import sys import glob import numpy as np import pandas as pd from enum import Enum class G_enum(Enum): TOTAL_RESIZES = 0 TOTAL_GROUPS = 1 TOTAL_STAGES = 2 GRANULARITY = 3 SDR = 4 ADR = 5 DR = 6 RED_METHOD = 7 RED_STRATEGY = 8 SPAWN_METHOD = 9 SPAWN_STRATEGY = 10 GROUPS = 11 FACTOR_S = 12 DIST = 13 STAGE_TYPES = 14 STAGE_TIMES = 15 STAGE_BYTES = 16 ITERS = 17 ASYNCH_ITERS = 18 T_ITER = 19 T_STAGES = 20 T_SPAWN = 21 T_SPAWN_REAL = 22 T_SR = 23 T_AR = 24 T_MALLEABILITY = 25 T_TOTAL = 26 #Malleability specific NP = 0 NC = 1 #Iteration specific IS_DYNAMIC = 11 N_PARENTS = 17 columnsG = ["Total_Resizes", "Total_Groups", "Total_Stages", "Granularity", "SDR", "ADR", "DR", "Redistribution_Method", \ "Redistribution_Strategy", "Spawn_Method", "Spawn_Strategy", "Groups", "FactorS", "Dist", "Stage_Types", "Stage_Times", \ "Stage_Bytes", "Iters", "Asynch_Iters", "T_iter", "T_stages", "T_spawn", "T_spawn_real", "T_SR", "T_AR", "T_Malleability", "T_total"] #27 #----------------------------------------------- # Obtains the value of a given index in a splited line # and returns it as a float values if possible, string otherwise def get_value(line, index, separator=True): if separator: value = line[index].split('=')[1].split(',')[0] else: value = line[index] try: value = float(value) if value.is_integer(): value = int(value) except ValueError: return value return value #----------------------------------------------- # Obtains the general parameters of an execution and # stores them for creating a global dataframe def record_config_line(lineS, dataG_it): ordered_indexes = [G_enum.TOTAL_RESIZES.value, G_enum.TOTAL_STAGES.value, \ G_enum.GRANULARITY.value, G_enum.SDR.value, G_enum.ADR.value] offset_line = 2 for i in range(len(ordered_indexes)): value = get_value(lineS, i+offset_line) index = ordered_indexes[i] dataG_it[index] = value dataG_it[G_enum.TOTAL_GROUPS.value] = dataG_it[G_enum.TOTAL_RESIZES.value]+1 #FIXME Modificar cuando ADR ya no sea un porcentaje dataG_it[G_enum.DR.value] = dataG_it[G_enum.SDR.value] + dataG_it[G_enum.ADR.value] # Init lists for each column array_groups = [G_enum.GROUPS.value, G_enum.FACTOR_S.value, G_enum.DIST.value, G_enum.ITERS.value, \ G_enum.ASYNCH_ITERS.value, G_enum.T_ITER.value, G_enum.T_STAGES.value, G_enum.RED_METHOD.value, \ G_enum.RED_STRATEGY.value, G_enum.SPAWN_METHOD.value, G_enum.SPAWN_STRATEGY.value,] array_resizes = [ G_enum.T_SPAWN.value, G_enum.T_SPAWN_REAL.value, G_enum.T_SR.value, G_enum.T_AR.value, G_enum.T_MALLEABILITY.value] array_stages = [G_enum.STAGE_TYPES.value, \ G_enum.STAGE_TIMES.value, G_enum.STAGE_BYTES.value] for index in array_groups: dataG_it[index] = [None]*dataG_it[G_enum.TOTAL_GROUPS.value] for group in range(dataG_it[G_enum.TOTAL_GROUPS.value]): dataG_it[G_enum.T_ITER.value][group] = [] for index in array_resizes: dataG_it[index] = [None]*dataG_it[G_enum.TOTAL_RESIZES.value] for index in array_stages: dataG_it[index] = [None]*dataG_it[G_enum.TOTAL_STAGES.value] #----------------------------------------------- # Obtains the parameters of a stage line # and stores it in the dataframe # Is needed to indicate in which stage is # being performed def record_stage_line(lineS, dataG_it, stage): array_stages = [G_enum.STAGE_TYPES.value, \ G_enum.STAGE_TIMES.value, G_enum.STAGE_BYTES.value] offset_lines = 2 for i in range(len(array_stages)): value = get_value(lineS, i+offset_lines) index = array_stages[i] dataG_it[index][stage] = value #----------------------------------------------- # Obtains the parameters of a resize line # and stores them in the dataframe # Is needed to indicate to which group refers # the resize line def record_group_line(lineS, dataG_it, group): array_groups = [G_enum.ITERS.value, G_enum.GROUPS.value, G_enum.FACTOR_S.value, G_enum.DIST.value, \ G_enum.RED_METHOD.value, G_enum.RED_STRATEGY.value, G_enum.SPAWN_METHOD.value, G_enum.SPAWN_STRATEGY.value] offset_lines = 2 for i in range(len(array_groups)): value = get_value(lineS, i+offset_lines) index = array_groups[i] dataG_it[index][group] = value #----------------------------------------------- def record_time_line(lineS, dataG_it): T_names = ["T_spawn:", "T_spawn_real:", "T_SR:", "T_AR:", "T_Malleability:", "T_total:"] T_values = [G_enum.T_SPAWN.value, G_enum.T_SPAWN_REAL.value, G_enum.T_SR.value, G_enum.T_AR.value, G_enum.T_MALLEABILITY.value, G_enum.T_TOTAL.value] if not (lineS[0] in T_names): # Execute only if line represents a Time return index = T_names.index(lineS[0]) index = T_values[index] offset_lines = 1 len_index = 1 if dataG_it[index] != None: len_index = len(dataG_it[index]) for i in