View source on GitHub
|
Synchronous training on TPUs and TPU Pods.
Inherits From: Strategy
tf.distribute.TPUStrategy(
tpu_cluster_resolver=None,
experimental_device_assignment=None,
experimental_spmd_xla_partitioning=False
)
Used in the notebooks
| Used in the guide | Used in the tutorials |
|---|---|
To construct a TPUStrategy object, you need to run the initialization code as below:
resolver = tf.distribute.cluster_resolver.TPUClusterResolver(tpu='')tf.config.experimental_connect_to_cluster(resolver)tf.tpu.experimental.initialize_tpu_system(resolver)strategy = tf.distribute.TPUStrategy(resolver)
While using distribution strategies, the variables created within the strategy's scope will be replicated across all the replicas and can be kept in sync using all-reduce algorithms.
To run TF2 programs on TPUs, you can either use .compile and
.fit APIs in tf.keras with TPUStrategy, or write your own customized
training loop by calling strategy.run directly. Note that
TPUStrategy doesn't support pure eager execution, so please make sure the
function passed into strategy.run is a tf.function or
strategy.run is called inside a tf.function if eager
behavior is enabled. See more details in https://www.tensorflow.org/guide/tpu.
distribute_datasets_from_function and
experimental_distribute_dataset APIs can be used to distribute the dataset
across the TPU workers when writing your own training loop. If you are using
fit and compile methods available in tf.keras.Model, then Keras will
handle the distribution for you.
An example of writing customized training loop on TPUs:
with strategy.scope():model = tf.keras.Sequential([tf.keras.layers.Dense(2, input_shape=(5,)),])optimizer = tf.keras.optimizers.SGD(learning_rate=0.1)
def dataset_fn(ctx):x = np.random.random((2, 5)).astype(np.float32)y = np.random.randint(2, size=(2, 1))dataset = tf.data.Dataset.from_tensor_slices((x, y))return dataset.repeat().batch(1, drop_remainder=True)dist_dataset = strategy.distribute_datasets_from_function(dataset_fn)iterator = iter(dist_dataset)
@tf.function()def train_step(iterator):def step_fn(inputs):features, labels = inputswith tf.GradientTape() as tape:logits = model(features, training=True)loss = tf.keras.losses.sparse_categorical_crossentropy(labels, logits)grads = tape.gradient(loss, model.trainable_variables)optimizer.apply_gradients(zip(grads, model.trainable_variables))strategy.run(step_fn, args=(next(iterator),))
train_step(iterator)For the advanced use cases like model parallelism, you can set
experimental_device_assignment argument when creating TPUStrategy to specify
number of replicas and number of logical devices. Below is an example to
initialize TPU system with 2 logical devices and 1 replica.
resolver = tf.distribute.cluster_resolver.TPUClusterResolver(tpu='')tf.config.experimental_connect_to_cluster(resolver)topology = tf.tpu.experimental.initialize_tpu_system(resolver)device_assignment = tf.tpu.experimental.DeviceAssignment.build(topology,computation_shape=[1, 1, 1, 2],num_replicas=1)strategy = tf.distribute.TPUStrategy(resolver, experimental_device_assignment=device_assignment)
Then you can run a tf.add operation only on logical device 0.
@tf.function()def step_fn(inputs):features, _ = inputsoutput = tf.add(features, features)# Add operation will be executed on logical device 0.output = strategy.experimental_assign_to_logical_device(output, 0)return outputdist_dataset = strategy.distribute_datasets_from_function(dataset_fn)iterator = iter(dist_dataset)strategy.run(step_fn, args=(next(iterator),))
experimental_spmd_xla_partitioning enables the experimental XLA SPMD feature
for model parallelism. This flag can reduce the compilation time and HBM
requirements. When running in this mode, every input tensor must either be
partitioned (via strategy.experimental_split_to_logical_devices) or fully
replicated (via strategy.experimental_replicate_to_logical_devices) to all
logical devices. And calling strategy.experimental_assign_to_logical_device
will result in a ValueError in this mode.
