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"""
|
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|
This module implements distributed training optimizations for TorchDynamo backends.
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It provides functionality to optimize models wrapped in DistributedDataParallel (DDP)
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|
by intelligently splitting compiled graphs to align with DDP's gradient synchronization
|
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|
boundaries. Key features include:
|
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|
|
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- Graph partitioning based on parameter bucket sizes
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- Optimization of allreduce operations for distributed training
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- Support for parameter ignoring and buffer handling
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- Submodule compilation and management
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- Debugging utilities for distributed training
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The main component is the DDPOptimizer class, which handles graph splitting and
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|
recompilation to enable efficient distributed training while maintaining the benefits
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|
of compilation.
|
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|
"""
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import logging
|
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|
import traceback
|
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|
from dataclasses import dataclass, field
|
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|
from typing import Any, Optional
|
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from unittest import mock
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import torch
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from torch import fx
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from torch._dynamo.output_graph import GraphCompileReason
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from torch._dynamo.utils import deepcopy_to_fake_tensor, detect_fake_mode
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from torch._logging import trace_structured
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from torch.fx.node import Node
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log = logging.getLogger(__name__)
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ddp_graph_log = torch._logging.getArtifactLogger(__name__, "ddp_graphs")
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def args_str(args):
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if torch.is_tensor(args):
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return f"T[{args.shape}]"
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elif isinstance(args, tuple):
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return f"tuple({', '.join([args_str(x) for x in args])})"
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elif isinstance(args, list):
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return f"list({', '.join([args_str(x) for x in args])})"
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else:
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return str(args)
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@dataclass
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class Bucket:
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size: int = 0
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params: list[str] = field(default_factory=list)
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nodes: list[fx.Node] = field(default_factory=list)
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param_ids: list = field(default_factory=list)
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opcount_increased_to_capture_external_output: int = 0
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paramsize_before_opcount_increase: int = 0
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def bucket_has_external_output(bucket: Bucket) -> bool:
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nodes_in_bucket = set()
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for node in bucket.nodes:
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nodes_in_bucket.add(node)
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for user in node.users:
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if user not in nodes_in_bucket:
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return True
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return False
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def pretty_print_buckets(buckets: list[Bucket], bucket_bytes_cap: int):
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headers = ("Index", "Size (b)", "Param Names")
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rows = []
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extended_buckets = []
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for idx, bucket in enumerate(reversed(buckets)):
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if len(bucket.params) > 0:
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rows.append((idx, bucket.size, bucket.params[0]))
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rows.extend((None, None, param) for param in bucket.params[1:])
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if bucket.opcount_increased_to_capture_external_output > 0:
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extended_buckets.append(
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|
(
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idx,
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bucket.opcount_increased_to_capture_external_output,
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bucket.size - bucket.paramsize_before_opcount_increase,
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)
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)
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if len(rows):
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log.info(
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|
"\nDDPOptimizer used bucket cap %s and created %d buckets. Enable debug logs for detailed bucket info.",
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|
bucket_bytes_cap,
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len(buckets),
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|
)
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if len(extended_buckets):
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log.warning(
|
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|
"Some buckets were extended beyond their requested parameter capacities"
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" in order to ensure each subgraph has an output node, required for fx graph partitioning."
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" This can be the case when a subgraph would have only contained nodes performing inplace mutation,"
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" and returning no logical outputs. This should not be a problem, unless it results in too few graph"
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|
" partitions for optimal DDP performance."
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)
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try:
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from tabulate import tabulate
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log.debug(
|
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|
"\nDDPOptimizer produced the following bucket assignments:\n%s",
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tabulate(rows, headers=headers, tablefmt="simple_grid"),
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)
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if len(extended_buckets):
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|
log.warning(
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|
|
"DDPOptimizer extended these buckets to ensure per-subgraph output nodes:\n%s",
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|
tabulate(
|
|
|
extended_buckets,
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|
|
headers=("Index", "Extra Ops", "Extra Param Size (b)"),
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|
tablefmt="simple_grid",
|
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|
),
|
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|
)
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|
except ImportError:
|
|
|
log.debug(
|
|
|
"Please `pip install tabulate` in order to display ddp bucket sizes and diagnostic information."
|
|
|
)
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|
else:
|
|
|
log.debug("DDPOptimizer captured no parameters and did not split this graph.")
