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144 lines
5.0 KiB
Python
144 lines
5.0 KiB
Python
# -*- coding: utf-8 -*-
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"""Simple comparison of holder performances, relative to unique_ptr holder."""
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from __future__ import absolute_import, division, print_function
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import collections
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import sys
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import time
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import pybind11_ubench_holder_comparison as m
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number_bucket_pc = None
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def pflush(*args, **kwargs):
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result = print(*args, **kwargs)
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# Using "file" here because it is the name of the built-in keyword argument.
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file = kwargs.get("file", sys.stdout) # pylint: disable=redefined-builtin
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file.flush() # file object must have a flush method.
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return result
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def run(args):
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if not args:
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size_exponent_min = 0
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size_exponent_max = 16
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size_exponent_step = 4
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call_repetitions_first_pass = 100
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call_repetitions_target_elapsed_secs = 0.1
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num_samples = 10
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selected_holder_type = "all"
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else:
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assert len(args) == 7, (
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"size_exponent_min size_exponent_max size_exponent_step"
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" call_repetitions_first_pass call_repetitions_target_elapsed_secs"
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" num_samples selected_holder_type"
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)
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size_exponent_min = int(args[0])
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size_exponent_max = int(args[1])
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size_exponent_step = int(args[2])
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call_repetitions_first_pass = int(args[3])
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call_repetitions_target_elapsed_secs = float(args[4])
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num_samples = int(args[5])
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selected_holder_type = args[6]
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pflush(
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"command-line arguments:",
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size_exponent_min,
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size_exponent_max,
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size_exponent_step,
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call_repetitions_first_pass,
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"%.3f" % call_repetitions_target_elapsed_secs,
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num_samples,
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selected_holder_type,
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)
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pflush("sizeof_smart_holder:", m.sizeof_smart_holder())
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def find_call_repetitions(
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callable,
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time_delta_floor=1.0e-6,
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target_elapsed_secs_multiplier=1.05, # Empirical.
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target_elapsed_secs_tolerance=0.05,
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max_iterations=100,
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):
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td_target = (
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call_repetitions_target_elapsed_secs * target_elapsed_secs_multiplier
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)
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crd = call_repetitions_first_pass
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for _ in range(max_iterations):
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td = callable(crd)
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crd = max(1, int(td_target * crd / max(td, time_delta_floor)))
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if abs(td - td_target) / td_target < target_elapsed_secs_tolerance:
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return crd
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raise RuntimeError("find_call_repetitions failure: max_iterations exceeded.")
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for size_exponent in range(
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size_exponent_min, size_exponent_max + 1, size_exponent_step
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):
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data_size = 2 ** size_exponent
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pflush(data_size, "data_size")
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ratios = collections.defaultdict(list)
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call_repetitions = None
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for _ in range(num_samples):
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row_0 = None
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for nb_label, nb_type in [
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("up", m.number_bucket_up),
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("sp", m.number_bucket_sp),
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("pu", m.number_bucket_pu),
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("sh", m.number_bucket_sh),
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("pc", number_bucket_pc),
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]:
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if nb_label == "pc" and nb_type is None:
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continue
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if selected_holder_type != "all" and nb_label != selected_holder_type:
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continue
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nb1 = nb_type(data_size)
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nb2 = nb_type(data_size)
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def many_sum(call_repetitions):
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assert int(round(nb1.sum())) == data_size
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t0 = time.time()
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for _ in range(call_repetitions):
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nb1.sum()
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return time.time() - t0
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def many_add(call_repetitions):
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assert nb1.add(nb2) == data_size
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t0 = time.time()
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for _ in range(call_repetitions):
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nb1.add(nb2)
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return time.time() - t0
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if call_repetitions is None:
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call_repetitions = find_call_repetitions(many_sum)
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pflush(call_repetitions, "call_repetitions")
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td_sum = many_sum(call_repetitions)
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td_add = many_add(call_repetitions)
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row = [td_sum, td_add]
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if row_0 is None:
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pflush(" Sum Add ratS ratA")
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row_0 = row
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else:
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for curr, prev in zip(row, row_0):
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if prev:
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rat = curr / prev
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else:
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rat = -1
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row.append(curr / prev)
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ratios[nb_label + "_ratS"].append(row[-2])
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ratios[nb_label + "_ratA"].append(row[-1])
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pflush(nb_label, " ".join(["%.3f" % v for v in row]))
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pflush(" Min Mean Max")
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for key, rat in ratios.items():
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print(
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key,
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"{:5.3f} {:5.3f} {:5.3f}".format(
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min(rat), sum(rat) / len(rat), max(rat)
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),
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)
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if __name__ == "__main__":
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run(args=sys.argv[1:])
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