Args | |
|---|---|
tpu_cluster_resolver
|
A
tf.distribute.cluster_resolver.TPUClusterResolver instance, which
provides information about the TPU cluster. If None, it will assume
running on a local TPU worker.
|
experimental_device_assignment
|
Optional
tf.tpu.experimental.DeviceAssignment to specify the placement of
replicas on the TPU cluster.
|
experimental_spmd_xla_partitioning
|
If True, enable the SPMD (Single
Program Multiple Data) mode in XLA compiler. This flag only affects the
performance of XLA compilation and the HBM requirement of the compiled
TPU program. Ceveat: if this flag is True, calling
tf.distribute.TPUStrategy.experimental_assign_to_logical_device will
result in a ValueError.
|
Attributes | |
|---|---|
cluster_resolver
|
Returns the cluster resolver associated with this strategy.
|
extended
|
tf.distribute.StrategyExtended with additional methods.
|
num_replicas_in_sync
|
Returns number of replicas over which gradients are aggregated. |
Methods
distribute_datasets_from_function
distribute_datasets_from_function(
dataset_fn, options=None
)
Distributes tf.data.Dataset instances created by calls to dataset_fn.
The argument dataset_fn that users pass in is an input function that has a
tf.distribute.InputContext argument and returns a tf.data.Dataset
instance. It is expected that the returned dataset from dataset_fn is
already batched by per-replica batch size (i.e. global batch size divided by
the number of replicas in sync) and sharded.
tf.distribute.Strategy.distribute_datasets_from_function does
not batch or shard the tf.data.Dataset instance
returned from the input function. dataset_fn will be called on the CPU
device of each of the workers and each generates a dataset where every
replica on that worker will dequeue one batch of inputs (i.e. if a worker
has two replicas, two batches will be dequeued from the Dataset every
step).
This method can be used for several purposes. First, it allows you to
specify your own batching and sharding logic. (In contrast,
tf.distribute.experimental_distribute_dataset does batching and sharding
for you.) For example, where
experimental_distribute_dataset is unable to shard the input files, this
method might be used to manually shard the dataset (avoiding the slow
fallback behavior in experimental_distribute_dataset). In cases where the
dataset is infinite, this sharding can be done by creating dataset replicas
that differ only in their random seed.
The dataset_fn should take an tf.distribute.InputContext instance where
information about batching and input replication can be accessed.
You can use element_spec property of the
tf.distribute.DistributedDataset returned by this API to query the
tf.TypeSpec of the elements returned by the iterator. This can be used to
set the input_signature property of a tf.function. Follow
tf.distribute.DistributedDataset.element_spec to see an example.
For a tutorial on more usage and properties of this method, refer to the tutorial on distributed input). If you are interested in last partial batch handling, read this section.
| Args | |
|---|---|
dataset_fn
|
A function taking a tf.distribute.InputContext instance and
returning a tf.data.Dataset.
|
options
|
tf.distribute.InputOptions used to control options on how this
dataset is distributed.
|
| Returns | |
|---|---|
A tf.distribute.DistributedDataset.
|
experimental_assign_to_logical_device
experimental_assign_to_logical_device(
tensor, logical_device_id
)
Adds annotation that tensor will be assigned to a logical device.
This adds an annotation to tensor specifying that operations on
tensor will be invoked on logical core device id logical_device_id.
When model parallelism is used, the default behavior is that all ops
are placed on zero-th logical device.
