From 4b0b976d2a343c5de593dd20f31ff2775616bfd1 Mon Sep 17 00:00:00 2001 From: jingboyitiji Date: Tue, 1 Apr 2025 14:33:13 +0800 Subject: [PATCH] =?UTF-8?q?=E5=91=A8=E5=BA=A6=E9=A2=84=E6=B5=8B=EF=BC=8C?= =?UTF-8?q?=E7=9C=9F=E5=AE=9E=E5=80=BC=E6=95=B0=E6=8D=AE=E6=9C=AA=E6=9B=B4?= =?UTF-8?q?=E6=96=B0=E5=88=B0=E6=95=B0=E6=8D=AE=E8=A1=A8=EF=BC=8C=E4=BB=8E?= =?UTF-8?q?=E5=8A=A8=E6=80=81=E6=96=87=E4=BB=B6=E4=B8=AD=E8=AF=BB=E5=8F=96?= MIME-Version: 1.0 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: 8bit --- main_yuanyou_zhoudu.py | 410 +++++++++++++++++------------------ models/nerulforcastmodels.py | 2 + 2 files changed, 207 insertions(+), 205 deletions(-) diff --git a/main_yuanyou_zhoudu.py b/main_yuanyou_zhoudu.py index af5492e..3b880da 100644 --- a/main_yuanyou_zhoudu.py +++ b/main_yuanyou_zhoudu.py @@ -174,228 +174,228 @@ def predict_main(): 返回: None """ - end_time = global_config['end_time'] + # end_time = global_config['end_time'] - signature = BinanceAPI(APPID, SECRET) - etadata = EtaReader(signature=signature, - classifylisturl=global_config['classifylisturl'], - classifyidlisturl=global_config['classifyidlisturl'], - edbcodedataurl=global_config['edbcodedataurl'], - edbcodelist=global_config['edbcodelist'], - edbdatapushurl=global_config['edbdatapushurl'], - edbdeleteurl=global_config['edbdeleteurl'], - edbbusinessurl=global_config['edbbusinessurl'], - classifyId=global_config['ClassifyId'], - ) - # 获取数据 - if is_eta: - logger.info('从eta获取数据...') + # signature = BinanceAPI(APPID, SECRET) + # etadata = EtaReader(signature=signature, + # classifylisturl=global_config['classifylisturl'], + # classifyidlisturl=global_config['classifyidlisturl'], + # edbcodedataurl=global_config['edbcodedataurl'], + # edbcodelist=global_config['edbcodelist'], + # edbdatapushurl=global_config['edbdatapushurl'], + # edbdeleteurl=global_config['edbdeleteurl'], + # edbbusinessurl=global_config['edbbusinessurl'], + # classifyId=global_config['ClassifyId'], + # ) + # # 获取数据 + # if is_eta: + # logger.info('从eta获取数据...') - df_zhibiaoshuju, df_zhibiaoliebiao = etadata.get_eta_api_yuanyou_data( - data_set=data_set, dataset=dataset) # 原始数据,未处理 + # df_zhibiaoshuju, df_zhibiaoliebiao = etadata.get_eta_api_yuanyou_data( + # data_set=data_set, dataset=dataset) # 原始数据,未处理 - if is_market: - logger.info('从市场信息平台获取数据...') - try: - # 如果是测试环境,最高价最低价取excel文档 - if server_host == '192.168.100.53': - logger.info('从excel文档获取最高价最低价') - df_zhibiaoshuju = get_high_low_data(df_zhibiaoshuju) - else: - logger.info('从市场信息平台获取数据') - df_zhibiaoshuju = get_market_data( - end_time, df_zhibiaoshuju) + # if is_market: + # logger.info('从市场信息平台获取数据...') + # try: + # # 如果是测试环境,最高价最低价取excel文档 + # if server_host == '192.168.100.53': + # logger.info('从excel文档获取最高价最低价') + # df_zhibiaoshuju = get_high_low_data(df_zhibiaoshuju) + # else: + # logger.info('从市场信息平台获取数据') + # df_zhibiaoshuju = get_market_data( + # end_time, df_zhibiaoshuju) - except: - logger.info('最高最低价拼接失败') + # except: + # logger.info('最高最低价拼接失败') - # 保存到xlsx文件的sheet表 - with pd.ExcelWriter(os.path.join(dataset, data_set)) as file: - df_zhibiaoshuju.to_excel(file, sheet_name='指标数据', index=False) - df_zhibiaoliebiao.to_excel(file, sheet_name='指标列表', index=False) + # # 保存到xlsx文件的sheet表 + # with pd.ExcelWriter(os.path.join(dataset, data_set)) as file: + # df_zhibiaoshuju.to_excel(file, sheet_name='指标数据', index=False) + # df_zhibiaoliebiao.to_excel(file, sheet_name='指标列表', index=False) - # 数据处理 - df = datachuli(df_zhibiaoshuju, df_zhibiaoliebiao, y=y, dataset=dataset, add_kdj=add_kdj, is_timefurture=is_timefurture, - end_time=end_time) + # # 数据处理 + # df = datachuli(df_zhibiaoshuju, df_zhibiaoliebiao, y=y, dataset=dataset, add_kdj=add_kdj, is_timefurture=is_timefurture, + # end_time=end_time) - else: - # 读取数据 - logger.info('读取本地数据:' + os.path.join(dataset, data_set)) - df, df_zhibiaoliebiao = getdata(filename=os.path.join(dataset, data_set), y=y, dataset=dataset, add_kdj=add_kdj, - is_timefurture=is_timefurture, end_time=end_time) # 原始数据,未处理 + # else: + # # 读取数据 + # logger.info('读取本地数据:' + os.path.join(dataset, data_set)) + # df, df_zhibiaoliebiao = getdata(filename=os.path.join(dataset, data_set), y=y, dataset=dataset, add_kdj=add_kdj, + # is_timefurture=is_timefurture, end_time=end_time) # 原始数据,未处理 - # 更改预测列名称 - df.rename(columns={y: 'y'}, inplace=True) + # # 更改预测列名称 + # df.rename(columns={y: 'y'}, inplace=True) - if is_edbnamelist: - df = df[edbnamelist] - df.to_csv(os.path.join(dataset, '指标数据.csv'), index=False) - # 保存最新日期的y值到数据库 - # 取第一行数据存储到数据库中 - first_row = df[['ds', 'y']].tail(1) - # 判断y的类型是否为float - if not isinstance(first_row['y'].values[0], float): - logger.info(f'{end_time}预测目标数据为空,跳过') - return None + # if is_edbnamelist: + # df = df[edbnamelist] + # df.to_csv(os.path.join(dataset, '指标数据.csv'), index=False) + # # 保存最新日期的y值到数据库 + # # 取第一行数据存储到数据库中 + # first_row = df[['ds', 'y']].tail(1) + # # 判断y的类型是否为float + # if not isinstance(first_row['y'].values[0], float): + # logger.info(f'{end_time}预测目标数据为空,跳过') + # return None - # 将最新真实值保存到数据库 - if not sqlitedb.check_table_exists('trueandpredict'): - first_row.to_sql('trueandpredict', sqlitedb.connection, index=False) - else: - for row in first_row.itertuples(index=False): - row_dict = row._asdict() - config.logger.info(f'要保存的真实值:{row_dict}') - # 判断ds是否为字符串类型,如果不是则转换为字符串类型 - if isinstance(row_dict['ds'], (pd.Timestamp, datetime.datetime)): - row_dict['ds'] = row_dict['ds'].strftime('%Y-%m-%d') - elif not isinstance(row_dict['ds'], str): - try: - row_dict['ds'] = pd.to_datetime( - row_dict['ds']).strftime('%Y-%m-%d') - except: - logger.warning(f"无法解析的时间格式: {row_dict['ds']}") - # row_dict['ds'] = row_dict['ds'].strftime('%Y-%m-%d') - # row_dict['ds'] = row_dict['ds'].strftime('%Y-%m-%d %H:%M:%S') - check_query = sqlitedb.select_data( - 'trueandpredict', where_condition=f"ds = '{row.ds}'") - if len(check_query) > 0: - set_clause = ", ".join( - [f"{key} = '{value}'" for