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I am training a model in TensorFlow. Periodically during training, I evaluate the model on a validation set. I'd like to write a summary of the training procedure so that TensorBoard displays a plot of the validation set loss so that I can see it go down with more training iterations. (Or jump back up if I start to overfit.)
I already have a global iteration variable as part of my summary. I'm thinking of creating a scalar summary
validation_loss variable in the model graph that isn't connected to anything, but to which I periodically assign a variable to from my training loop.
Is this a good strategy? Is there a more idiomatic way to do this in TensorFlow?