107 lines
3.7 KiB
Python
107 lines
3.7 KiB
Python
import time
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from typing import Any, Dict, Union
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import numpy as np
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from ray.rllib.utils.framework import try_import_torch
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from ray.rllib.utils.metrics.stats.series import SeriesStats
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from ray.util.annotations import DeveloperAPI
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torch, _ = try_import_torch()
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@DeveloperAPI
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class SumStats(SeriesStats):
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"""A Stats object that tracks the sum of a series of singular values (not vectors)."""
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stats_cls_identifier = "sum"
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def _np_reduce_fn(self, values: np.ndarray) -> float:
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return np.nansum(values)
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def _torch_reduce_fn(self, values: "torch.Tensor"):
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"""Reduce function for torch tensors (stays on GPU)."""
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# torch.nansum not available, use workaround
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clean_values = values[~torch.isnan(values)]
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if len(clean_values) == 0:
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return torch.tensor(0.0, device=values.device)
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return torch.sum(clean_values.float())
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def __init__(self, with_throughput: bool = False, **kwargs):
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"""Initializes a SumStats instance.
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Args:
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throughput: If True, track a throughput estimate based on the time between consecutive calls to reduce().
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"""
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super().__init__(**kwargs)
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self.track_throughput = with_throughput
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# We initialize this to the current time which may result in a low first throughput value
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# It seems reasonable that starting from a checkpoint or starting an experiment results in a low first throughput value
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self._last_throughput_measure_time = time.perf_counter()
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def initialize_throughput_reference_time(self, time: float) -> None:
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assert (
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self.is_root
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), "initialize_throughput_reference_time can only be called on root stats"
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self._last_throughput_measure_time = time
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@property
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def has_throughputs(self) -> bool:
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return self.track_throughput
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@property
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def throughputs(self) -> float:
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"""Returns the throughput since the last reduce."""
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assert (
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self.track_throughput
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), "Throughput tracking is not enabled on this Stats object"
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return self.peek(compile=True) / (
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time.perf_counter() - self._last_throughput_measure_time
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)
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def reduce(self, compile: bool = True) -> Union[Any, "SumStats"]:
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reduce_value = super().reduce(compile=True)
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# Update the last throughput measure time for correct throughput calculations
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if self.track_throughput:
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self._last_throughput_measure_time = time.perf_counter()
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if compile:
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return reduce_value
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return_stats = self.clone()
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return_stats.values = [reduce_value]
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return return_stats
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@staticmethod
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def _get_init_args(stats_object=None, state=None) -> Dict[str, Any]:
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"""Returns the initialization arguments for this Stats object."""
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super_args = SeriesStats._get_init_args(stats_object=stats_object, state=state)
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if state is not None:
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return {
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**super_args,
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"with_throughput": state["track_throughput"],
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}
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elif stats_object is not None:
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return {
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**super_args,
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"with_throughput": stats_object.track_throughput,
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}
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else:
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raise ValueError("Either stats_object or state must be provided")
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def get_state(self) -> Dict[str, Any]:
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"""Returns the state of the stats object."""
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state = super().get_state()
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state["track_throughput"] = self.track_throughput
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return state
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def set_state(self, state: Dict[str, Any]) -> None:
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super().set_state(state)
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self.track_throughput = state["track_throughput"]
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def __repr__(self) -> str:
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return f"SumStats({self.peek()}; window={self._window}; len={len(self)})"
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