I ran the MNIST demo in TensorFlow with 2 conv layers and a full-conect layer, I got an message that 'ran out of memeory trying to allocate 2.59GiB' , but it shows that total memory is 4.69GiB, and free memory is 3.22GiB, how can it stop with 2.59GiB? And with larger network, how can I manage gpu memory? I concern only how to make best use of the gpu memory and wanna know how it happened, not how to pre-allocating memory

up vote 9 down vote accepted

It's not about that. first of all you can see how much memory it gets when it runs by monitoring your gpu. for example if you have a nvidia gpu u can check that with watch -n 1 nvidia-smi command. But in most cases if you didn't set the maximum fraction of gpu memory, it allocates almost the whole free memory. your problem is lack of enough memory for your gpu. cnn networks are totally heavy. When you are trying to feed your network DO NOT do it with your whole data. DO this feeding procedure in low batch sizes.

  • 4
    I have a rather large network (CNN+LSTM). My input data is of size, batch_size = 5, (5x396x396) -- it's a 3D volume. So a rather small batch size. I'm running on a GTX 1070 with 8GB RAM, but I'm still running out of memory. Are there any workarounds you know of? Any tutorials that outline workarounds? – Kendall Weihe Aug 11 '16 at 19:02

I was encountering out of memory errors when training a small CNN on a GTX 970. Through somewhat of a fluke, I discovered that telling TensorFlow to allocate memory on the GPU as needed (instead of up front) resolved all my issues. This can be accomplished using the following Python code:

    config = tf.ConfigProto()
    config.gpu_options.allow_growth = True
    sess = tf.Session(config = config)

Previously, TensorFlow would pre-allocate ~90% of GPU memory. But, for some unknown reason, this would later result in out of memory errors when I increased the size of the network. By using the above code, I no longer have OOM errors.

  • This works on my script even though I'm using keras – Hong Aug 21 '17 at 15:50

By default, TensorFlow maps nearly all of the GPU memory of all GPUs (subject to CUDA_VISIBLE_DEVICES) visible to the process. This is done to more efficiently use the relatively precious GPU memory resources on the devices by reducing memory fragmentation.

TensorFlow provides two Config options on the Session to control this.

The first is the allow_growth option, which attempts to allocate only as much GPU memory based on runtime allocations:

config = tf.ConfigProto()
config.gpu_options.allow_growth = True
session = tf.Session(config=config)

The second method is the per_process_gpu_memory_fraction option, which determines the fraction of the overall amount of memory that each visible GPU should be allocated. For example, you can tell TensorFlow to only allocate 40% of the total memory of each GPU by:

config = tf.ConfigProto()
config.gpu_options.per_process_gpu_memory_fraction = 0.4
session = tf.Session(config=config)

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