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Profiling PyTorch RPC-Based Workloads | ||
====================================== | ||
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In this recipe, you will learn: | ||
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- An overview of the `Distributed RPC Framework`_ | ||
- An overview of the `PyTorch Profiler`_ | ||
- How to use the profiler to profile RPC-based workloads | ||
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Requirements | ||
------------ | ||
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- PyTorch 1.6 | ||
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The instructions for installing PyTorch are | ||
available at `pytorch.org`_. | ||
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What is the Distributed RPC Framework? | ||
--------------------------------------- | ||
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The **Distributed RPC Framework** provides mechanisms for multi-machine model | ||
training through a set of primitives to allow for remote communication, and a | ||
higher-level API to automatically differentiate models split across several machines. | ||
For this recipe, it would be helpful to be familiar with the `Distributed RPC Framework`_ | ||
as well as the `RPC Tutorials`_. | ||
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What is the PyTorch Profiler? | ||
--------------------------------------- | ||
The profiler is a context manager based API that allows for on-demand profiling of | ||
operators in a model's workload. The profiler can be used to analyze various aspects | ||
of a model including execution time, operators invoked, and memory consumption. For a | ||
detailed tutorial on using the profiler to profile a single-node model, please see the | ||
`Profiler Recipe`_. | ||
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How to use the Profiler for RPC-based workloads | ||
----------------------------------------------- | ||
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The profiler supports profiling of calls made of RPC and allows the user to have a | ||
detailed view into the operations that take place on different nodes. To demonstrate an | ||
example of this, let's first set up the RPC framework. The below code snippet will initialize | ||
two RPC workers on the same host, named ``worker0`` and ``worker1`` respectively. The workers will | ||
be spawned as subprocesses, and we set some environment variables required for proper | ||
initialization. | ||
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:: | ||
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import torch | ||
import torch.distributed.rpc as rpc | ||
import torch.autograd.profiler as profiler | ||
import torch.multiprocessing as mp | ||
import os | ||
import logging | ||
import sys | ||
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logging.basicConfig(stream=sys.stdout, level=logging.DEBUG) | ||
logger = logging.getLogger() | ||
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def random_tensor(): | ||
return torch.rand((3, 3), requires_grad=True) | ||
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def worker(rank, world_size): | ||
os.environ["MASTER_ADDR"] = "localhost" | ||
os.environ["MASTER_PORT"] = "29500" | ||
worker_name = f"worker{rank}" | ||
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# Initialize RPC framework. | ||
rpc.init_rpc( | ||
name=worker_name, | ||
rank=rank, | ||
world_size=world_size | ||
) | ||
logger.debug(f"{worker_name} successfully initialized RPC.") | ||
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pass # to be continued below | ||
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logger.debug(f"Rank {rank} waiting for workers and shutting down RPC") | ||
rpc.shutdown() | ||
logger.debug(f"Rank {rank} shutdown RPC") | ||
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if __name__ == '__main__': | ||
# Run 2 RPC workers. | ||
world_size = 2 | ||
mp.spawn(worker, args=(world_size,), nprocs=world_size) | ||
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Running the above program should present you with the following output: | ||
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:: | ||
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DEBUG:root:worker1 successfully initialized RPC. | ||