# Initializing TPU system with 2 logical devices and 4 replicas.
resolver = tf.distribute.cluster_resolver.TPUClusterResolver(tpu='')
tf.config.experimental_connect_to_cluster(resolver)
topology = tf.tpu.experimental.initialize_tpu_system(resolver)
device_assignment = tf.tpu.experimental.DeviceAssignment.build(
topology,
computation_shape=[1, 1, 1, 2],
num_replicas=4)
strategy = tf.distribute.TPUStrategy(
resolver, experimental_device_assignment=device_assignment)
iterator = iter(inputs)
@tf.function()
def step_fn(inputs):
output = tf.add(inputs, inputs)
# Add operation will be executed on logical device 0.
output = strategy.experimental_assign_to_logical_device(output, 0)
return output
strategy.run(step_fn, args=(next(iterator),))
| Args | |
|---|---|
tensor
|
Input tensor to annotate. |
logical_device_id
|
Id of the logical core to which the tensor will be assigned. |
| Raises | |
|---|---|
ValueError
|
The logical device id presented is not consistent with total
number of partitions specified by the device assignment or the TPUStrategy
is constructed with experimental_spmd_xla_partitioning=True.
|
| Returns | |
|---|---|
Annotated tensor with identical value as tensor.
|
experimental_distribute_dataset
experimental_distribute_dataset(
dataset, options=None
)
Creates tf.distribute.DistributedDataset from tf.data.Dataset.
The returned tf.distribute.DistributedDataset can be iterated over
similar to regular datasets.
NOTE: The user cannot add any more transformations to a
tf.distribute.DistributedDataset. You can only create an iterator or
examine the tf.TypeSpec of the data generated by it. See API docs of
tf.distribute.DistributedDataset to learn more.
The following is an example:
global_batch_size = 2# Passing the devices is optional.strategy = tf.distribute.MirroredStrategy(devices=["GPU:0", "GPU:1"])# Create a datasetdataset = tf.data.Dataset.range(4).batch(global_batch_size)# Distribute that datasetdist_dataset = strategy.experimental_distribute_dataset(dataset)@tf.functiondef replica_fn(input):return input*2result = []# Iterate over the `tf.distribute.DistributedDataset`for x in dist_dataset:# process dataset elementsresult.append(strategy.run(replica_fn, args=(x,)))print(result)[PerReplica:{0: <tf.Tensor: shape=(1,), dtype=int64, numpy=array([0])>,1: <tf.Tensor: shape=(1,), dtype=int64, numpy=array([2])>}, PerReplica:{0: <tf.Tensor: shape=(1,), dtype=int64, numpy=array([4])>,1: <tf.Tensor: shape=(1,), dtype=int64, numpy=array([6])>}]
Three key actions happening under the hood of this method are batching, sharding, and prefetching.
In the code snippet above, dataset is batched by global_batch_size, and
calling experimental_distribute_dataset on it rebatches dataset to a
new batch size that is equal to the global batch size divided by the number
of replicas in sync. We iterate through it using a Pythonic for loop.
x is a tf.distribute.DistributedValues containing data for all replicas,
and each replica gets data of the new batch size.
tf.distribute.Strategy.run will take care of feeding the right per-replica
data in x to the right replica_fn executed on each replica.
Sharding contains autosharding across multiple workers and within every
worker. First, in multi-worker distributed training (i.e. when you use
tf.distribute.experimental.MultiWorkerMirroredStrategy
or tf.distribute.TPUStrategy), autosharding a dataset over a set of
workers means that each worker is assigned a subset of the entire dataset
(if the right tf.data.experimental.AutoShardPolicy is set). This is to
ensure that at each step, a global batch size of non-overlapping dataset
elements will be processed by each worker. Autosharding has a couple of
different options that can be specified using
tf.data.experimental.DistributeOptions. Then, sharding within each worker
means the method will split the data among all the worker devices (if more
than one a present). This will happen regardless of multi-worker
autosharding.
By default, this method adds a prefetch transformation at the end of the
user provided tf.data.Dataset instance. The argument to the prefetch
transformation which is buffer_size is equal to the number of replicas in
sync.
If the above batch splitting and dataset sharding logic is undesirable,
please use
tf.distribute.Strategy.distribute_datasets_from_function
instead, which does not do any automatic batching or sharding for you.
