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fwk4xps.py
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fwk4xps.py
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import ConfigParser
import subprocess
import multiprocessing
import itertools
from thread import start_new_thread, allocate_lock
from multiprocessing import Process, Value, Lock
import ctypes
import numpy as np
import copy_reg
import types
import random
import time
import numpy as np
import math
from random import shuffle
from scipy.stats import t
from scipy import stats
import os
lock = Lock()
shared_times = []
shared_boxes = []
shared_gains = []
shared_run = []
shared_avgtime = []
shared_stddev = []
shared_runinst = []
shared_L = []
shared_W = []
shared_stop = 0
class Algo:
def __init__(self, configParser, name):
self.name = name
if configParser.has_option(name, 'output_dir'):
self.output_dir = configParser.get(name, 'output_dir')
else:
self.output_dir = name
self.ex = configParser.get(name, 'exec')
self.params = configParser.get(name, 'params')
self.params = self.params.replace('_ALGO', self.ex);
self.params = self.params.replace('_MAXTIME', configParser.get('base', 'maxtime'));
self.outputpos_times = configParser.get(name, 'outputpos_times')
self.outputpos_boxes = configParser.get(name, 'outputpos_boxes')
def run(self, inst, seed):
run_exec = self.ex + " " + self.params.replace('_INSTANCE', inst)
run_exec = run_exec.replace('_SEED', str(seed))
print run_exec
output = subprocess.check_output(run_exec,shell=True,).splitlines()[-1]
try:
return (float(output.split()[int(self.outputpos_times)]), float(output.split()[int(self.outputpos_boxes)]))
except ValueError:
print "error with instance " + inst.split('/')[-1] + "\n" + output
return -2.0
class Config:
def __init__(self, filename):
configParser = ConfigParser.RawConfigParser()
configParser.read(filename)
self.instances = configParser.get('base', 'test_instances')
self.mintime = float(configParser.get('base', 'mintime'))
self.maxtime = float(configParser.get('base', 'maxtime'))
self.sig_gain = float(configParser.get('base', 'sig_gain'))
self.max_seeds = int(configParser.get('base', 'max_seeds'))
self.min_seeds = int(configParser.get('base', 'min_seeds'))
f = open(self.instances)
self.instances = f.read().splitlines()
f.close()
self.idx2inst = range(len(self.instances))
for i in range(len(self.instances)): self.idx2inst[i]=i
random.seed(0)
shuffle(self.idx2inst)
self.algos = []
for algo_name in configParser.get('base', 'algo_names').split():
if configParser.has_option(algo_name, 'tuning_param'):
tuning_param=configParser.get(algo_name, 'tuning_param')
for value in configParser.get(algo_name, 'tuning_values').split():
algo=Algo(configParser,algo_name)
self.algos.append(algo)
algo.params = algo.params.replace('_%s'%tuning_param, value);
algo.name = algo.name + "_" + tuning_param + value
else:
algo=Algo(configParser,algo_name)
self.algos.append(algo)
def onKeyPress(event):
global shared_stop
shared_stop=1
def read_times(name,i,config):
global shared_times, shared_boxes
shared_times[i,:] = -1.0
shared_boxes[i,:] = -1.0
try:
f = open("%(dir)s/%(name)s_times.out" % {"dir":config.algos[i].output_dir,"name":name}, )
f2 = open("%(dir)s/%(name)s_boxes.out" % {"dir":config.algos[i].output_dir,"name":name}, )
idx = 0
for lines in f:
#~ print lines.split()
seed=0
for line in lines.split():
if seed==config.max_seeds: break
shared_times[i,idx + len(config.instances)*seed ] = float(line)
if shared_times[i,idx + len(config.instances)*seed]==-1.5: shared_times[i,idx + len(config.instances)*seed]=-1.0
seed += 1
idx+=1
idx = 0
for lines in f2:
#~ print lines.split()
seed=0
for line in lines.split():
if seed==config.max_seeds: break
shared_boxes[i,idx + len(config.instances)*seed ] = float(line)
if shared_boxes[i,idx + len(config.instances)*seed]==-1.5: shared_boxes[i,idx + len(config.instances)*seed]=-1.0
seed += 1
idx+=1
#~ print shared_times[i]
f.close()
f2.close()
except IOError:
None
timesA = []
for elem in (j for j in shared_times[i,:] if j > 0.0):
timesA.append(elem)
#shared_run[i]=len(timesA)
def write_times(name,i,config):
global shared_times, shared_boxes
try:
os.mkdir(config.algos[i].output_dir)