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def has_higher_order_op(gm):
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|
|
for node in gm.graph.nodes:
|
|
|
if node.op == "get_attr":
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|
|
maybe_param = getattr(gm, node.target)
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|
|
if isinstance(maybe_param, torch.fx.GraphModule):
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|
|
return True
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|
return False
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|
|
def propagate_metadata(orig_gm, split_gm) -> None:
|
|
|
for name, module in split_gm.named_modules():
|
|
|
if "." not in name and len(name):
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|
module.meta = orig_gm.meta
|
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|
module._param_name_to_source = orig_gm._param_name_to_source
|
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|
|
def propagate_dynamo_source(orig_gm, split_gm) -> None:
|
|
|
name_to_dynamo_source = {}
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|
|
for node in orig_gm.graph.find_nodes(op="placeholder"):
|
|
|
name_to_dynamo_source[node.name] = node._dynamo_source
|
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|
|
|
for name, module in split_gm.named_modules():
|
|
|
if "." not in name and len(name):
|
|
|
for node in module.graph.find_nodes(op="placeholder"):
|
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|
node._dynamo_source = name_to_dynamo_source.get(node.name, None)
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|
|
class SubmodCompiler(torch.fx.interpreter.Interpreter):
|
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|
def __init__(self, module, compiler, fake_mode) -> None:
|
|
|
super().__init__(module)
|
|
|
self.compiler = compiler
|
|
|
self.fake_mode = fake_mode
|
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|
|
|
|
def compile_submod(self, input_mod, args, kwargs):
|
|
|
"""
|
|
|
Compile the submodule,
|
|
|
using a wrapper to make sure its output is always a tuple,
|
|
|
which is required by AotAutograd based compilers
|
|
|
"""
|
|
|
assert len(kwargs) == 0, "We assume only args for these modules"
|
|
|
|
|
|
class WrapperModule(torch.nn.Module):
|
|
|
def __init__(self, submod, unwrap_singleton_tuple) -> None:
|
|
|
super().__init__()
|
|
|
self.submod = submod
|
|
|
self.unwrap_singleton_tuple = unwrap_singleton_tuple
|
|
|
|
|
|
def forward(self, *args):
|
|
|
x = self.submod(*args)
|
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|
|
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|
|
|
if self.unwrap_singleton_tuple and isinstance(x, (tuple, list)):
|
|
|
return x[0]
|
|
|
return x
|
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|
|
|
unwrap_singleton_tuple = False
|
|
|
for sn in input_mod.graph.nodes:
|
|
|
if sn.op == "output":
|
|
|
if not isinstance(sn.args[0], tuple):
|
|
|
unwrap_singleton_tuple = True
|
|
|
sn.args = (sn.args,)
|
|
|
|
|
|
input_mod.recompile()
|
|
|
input_mod.compile_subgraph_reason = GraphCompileReason(
|
|
|
"DDPOptimizer intentional graph-break (See Note [DDPOptimizer])."
