Is using batch size as 'powers of 2' faster on tensorflow?

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?

• If you use gpu calculation and if tensorflow is using batch size as global work size then it make sense Jun 11, 2017 at 11:35

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 mini-batches allows you to reduce the variance of your stochastic gradient updates (by taking the average of the gradients in the mini-batch), and this in turn allows you to take bigger step-sizes, 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 mini-batch size of n, the variance of the update direction will be reduced by a factor n, so the theory allows you to take step-sizes 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 mini-batch 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 mini-batch" when using larger mini-batch sizes? Jun 11, 2017 at 20:51
• not the best wording indeed. Each element in your minibatch gives you a gradient, and you average them. Jun 14, 2017 at 15:38
• Basically...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 CIFAR-10 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 :/