except OSError:
None
f = open("%(dir)s/%(name)s_times.out" % {"dir":config.algos[i].output_dir,"name":name}, "w")
f2 = open("%(dir)s/%(name)s_meantimes.out" % {"dir":config.algos[i].output_dir,"name":name}, "w")
for j in range(len(config.instances)):
for k in range(config.max_seeds):
f.write("%.2f " % shared_times[i][k*len(config.instances)+j])
f.write("\n")
(mean,h,n) = mean_error(config, i, j, config.max_seeds)
f2.write("%.2f " % mean)
f2.write("+- %.2f" % h)
f2.write(" (%d)\n" % n)
f.close()
f2.close()
f = open("%(dir)s/%(name)s_boxes.out" % {"dir":config.algos[i].output_dir,"name":name}, "w")
f2 = open("%(dir)s/%(name)s_meanboxes.out" % {"dir":config.algos[i].output_dir,"name":name}, "w")
for j in range(len(config.instances)):
for k in range(config.max_seeds):
f.write("%.2f " % shared_boxes[i][k*len(config.instances)+j])
f.write("\n")
(mean,h,n) = mean_error(config, i, j, config.max_seeds)
f2.write("%.2f " % mean)
f2.write("+- %.2f" % h)
f2.write(" (%d)\n" % n)
f.close()
f2.close()
def update_algo(config,id_algo):
shared_nb_comp[id_algo] =0
shared_L[id_algo] = 0
shared_W[id_algo] = 0
fL = open("%(dir)s/%(name)s_badresults.out" % {"dir":config.algos[id_algo].output_dir,"name":config.algos[id_algo].name}, "w")
fW = open("%(dir)s/%(name)s_goodresults.out" % {"dir":config.algos[id_algo].output_dir,"name":config.algos[id_algo].name}, "w")
for i in (k for k in range(len(config.instances)) if shared_times[id_algo,k] >= 0.0 and shared_times[0,k]>=0.0):
if config.instances[i].endswith('*'): continue
n=0.;sum0=0.;sum1=0.
for kk in range(config.max_seeds):
if shared_times[0,i+kk*len(config.instances)] >= 0.0 and shared_times[id_algo,i+kk*len(config.instances)]>=0.0:
sum0+=shared_times[0,i+kk*len(config.instances)]
sum1+=shared_times[id_algo,i+kk*len(config.instances)]
n+=1.
if n>0 and (sum0/n>config.mintime or sum1/n>config.mintime) and (sum0/n<config.maxtime or sum1/n<config.maxtime):
if sum0/sum1 > float(config.sig_gain):
shared_W[id_algo]+=1
fW.write("%s %f %f\n" % (config.instances[i],sum1/n,sum0/n))
if sum1/sum0 > float(config.sig_gain):
shared_L[id_algo]+=1
fL.write("%s %f %f\n" % (config.instances[i],sum1/n,sum0/n))
shared_nb_comp[id_algo] +=1
if shared_nb_comp[id_algo] > 0:
av=av_rel_time(id_algo, config)
shared_gains[id_algo]=(1.-av)/av
shared_gains_ttime[id_algo]=gain_total_time(id_algo, config)
else:
shared_gains[id_algo]=1.0
shared_gains_ttime[id_algo]=1.0
fW.close()
fL.close()
def update_all(config):
for id_algo in range(len(config.algos)):
update_algo(config,id_algo)
#~ for id_inst in range(len(config.instances)):
#~ update_inst(config,id_inst)
print shared_gains
print shared_run
print shared_nb_comp
def update_share(config,id_algo,id_inst):
#~ update_inst(config,id_inst)
update_algo(config,id_algo)
f = open("state.out", "w")
f.write("algos:")
for elem in config.algos:
f.write("%s " % elem.name)
f.write("\n")
f.write("gains (average relative times):")
for elem in shared_gains:
f.write("%f " % elem)
f.write("\n")
f.write("gains (total time) :")
for elem in shared_gains_ttime:
f.write("%f " % elem)
f.write("\n")
f.write("compared instances:")
for elem in shared_nb_comp:
f.write("%3d " % elem)
f.write("\n")
f.write("runs :")
for elem in shared_run:
f.write("%3d " % elem)
f.write("\n")
f.write("L:")
for elem in shared_L:
f.write("%3d " % elem)
f.write("\n")
f.write("W:")
for elem in shared_W:
f.write("%3d " % elem)
f.write("\n")
f.close()
def av_rel_time(i,config):
if i==0: return 0.5
x=[]
for k in range(len(config.instances)):
if config.instances[k].endswith('*'): continue
n0=0;n1=0;sum0=0;sum1=0; sum2=0
for kk in range(config.max_seeds):
if shared_times[0,k+kk*len(config.instances)] >=0.0:
sum0+=shared_times[0,k+kk*len(config.instances)]
n0+=1
if shared_times[i,k+kk*len(config.instances)] >=0.0:
sum1+=shared_times[i,k+kk*len(config.instances)]
n1+=1
if n0>0 and n1>0 and (sum0/float(n0)>config.mintime or sum1/float(n1)>config.mintime) and (sum0/float(n0)<config.maxtime or sum1/float(n1)<config.maxtime):
rel1 = (sum1/float(n1)) /(sum1/float(n1)+sum0/float(n0)+0.001)
x.append(rel1)
xmean=np.mean(x)
return xmean
def gain_total_time(i,config):
if i==0: return 1.0
total_time0=0.