|
|
|
" Set `torch._dynamo.config.optimize_ddp = False` to disable.",
|
|
|
[
|
|
|
|
|
|
traceback.FrameSummary(__file__, 0, DDPOptimizer),
|
|
|
],
|
|
|
)
|
|
|
|
|
|
wrapper = WrapperModule(
|
|
|
self.compiler(input_mod, args),
|
|
|
unwrap_singleton_tuple,
|
|
|
)
|
|
|
return wrapper
|
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|
|
|
|
|
def run_node(self, n: Node) -> Any:
|
|
|
args, kwargs = self.fetch_args_kwargs_from_env(n)
|
|
|
new_args = []
|
|
|
assert self.fake_mode
|
|
|
for arg in args:
|
|
|
if isinstance(arg, torch.Tensor) and not isinstance(
|
|
|
arg, torch._subclasses.FakeTensor
|
|
|
):
|
|
|
new_args.append(torch._dynamo.utils.to_fake_tensor(arg, self.fake_mode))
|
|
|
else:
|
|
|
new_args.append(arg)
|
|
|
|
|
|
log.debug("run_node %s, %s got args %s", n.op, n.target, args_str(args))
|
|
|
assert isinstance(args, tuple)
|
|
|
assert isinstance(kwargs, dict)
|
|
|
|
|
|
if n.op == "call_module":
|
|
|
real_mod = self.fetch_attr(n.target)
|
|
|
if self.fake_mode:
|
|
|
curr_submod = deepcopy_to_fake_tensor(real_mod, self.fake_mode)
|
|
|
else:
|
|
|
curr_submod = real_mod
|
|
|
|
|
|
ddp_graph_log.debug("\n---%s graph---\n%s", n.target, curr_submod.graph)
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
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|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
class FakeifyFirstAOTInvocationGuard:
|
|
|
def __init__(self) -> None:
|
|
|
self.tc = torch._guards.TracingContext.try_get()
|
|
|
assert self.tc
|
|
|
torch._guards.TracingContext.try_get().fakify_first_call = True
|
|
|
|
|
|
def __del__(self) -> None:
|
|
|
self.tc.fakify_first_call = False
|
|
|
|
|
|
|
|
|
has_tracing_context = torch._guards.TracingContext.try_get() is not None
|
|
|
if has_tracing_context:
|
|
|
g = FakeifyFirstAOTInvocationGuard()
|
|
|
|
|
|
from torch._dynamo.utils import counters
|
|
|
|
|
|
init = counters["aot_autograd"]["total"]
|
|
|
compiled_submod_real = self.compile_submod(real_mod, new_args, kwargs)
|
|
|
|
|
|
|
|
|
|
|
|
invoked_aot_autograd = init != counters["aot_autograd"]["total"]
|
|
|
|
|
|
|
|
|
|
|
|
self.module.delete_submodule(n.target)
|
|
|
n.target = "compiled_" + n.target
|
|
|
self.module.add_submodule(n.target, compiled_submod_real)
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
with (
|
|
|
self.fake_mode,
|
|
|
mock.patch.object(self.fake_mode, "allow_non_fake_inputs", True),
|
|
|
):
|
|
|
if has_tracing_context and invoked_aot_autograd:
|
|
|
out = compiled_submod_real(*new_args, **kwargs)
|
|
|
|
|
|
assert all(
|
|
|
(not isinstance(t, torch.Tensor) or type(t) is not torch.Tensor)
|
|
|
for t in (out if isinstance(out, (list, tuple)) else [out])
|
|
|
)
|
|
|
return out
|
|
|
else:
|
|
|
return curr_submod(*new_args, **kwargs)
|
|
|
else:
|
|
|
|
|
|
return getattr(self, n.op)(n.target, new_args, kwargs)
|
|
|
|
|
|
|
|
|
class DDPOptimizer:
|
|
|
"""Note [DDPOptimizer]
|
|
|
DDPOptimizer applies when dynamo compiles models wrapped in DistributedDataParallel (DDP),
|
|
|
breaking the dynamo graph into chunks to compile separately, with the breaks aligning to
|
|
|
the boundaries of gradient-allreduce buckets chosen by DDP.
