I'm currently implementing YOLO in TensorFlow and I'm a little surprised on how much memory that is taking. On my GPU I can train YOLO using their Darknet framework with batch size 64. On TensorFlow I can only do it with batch size 6, with 8 I already run out of memory. For the test phase I can run with batch size 64 without running out of memory.
I am wondering how I can calculate how much memory is being consumed by each tensor? Are all tensors by default saved in the GPU? Can I simply calculate the total memory consumption as the shape * 32 bits?
I noticed that since I'm using momentum, all my tensors also have a
/Momentumtensor. Could that also be using a lot of memory?
I am augmenting my dataset with a method
distorted_inputs, very similar to the one defined in the CIFAR-10 tutorial. Could it be that this part is occupying a huge chunk of memory? I believe Darknet does the modifications in the CPU.