DEBUG:root:worker0 successfully initialized RPC. | ||
DEBUG:root:Rank 0 waiting for workers and shutting down RPC | ||
DEBUG:root:Rank 1 waiting for workers and shutting down RPC | ||
DEBUG:root:Rank 1 shutdown RPC | ||
DEBUG:root:Rank 0 shutdown RPC | ||
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Now that we have a skeleton setup of our RPC framework, we can move on to | ||
sending RPCs back and forth and using the profiler to obtain a view of what's | ||
happening under the hood. Let's add to the above ``worker`` function: | ||
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:: | ||
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def worker(rank, world_size): | ||
# Above code omitted... | ||
if rank == 0: | ||
dst_worker_rank = (rank + 1) % world_size | ||
dst_worker_name = f"worker{dst_worker_rank}" | ||
t1, t2 = random_tensor(), random_tensor() | ||
# Send and wait RPC completion under profiling scope. | ||
with profiler.profile() as prof: | ||
fut1 = rpc.rpc_async(dst_worker_name, torch.add, args=(t1, t2)) | ||
fut2 = rpc.rpc_async(dst_worker_name, torch.mul, args=(t1, t2)) | ||
# RPCs must be awaited within profiling scope. | ||
fut1.wait() | ||
fut2.wait() | ||
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print(prof.key_averages().table()) | ||
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The aformentioned code creates 2 RPCs, specifying ``torch.add`` and ``torch.mul``, respectively, | ||
to be run with two random input tensors on worker 1. Since we use the ``rpc_async`` API, | ||
we are returned a ``torch.futures.Future`` object, which must be awaited for the result | ||
of the computation. Note that this wait must take place within the scope created by | ||
the profiling context manager in order for the RPC to be accurately profiled. Running | ||
the code with this new worker function should result in the following output: | ||
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:: | ||
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# Some columns are omitted for brevity, exact output subject to randomness | ||
---------------------------------------------------------------- --------------- --------------- --------------- --------------- --------------- --------------- --------------- | ||
Name Self CPU total % Self CPU total CPU total % CPU total CPU time avg Number of Calls Node ID | ||
---------------------------------------------------------------- --------------- --------------- --------------- --------------- --------------- --------------- --------------- | ||
rpc_async#aten::add(worker0 -> worker1) 0.00% 0.000us 0 20.462ms 20.462ms 1 0 | ||
rpc_async#aten::mul(worker0 -> worker1) 0.00% 0.000us 0 5.712ms 5.712ms 1 0 | ||
rpc_async#aten::mul(worker0 -> worker1)#remote_op: mul 1.84% 206.864us 2.69% 302.162us 151.081us 2 1 | ||
rpc_async#aten::add(worker0 -> worker1)#remote_op: add 1.41% 158.501us 1.57% 176.924us 176.924us 1 1 | ||
rpc_async#aten::mul(worker0 -> worker1)#remote_op: output_nr 0.04% 4.980us 0.04% 4.980us 2.490us 2 1 | ||
rpc_async#aten::mul(worker0 -> worker1)#remote_op: is_leaf 0.07% 7.806us 0.07% 7.806us 1.952us 4 1 | ||
rpc_async#aten::add(worker0 -> worker1)#remote_op: empty 0.16% 18.423us 0.16% 18.423us 18.423us 1 1 | ||
rpc_async#aten::mul(worker0 -> worker1)#remote_op: empty 0.14% 15.712us 0.14% 15.712us 15.712us 1 1 | ||
---------------------------------------------------------------- --------------- --------------- --------------- --------------- --------------- --------------- --------------- | ||
Self CPU time total: 11.237ms | ||
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Here we can see that the profiler has profiled our ``rpc_async`` calls made to ``worker1`` | ||
from ``worker0``. In particular, the first 2 entries in the table show details (such as | ||
the operator name, originating worker, and destination worker) about each RPC call made | ||
and the ``CPU total`` column indicates the end-to-end latency of the RPC call. | ||
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We also have visibility into the actual operators invoked remotely on worker 1 due RPC. | ||
We can see operations that took place on ``worker1`` by checking the ``Node ID`` column. For | ||
example, we can interpret the row with name ``rpc_async#aten::mul(worker0 -> worker1)#remote_op: mul`` | ||
