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I am working with a very memory demanding CNN model for a task of classification. This poses a big limit on the batch size that I can use during training.

One solution is to accumulate the gradients during training, meaning that the weights of the model are not updated after every single batch. Instead the same weights are used for several batches, while the gradients from each batch are accumulated and than averaged for a single weight-update action.

I'm using a Tensorflow backend Keras and I'm pretty sure that Keras has no off-the-shelf function/method to achieve this.

How can it be done for a Keras/tensorflow model?

3
  • 3
    Maybe this will be helpful github.com/keras-team/keras/issues/3556
    – Sharky
    Commented Mar 20, 2019 at 21:00
  • Thanks Sharky, your comment led me to the right track.
    – Mark.F
    Commented Mar 21, 2019 at 13:27
  • Glad to hear. Good job with finding solution
    – Sharky
    Commented Mar 21, 2019 at 13:32

4 Answers 4

15

As was mentioned in the question, there is no off-the-shelf function/method to achieve this with Keras/Tensorflow. However this can be done by writing a custom optimizer for Keras.

The main idea is to use a flag to determine whether to update the weights during each batch.

The following implementation is based on this github post by "alexeydevederkin" and it is an accumulating Adam optimizer:

import keras.backend as K
from keras.legacy import interfaces
from keras.optimizers import Optimizer


class AdamAccumulate(Optimizer):

    def __init__(self, lr=0.001, beta_1=0.9, beta_2=0.999,
                 epsilon=None, decay=0., amsgrad=False, accum_iters=1, **kwargs):
        if accum_iters < 1:
            raise ValueError('accum_iters must be >= 1')
        super(AdamAccumulate, self).__init__(**kwargs)
        with K.name_scope(self.__class__.__name__):
            self.iterations = K.variable(0, dtype='int64', name='iterations')
            self.lr = K.variable(lr, name='lr')
            self.beta_1 = K.variable(beta_1, name='beta_1')
            self.beta_2 = K.variable(beta_2, name='beta_2')
            self.decay = K.variable(decay, name='decay')
        if epsilon is None:
            epsilon = K.epsilon()
        self.epsilon = epsilon
        self.initial_decay = decay
        self.amsgrad = amsgrad
        self.accum_iters = K.variable(accum_iters, K.dtype(self.iterations))
        self.accum_iters_float = K.cast(self.accum_iters, K.floatx())

    @interfaces.legacy_get_updates_support
    def get_updates(self, loss, params):
        grads = self.get_gradients(loss, params)
        self.updates = [K.update_add(self.iterations, 1)]

        lr = self.lr

        completed_updates = K.cast(K.tf.floordiv(self.iterations, self.accum_iters), K.floatx())

        if self.initial_decay > 0:
            lr = lr * (1. / (1. + self.decay * completed_updates))

        t = completed_updates + 1

        lr_t = lr * (K.sqrt(1. - K.pow(self.beta_2, t)) / (1. - K.pow(self.beta_1, t)))

        # self.iterations incremented after processing a batch
        # batch:              1 2 3 4 5 6 7 8 9
        # self.iterations:    0 1 2 3 4 5 6 7 8
        # update_switch = 1:        x       x    (if accum_iters=4)  
        update_switch = K.equal((self.iterations + 1) % self.accum_iters, 0)
        update_switch = K.cast(update_switch, K.floatx())

        ms = [K.zeros(K.int_shape(p), dtype=K.dtype(p)) for p in params]
        vs = [K.zeros(K.int_shape(p), dtype=K.dtype(p)) for p in params]
        gs = [K.zeros(K.int_shape(p), dtype=K.dtype(p)) for p in params]

        if self.amsgrad:
            vhats = [K.zeros(K.int_shape(p), dtype=K.dtype(p)) for p in params]
        else:
            vhats = [K.zeros(1) for _ in params]

        self.weights = [self.iterations] + ms + vs + vhats

        for p, g, m, v, vhat, tg in zip(params, grads, ms, vs, vhats, gs):

            sum_grad = tg + g
            avg_grad = sum_grad / self.accum_iters_float

            m_t = (self.beta_1 * m) + (1. - self.beta_1) * avg_grad
            v_t = (self.beta_2 * v) + (1. - self.beta_2) * K.square(avg_grad)

            if self.amsgrad:
                vhat_t = K.maximum(vhat, v_t)
                p_t = p - lr_t * m_t / (K.sqrt(vhat_t) + self.epsilon)
                self.updates.append(K.update(vhat, (1 - update_switch) * vhat + update_switch * vhat_t))
            else:
                p_t = p - lr_t * m_t / (K.sqrt(v_t) + self.epsilon)

            self.updates.append(K.update(m, (1 - update_switch) * m + update_switch * m_t))
            self.updates.append(K.update(v, (1 - update_switch) * v + update_switch * v_t))
            self.updates.append(K.update(tg, (1 - update_switch) * sum_grad))
            new_p = p_t