For a tutorial on more usage and properties of this method, refer to the tutorial on distributed input. If you are interested in last partial batch handling, read this section.
| Args | |
|---|---|
dataset
|
tf.data.Dataset that will be sharded across all replicas using
the rules stated above.
|
options
|
tf.distribute.InputOptions used to control options on how this
dataset is distributed.
|
| Returns | |
|---|---|
A tf.distribute.DistributedDataset.
|
experimental_distribute_values_from_function
experimental_distribute_values_from_function(
value_fn
)
Generates tf.distribute.DistributedValues from value_fn.
This function is to generate tf.distribute.DistributedValues to pass
into run, reduce, or other methods that take
distributed values when not using datasets.
| Args | |
|---|---|
value_fn
|
The function to run to generate values. It is called for
each replica with tf.distribute.ValueContext as the sole argument. It
must return a Tensor or a type that can be converted to a Tensor.
|
| Returns | |
|---|---|
A tf.distribute.DistributedValues containing a value for each replica.
|
Example usage:
Return constant value per replica:
strategy = tf.distribute.MirroredStrategy(["GPU:0", "GPU:1"])def value_fn(ctx):return tf.constant(1.)distributed_values = (strategy.experimental_distribute_values_from_function(value_fn))local_result = strategy.experimental_local_results(distributed_values)local_result(<tf.Tensor: shape=(), dtype=float32, numpy=1.0>,<tf.Tensor: shape=(), dtype=float32, numpy=1.0>)Distribute values in array based on replica_id:
strategy = tf.distribute.MirroredStrategy(["GPU:0", "GPU:1"])array_value = np.array([3., 2., 1.])def value_fn(ctx):return array_value[ctx.replica_id_in_sync_group]distributed_values = (strategy.experimental_distribute_values_from_function(value_fn))local_result = strategy.experimental_local_results(distributed_values)local_result(3.0, 2.0)Specify values using num_replicas_in_sync:
strategy = tf.distribute.MirroredStrategy(["GPU:0", "GPU:1"])def value_fn(ctx):return ctx.num_replicas_in_syncdistributed_values = (strategy.experimental_distribute_values_from_function(value_fn))local_result = strategy.experimental_local_results(distributed_values)local_result(2, 2)Place values on devices and distribute:
strategy = tf.distribute.TPUStrategy() worker_devices = strategy.extended.worker_devices multiple_values = [] for i in range(strategy.num_replicas_in_sync): with tf.device(worker_devices[i]): multiple_values.append(tf.constant(1.0)) def value_fn(ctx): return multiple_values[ctx.replica_id_in_sync_group] distributed_values = strategy. experimental_distribute_values_from_function( value_fn)
experimental_local_results
experimental_local_results(
value
)
Returns the list of all local per-replica values contained in value.
| Args | |
|---|---|
value
|
A value returned by experimental_run(), run(), or a variable
created inscope`.
|
| Returns | |
|---|---|
A tuple of values contained in value where ith element corresponds to
ith replica. If value represents a single value, this returns
(value,).
|
experimental_replicate_to_logical_devices
experimental_replicate_to_logical_devices(
tensor
)
Adds annotation that tensor will be replicated to all logical devices.
This adds an annotation to tensor tensor specifying that operations on
tensor will be invoked on all logical devices.
# Initializing TPU system with 2 logical devices and 4 replicas.
resolver = tf.distribute.cluster_resolver.TPUClusterResolver(tpu='')
tf.config.experimental_connect_to_cluster(resolver)
topology = tf.tpu.experimental.initialize_tpu_system(resolver)
device_assignment = tf.tpu.experimental.DeviceAssignment.build(
topology,
computation_shape=[1, 1, 1, 2],
num_replicas=4)
strategy = tf.distribute.TPUStrategy(
resolver, experimental_device_assignment=device_assignment)
iterator = iter(inputs)
@tf.function()
def step_fn(inputs):
images, labels = inputs
images = strategy.experimental_split_to_logical_devices(
inputs, [1, 2, 4, 1])
# model() function will be executed on 8 logical devices with `inputs`
# split 2 * 4 ways.
output = model(inputs)
# For loss calculation, all logical devices share the same logits
# and labels.
labels = strategy.experimental_replicate_to_logical_devices(labels)
output = strategy.experimental_replicate_to_logical_devices(output)
loss = loss_fn(labels, output)
return loss
strategy.run(step_fn, args=(next(iterator),))
Args: tensor: Input tensor to annotate.