as a ``mul`` operation taking place on the remote node, as a result of the RPC sent to ``worker1`` | ||
from ``worker0``, specifying ``worker1`` to run the builtin ``mul`` operator on the input tensors. | ||
Note that names of remote operations are prefixed with the name of the RPC event that resulted | ||
in them. For example, remote operations corresponding to the ``rpc.rpc_async(dst_worker_name, torch.add, args=(t1, t2))`` | ||
call are prefixed with ``rpc_async#aten::mul(worker0 -> worker1)``. | ||
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We can also use the profiler to gain insight into user-defined functions that are executed over RPC. | ||
For example, let's add the following to the above ``worker`` function: | ||
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:: | ||
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# Define somewhere outside of worker() func. | ||
def udf_with_ops(): | ||
import time | ||
time.sleep(1) | ||
t1, t2 = random_tensor(), random_tensor() | ||
torch.add(t1, t2) | ||
torch.mul(t1, t2) | ||
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def worker(rank, world_size): | ||
# Above code omitted | ||
with profiler.profile() as p: | ||
fut = rpc.rpc_async(dst_worker_name, udf_with_ops) | ||
fut.wait() | ||
print(p.key_averages().table()) | ||
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The above code creates a user-defined function that sleeps for 1 second, and then executes various | ||
operators. Similar to what we've done above, we send an RPC to the remote worker, specifying it to | ||
run our user-defined function. Running this code should result in the following output: | ||
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:: | ||
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# Exact output subject to randomness | ||
-------------------------------------------------------------------- --------------- --------------- --------------- --------------- --------------- --------------- --------------- | ||
Name Self CPU total % Self CPU total CPU total % CPU total CPU time avg Number of Calls Node ID | ||
-------------------------------------------------------------------- --------------- --------------- --------------- --------------- --------------- --------------- --------------- | ||
rpc_async#udf_with_ops(worker0 -> worker1) 0.00% 0.000us 0 1.008s 1.008s 1 0 | ||
rpc_async#udf_with_ops(worker0 -> worker1)#remote_op: rand 12.58% 80.037us 47.09% 299.589us 149.795us 2 1 | ||
rpc_async#udf_with_ops(worker0 -> worker1)#remote_op: empty 15.40% 98.013us 15.40% 98.013us 24.503us 4 1 | ||
rpc_async#udf_with_ops(worker0 -> worker1)#remote_op: uniform_ 22.85% 145.358us 23.87% 151.870us 75.935us 2 1 | ||
rpc_async#udf_with_ops(worker0 -> worker1)#remote_op: is_complex 1.02% 6.512us 1.02% 6.512us 3.256us 2 1 | ||
rpc_async#udf_with_ops(worker0 -> worker1)#remote_op: add 25.80% 164.179us 28.43% 180.867us 180.867us 1 1 | ||
rpc_async#udf_with_ops(worker0 -> worker1)#remote_op: mul 20.48% 130.293us 31.43% 199.949us 99.975us 2 1 | ||
rpc_async#udf_with_ops(worker0 -> worker1)#remote_op: output_nr 0.71% 4.506us 0.71% 4.506us 2.253us 2 1 | ||
rpc_async#udf_with_ops(worker0 -> worker1)#remote_op: is_leaf 1.16% 7.367us 1.16% 7.367us 1.842us 4 1 | ||
-------------------------------------------------------------------- --------------- --------------- --------------- --------------- --------------- --------------- --------------- | ||
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Here we can see that the user-defined function has successfully been profiled with its name | ||
``(rpc_async#udf_with_ops(worker0 -> worker1))``, and has the CPU total time we would roughly expect | ||
(slightly greater than 1s given the ``sleep``). Similar to the above profiling output, we can see the | ||
remote operators that have been executed on worker 1 as part of executing this RPC request. | ||
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Lastly, we can visualize remote execution using the tracing functionality provided by the profiler. | ||
Let's add the following code to the above ``worker`` function: | ||
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:: | ||
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def worker(rank, world_size): | ||
# Above code omitted | ||
# Will generate trace for above profiling output | ||
trace_file = "/tmp/trace.json" | ||