|
|
|
|
|
|
Background/Motivation
|
|
|
- DDP uses allreduce collectives to synchronize partial gradients computed on different workers
|
|
|
- DDP groups gradient allreduces into 'buckets' to optimize communication efficiency of all-reduce
|
|
|
- Parameters grouped into buckets are assumed to be adjacent in time, so they become ready
|
|
|
at around the same time during backward and thus can share the same allreduce efficiently
|
|
|
- Allreduces must overlap with backward compute for optimal training performance
|
|
|
- DDP schedules allreduces using 'hooks' fired from the c++ autograd engine in pytorch, which
|
|
|
operates when individual grads become 'ready'
|
|
|
- Dynamo+AOTAutograd produces a single fused graph that runs 'atomically' from the perspective of the
|
|
|
autograd engine, such that all gradients become 'ready' at the same time. Hooks fire after the whole
|
|
|
fused backward function executes, preventing any overlap of compute and communication
|
|
|
|
|
|
Algorithm
|
|
|
- DDPOptimizer starts off with an FX graph traced by dynamo which represents forward. It can traverse
|
|
|
this graph in reverse order to determine the true order that gradients will become ready during backward.
|
|
|
- Parameter sizes are counted in reverse order, up to a bucket size limit, at which point a new bucket is started
|
|
|
and a graph break introduced
|
|
|
- Each of the subgraphs is compiled by the compiler provided to dynamo by the user, and then fused back together
|
|
|
into an outer module that is returned to the user
|
|
|
|
|
|
Notes
|
|
|
- It would be better to enforce (by adding an API to DDP) that the bucket splits chosen here are used by DDP,
|
|
|
and that DDP does not need to detect or optimize bucket order by observing execution at runtime, as it does
|
|
|
in eager.
|
|
|
- If Dynamo can't capture a whole graph for the portion of the model wrapped by DDP, this algorithm will currently
|
|
|
produce splits that do not necessarily align with the buckets used by DDP. This should result in performance
|
|
|
degradation approaching the baseline case where graph-splits are not used, but not worse.
|
|
|
- If the backend compiler fails to compile a single subgraph, it will execute eagerly despite the rest of the
|
|
|
subgraphs being compiled
|
|
|
- DDP has a 'parameters_and_buffers_to_ignore' field, which DDPOptimizer attempts to honor by reading markers
|
|
|
left by DDP on individual parameters. In cases where other transformations, such as reparameterization, are
|
|
|
also used, the ignore markers could be lost. If DDPOptimizer fails to ignore a parameter ignored by DDP,
|
|
|
it is not catastrophic but could impact performance by choosing sub-optimal bucket splits.
|
|
|
- DDPOptimizer always ignores all buffers, regardless of their ignore flag, since buffers do not require gradients,
|
|
|
and therefore aren't allreduced by DDP. (They are broadcast during forward, but this is not covered by
|
|
|
DDPOptimizer)
|
|
|
|
|
|
Debugging
|
|
|
- Generally, it is easiest to debug DDPOptimizer in a single process program, using pdb.
|
|
|
- In many cases, the log messages are helpful (they show bucket size assignments)-
|
|
|
just set TORCH_LOGS env to include any of 'dynamo', 'distributed', or 'dist_ddp'.
|
|
|
- See `benchmarks/dynamo/distributed.py` for a simple harness that will run a toy model or a torchbench model
|
|
|
in a single process (or with torchrun, in multiple processes)
|
|
|
|
|
|
Args:
|
|
|
bucket_bytes_cap (int): Controls the size of buckets, in bytes, used to determine graphbreaks. Should be
|
|
|
set to match the equivalent parameter on the original DDP module.
|
|
|
|
|
|
backend_compile_fn (callable): A dynamo compiler function, to be invoked to compile each subgraph.
|
|
|
|
|
|
first_bucket_cap (int): Controls the size of the first bucket. Should match DDP's first bucket cap. DDP
|
|
|
special-cases the first bucket size since it is sometimes optimal to start a small allreduce early.