range(len_index): dataG_it[index][i] = get_value(lineS, i+offset_lines, False) else: dataG_it[index] = get_value(lineS, offset_lines, False) #----------------------------------------------- def record_multiple_times_line(lineS, dataG_it, group): T_names = ["T_iter:", "T_stage"] T_values = [G_enum.T_ITER.value, G_enum.T_STAGES.value] if not (lineS[0] in T_names): # Execute only if line represents a Time return index = T_names.index(lineS[0]) index = T_values[index] offset_lines = 1 if index == G_enum.T_STAGES.value: offset_lines += 1 total_iters = len(lineS)-offset_lines stage = int(lineS[1].split(":")[0]) if stage == 0: dataG_it[index][group] = [None] * total_iters for i in range(total_iters): dataG_it[index][group][i] = [None] * dataG_it[G_enum.TOTAL_STAGES.value] for i in range(total_iters): dataG_it[index][group][i][stage] = get_value(lineS, i+offset_lines, False) else: total_iters = len(lineS)-offset_lines for i in range(total_iters): dataG_it[index][group].append(get_value(lineS, i+offset_lines, False)) #----------------------------------------------- def read_local_file(f, dataG, it, runs_in_file): offset = 0 real_it = 0 group = 0 for line in f: lineS = line.split() if len(lineS) > 0: if lineS[0] == "Group": # GROUP number offset += 1 real_it = it - (runs_in_file-offset) group = int(lineS[1].split(":")[0]) elif lineS[0] == "Async_Iters:": offset_line = 1 dataG[real_it][G_enum.ASYNCH_ITERS.value][group] = get_value(lineS, offset_line, False) else: record_multiple_times_line(lineS, dataG[real_it], group) #----------------------------------------------- def read_global_file(f, dataG, it): runs_in_file=0 for line in f: lineS = line.split() if len(lineS) > 0: if lineS[0] == "Config": # CONFIG LINE it += 1 runs_in_file += 1 group = 0 stage = 0 dataG.append([None]*len(columnsG)) record_config_line(lineS, dataG[it]) elif lineS[0] == "Stage": record_stage_line(lineS, dataG[it], stage) stage+=1 elif lineS[0] == "Group": record_group_line(lineS, dataG[it], group) group+=1 else: record_time_line(lineS, dataG[it]) return it,runs_in_file #----------------------------------------------- #----------------------------------------------- def convert_to_tuples(dfG): array_list_items = [G_enum.GROUPS.value, G_enum.FACTOR_S.value, G_enum.DIST.value, G_enum.ITERS.value, \ G_enum.ASYNCH_ITERS.value, G_enum.RED_METHOD.value, G_enum.RED_STRATEGY.value, G_enum.SPAWN_METHOD.value, \ G_enum.SPAWN_STRATEGY.value, G_enum.T_SPAWN.value, G_enum.T_SPAWN_REAL.value, G_enum.T_SR.value, \ G_enum.T_AR.value, G_enum.STAGE_TYPES.value, G_enum.STAGE_TIMES.value, G_enum.STAGE_BYTES.value] array_multiple_list_items = [G_enum.T_ITER.value, G_enum.T_STAGES.value] for item in array_list_items: name = columnsG[item] values = dfG[name].copy() for index in range(len(values)): values[index] = tuple(values[index]) dfG[name] = values for item in array_multiple_list_items: name = columnsG[item] values = dfG[name].copy() for i in range(len(values)): for j in range(len(values[i])): if(type(values[i][j][0]) == list): for r in range(len(values[i][j])): values[i][j][r] = tuple(values[i][j][r]) values[i][j] = tuple(values[i][j]) values[i] = tuple(values[i]) dfG[name] = values #----------------------------------------------- if len(sys.argv) < 2: print("The files name is missing\nUsage: python3 MallTimes.py commonName directory OutName") exit(1) common_name = sys.argv[1] if len(sys.argv) >= 3: BaseDir = sys.argv[2] print("Searching in directory: "+ BaseDir) else: BaseDir = "./" if len(sys.argv) >= 4: name = sys.argv[3] else: name = "data" print("File name will be: " + name + "G.pkl") insideDir = "Run" lista = glob.glob(BaseDir + insideDir + "*/" + common_name + "*_Global.out") lista += (glob.glob(BaseDir + common_name + "*_Global.out")) # Se utiliza cuando solo hay un nivel de directorios print("Number of files found: "+ str(len(lista))); it = -1 dataG = [] for elem in lista: f = open(elem, "r") id_run = elem.split("_Global.out")[0].split(common_name)[1] path_to_run = elem.split(common_name)[0] lista_local = glob.glob(path_to_run + common_name + id_run + "_G*NP*.out") it,runs_in_file = read_global_file(f, dataG, it) f.close() for elem_local in lista_local: f_local = open(elem_local, "r") read_local_file(f_local, dataG, it, runs_in_file) f_local.close() dfG = pd.DataFrame(dataG, columns=columnsG) convert_to_tuples(dfG) print(dfG) dfG.to_pickle(name + 'G.pkl') #dfM = pd.DataFrame(dataM, columns=columnsM) #Poner en TC el valor real y en TH el necesario para la app #cond = dfM.TH != 0 #dfM.loc[cond, ['TC', 'TH']] = dfM.loc[cond, ['TH', 'TC']].values #dfM.to_csv(name + 'M.csv')