prof.export_chrome_trace(trace_file) | ||
logger.debug(f"Wrote trace to {trace_file}") | ||
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Now, we can load the trace file in Chrome (``chrome://tracing``). We should see output similar to | ||
the following: | ||
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.. image:: ../_static/img/rpc_trace_img.png | ||
:scale: 25 % | ||
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As we can see, we have traced our RPC requests and can also visualize traces of the remote operations, | ||
in this case, given in the trace row for ``node_id: 1``. | ||
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Putting it all together, we have the following code for this recipe: | ||
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:: | ||
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import torch | ||
import torch.distributed.rpc as rpc | ||
import torch.autograd.profiler as profiler | ||
import torch.multiprocessing as mp | ||
import os | ||
import logging | ||
import sys | ||
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logging.basicConfig(stream=sys.stdout, level=logging.DEBUG) | ||
logger = logging.getLogger() | ||
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def random_tensor(): | ||
return torch.rand((3, 3), requires_grad=True) | ||
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def udf_with_ops(): | ||
import time | ||
time.sleep(1) | ||
t1, t2 = random_tensor(), random_tensor() | ||
torch.add(t1, t2) | ||
torch.mul(t1, t2) | ||
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def worker(rank, world_size): | ||
os.environ["MASTER_ADDR"] = "localhost" | ||
os.environ["MASTER_PORT"] = "29500" | ||
worker_name = f"worker{rank}" | ||
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# Initialize RPC framework. | ||
rpc.init_rpc( | ||
name=worker_name, | ||
rank=rank, | ||
world_size=world_size | ||
) | ||
logger.debug(f"{worker_name} successfully initialized RPC.") | ||
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if rank == 0: | ||
dst_worker_rank = (rank + 1) % world_size | ||
dst_worker_name = f"worker{dst_worker_rank}" | ||
t1, t2 = random_tensor(), random_tensor() | ||
# Send and wait RPC completion under profiling scope. | ||
with profiler.profile() as prof: | ||
fut1 = rpc.rpc_async(dst_worker_name, torch.add, args=(t1, t2)) | ||
fut2 = rpc.rpc_async(dst_worker_name, torch.mul, args=(t1, t2)) | ||
# RPCs must be awaited within profiling scope. | ||
fut1.wait() | ||
fut2.wait() | ||
print(prof.key_averages().table()) | ||
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with profiler.profile() as p: | ||
fut = rpc.rpc_async(dst_worker_name, udf_with_ops) | ||
fut.wait() | ||
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print(p.key_averages().table()) | ||
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trace_file = "/tmp/trace.json" | ||
prof.export_chrome_trace(trace_file) | ||
logger.debug(f"Wrote trace to {trace_file}") | ||
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logger.debug(f"Rank {rank} waiting for workers and shutting down RPC") | ||
rpc.shutdown() | ||
logger.debug(f"Rank {rank} shutdown RPC") | ||
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if __name__ == '__main__': | ||
# Run 2 RPC workers. | ||
world_size = 2 | ||
mp.spawn(worker, args=(world_size,), nprocs=world_size) | ||
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Learn More | ||
------------------- | ||
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- `pytorch.org`_ for installation instructions, and more documentation | ||
and tutorials. | ||
- `Distributed RPC Framework`_ for RPC framework and API reference. | ||
- `Full profiler documentation`_ for profiler documentation. | ||
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.. _pytorch.org: https://pytorch.org/ | ||
.. _Full profiler documentation: https://pytorch.org/docs/stable/autograd.html#profiler | ||
.. _Pytorch Profiler: https://pytorch.org/docs/stable/autograd.html#profiler | ||
.. _Distributed RPC Framework: https://pytorch.org/docs/stable/rpc.html | ||
.. _RPC Tutorials: https://pytorch.org/tutorials/intermediate/rpc_tutorial.html | ||
.. _Profiler Recipe: https://pytorch.org/tutorials/recipes/recipes/profiler.html |
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