|
|
|
|
|
|
"""
|
|
|
|
|
|
def __init__(
|
|
|
self,
|
|
|
bucket_bytes_cap: int,
|
|
|
backend_compile_fn,
|
|
|
first_bucket_cap: Optional[int] = None,
|
|
|
) -> None:
|
|
|
if first_bucket_cap is not None:
|
|
|
self.first_bucket_cap = first_bucket_cap
|
|
|
elif torch.distributed.is_available():
|
|
|
|
|
|
self.first_bucket_cap = torch.distributed._DEFAULT_FIRST_BUCKET_BYTES
|
|
|
else:
|
|
|
self.first_bucket_cap = bucket_bytes_cap
|
|
|
|
|
|
self.bucket_bytes_cap = bucket_bytes_cap
|
|
|
assert self.first_bucket_cap <= self.bucket_bytes_cap, (
|
|
|
"First bucket should be smaller/equal to other buckets to get comms warmed up ASAP"
|
|
|
)
|
|
|
|
|
|
self.backend_compile_fn = backend_compile_fn
|
|
|
|
|
|
def _ignore_parameter(self, parameter):
|
|
|
return hasattr(parameter, "_ddp_ignored") and parameter._ddp_ignored
|
|
|
|
|
|
def add_param(self, bucket, param, name):
|
|
|
bucket.size += param.untyped_storage().nbytes()
|
|
|
bucket.params.append(name)
|
|
|
bucket.param_ids.append(id(param))
|
|
|
|
|
|
def add_module_params_to_bucket(self, mod, bucket, processed_modules, prefix):
|
|
|
processed_modules.add(mod)
|
|
|
for name, param in mod.named_parameters():
|
|
|
if param.requires_grad and not self._ignore_parameter(param):
|
|
|
self.add_param(bucket, param, f"{prefix}_{name}")
|
|
|
|
|
|
def add_param_args(self, bucket, node):
|
|
|
for arg in node.args:
|
|
|
if not isinstance(arg, torch.fx.node.Node):
|
|
|
continue
|
|
|
if arg.op != "placeholder":
|
|
|
continue
|
|
|
param = arg.meta["example_value"]
|
|
|
if (
|
|
|
isinstance(param, torch.nn.Parameter)
|
|
|
and param.requires_grad
|
|
|
and not self._ignore_parameter(param)
|
|
|
):
|
|
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self.add_param(bucket, param, arg.target)
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def compile_fn(self, gm: fx.GraphModule, example_inputs: list[torch.Tensor]):
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"""
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|
Implements graph splitting, first determining a set of of buckets by counting
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|
parameter sizes in reverse graph order, then invoking the user/backend compiler
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to compile each subgraph. Finally, stiches compiled graphs into one graphmodule
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|
and returns its callable.
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"""
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buckets = [Bucket()]
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processed_modules = set()
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for node in reversed(gm.graph.nodes):
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|
if node.op in ("output", "placeholder"):
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|
continue
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if (
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|
buckets[0].size >= self.bucket_bytes_cap
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or len(buckets) == 1
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|
and buckets[0].size >= self.first_bucket_cap
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|
):
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if bucket_has_external_output(buckets[0]):
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buckets.insert(0, Bucket())
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else:
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|
|
|
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if buckets[0].opcount_increased_to_capture_external_output == 0:
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|
buckets[0].paramsize_before_opcount_increase = buckets[0].size
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|