key, value in row_dict.items()]) - sqlitedb.update_data( - 'trueandpredict', set_clause, where_condition=f"ds = '{row.ds}'") - continue - sqlitedb.insert_data('trueandpredict', tuple( - row_dict.values()), columns=row_dict.keys()) + # # 将最新真实值保存到数据库 + # if not sqlitedb.check_table_exists('trueandpredict'): + # first_row.to_sql('trueandpredict', sqlitedb.connection, index=False) + # else: + # for row in first_row.itertuples(index=False): + # row_dict = row._asdict() + # config.logger.info(f'要保存的真实值:{row_dict}') + # # 判断ds是否为字符串类型,如果不是则转换为字符串类型 + # if isinstance(row_dict['ds'], (pd.Timestamp, datetime.datetime)): + # row_dict['ds'] = row_dict['ds'].strftime('%Y-%m-%d') + # elif not isinstance(row_dict['ds'], str): + # try: + # row_dict['ds'] = pd.to_datetime( + # row_dict['ds']).strftime('%Y-%m-%d') + # except: + # logger.warning(f"无法解析的时间格式: {row_dict['ds']}") + # # row_dict['ds'] = row_dict['ds'].strftime('%Y-%m-%d') + # # row_dict['ds'] = row_dict['ds'].strftime('%Y-%m-%d %H:%M:%S') + # check_query = sqlitedb.select_data( + # 'trueandpredict', where_condition=f"ds = '{row.ds}'") + # if len(check_query) > 0: + # set_clause = ", ".join( + # [f"{key} = '{value}'" for key, value in row_dict.items()]) + # sqlitedb.update_data( + # 'trueandpredict', set_clause, where_condition=f"ds = '{row.ds}'") + # continue + # sqlitedb.insert_data('trueandpredict', tuple( + # row_dict.values()), columns=row_dict.keys()) - # 更新accuracy表的y值 - if not sqlitedb.check_table_exists('accuracy'): - pass - else: - update_y = sqlitedb.select_data( - 'accuracy', where_condition="y is null") - if len(update_y) > 0: - logger.info('更新accuracy表的y值') - # 找到update_y 中ds且df中的y的行 - update_y = update_y[update_y['ds'] <= end_time] - logger.info(f'要更新y的信息:{update_y}') - # try: - for row in update_y.itertuples(index=False): - try: - row_dict = row._asdict() - yy = df[df['ds'] == row_dict['ds']]['y'].values[0] - LOW = df[df['ds'] == row_dict['ds']]['Brentzdj'].values[0] - HIGH = df[df['ds'] == row_dict['ds']]['Brentzgj'].values[0] - sqlitedb.update_data( - 'accuracy', f"y = {yy},LOW_PRICE = {LOW},HIGH_PRICE = {HIGH}", where_condition=f"ds = '{row_dict['ds']}'") - except: - logger.info(f'更新accuracy表的y值失败:{row_dict}') - # except Exception as e: - # logger.info(f'更新accuracy表的y值失败:{e}') + # # 更新accuracy表的y值 + # if not sqlitedb.check_table_exists('accuracy'): + # pass + # else: + # update_y = sqlitedb.select_data( + # 'accuracy', where_condition="y is null") + # if len(update_y) > 0: + # logger.info('更新accuracy表的y值') + # # 找到update_y 中ds且df中的y的行 + # update_y = update_y[update_y['ds'] <= end_time] + # logger.info(f'要更新y的信息:{update_y}') + # # try: + # for row in update_y.itertuples(index=False): + # try: + # row_dict = row._asdict() + # yy = df[df['ds'] == row_dict['ds']]['y'].values[0] + # LOW = df[df['ds'] == row_dict['ds']]['Brentzdj'].values[0] + # HIGH = df[df['ds'] == row_dict['ds']]['Brentzgj'].values[0] + # sqlitedb.update_data( + # 