| Returns | |
|---|---|
Annotated tensor with identical value as tensor.
|
experimental_split_to_logical_devices
experimental_split_to_logical_devices(
tensor, partition_dimensions
)
Adds annotation that tensor will be split across logical devices.
This adds an annotation to tensor tensor specifying that operations on
tensor will be split among multiple logical devices. Tensor tensor will
be split across dimensions specified by partition_dimensions.
The dimensions of tensor must be divisible by corresponding value in
partition_dimensions.
For example, for system with 8 logical devices, if tensor is an image
tensor with shape (batch_size, width, height, channel) and
partition_dimensions is [1, 2, 4, 1], then tensor will be split
2 in width dimension and 4 way in height dimension and the split
tensor values will be fed into 8 logical devices.
# Initializing TPU system with 8 logical devices and 1 replica.
resolver = tf.distribute.cluster_resolver.TPUClusterResolver(tpu='')
tf.config.experimental_connect_to_cluster(resolver)
topology = tf.tpu.experimental.initialize_tpu_system(resolver)
device_assignment = tf.tpu.experimental.DeviceAssignment.build(
topology,
computation_shape=[1, 2, 2, 2],
num_replicas=1)
# Construct the TPUStrategy. Since we are going to split the image across
# logical devices, here we set `experimental_spmd_xla_partitioning=True`
# so that the partitioning can be compiled in SPMD mode, which usually
# results in faster compilation and smaller HBM requirement if the size of
# input and activation tensors are much bigger than that of the model
# parameters. Note that this flag is suggested but not a hard requirement
# for `experimental_split_to_logical_devices`.
strategy = tf.distribute.TPUStrategy(
resolver, experimental_device_assignment=device_assignment,
experimental_spmd_xla_partitioning=True)
iterator = iter(inputs)
@tf.function()
def step_fn(inputs):
inputs = strategy.experimental_split_to_logical_devices(
inputs, [1, 2, 4, 1])
# model() function will be executed on 8 logical devices with `inputs`
# split 2 * 4 ways.
output = model(inputs)
return output
strategy.run(step_fn, args=(next(iterator),))
Args:
tensor: Input tensor to annotate.
partition_dimensions: An unnested list of integers with the size equal to
rank of tensor specifying how tensor will be partitioned. The
product of all elements in partition_dimensions must be equal to the
total number of logical devices per replica.
| Raises | |
|---|---|
ValueError
|
1) If the size of partition_dimensions does not equal to rank
of |
| Returns | |
|---|---|
Annotated tensor with identical value as tensor.
|
gather
gather(
value, axis
)
Gather value across replicas along axis to the current device.
Given a tf.distribute.DistributedValues or tf.Tensor-like
object value, this API gathers and concatenates value across replicas
along the axis-th dimension. The result is copied to the "current" device,
which would typically be the CPU of the worker on which the program is
running. For tf.distribute.TPUStrategy, it is the first TPU host. For
multi-client tf.distribute.MultiWorkerMirroredStrategy, this is the CPU of
each worker.