            # Apply constraints.
            if getattr(p, 'constraint', None) is not None:
                new_p = p.constraint(new_p)

            self.updates.append(K.update(p, (1 - update_switch) * p + update_switch * new_p))
        return self.updates

    def get_config(self):
        config = {'lr': float(K.get_value(self.lr)),
                  'beta_1': float(K.get_value(self.beta_1)),
                  'beta_2': float(K.get_value(self.beta_2)),
                  'decay': float(K.get_value(self.decay)),
                  'epsilon': self.epsilon,
                  'amsgrad': self.amsgrad}
        base_config = super(AdamAccumulate, self).get_config()
        return dict(list(base_config.items()) + list(config.items()))

It can be used in the following way:

opt = AdamAccumulate(lr=0.001, decay=1e-5, accum_iters=5)
model.compile( loss='categorical_crossentropy',   # Loss function
                            optimizer=opt,        # Optimization technique
                            metrics=['accuracy']) # Accuracy matrix
model.fit(X_train, y_train, batch_size = 10)

In this example, the model processes 10 samples in every iteration ("batch_size"), but the update to the weights only happens after accumulating 5 such batches ("accum_iters"). So the actual batch size for updating the weights is 50.

1
  • Thank you for this solution! Unfortunately, I don't get it working with Keras with MXNet backend, as I get an AssertionError. Does anyone know how to solve this?
    – sdbonte
    Commented Aug 26, 2019 at 12:49
8

We have published an open-source tool to automatically add gradient accumulation support in Keras models we implemented at Run:AI to help us with batch sizing issues.

Using gradient accumulation in our models allowed us to use large batch sizes while being limited by GPU memory. It specifically allowed us running neural networks with large batch sizes using only a single GPU.

The project is available at https://github.com/run-ai/runai/tree/master/runai/ga along with explanations and examples you can use right out of the box.

Using this tool, all you have to do is add a single line of code to your Python script, and you can add gradient accumulation support to your optimizer.

The Python package is available at PyPI and can be installed using the command: pip install runai.

Adding gradient accumulation support to Keras models is extremely easy. First, import the package to your code: import runai.ga. Then, you have to create a gradient accumulation optimizer. There are two ways to do so:

1. Wrap an existing Keras optimizer

You can take any Keras optimizer - whether it's a built-in one (SGD, Adam, etc...) or a custom optimizer with your algorithm implementation - and add gradient accumulation support to it using the next line:

optimizer = runai.ga.keras.optimizers.Optimizer(optimizer, steps=STEPS)

Where optimizer is your optimizer, and STEPS is the number of steps you want to accumulate gradients over.

2. Create a gradient accumulation version of any of the built-ins optimizers

There are gradient accumulation versions of all built-in optimizers (SGD, Adam, etc...) available in the package. They can be created using this line:

optimizer = runai.ga.keras.optimizers.Adam(steps=STEPS)

Here, we create a gradient accumulation version of Adam optimizer, and we accumulate gradients over STEPS steps.

More information, explanations, and examples are available in GitHub.

In addition to the open-source tool itself, we have published a series of 3 articles on Towards Data Science (Medium), where we explained issues when using large batch sizes, what is gradient accumulation and how can it help in solving these issues, how it works, and how we implemented it. Here are links to the articles:

Let us know if the tool helped you in using gradient accumulation in your own Keras models. We are here to give any support and help with the problems you encounter when using it in your own models.

