Created
March 18, 2018 20:42
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In the neural network terminology: | |
- one epoch = one forward pass and one backward pass of all the training examples | |
- batch size = the number of training examples in one forward/backward pass. The higher the batch size, the more memory space you'll need. | |
- number of iterations = number of passes, each pass using [batch size] number of examples. To be clear, one pass = one forward pass + one backward pass (we do not count the forward pass and backward pass as two different passes). | |
Example: if you have 1000 training examples, and your batch size is 500, then it will take 2 iterations to complete 1 epoch. |
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