This API can only be called in the cross-replica context. For a counterpart
in the replica context, see tf.distribute.ReplicaContext.all_gather.
strategy = tf.distribute.MirroredStrategy(["GPU:0", "GPU:1"])# A DistributedValues with component tensor of shape (2, 1) on each replicadistributed_values = strategy.experimental_distribute_values_from_function(lambda _: tf.identity(tf.constant([[1], [2]])))@tf.functiondef run():return strategy.gather(distributed_values, axis=0)run()<tf.Tensor: shape=(4, 1), dtype=int32, numpy=array([[1],[2],[1],[2]], dtype=int32)>
Consider the following example for more combinations:
strategy = tf.distribute.MirroredStrategy(["GPU:0", "GPU:1", "GPU:2", "GPU:3"])single_tensor = tf.reshape(tf.range(6), shape=(1,2,3))distributed_values = strategy.experimental_distribute_values_from_function(lambda _: tf.identity(single_tensor))@tf.functiondef run(axis):return strategy.gather(distributed_values, axis=axis)axis=0run(axis)<tf.Tensor: shape=(4, 2, 3), dtype=int32, numpy=array([[[0, 1, 2],[3, 4, 5]],[[0, 1, 2],[3, 4, 5]],[[0, 1, 2],[3, 4, 5]],[[0, 1, 2],[3, 4, 5]]], dtype=int32)>axis=1run(axis)<tf.Tensor: shape=(1, 8, 3), dtype=int32, numpy=array([[[0, 1, 2],[3, 4, 5],[0, 1, 2],[3, 4, 5],[0, 1, 2],[3, 4, 5],[0, 1, 2],[3, 4, 5]]], dtype=int32)>axis=2run(axis)<tf.Tensor: shape=(1, 2, 12), dtype=int32, numpy=array([[[0, 1, 2, 0, 1, 2, 0, 1, 2, 0, 1, 2],[3, 4, 5, 3, 4, 5, 3, 4, 5, 3, 4, 5]]], dtype=int32)>
| Args | |
|---|---|
value
|
a tf.distribute.DistributedValues instance, e.g. returned by
Strategy.run, to be combined into a single tensor. It can also be a
regular tensor when used with tf.distribute.OneDeviceStrategy or the
default strategy. The tensors that constitute the DistributedValues
can only be dense tensors with non-zero rank, NOT a tf.IndexedSlices.
|
axis
|
0-D int32 Tensor. Dimension along which to gather. Must be in the range [0, rank(value)). |
| Returns | |
|---|---|
A Tensor that's the concatenation of value across replicas along
axis dimension.
|
reduce
reduce(
reduce_op, value, axis
)
Reduce value across replicas and return result on current device.
strategy = tf.distribute.MirroredStrategy(["GPU:0", "GPU:1"])def step_fn():i = tf.distribute.get_replica_context().replica_id_in_sync_groupreturn tf.identity(i)per_replica_result = strategy.run(step_fn)total = strategy.reduce("SUM", per_replica_result, axis=None)total<tf.Tensor: shape=(), dtype=int32, numpy=1>
To see how this would look with multiple replicas, consider the same example with MirroredStrategy with 2 GPUs:
strategy = tf.distribute.MirroredStrategy(devices=["GPU:0", "GPU:1"])
def step_fn():
i = tf.distribute.get_replica_context().replica_id_in_sync_group
return tf.identity(i)
per_replica_result = strategy.run(step_fn)
# Check devices on which per replica result is:
strategy.experimental_local_results(per_replica_result)[0].device
# /job:localhost/replica:0/task:0/device:GPU:0
strategy.experimental_local_results(per_replica_result)[1].device
# /job:localhost/replica:0/task:0/device:GPU:1
total = strategy.reduce("SUM", per_replica_result, axis=None)
# Check device on which reduced result is:
total.device
# /job:localhost/replica:0/task:0/device:CPU:0
This API is typically used for aggregating the results returned from different replicas, for reporting etc. For example, loss computed from different replicas can be averaged using this API before printing.