buckets[0].opcount_increased_to_capture_external_output += 1
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|
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|
if node.op == "call_function":
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|
self.add_param_args(buckets[0], node)
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|
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|
elif node.op == "call_module":
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|
target_mod = gm.get_submodule(node.target)
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|
if target_mod not in processed_modules:
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|
self.add_module_params_to_bucket(
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|
target_mod, buckets[0], processed_modules, node.target
|
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|
)
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|
|
elif node.op == "call_method":
|
|
|
if isinstance(node.args[0].target, str):
|
|
|
target_mod = None
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|
|
try:
|
|
|
target_mod = gm.get_submodule(node.args[0].target)
|
|
|
except AttributeError:
|
|
|
pass
|
|
|
if target_mod is not None and target_mod not in processed_modules:
|
|
|
self.add_module_params_to_bucket(
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|
|
target_mod, buckets[0], processed_modules, node.target
|
|
|
)
|
|
|
|
|
|
|
|
|
|
|
|
self.add_param_args(buckets[0], node)
|
|
|
|
|
|
elif node.op == "get_attr":
|
|
|
maybe_param = getattr(gm, node.target)
|
|
|
if (
|
|
|
isinstance(maybe_param, torch.nn.Parameter)
|
|
|
and maybe_param.requires_grad
|
|
|
and not self._ignore_parameter(maybe_param)
|
|
|
):
|
|
|
self.add_param(buckets[0], maybe_param, node.target)
|
|
|
|
|
|
|
|
|
|
|
|
buckets[0].nodes.append(node)
|
|
|
|
|
|
if len(buckets) > 1 and buckets[0].size == 0:
|
|
|
|
|
|
buckets[1].nodes.extend(buckets[0].nodes)
|
|
|
assert len(buckets[0].params) == 0, "Params should be empty if size is 0"
|
|
|
del buckets[0]
|
|
|
|
|
|
|
|
|
self.buckets = buckets
|
|
|
pretty_print_buckets(buckets, self.bucket_bytes_cap)
|
|
|
|
|
|
if len(buckets) == 1:
|
|
|
|
|
|
return self.backend_compile_fn(gm, example_inputs)
|
|
|
|
|
|
|
|
|
partition_map = {}
|
|
|
for idx, b in enumerate(buckets):
|
|
|
for node in b.nodes:
|
|
|
partition_map[node] = idx
|
|
|
|
|
|
split_gm = fx.passes.split_module.split_module(
|
|
|
gm, None, lambda node: partition_map[node]
|
|
|
)
|
|
|
|
|
|
|
|
|
propagate_dynamo_source(gm, split_gm)
|
|
|
propagate_metadata(gm, split_gm)
|
|
|
|
|
|
debug_str = (
|
|
|
f"\n---orig graph---\n{gm.graph}\n"
|
|
|
+ f"\n---split graph---\n{split_gm.graph}\n"
|
|
|
)
|
|
|
for name, module in split_gm.named_modules():
|
|
|
if "." not in name and len(name):
|
|
|
|
|
|
debug_str += f"\n---{name} graph---\n{module.graph}\n"
|
|
|
debug_str += "\n---------------\n"
|
|
|
ddp_graph_log.debug(debug_str)
|
|
|
|
|
|
trace_structured(
|
|
|
"optimize_ddp_split_graph",
|
|
|
payload_fn=lambda: split_gm.print_readable(print_output=False),
|
|
|
)
|
|
|
for name, module in split_gm.named_modules():
|
|
|
if "." not in name and len(name):
|
|
|
trace_structured(
|
|
|
"optimize_ddp_split_child",
|
|
|
lambda: {"name": name},
|
|
|
payload_fn=lambda: module.print_readable(print_output=False),
|
|
|
)
|
|
|
|
|
|
fake_mode = detect_fake_mode(example_inputs)
|
|
|
if fake_mode is None:
|
|
|
fake_mode = torch._subclasses.fake_tensor.FakeTensorMode()
|
|
|
|
|
|
submod_compiler = SubmodCompiler(split_gm, self.backend_compile_fn, fake_mode)
|
|
|
with torch._dynamo.utils._disable_saved_tensors_hooks_during_tracing():
|
|
|
submod_compiler.run(*example_inputs)
|
|
|
split_gm.recompile()
|
|
|
|
|
|
ddp_graph_log.debug(
|
|
|
"\n---final graph---\n%s\n---------------\n", split_gm.graph
|
|
|
)
|
|
|
return split_gm
|
|
|
|