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Be sure to run the preceding script from the command line:
$ python3 using_tensorboard.py Run the command: $tensorboard --logdir="tensorboard" Then navigate to http://127.0.0.0:6006 Generation 10 of 100. Train Loss: 20.4, Test Loss: 20.5. Generation 20 of 100. Train Loss: 17.6, Test Loss: 20.5. Generation 90 of 100. Train Loss: 20.1, Test Loss: 20.5. Generation 100 of 100. Train Loss: 19.4, Test Loss: 20.5.
We'll then run the preceding specified command to start Tensorboard:
$ tensorboard --logdir="tensorboard" Starting TensorBoard b'29' on port 6006 (You can navigate to http://127.0.1.1:6006)
Here is a sample of what we can see in Tensorboard:
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Figure 1: The scalar value, our slope estimate, visualized in Tensorboard.
Here, we can see a plot over the 100 generations of our scalar summary, the slope estimate. We can see that it does, in fact, approach the true value of 2:
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Figure 2: Here we visualize histograms of the errors and residuals for our model.
The preceding graph shows one...