There are a number of different tf.distribute APIs for reducing values across replicas:
tf.distribute.ReplicaContext.all_reduce: This differs fromStrategy.reducein that it is for replica context and does not copy the results to the host device.all_reduceshould be typically used for reductions inside the training step such as gradients.tf.distribute.StrategyExtended.reduce_toandtf.distribute.StrategyExtended.batch_reduce_to: These APIs are more advanced versions ofStrategy.reduceas they allow customizing the destination of the result. They are also called in cross replica context.
What should axis be?
Given a per-replica value returned by run, say a
per-example loss, the batch will be divided across all the replicas. This
function allows you to aggregate across replicas and optionally also across
batch elements by specifying the axis parameter accordingly.
For example, if you have a global batch size of 8 and 2
replicas, values for examples [0, 1, 2, 3] will be on replica 0 and
[4, 5, 6, 7] will be on replica 1. With axis=None, reduce will
aggregate only across replicas, returning [0+4, 1+5, 2+6, 3+7].
This is useful when each replica is computing a scalar or some other value
that doesn't have a "batch" dimension (like a gradient or loss).
strategy.reduce("sum", per_replica_result, axis=None)
Sometimes, you will want to aggregate across both the global batch and
all replicas. You can get this behavior by specifying the batch
dimension as the axis, typically axis=0. In this case it would return a
scalar 0+1+2+3+4+5+6+7.
strategy.reduce("sum", per_replica_result, axis=0)
If there is a last partial batch, you will need to specify an axis so
that the resulting shape is consistent across replicas. So if the last
batch has size 6 and it is divided into [0, 1, 2, 3] and [4, 5], you
would get a shape mismatch unless you specify axis=0. If you specify
tf.distribute.ReduceOp.MEAN, using axis=0 will use the correct
denominator of 6. Contrast this with computing reduce_mean to get a
scalar value on each replica and this function to average those means,
which will weigh some values 1/8 and others 1/4.
| Args | |
|---|---|
reduce_op
|
a tf.distribute.ReduceOp value specifying how values should
be combined. Allows using string representation of the enum such as
"SUM", "MEAN".
|
value
|
a tf.distribute.DistributedValues instance, e.g. returned by
Strategy.run, to be combined into a single tensor. It can also be a
regular tensor when used with OneDeviceStrategy or default strategy.
|
axis
|
specifies the dimension to reduce along within each
replica's tensor. Should typically be set to the batch dimension, or
None to only reduce across replicas (e.g. if the tensor has no batch
dimension).
|
| Returns | |
|---|---|
A Tensor.
|
run
run(
fn, args=(), kwargs=None, options=None
)
Run the computation defined by fn on each TPU replica.
Executes ops specified by fn on each replica. If args or kwargs have
tf.distribute.DistributedValues, such as those produced by a
tf.distribute.DistributedDataset from
tf.distribute.Strategy.experimental_distribute_dataset or
tf.distribute.Strategy.distribute_datasets_from_function,
when fn is executed on a particular replica, it will be executed with the
component of tf.distribute.DistributedValues that correspond to that
replica.
fn may call tf.distribute.get_replica_context() to access members such
as all_reduce.
All arguments in args or kwargs should either be nest of tensors or
tf.distribute.DistributedValues containing tensors or composite tensors.
Example usage:
resolver = tf.distribute.cluster_resolver.TPUClusterResolver(tpu='')tf.config.experimental_connect_to_cluster(resolver)tf.tpu.experimental.initialize_tpu_system(resolver)strategy = tf.distribute.TPUStrategy(resolver)@tf.functiondef run():def value_fn(value_context):return value_context.num_replicas_in_syncdistributed_values = (strategy.experimental_distribute_values_from_function(value_fn))def replica_fn(input):return input * 2return strategy.run(replica_fn, args=(distributed_values,))result = run()
| Args | |
|---|---|
fn
|
The function to run. The output must be a tf.nest of Tensors.
|
args
|
(Optional) Positional arguments to fn.
|
kwargs
|
(Optional) Keyword arguments to fn.
|
options
|
(Optional) An instance of tf.distribute.RunOptions specifying
the options to run fn.
|
| Returns | |
|---|---|
Merged return value of fn across replicas. The structure of the return
value is the same as the return value from fn. Each element in the
structure can either be tf.distribute.DistributedValues, Tensor
objects, or Tensors (for example, if running on a single replica).
|
scope
scope()
Context manager to make the strategy current and distribute variables.