total_time1=0.
for k in range(len(config.instances)):
if config.instances[k].endswith('*'): continue
n0=0.; n1=0. ;sum0=0.;sum1=0.
for kk in range(config.max_seeds):
if shared_times[0,k+kk*len(config.instances)] >=0.0:
sum0+=shared_times[0,k+kk*len(config.instances)]
n0+=1.
if shared_times[i,k+kk*len(config.instances)] >=0.0:
sum1+=shared_times[i,k+kk*len(config.instances)]
n1+=1.
if n0>0. and n1>0. and ((sum0/n0)<config.maxtime or (sum1/n1)<config.maxtime):
total_time0+=(sum0/n0)
total_time1+=(sum1/n1)
return total_time0/(total_time1+0.01)
def p_faster(i, j,config):
if i==j: return 0.5
x=[]
for k in range(len(config.instances)):
if config.instances[k].endswith('*'): continue
n=0; sum0=0; sum1=0; sum2=0
for kk in range(config.max_seeds):
if shared_times[0,k+kk*len(config.instances)] >=0.0 and shared_times[i,k+kk*len(config.instances)] >=0.0 and shared_times[j,k+kk*len(config.instances)] >=0.0:
sum0+=shared_times[0,k+kk*len(config.instances)]
sum1+=shared_times[i,k+kk*len(config.instances)]
sum2+=shared_times[j,k+kk*len(config.instances)]
n+=1
if n>0 and (sum0/float(n)>config.mintime or sum1/float(n)>config.mintime or sum2/float(n)>config.mintime) and (sum0/float(n)<config.maxtime or sum1/float(n)<config.maxtime or sum2/float(n)<config.maxtime):
rel1=(sum1)/(sum1+sum0+0.001)
rel2=(sum2)/(sum2+sum0+0.001)
x.append(rel2-rel1)
#x.append(1.0) #the best x for algo i (only for seed 1?), then worst_time/seed
n= len(x)
if n<=1: return 1.0
return t.cdf((np.mean(x))/(np.std(x)/math.sqrt(n)),n-1)
def mean_error(config, id_algo, id_inst, seeds):
x=[]
for kk in range(seeds):
if shared_times[id_algo,id_inst+kk*len(config.instances)] >=0.0:
x.append(shared_times[id_algo,id_inst+kk*len(config.instances)])
n=len(x)
if n>=2:
se=stats.sem(x)
h = se*t._ppf((1+0.95)/2., n-1)
return (np.mean(x),h,n)
else:
return (np.mean(x),-1,n)
def next_run(config):
global lock
global shared_stop
lock.acquire()
if shared_stop==1: return None
for i in range(len(config.algos)):
idx = shared_run[i]%len(config.instances)
seed = int(shared_run[i]/len(config.instances)) + 1
while shared_run[i] < len(config.instances)*config.max_seeds:
if config.instances[config.idx2inst[idx]].endswith('*'):
shared_run[i]+=1
idx = shared_run[i]%len(config.instances)
seed = int(shared_run[i]/len(config.instances)) + 1
continue
#en caso de que el algo_instancia se hayan corrido mas de min_seed veces, se calcula el diametro de confianza para el tiempo medio
#si el diametro es < 0.1 no se sigue corriendo el par
if seed>config.min_seeds and shared_times[i,len(config.instances)*(seed-1)+config.idx2inst[idx]] == -1.0:
(mean,h,n)=mean_error(config,i,config.idx2inst[idx],seed-1)
if mean>0:
h/=mean
if n>=config.min_seeds and h<0.1: shared_times[i,len(config.instances)*(seed-1)+config.idx2inst[idx]]=-1.6
if shared_times[i,len(config.instances)*(seed-1)+config.idx2inst[idx]] != -1.0:
shared_run[i]+=1
idx = shared_run[i]%len(config.instances)
seed = int(shared_run[i]/len(config.instances)) + 1
else: break
if shared_run.min() == len(config.instances)*config.max_seeds:
lock.release()
return None
if shared_run[0]<shared_run.max():
id_algo=0
else:
if shared_run.min() < 20:
id_algo=shared_run.argmin()
else:
#se selecciona el algoritmo con menor tiempo promedio
sorted_idx = sorted(range(len(config.algos)), key=lambda k: av_rel_time(k,config))
print "gains:", shared_gains
for id_algo in (j for j in sorted_idx if shared_run[j] < len(config.instances)*config.max_seeds):
break
#se calcula la probabilidad, para cada algoritmo, de tener un tiempo promedio menor al seleccionado
choices=[]
for i in range(len(config.algos)):
if shared_run[i] < len(config.instances)*config.max_seeds:
choices.append(math.pow(p_faster(i,id_algo,config),0.5))
