I read from somewhere that if you choose a batch size that is a power 2, training will be faster. What is this rule? Is this applicable to other applications? Can you provide a reference paper?
3 Answers
The notion comes from aligning computations (
C
) onto the physical processors (PP
) of the GPU.
Since the number of PP is often a power of 2, using a number of C
different from a power of 2 leads to poor performance.
You can see the mapping of the C
onto the PP
as a pile of slices of size the number of PP
.
Say you've got 16 PP
.
You can map 16 C
on them : 1 C
is mapped onto 1 PP
.
You can map 32 C
on them : 2 slices of 16 C
, 1 PP
will be responsible for 2 C
.
This is due to the SIMD paradigm used by GPUs. This is often called Data Parallelism : all the PP
do the same thing at the same time but on different data.
Algorithmically speaking, using larger minibatches allows you to reduce the variance of your stochastic gradient updates (by taking the average of the gradients in the minibatch), and this in turn allows you to take bigger stepsizes, which means the optimization algorithm will make progress faster.
However, the amount of work done (in terms of number of gradient computations) to reach a certain accuracy in the objective will be the same: with a minibatch size of n, the variance of the update direction will be reduced by a factor n, so the theory allows you to take stepsizes that are n times larger, so that a single step will take you roughly to the same accuracy as n steps of SGD with a minibatch size of 1.
As for tensorFlow, I found no evidence of your affirmation, and its a question that has been closed on github : https://github.com/tensorflow/tensorflow/issues/4132
Note that image resized to power of two makes sense (because pooling is generally done in 2X2 windows), but that’s a different thing altogether.

what do you mean by "by taking the average of the gradients in the minibatch" when using larger minibatch sizes?– ChaineJun 11, 2017 at 20:51

not the best wording indeed. Each element in your minibatch gives you a gradient, and you average them.– mxdbldJun 14, 2017 at 15:38

1Basically...if you have a minibatch size of 10...then gradients are averaged over these ten examples and updated in a single shot. Aug 27, 2019 at 5:10
I've heard this, too. Here's a white paper about training on CIFAR10 where some Intel researchers make the claim:
In general, the performance of processors is better if the batch size is a power of 2.
However, it's unclear just how big the advantage may be because the authors don't provide any training duration data :/