Ejemplo n.º 1
0
def calc_month(df, month_type, build_type):
    start_day = week_extract.get_min_month()
    if build_type == TRAIN and month_type == MONTH1:
        df_month = df[(df['date'] >= start_day)
                      & (df['date'] < timeOpt.add_months(start_day, 1))]
    elif (build_type == TRAIN
          and month_type == MONTH2) or (build_type == PREDICT
                                        and month_type == MONTH1):
        df_month = df[(df['date'] >= timeOpt.add_months(start_day, 1))
                      & (df['date'] < timeOpt.add_months(start_day, 2))]
    else:
        df_month = df[(df['date'] >= timeOpt.add_months(start_day, 2))
                      & (df['date'] < timeOpt.add_months(start_day, 3))]
    group_month1 = day_extract.groupby_calc(df_month).apply(
        month_extract.calc_month_data).reset_index(drop=True)
    df = pd.DataFrame(group_month1) \
        .rename(columns={'activeDay': 'activeDayMonth' + month_type,
                         'totalConnectTime': 'totalConnectTimeMonth' + month_type,
                         'dlTraffic': 'dlTrafficMonth' + month_type,
                         'ulTraffic': 'ulTrafficMonth' + month_type,
                         'totalDlUlTrafficMonthly': 'totalDlUlTrafficMonthly' + month_type,
                         'dlTrafficRatioMonthly': 'dlTrafficRatioMonthly' + month_type,
                         'totalDlUlTrafficPerday': 'totalDlUlTrafficPerdayMonth' + month_type,
                         'dlTrafficPerday': 'dlTrafficPerdayMonth' + month_type,
                         'ulTrafficPerday': 'ulTrafficPerdayMonth' + month_type,
                         'totalConnectTimePerday': 'totalConnectTimePerdayMonth' + month_type,
                         'MinRSRP': 'MinRSRPMonth' + month_type,
                         'MaxRSRP': 'MaxRSRPMonth' + month_type,
                         'AvgRSRP': 'AvgRSRPMonth' + month_type,
                         'StdRSRP': 'StdRSRPMonth' + month_type,
                         'MinSINR': 'MinSINRMonth' + month_type,
                         'MaxSINR': 'MaxSINRMonth' + month_type,
                         'AvgSINR': 'AvgSINRMonth' + month_type,
                         'StdSINR': 'StdSINRMonth' + month_type})
    return df
Ejemplo n.º 2
0
def get_pre_month():
    min_month = week_extract.get_min_month()
    month_list = [(1, timeOpt.add_months(min_month,
                                         1), timeOpt.add_months(min_month, 2)),
                  (2, timeOpt.add_months(min_month,
                                         2), timeOpt.add_months(min_month, 3))]
    return month_list
def get_post_df():
    min_month = week_extract.get_min_month()
    all_file = week_extract.get_file_by_range(timeOpt.add_months(min_month, 2),
                                              timeOpt.add_months(min_month, 3))
    df = pd.DataFrame(
        columns=setting.parameter_json["post_eva_from_day_column_name"])
    for f in all_file:
        file_df = pd.read_csv(f, error_bad_lines=False, index_col=False)[
            setting.parameter_json["post_eva_from_day_column_name"]]
        df = df.append(file_df)
    return df
def get_pre_week():
    timeOpt.weekSet = []
    min_month = get_min_month()
    week_set = timeOpt.get_week_set(timeOpt.add_months(min_month, 1),
                                    timeOpt.add_months(min_month, 3))
    week_set = timeOpt.change_week_set(week_set)
    week_list = []
    for i in range(len(week_set)):
        if i < len(week_set) - 1:
            week_list.append((i + 1, week_set[i], week_set[i + 1]))
    return week_list
Ejemplo n.º 5
0
def build_feature(df):
    start_day = week_extract.get_min_month()
    df_train = df[(df['date'] >= start_day)
                  & (df['date'] < timeOpt.add_months(start_day, 2))]
    df_pre = df[(df['date'] >= timeOpt.add_months(start_day, 1))
                & (df['date'] < timeOpt.add_months(start_day, 3))]
    df_for_churn = set(df[(df['date'] >= timeOpt.add_months(start_day, 2))
                          & (df['date'] < timeOpt.add_months(start_day, 3))]
                       ['esn'].astype('str').values)
    compress.empty_folder(setting.model_path)
    train_result_df = build(df_train, df_for_churn, TRAIN)
    train_result_df.to_csv(os.path.join(setting.model_path, r"trainData.csv"),
                           index=False)
    pre_result_df = build(df_pre, df_for_churn, PREDICT)
    pre_result_df[(pre_result_df['churnLabel'] < 1)].to_csv(os.path.join(
        setting.model_path, r"predictData.csv"),
                                                            index=False)
    return 0
Ejemplo n.º 6
0
def run():
    multiprocessing.freeze_support()
    start_day = week_extract.get_min_month()
    df = get_data_by_range(start_day, timeOpt.add_months(start_day, 3))
    build_feature(df)