'accuracy', f"y = {yy},LOW_PRICE = {LOW},HIGH_PRICE = {HIGH}", where_condition=f"ds = '{row_dict['ds']}'") + # except: + # logger.info(f'更新accuracy表的y值失败:{row_dict}') + # # except Exception as e: + # # logger.info(f'更新accuracy表的y值失败:{e}') - # 判断当前日期是不是周一 - is_weekday = datetime.datetime.now().weekday() == 0 - if is_weekday: - logger.info('今天是周一,更新预测模型') - # 计算最近60天预测残差最低的模型名称 - model_results = sqlitedb.select_data( - 'trueandpredict', order_by="ds DESC", limit="60") - # 删除空值率为90%以上的列 - if len(model_results) > 10: - model_results = model_results.dropna( - thresh=len(model_results)*0.1, axis=1) - # 删除空行 - model_results = model_results.dropna() - modelnames = model_results.columns.to_list()[2:-2] - for col in model_results[modelnames].select_dtypes(include=['object']).columns: - model_results[col] = model_results[col].astype(np.float32) - # 计算每个预测值与真实值之间的偏差率 - for model in modelnames: - model_results[f'{model}_abs_error_rate'] = abs( - model_results['y'] - model_results[model]) / model_results['y'] - # 获取每行对应的最小偏差率值 - min_abs_error_rate_values = model_results.apply( - lambda row: row[[f'{model}_abs_error_rate' for model in modelnames]].min(), axis=1) - # 获取每行对应的最小偏差率值对应的列名 - min_abs_error_rate_column_name = model_results.apply( - lambda row: row[[f'{model}_abs_error_rate' for model in modelnames]].idxmin(), axis=1) - # 将列名索引转换为列名 - min_abs_error_rate_column_name = min_abs_error_rate_column_name.map( - lambda x: x.split('_')[0]) - # 取出现次数最多的模型名称 - most_common_model = min_abs_error_rate_column_name.value_counts().idxmax() - logger.info(f"最近60天预测残差最低的模型名称:{most_common_model}") - # 保存结果到数据库 - if not sqlitedb.check_table_exists('most_model'): - sqlitedb.create_table( - 'most_model', columns="ds datetime, most_common_model TEXT") - sqlitedb.insert_data('most_model', (datetime.datetime.now().strftime( - '%Y-%m-%d %H:%M:%S'), most_common_model,), columns=('ds', 'most_common_model',)) + # # 判断当前日期是不是周一 + # is_weekday = datetime.datetime.now().weekday() == 0 + # if is_weekday: + # logger.info('今天是周一,更新预测模型') + # # 计算最近60天预测残差最低的模型名称 + # model_results = sqlitedb.select_data( + # 'trueandpredict', order_by="ds DESC", limit="60") + # # 删除空值率为90%以上的列 + # if len(model_results) > 10: + # model_results = model_results.dropna( + # thresh=len(model_results)*0.1, axis=1) + # # 删除空行 + # model_results = model_results.dropna() + # modelnames = model_results.columns.to_list()[2:-2] + # for col in model_results[modelnames].select_dtypes(include=['object']).columns: + # model_results[col] = model_results[col].astype(np.float32) + # # 计算每个预测值与真实值之间的偏差率 + # for model in modelnames: + # model_results[f'{model}_abs_error_rate'] = abs( + # model_results['y'] - model_results[model]) / model_results['y'] + # # 获取每行对应的最小偏差率值 + # min_abs_error_rate_values = model_results.apply( + # lambda row: row[[f'{model}_abs_error_rate' for model in modelnames]].min(), axis=1) + # # 获取每行对应的最小偏差率值对应的列名 + # min_abs_error_rate_column_name = model_results.apply( + # lambda