## Collector Data ### Get Qlib data(`bin file`) - get data: `python scripts/get_data.py qlib_data` - parameters: - `target_dir`: save dir, by default *~/.qlib/qlib_data/cn_data_5min* - `version`: dataset version, value from [`v2`], by default `v2` - `v2` end date is *2022-12* - `interval`: `5min` - `region`: `hs300` - `delete_old`: delete existing data from `target_dir`(*features, calendars, instruments, dataset_cache, features_cache*), value from [`True`, `False`], by default `True` - `exists_skip`: traget_dir data already exists, skip `get_data`, value from [`True`, `False`], by default `False` - examples: ```bash # hs300 5min python scripts/get_data.py qlib_data --target_dir ~/.qlib/qlib_data/hs300_data_5min --region hs300 --interval 5min ``` ### Collector *Baostock high frequency* data to qlib > collector *Baostock high frequency* data and *dump* into `qlib` format. > If the above ready-made data can't meet users' requirements, users can follow this section to crawl the latest data and convert it to qlib-data. 1. download data to csv: `python scripts/data_collector/baostock_5min/collector.py download_data` This will download the raw data such as date, symbol, open, high, low, close, volume, amount, adjustflag from baostock to a local directory. One file per symbol. - parameters: - `source_dir`: save the directory - `interval`: `5min` - `region`: `HS300` - `start`: start datetime, by default *None* - `end`: end datetime, by default *None* - examples: ```bash # cn 5min data python collector.py download_data --source_dir ~/.qlib/stock_data/source/hs300_5min_original --start 2022-01-01 --end 2022-01-30 --interval 5min --region HS300 ``` 2. normalize data: `python scripts/data_collector/baostock_5min/collector.py normalize_data` This will: 1. Normalize high, low, close, open price using adjclose. 2. Normalize the high, low, close, open price so that the first valid trading date's close price is 1. - parameters: - `source_dir`: csv directory - `normalize_dir`: result directory - `interval`: `5min` > if **`interval == 5min`**, `qlib_data_1d_dir` cannot be `None` - `region`: `HS300` - `date_field_name`: column *name* identifying time in csv files, by default `date` - `symbol_field_name`: column *name* identifying symbol in csv files, by default `symbol` - `end_date`: if not `None`, normalize the last date saved (*including end_date*); if `None`, it will ignore this parameter; by default `None` - `qlib_data_1d_dir`: qlib directory(1d data) if interval==5min, qlib_data_1d_dir cannot be None, normalize 5min needs to use 1d data; ``` # qlib_data_1d can be obtained like this: python scripts/get_data.py qlib_data --target_dir ~/.qlib/qlib_data/cn_data --interval 1d --region cn --version v3 ``` - examples: ```bash # normalize 5min cn python collector.py normalize_data --qlib_data_1d_dir ~/.qlib/qlib_data/cn_data --source_dir ~/.qlib/stock_data/source/hs300_5min_original --normalize_dir ~/.qlib/stock_data/source/hs300_5min_nor --region HS300 --interval 5min ``` 3. dump data: `python scripts/dump_bin.py dump_all` This will convert the normalized csv in `feature` directory as numpy array and store the normalized data one file per column and one symbol per directory. - parameters: - `csv_path`: stock data path or directory, **normalize result(normalize_dir)** - `qlib_dir`: qlib(dump) data director - `freq`: transaction frequency, by default `day` > `freq_map = {1d:day, 5mih: 5min}` - `max_workers`: number of threads, by default *16* - `include_fields`: dump fields, by default `""` - `exclude_fields`: fields not dumped, by default `""" > dump_fields = `include_fields if include_fields else set(symbol_df.columns) - set(exclude_fields) exclude_fields else symbol_df.columns` - `symbol_field_name`: column *name* identifying symbol in csv files, by default `symbol` - `date_field_name`: column *name* identifying time in csv files, by default `date` - examples: ```bash # dump 5min cn python dump_bin.py dump_all --csv_path ~/.qlib/stock_data/source/hs300_5min_nor --qlib_dir ~/.qlib/qlib_data/hs300_5min_bin --freq 5min --exclude_fields date,symbol ```