tf.compat.v1.mixed_precision.enable_mixed_precision_graph_rewrite
Enable mixed precision via a graph rewrite.
tf.compat.v1.mixed_precision.enable_mixed_precision_graph_rewrite( opt, loss_scale='dynamic' )
Mixed precision is the use of both float32 and float16 data types when training a model to improve performance. This is achieved via a graph rewrite operation and a loss-scale optimizer.
Performing arithmetic operations in float16 takes advantage of specialized processing units, such as NVIDIA Tensor Cores, for much higher arithmetic throughput. However, due to the smaller representable range, performing the entire training with float16 can result in gradient underflow, that is, small gradient values becoming zeroes. Instead, performing only select arithmetic operations in float16 results in higher throughput and decreased training time when using compatible hardware accelerators while also reducing memory usage, typically without sacrificing model accuracy.
Note: While the mixed precision rewrite changes the datatype of various layers throughout the model, the same accuracy reached in float32 is expected. If aNaN
gradient occurs with dynamic loss scaling, the model update for that batch is skipped. In this case, the global step count is not incremented, and theLossScaleOptimizer
attempts to decrease the loss scaling value to avoidNaN
values in subsequent iterations. This approach has been shown to achieve the same accuracy as float32 and, in most cases, better training throughput.
Example:
model = tf.keras.models.Sequential([ tf.keras.layers.Dense(64, activation='relu'), tf.keras.layers.Dense(64, activation='softmax'), ]) opt = tf.keras.optimizers.SGD() opt = tf.train.experimental.enable_mixed_precision_graph_rewrite(opt) model.compile(loss="mse", optimizer=opt) x_train = np.random.random((1024, 64)) y_train = np.random.random((1024, 64)) model.fit(x_train, y_train)
Calling enable_mixed_precision_graph_rewrite(opt)
enables the graph rewrite operation before computing gradients. The function additionally returns an Optimizer
(opt
) wrapped with a LossScaleOptimizer
. This prevents underflow in the float16 tensors during the backward pass. An optimizer of type tf.train.Optimizer
or tf.keras.optimizers.Optimizer
must be passed to this function, which will then be wrapped to use loss scaling.
The graph rewrite operation changes the dtype
of certain operations in the graph from float32 to float16. There are several categories of operations that are either included or excluded by this rewrite operation. The following categories of Ops are defined inside corresponding functions under the class AutoMixedPrecisionLists
in auto_mixed_precision_lists.h:
-
ClearList
: Ops that do not have numerically significant adverse effects. E.g.ArgMax
andFloor
. -
AllowList
: Ops that are considered numerically safe for execution in float16, and thus are always converted. E.g.Conv2D
. -
DenyList
: Ops that are numerically unsafe to execute in float16 and can negatively affect downstream nodes. E.g.Softmax
. -
GrayList
: Ops that are considered numerically safe for execution in float16 unless downstream from a DenyList Op. E.g.Add
andAvgPool
.
When this function is used, gradients should only be computed and applied with the returned optimizer, either by calling opt.minimize()
or opt.compute_gradients()
followed by opt.apply_gradients()
. Gradients should not be computed with tf.gradients
or tf.GradientTape
. This is because the returned optimizer will apply loss scaling, and tf.gradients
or tf.GradientTape
will not. If you do directly use tf.gradients
or tf.GradientTape
, your model may not converge due to float16 underflow problems.
When eager execution is enabled, the mixed precision graph rewrite is only enabled within tf.function
s, as outside tf.function
s, there is no graph.
For NVIDIA GPUs with Tensor cores, as a general performance guide, dimensions (such as batch size, input size, output size, and channel counts) should be powers of two if under 256, or otherwise divisible by 8 if above 256. For more information, check out the NVIDIA Deep Learning Performance Guide.
Currently, mixed precision is only enabled on NVIDIA Tensor Core GPUs with Compute Capability 7.0 and above (Volta, Turing, or newer architectures). The parts of the graph on CPUs and TPUs are untouched by the graph rewrite.
Raises | |
---|---|
ValueError , if the tf.keras.mixed_precision API is also used by calling tf.keras.mixed_precision.experimental.set_policy . Only one mixed precision API can be used. |
Args | |
---|---|
opt | An instance of a tf.keras.optimizers.Optimizer or a tf.train.Optimizer . |
loss_scale | Either an int/float, the string "dynamic" , or an instance of a tf.mixed_precision.experimental.LossScale . The loss scale to use. It is recommended to keep this as its default value of "dynamic" , which will adjust the scaling automatically to prevent Inf or NaN values. |
Returns | |
---|---|
A version of opt that will use loss scaling to prevent underflow. |
© 2020 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/versions/r2.4/api_docs/python/tf/compat/v1/mixed_precision/enable_mixed_precision_graph_rewrite