Step 1: Modify Your Own Training Script Using SageMaker's Distributed Model Parallel Library
Use this section to learn how to customize your training script to use the core features
of the Amazon SageMaker AI model parallelism library. To use the library-specific API functions and
parameters, we recommend you use this documentation alongside the SageMaker model parallel library APIs
The training script examples provided in these sections are simplified and designed to highlight the required changes you must make to use the library. For end-to-end, runnable notebook examples that demonstrate how to use a TensorFlow or PyTorch training script with the SageMaker model parallelism library, see Amazon SageMaker AI model parallelism library v2 examples.
Topics
Split the model of your training script using the SageMaker model parallelism library
There are two ways to modify your training script to set up model splitting: automated splitting or manual splitting.
Automated model splitting
When you use SageMaker's model parallelism library, you can take advantage of automated model splitting, also referred to as automated model partitioning. The library uses a partitioning algorithm that balances memory, minimizes communication between devices, and optimizes performance. You can configure the automated partitioning algorithm to optimize for speed or memory.
Alternatively, you can use manual model splitting. We recommend automated model splitting, unless you are very familiar with the model architecture and have a good idea of how to efficiently partition your model.
How it works
Auto-partitioning occurs during the first training step, when the
smp.step
-decorated function is first called. During this call,
the library first constructs a version of the model on the CPU RAM (to avoid GPU
memory limitations), and then analyzes the model graph and makes a partitioning
decision. Based on this decision, each model partition is loaded on a GPU, and
only then the first step is executed. Because of these analysis and partitioning
steps, the first training step might take longer.
In either framework, the library manages the communication between devices through its own backend, which is optimized for AWS infrastructure.
The auto-partition design adapts to the characteristics of the framework, and the library does the partitioning at the granularity level that is more natural in each framework. For instance, in TensorFlow, each specific operation can be assigned to a different device, whereas in PyTorch, the assignment is done at the module level, where each module consists of multiple operations. The follow section reviews the specifics of the design in each framework.
During the first training step, the model parallelism library internally
runs a tracing step that is meant to construct the model graph and determine
the tensor and parameter shapes. After this tracing step, the library
constructs a tree, which consists of the nested nn.Module
objects in the model, as well as additional data gathered from tracing, such
as the amount of stored nn.Parameters
, and execution time for
each nn.Module
.
Next, the library traverses this tree from the root and runs a
partitioning algorithm that assigns each nn.Module
to a
device, which balances computational load (measured by module execution
time) and memory use (measured by the total stored
nn.Parameter
size and activations). If multiple
nn.Modules
share the same nn.Parameter
,
then these modules are placed on the same device to avoid maintaining
multiple versions of the same parameter. Once the partitioning decision
is made, the assigned modules and weights are loaded to their
devices.
For instructions on how to register the smp.step
decorator to your PyTorch training script, see Automated splitting
with PyTorch.
The model parallelism library analyzes the sizes of the trainable variables and the graph structure, and internally uses a graph partitioning algorithm. This algorithm comes up with a device assignment for each operation, with the objective of minimizing the amount of communication needed across devices, subject to two constraints:
-
Balancing the number of variables stored in each device
-
Balancing the number of operations executed in each device
If you specify speed
for optimize
(in the model
parallelism parameters in the Python SDK), the library tries to balance the
number of operations and tf.Variable
objects in each device.
Otherwise, it tries to balance the total size of
tf.Variables
.
Once the partitioning decision is made, the library creates a
serialized representation of the subgraph that each device needs to
execute and imports them onto each device. While partitioning, the
library places operations that consume the same tf.Variable
and operations that are part of the same Keras layer onto the same
device. It also respects the colocation constraints imposed by
TensorFlow. This means that, for example, if there are two Keras layers
that share a tf.Variable
, then all operations that are part
of these layers are placed on a single device.
For instructions on how to register the smp.step
decorator to your PyTorch training script, see Automated splitting
with TensorFlow.
Comparison of automated model splitting between frameworks
In TensorFlow, the fundamental unit of computation is a tf.Operation
,
and TensorFlow represents the model as a directed acyclic graph (DAG) of
tf.Operation
s, and therefore the model parallelism library
partitions this DAG so that each node goes to one device. Crucially,
tf.Operation
objects are sufficiently rich with customizable
attributes, and they are universal in the sense that every model is guaranteed
to consist of a graph of such objects.
PyTorch on the other hand, does not have an equivalent notion of operation
that is sufficiently rich and universal. The closest unit of computation in
PyTorch that has these characteristics is an nn.Module
, which
is at a much higher granularity level, and this is why the library does
partitioning at this level in PyTorch.
Manual Model Splitting
If you want to manually specify how to partition your model across devices, use
the smp.partition
context manager. For instructions on how to set the
context manager for manual partitioning, see the following pages.
To use this option after making modifications, in Step 2, you'll need to set
auto_partition
to False
, and define a
default_partition
in the framework estimator class of the SageMaker
Python SDK. Any operation that is not explicitly placed on a partition through the
smp.partition
context manager is executed on the
default_partition
. In this case, the automated splitting logic is
bypassed, and each operation is placed based on your specification. Based on the
resulting graph structure, the model parallelism library creates a pipelined
execution schedule automatically.