I have a loop in TensorFlow that looks like this:

with tf.device("/gpu:1"):
    losses = []

    for target, output in zip(targets, lstm_outputs):
        logits = tf.matmul(W, output) + b
        loss = tf.nn.sparse_softmax_cross_entropy_with_logits(logits, target)

    total_loss = tf.add_n(losses)

I am getting an OOM error when allocating the gradients for this layer, since each matrix multiplication is a different operation in the graph taking memory. Is there a way of preventing TensorFlow from allocating all these operations at the same time?


This is a challenging graph for TensorFlow to optimize, since the activations from each layer must be kept to aggregate a single gradient for W. One possibility is to pass the experimental aggregation_method argument when calling optimizer.optimize().

For example, you could try the following:

optimizer = tf.train.AdagradOptimizer(...)  # Or another optimization algorithm.
train_op = optimizer.minimize(

This option eagerly aggregates the gradients for recurrently-used variables in place, rather than keeping them all in memory until all of the gradients have been computed. If this doesn't work, the tf.AggregationMethod.EXPERIMENTAL_TREE may work better.

  • 1
    I already tried those two EXPERIMENTAL_ACCUMULATE_N and EXPERIMENTAL_TREE to no avail. I will try using a while loop. – Maarten Mar 24 '16 at 18:27
  • 1
    I was able to resolve the issue, by updating from the stable release to master in combination with using EXPERIMENTAL_ACCUMULATE_N. @mrry thanks for your efforts and responsiveness. – Maarten Mar 26 '16 at 20:33

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