`RMSprop`

class```
tf_keras.optimizers.RMSprop(
learning_rate=0.001,
rho=0.9,
momentum=0.0,
epsilon=1e-07,
centered=False,
weight_decay=None,
clipnorm=None,
clipvalue=None,
global_clipnorm=None,
use_ema=False,
ema_momentum=0.99,
ema_overwrite_frequency=100,
jit_compile=True,
name="RMSprop",
**kwargs
)
```

Optimizer that implements the RMSprop algorithm.

The gist of RMSprop is to:

- Maintain a moving (discounted) average of the square of gradients
- Divide the gradient by the root of this average

This implementation of RMSprop uses plain momentum, not Nesterov momentum.

The centered version additionally maintains a moving average of the gradients, and uses that average to estimate the variance.

**Arguments**

**learning_rate**: Initial value for the learning rate: either a floating point value, or a`tf.keras.optimizers.schedules.LearningRateSchedule`

instance. Defaults to 0.001. rho: float, defaults to 0.9. Discounting factor for the old gradients. momentum: float, defaults to 0.0. If not 0.0., the optimizer tracks the momentum value, with a decay rate equals to`1 - momentum`

. epsilon: A small constant for numerical stability. This epsilon is "epsilon hat" in the Kingma and Ba paper (in the formula just before Section 2.1), not the epsilon in Algorithm 1 of the paper. Defaults to`1e-7`

. centered: Boolean. If`True`

, gradients are normalized by the estimated variance of the gradient; if False, by the uncentered second moment. Setting this to`True`

may help with training, but is slightly more expensive in terms of computation and memory. Defaults to`False`

. name: String. The name to use for momentum accumulator weights created by the optimizer.**weight_decay**: Float, defaults to None. If set, weight decay is applied.**clipnorm**: Float. If set, the gradient of each weight is individually clipped so that its norm is no higher than this value.**clipvalue**: Float. If set, the gradient of each weight is clipped to be no higher than this value.**global_clipnorm**: Float. If set, the gradient of all weights is clipped so that their global norm is no higher than this value.**use_ema**: Boolean, defaults to False. If True, exponential moving average (EMA) is applied. EMA consists of computing an exponential moving average of the weights of the model (as the weight values change after each training batch), and periodically overwriting the weights with their moving average.**ema_momentum**: Float, defaults to 0.99. Only used if`use_ema=True`

. This is the momentum to use when computing the EMA of the model's weights:`new_average = ema_momentum * old_average + (1 - ema_momentum) * current_variable_value`

.**ema_overwrite_frequency**: Int or None, defaults to None. Only used if`use_ema=True`

. Every`ema_overwrite_frequency`

steps of iterations, we overwrite the model variable by its moving average. If None, the optimizer does not overwrite model variables in the middle of training, and you need to explicitly overwrite the variables at the end of training by calling`optimizer.finalize_variable_values()`

(which updates the model variables in-place). When using the built-in`fit()`

training loop, this happens automatically after the last epoch, and you don't need to do anything.**jit_compile**: Boolean, defaults to True. If True, the optimizer will use XLA compilation. If no GPU device is found, this flag will be ignored.**mesh**: optional`tf.experimental.dtensor.Mesh`

instance. When provided, the optimizer will be run in DTensor mode, e.g. state tracking variable will be a DVariable, and aggregation/reduction will happen in the global DTensor context.****kwargs**: keyword arguments only used for backward compatibility.

Usage:

```
>>> opt = tf.keras.optimizers.RMSprop(learning_rate=0.1)
>>> var1 = tf.Variable(10.0)
>>> loss = lambda: (var1 ** 2) / 2.0 # d(loss) / d(var1) = var1
>>> opt.minimize(loss, [var1])
>>> var1.numpy()
9.683772
```

**Reference**

- Hinton, 2012 # noqa: E501