135 lines
5.3 KiB
Python
135 lines
5.3 KiB
Python
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import os
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import threading
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from queue import Empty as EmptyQueue, Queue
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from torch._lazy.device_context import get_device_context
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class ClosureHandler:
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def __init__(self):
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pass
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def run(self, closure):
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"""Run closure function
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Args:
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closure: callable function to run
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"""
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closure()
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def __call__(self, closures):
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for closure in closures:
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self.run(closure)
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class AsyncClosureHandler(ClosureHandler):
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"""Handler for Asynchronous Step Closures
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Args:
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max_queue_size: The maximum length of the closure queue after which
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the training loop will block until closures are evaluated.
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By default, a reasonable limit of a maximum of 100 on the queue.
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This value can be set using the `XLA_MAX_ASYNC_QUEUE` environment
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variable.
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"""
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def __init__(self, max_queue_size=100):
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super().__init__()
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self._closure_queue: Queue = Queue(
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int(os.environ.get("LTC_MAX_ASYNC_QUEUE", max_queue_size))
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)
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self._closure_exception: Queue = Queue()
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self._closure_lock = threading.Lock()
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self._closure_event_loop_finished = threading.Event()
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self._closure_event_loop = None
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def start_event_loop(self):
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"""Start closure event loop if not started"""
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if self._closure_event_loop is None:
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def event_loop():
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# Run loop until closure event is set and closure queue is empty
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while True:
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try:
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closure = self._closure_queue.get(block=True, timeout=3)
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closure()
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self._closure_queue.task_done()
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except EmptyQueue:
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with self._closure_lock:
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if self._closure_queue.empty():
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self._closure_event_loop_finished.set()
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return
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except Exception as e:
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self._closure_exception.put(e)
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return
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self._closure_event_loop = threading.Thread(target=event_loop)
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self._closure_event_loop.start()
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def run(self, closure):
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with self._closure_lock:
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self._closure_queue.put(closure, block=True)
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if (
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self._closure_event_loop is None
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or not self._closure_event_loop.is_alive()
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):
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try:
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e = self._closure_exception.get(block=False)
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raise RuntimeError(
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"Cannot run asynchronous closure due to previously raised exception"
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) from e
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except EmptyQueue:
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self._closure_event_loop = None
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self.start_event_loop()
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def add_step_closure(closure, args=(), run_async=False):
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"""Adds a closure to the list of the ones to be run at the end of the step.
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Many times during model training there is the need to print/report (print to
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console, post to tensorboard, etc...) information which require the content of
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intermediary tensors to be inspected.
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Inspecting different tensors content in different points of the model code
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requires many executions and typically causes performance issues.
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Adding a step closure will ensure that it will be run after the barrier, when
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all the live tensors will be already materialized to device data.
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Live tensors which will include the ones captured by the closure arguments.
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So using `add_step_closure()` will ensure a single execution will be
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performed, even when multiple closures are queued, requiring multiple tensors
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to be inspected.
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Step closures will be run sequentially in the order they have been queued.
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Note that even though using this API the execution will be optimized, it is
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advised to throttle the printing/reporting events once every N steps.
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Args:
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closure (callable): The function to be called.
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args (tuple): The arguments to be passed to the closure.
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run_async: If True, run the closure asynchronously.
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"""
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devctx = get_device_context()
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closures_type = "async_step_closures" if run_async else "step_closures"
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step_closures = getattr(devctx, closures_type, None)
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if step_closures is None:
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step_closures = []
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setattr(devctx, closures_type, step_closures)
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step_closures.append(lambda a=args: closure(*a))
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def run_step_closures():
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devctx = get_device_context()
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async_step_closures = getattr(devctx, "async_step_closures", None)
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if async_step_closures is not None:
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devctx.async_step_closures = []
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async_closure_handler = getattr(devctx, "async_closure_handler", None)
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if async_closure_handler is None:
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async_closure_handler = AsyncClosureHandler()
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devctx.async_closure_handler = async_closure_handler
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async_closure_handler(async_step_closures)
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step_closures = getattr(devctx, "step_closures", None)
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if step_closures is not None:
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devctx.step_closures = []
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closure_handler = getattr(devctx, "closure_handler", None)
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if closure_handler is None:
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closure_handler = ClosureHandler()
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devctx.closure_handler = closure_handler
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closure_handler(step_closures)
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return devctx
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