This method returns a context manager, and is used as follows:
strategy = tf.distribute.MirroredStrategy(["GPU:0", "GPU:1"])# Variable created inside scope:with strategy.scope():mirrored_variable = tf.Variable(1.)mirrored_variableMirroredVariable:{0: <tf.Variable 'Variable:0' shape=() dtype=float32, numpy=1.0>,1: <tf.Variable 'Variable/replica_1:0' shape=() dtype=float32, numpy=1.0>}# Variable created outside scope:regular_variable = tf.Variable(1.)regular_variable<tf.Variable 'Variable:0' shape=() dtype=float32, numpy=1.0>
What happens when Strategy.scope is entered?
strategyis installed in the global context as the "current" strategy. Inside this scope,tf.distribute.get_strategy()will now return this strategy. Outside this scope, it returns the default no-op strategy.- Entering the scope also enters the "cross-replica context". See
tf.distribute.StrategyExtendedfor an explanation on cross-replica and replica contexts. - Variable creation inside
scopeis intercepted by the strategy. Each strategy defines how it wants to affect the variable creation. Sync strategies likeMirroredStrategy,TPUStrategyandMultiWorkerMiroredStrategycreate variables replicated on each replica, whereasParameterServerStrategycreates variables on the parameter servers. This is done using a customtf.variable_creator_scope. - In some strategies, a default device scope may also be entered: in
MultiWorkerMiroredStrategy, a default device scope of "/CPU:0" is entered on each worker.
What should be in scope and what should be outside?
There are a number of requirements on what needs to happen inside the scope. However, in places where we have information about which strategy is in use, we often enter the scope for the user, so they don't have to do it explicitly (i.e. calling those either inside or outside the scope is OK).
- Anything that creates variables that should be distributed variables
must be called in a
strategy.scope. This can be accomplished either by directly calling the variable creating function within the scope context, or by relying on another API likestrategy.runorkeras.Model.fitto automatically enter it for you. Any variable that is created outside scope will not be distributed and may have performance implications. Some common objects that create variables in TF are Models, Optimizers, Metrics. Such objects should always be initialized in the scope, and any functions that may lazily create variables (e.g.,Model.call(), tracing atf.function, etc.) should similarly be called within scope. Another source of variable creation can be a checkpoint restore - when variables are created lazily. Note that any variable created inside a strategy captures the strategy information. So reading and writing to these variables outside thestrategy.scopecan also work seamlessly, without the user having to enter the scope. - Some strategy APIs (such as
strategy.runandstrategy.reduce) which require to be in a strategy's scope, enter the scope automatically, which means when using those APIs you don't need to explicitly enter the scope yourself. - When a
tf.keras.Modelis created inside astrategy.scope, the Model object captures the scope information. When high level training framework methods such asmodel.compile,model.fit, etc. are then called, the captured scope will be automatically entered, and the associated strategy will be used to distribute the training etc. See a detailed example in distributed keras tutorial. WARNING: Simply callingmodel(..)does not automatically enter the captured scope -- only high level training framework APIs support this behavior:model.compile,model.fit,model.evaluate,model.predictandmodel.savecan all be called inside or outside the scope. - The following can be either inside or outside the scope:
- Creating the input datasets
- Defining
tf.functions that represent your training step - Saving APIs such as
tf.saved_model.save. Loading creates variables, so that should go inside the scope if you want to train the model in a distributed way. - Checkpoint saving. As mentioned above -
checkpoint.restoremay sometimes need to be inside scope if it creates variables.
| Returns | |
|---|---|
| A context manager. |
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