row: row[[f'{model}_abs_error_rate' for model in modelnames]].idxmin(), axis=1) + # # 将列名索引转换为列名 + # min_abs_error_rate_column_name = min_abs_error_rate_column_name.map( + # lambda x: x.split('_')[0]) + # # 取出现次数最多的模型名称 + # most_common_model = min_abs_error_rate_column_name.value_counts().idxmax() + # logger.info(f"最近60天预测残差最低的模型名称:{most_common_model}") + # # 保存结果到数据库 + # if not sqlitedb.check_table_exists('most_model'): + # sqlitedb.create_table( + # 'most_model', columns="ds datetime, most_common_model TEXT") + # sqlitedb.insert_data('most_model', (datetime.datetime.now().strftime( + # '%Y-%m-%d %H:%M:%S'), most_common_model,), columns=('ds', 'most_common_model',)) - try: - if is_weekday: - # if True: - logger.info('今天是周一,发送特征预警') - # 上传预警信息到数据库 - warning_data_df = df_zhibiaoliebiao.copy() - warning_data_df = warning_data_df[warning_data_df['停更周期'] > 3][[ - '指标名称', '指标id', '频度', '更新周期', '指标来源', '最后更新时间', '停更周期']] - # 重命名列名 - warning_data_df = warning_data_df.rename(columns={'指标名称': 'INDICATOR_NAME', '指标id': 'INDICATOR_ID', '频度': 'FREQUENCY', - '更新周期': 'UPDATE_FREQUENCY', '指标来源': 'DATA_SOURCE', '最后更新时间': 'LAST_UPDATE_DATE', '停更周期': 'UPDATE_SUSPENSION_CYCLE'}) - from sqlalchemy import create_engine - import urllib - global password - if '@' in password: - password = urllib.parse.quote_plus(password) + # try: + # if is_weekday: + # # if True: + # logger.info('今天是周一,发送特征预警') + # # 上传预警信息到数据库 + # warning_data_df = df_zhibiaoliebiao.copy() + # warning_data_df = warning_data_df[warning_data_df['停更周期'] > 3][[ + # '指标名称', '指标id', '频度', '更新周期', '指标来源', '最后更新时间', '停更周期']] + # # 重命名列名 + # warning_data_df = warning_data_df.rename(columns={'指标名称': 'INDICATOR_NAME', '指标id': 'INDICATOR_ID', '频度': 'FREQUENCY', + # '更新周期': 'UPDATE_FREQUENCY', '指标来源': 'DATA_SOURCE', '最后更新时间': 'LAST_UPDATE_DATE', '停更周期': 'UPDATE_SUSPENSION_CYCLE'}) + # from sqlalchemy import create_engine + # import urllib + # global password + # if '@' in password: + # password = urllib.parse.quote_plus(password) - engine = create_engine( - f'mysql+pymysql://{dbusername}:{password}@{host}:{port}/{dbname}') - warning_data_df['WARNING_DATE'] = datetime.date.today().strftime( - "%Y-%m-%d %H:%M:%S") - warning_data_df['TENANT_CODE'] = 'T0004' - # 插入数据之前查询表数据然后新增id列 - existing_data = pd.read_sql(f"SELECT * FROM {table_name}", engine) - if not existing_data.empty: - max_id = existing_data['ID'].astype(int).max() - warning_data_df['ID'] = range( - max_id + 1, max_id + 1 + len(warning_data_df)) - else: - warning_data_df['ID'] = range(1, 1 + len(warning_data_df)) - warning_data_df.to_sql( - table_name, con=engine, if_exists='append', index=False) - if is_update_warning_data: - upload_warning_info(len(warning_data_df)) - except: - logger.info('上传预警信息到数据库失败') + # engine = create_engine( + # f'mysql+pymysql://{dbusername}:{password}@{host}:{port}/{dbname}') + # warning_data_df['WARNING_DATE'] = datetime.date.today().strftime( + # "%Y-%m-%d %H:%M:%S") + # warning_data_df['TENANT_CODE'] = 'T0004' + # # 插入数据之前查询表数据然后新增id列 + # existing_data = pd.read_sql(f"SELECT * FROM {table_name}", engine) + # if not existing_data.empty: + # max_id = existing_data['ID'].astype(int).max() + # warning_data_df['ID'] = range( + # max_id + 1, max_id + 1 + len(warning_data_df)) + # else: + # warning_data_df['ID'] = range(1, 1 + len(warning_data_df)) + # warning_data_df.to_sql( + # table_name, con=engine, if_exists='append', index=False) + # if is_update_warning_data: + # upload_warning_info(len(warning_data_df)) + # except: + # logger.info('上传预警信息到数据库失败') - if is_corr: - df = corr_feature(df=df) + # if is_corr: + # df = corr_feature(df=df) - df1 = df.copy() # 备份一下,后面特征筛选完之后加入ds y 列用 - logger.info(f"开始训练模型...") - row, col = df.shape + # df1 = df.copy() # 备份一下,后面特征筛选完之后加入ds y 列用 + # logger.info(f"开始训练模型...") + # row, col = df.shape - now = datetime.datetime.now().strftime('%Y%m%d%H%M%S') - ex_Model(df, - horizon=global_config['horizon'], - input_size=global_config['input_size'], - train_steps=global_config['train_steps'], - val_check_steps=global_config['val_check_steps'], - early_stop_patience_steps=global_config['early_stop_patience_steps'], - is_debug=global_config['is_debug'], - dataset=global_config['dataset'], - is_train=global_config['is_train'], - is_fivemodels=global_config['is_fivemodels'], - val_size=global_config['val_size'], - test_size=global_config['test_size'], - settings=global_config['settings'], - now=now, - etadata=etadata, - modelsindex=global_config['modelsindex'], - data=data, - is_eta=global_config['is_eta'], - end_time=global_config['end_time'], - ) + # now = datetime.datetime.now().strftime('%Y%m%d%H%M%S') + # ex_Model(df, + # horizon=global_config['horizon'], + # input_size=global_config['input_size'], + # train_steps=global_config['train_steps'], + # val_check_steps=global_config['val_check_steps'], + # early_stop_patience_steps=global_config['early_stop_patience_steps'], + # is_debug=global_config['is_debug'], + # dataset=global_config['dataset'], + # is_train=global_config['is_train'], + # is_fivemodels=global_config['is_fivemodels'], + # val_size=global_config['val_size'], + # test_size=global_config['test_size'], + # settings=global_config['settings'], + # now=now, + # etadata=etadata, + # modelsindex=global_config['modelsindex'], + # data=data, + # is_eta=global_config['is_eta'], + # end_time=global_config['end_time'], + # ) # logger.info('模型训练完成') diff --git a/models/nerulforcastmodels.py b/models/nerulforcastmodels.py index df12d19..81902e8 100644 --- a/models/nerulforcastmodels.py +++ b/models/nerulforcastmodels.py @@ -948,6 +948,8 @@ def model_losss(sqlitedb, end_time): 'accuracy', where_condition=f"created_dt <= '{end_time}'") if len(df_combined) < 100: len(df_combined) + '' + if df_combined['y'].isnull().sum() / len(df_combined) > 0.8: + len(df_combined) + '' except: df_combined = loadcsv(os.path.join( config.dataset, "cross_validation.csv"))