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import csv
import pickle
import matplotlib.pyplot as plt
import multiprocessing
import numpy as np
import os
import subprocess
from common_targets import common_targets
cmd = ("perf stat -x\; -e cpu-clock:k,cache-references,cache-misses,cycles,"
"instructions,branches,faults,migrations "
"build/bench_loop{} 1.2 {} 1000000 {} 10")
class Benchmark_Loop():
def __init__(self):
self.name = "Loop Stress Benchmark"
self.descrition = """This benchmark makes n allocations in t concurrent threads.
How allocations are freed can be changed with the benchmark
version""",
self.targets = common_targets
self.maxsize = [2 ** x for x in range(6, 16)]
self.nthreads = range(1, multiprocessing.cpu_count() * 2 + 1)
self.results = {}
def prepare(self, verbose=False):
req = ["build/bench_loop", "build/memusage"]
for r in req:
if not os.path.isfile(r):
print(r, "not found")
return False
if not os.access(r, os.X_OK):
print(r, "not found")
return False
if verbose:
print(r, "found and executable.")
return True
def run(self, verbose=False, save=False, runs=3):
args_permutations = [(x,y) for x in self.nthreads for y in self.maxsize]
n = len(args_permutations)
for run in range(1, runs + 1):
print(str(run) + ". run")
for i, args in enumerate(args_permutations):
print(i + 1, "of", n, "\r", end='')
# run cmd for each target
for tname, t in self.targets.items():
result = {"VSZ": [], "RSS" : []}
env = {"LD_PRELOAD" : t[1]} if t[1] != "" else None
target_cmd = cmd.format(t[0], *args).split(" ")
if verbose:
print("\n" + tname, t, "\n", " ".join(target_cmd), "\n")
p = subprocess.Popen(target_cmd, stderr=subprocess.PIPE, stdout=subprocess.PIPE,
env=env, universal_newlines=True)
while p.poll() == None:
ps = subprocess.run(["ps", "-F", "--ppid", str(p.pid)], stdout=subprocess.PIPE)
lines = ps.stdout.splitlines()
if len(lines) == 1: # perf hasn't forked yet
continue
tokens = str(lines[1]).split()
result["VSZ"].append(tokens[4])
result["RSS"].append(tokens[5])
p.wait()
output = p.stderr.read()
if p.returncode != 0:
print("\n" + " ".join(target_cmd), "exited with", p.returncode, ".\n Aborting Benchmark.")
print(tname, t)
print(output)
print(p.stdout)
return False
if "ERROR: ld.so" in p.stderr:
print("\nPreloading of", t[1], "failed for", tname, ".\n Aborting Benchmark.")
return False
# Handle perf output
csvreader = csv.reader(output.splitlines(), delimiter=';')
for row in csvreader:
result[row[2].replace("\\", "")] = row[0].replace("\\", "")
key = (tname, *args)
if not key in self.results:
self.results[key] = [result]
else:
self.results[key].append(result)
print()
if save:
with open(self.name + ".save", "wb") as f:
pickle.dump(self.results, f)
return True
def summary(self):
# MAXSIZE fixed
for size in self.maxsize:
for target in self.targets:
y_vals = [0] * len(self.nthreads)
for mid, measures in self.results.items():
if mid[0] == target and mid[2] == size:
d = []
for m in measures:
# nthreads/time = MOPS/S
d.append(mid[1]/float(m["cpu-clock:ku"]))
y_vals[mid[1]-1] = np.mean(d)
plt.plot(self.nthreads, y_vals, marker='.',linestyle='-', label=target)
plt.legend()
plt.xlabel("threads")
plt.ylabel("MOPS/s")
plt.title("Loop: " + str(size) + "B")
plt.savefig("Loop." + str(size) + "B.png")
plt.clf()
# NTHREADS fixed
y_mapping = {v : i for i, v in enumerate(self.maxsize)}
x_vals = [i + 1 for i in range(0, len(self.maxsize))]
for n in self.nthreads:
for target in self.targets:
y_vals = [0] * len(self.maxsize)
for mid, measures in self.results.items():
if mid[0] == target and mid[1] == n:
d = []
for m in measures:
# nthreads/time = MOPS/S
d.append(n/float(m["cpu-clock:ku"]))
y_vals[y_mapping[mid[2]]] = np.mean(d)
plt.plot(x_vals, y_vals, marker='.', linestyle='-', label=target)
plt.legend()
plt.xticks(x_vals, self.maxsize)
plt.xlabel("size in B")
plt.ylabel("MOPS/s")
plt.title("Loop: " + str(n) + "thread(s)")
plt.savefig("Loop." + str(n) + "thread.png")
plt.clf()
loop = Benchmark_Loop()
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