else :
choices.append(0.0)
#se escoge usando la ruleta segun las probabilidades obtenidas
print choices
max=sum(choices)
pick=random.uniform(0,max)
current=0
id_algo2=0
for value in choices:
current+=value
if current>pick:
break
id_algo2+=1
#el algoritmo con menor promedio es escogido si ha sido corrido un menor o igual numero de veces
print config.algos[id_algo].name," ", config.algos[id_algo2].name
if shared_run[id_algo2] < shared_run[id_algo]: id_algo=id_algo2
idx = shared_run[id_algo]%len(config.instances)
seed = int(shared_run[id_algo]/len(config.instances)) + 1
shared_times[id_algo,len(config.instances)*(seed-1)+config.idx2inst[idx]]=-1.5
shared_run[id_algo] += 1
lock.release()
inst=config.instances[config.idx2inst[idx]]
(output_time, output_box) = config.algos[id_algo].run(inst,seed)
lock.acquire()
if shared_stop==1: return None
shared_times[id_algo,len(config.instances)*(seed-1)+config.idx2inst[idx]] = output_time
shared_boxes[id_algo,len(config.instances)*(seed-1)+config.idx2inst[idx]] = output_box
print config.algos[id_algo].name, inst, output_time
update_share(config,id_algo,len(config.instances)*(seed-1)+config.idx2inst[idx])
write_times(config.algos[id_algo].name,id_algo,config)
lock.release()
if __name__ == '__main__':
config = Config('config.txt')
max_algos = len(config.algos)
shared_times_base = multiprocessing.Array(ctypes.c_float, len(config.instances)*max_algos*config.max_seeds)
shared_times = np.ctypeslib.as_array(shared_times_base.get_obj())
shared_times = shared_times.reshape(max_algos, len(config.instances)* config.max_seeds)
shared_boxes_base = multiprocessing.Array(ctypes.c_float, len(config.instances)*max_algos*config.max_seeds)
shared_boxes = np.ctypeslib.as_array(shared_boxes_base.get_obj())
shared_boxes = shared_boxes.reshape(max_algos, len(config.instances)* config.max_seeds)
shared_gains_base = multiprocessing.Array(ctypes.c_float, max_algos)
shared_gains = np.ctypeslib.as_array(shared_gains_base.get_obj())
shared_gains_ttime_base = multiprocessing.Array(ctypes.c_float, max_algos)
shared_gains_ttime = np.ctypeslib.as_array(shared_gains_ttime_base.get_obj())
shared_run_base = multiprocessing.Array(ctypes.c_int, max_algos)
shared_run = np.ctypeslib.as_array(shared_run_base.get_obj())
shared_L_base = multiprocessing.Array(ctypes.c_int, max_algos)
shared_L = np.ctypeslib.as_array(shared_L_base.get_obj())
shared_W_base = multiprocessing.Array(ctypes.c_int, max_algos)
shared_W = np.ctypeslib.as_array(shared_W_base.get_obj())
shared_runinst_base = multiprocessing.Array(ctypes.c_int, len(config.instances))
shared_runinst = np.ctypeslib.as_array(shared_runinst_base.get_obj())
shared_nb_comp_base = multiprocessing.Array(ctypes.c_int, max_algos)
shared_nb_comp = np.ctypeslib.as_array(shared_nb_comp_base.get_obj())
shared_avgtime_base = multiprocessing.Array(ctypes.c_float, len(config.instances))
shared_avgtime = np.ctypeslib.as_array(shared_avgtime_base.get_obj())
shared_stddev_base = multiprocessing.Array(ctypes.c_float, len(config.instances))
shared_stop = multiprocessing.Value('i', 0)
i=0
for algo in config.algos:
read_times(config.algos[i].name,i,config)
write_times(config.algos[i].name,i,config)
i = i+1
num_cores = multiprocessing.cpu_count()
pool = multiprocessing.Pool(num_cores)
#~ pool.map(run_instance, itertools.izip(config.instances,range(len(config.instances)),itertools.repeat(config.algos[0]),itertools.repeat(0)))
update_all(config)
update_share(config,0,0)
#~ next_run(config)
pool.map(next_run, itertools.repeat(config,len(config.instances)*config.max_seeds*len(config.algos)))
i=0
for algo in config.algos:
write_times(config.algos[i].name,i,config)
i = i+1
update_all(config)
#~ next_run(config)