashion MNIST dataset. … Below is my full code: import tensorflow as tf import IPython.display as display from PIL import Image from tensorflow import keras import numpy as np import matplotlib.pyplot as plt import pdb import …
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1 vote
2 answers
2k views

Why apply a 50:50 train test split?

I am going through the "Text classification with TensorFlow Hub" tutorial. In this tutorial, a total of 50,000 IMDb reviews are split into 25,000 reviews for training and 25,000 reviews for testing. … Does it have anything to do with using a "pre-trained" TensorFlow Hub layer? …
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  • 195
1 vote
0 answers
16 views

Applying a keras model working with greyscale images to RGB images [duplicate]

I followed this basic classification TensorFlow tutorial using the Fashion MNIST dataset. … Below is my full code: import tensorflow as tf import IPython.display as display from PIL import Image from tensorflow import keras import numpy as np import matplotlib.pyplot as plt import pdb import …
Sheldon's user avatar
  • 195