4
  • Your code does not seem to work wit tensorflow.keras. Is there anything to make it compatible?
    – Eypros
    Commented May 25, 2020 at 9:08
  • Indeed. Unfortunately, we currently don't support tensorflow.keras. We will gladly accept contributions though. Commented May 27, 2020 at 15:33
  • STEPS means whatever batch size we give in model.fit(), the update will be done after 'STEPS' iterations making the effective batch_size=one given in fit() * STEPS, right? Commented Jan 5, 2021 at 18:18
  • Hey @RazHaleva. I tried out the optimizer already, but it keeps giving me this error: TypeError: __init__() missing 1 required positional argument: 'name'. Would you mind if you shed some help? Commented Jul 7, 2021 at 14:31
6

A more convenient way is to inject some changes into the existing optimizer.

class AccumOptimizer(Optimizer):
    """Inheriting Optimizer class, wrapping the original optimizer
    to achieve a new corresponding optimizer of gradient accumulation.
    # Arguments
        optimizer: an instance of keras optimizer (supporting
                    all keras optimizers currently available);
        steps_per_update: the steps of gradient accumulation
    # Returns
        a new keras optimizer.
    """
    def __init__(self, optimizer, steps_per_update=1, **kwargs):
        super(AccumOptimizer, self).__init__(**kwargs)
        self.optimizer = optimizer
        with K.name_scope(self.__class__.__name__):
            self.steps_per_update = steps_per_update
            self.iterations = K.variable(0, dtype='int64', name='iterations')
            self.cond = K.equal(self.iterations % self.steps_per_update, 0)
            self.lr = self.optimizer.lr
            self.optimizer.lr = K.switch(self.cond, self.optimizer.lr, 0.)
            for attr in ['momentum', 'rho', 'beta_1', 'beta_2']:
                if hasattr(self.optimizer, attr):
                    value = getattr(self.optimizer, attr)
                    setattr(self, attr, value)
                    setattr(self.optimizer, attr, K.switch(self.cond, value, 1 - 1e-7))
            for attr in self.optimizer.get_config():
                if not hasattr(self, attr):
                    value = getattr(self.optimizer, attr)
                    setattr(self, attr, value)
            # Cover the original get_gradients method with accumulative gradients.
            def get_gradients(loss, params):
                return [ag / self.steps_per_update for ag in self.accum_grads]
            self.optimizer.get_gradients = get_gradients
    def get_updates(self, loss, params):
        self.updates = [
            K.update_add(self.iterations, 1),
            K.update_add(self.optimizer.iterations, K.cast(self.cond, 'int64')),
        ]
        # gradient accumulation
        self.accum_grads = [K.zeros(K.int_shape(p), dtype=K.dtype(p)) for p in params]
        grads = self.get_gradients(loss, params)
        for g, ag in zip(grads, self.accum_grads):
            self.updates.append(K.update(ag, K.switch(self.cond, ag * 0, ag + g)))
        # inheriting updates of original optimizer
        self.updates.extend(self.optimizer.get_updates(loss, params)[1:])
        self.weights.extend(self.optimizer.weights)
        return self.updates
    def get_config(self):
        iterations = K.eval(self.iterations)
        K.set_value(self.iterations, 0)
        config = self.optimizer.get_config()
        K.set_value(self.iterations, iterations)
        return config

usage:

opt = AccumOptimizer(Adam(), 10) # 10 is accumulative steps
model.compile(loss='mse', optimizer=opt)
model.fit(x_train, y_train, epochs=10, batch_size=10)

reference: https://github.com/bojone/accum_optimizer_for_keras

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  • 2
    The moment you realize how important is to publish the actual code and not a link in SO: when you check the original post and it's on Chinese (I think anyway).
    – Eypros
    Commented Oct 21, 2019 at 7:19
  • does 10 as the parameter of AccumOptimizer mean that it will accumulate gradients over 100 samples with a batch size of 10?
    – pg2455
    Commented Jan 13, 2020 at 15:16
  • Will there be any problem if I were to use it with tf.GradientTape?
    – pg2455
    Commented Jan 13, 2020 at 15:20
  • Doesn't work with newer keras
    – vozman
    Commented Jul 4, 2023 at 13:26
0

Now you can just pass the gradient_accumulation_steps to the optimizer when you define the optimizer.
Eg: See AdamW, SGD, and similarly for other optimizers

Keras Implementation/Source Code: Jax Backend TF Backend

It's better to use custom loops for gradient accumulation, don't use the above approach. See this for an answer to why not to use the above approach

See this for correct implementation.

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