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mirror of https://github.com/microsoft/qlib.git synced 2026-06-06 05:51:17 +08:00

Ibovespa index support (#990)

* feat: download ibovespa index historic composition

ibovespa(ibov) is the largest index in Brazil's stocks exchange.
The br_index folder has support for downloading new companies for the current index composition.
And has support, as well, for downloading companies from historic composition of ibov index.

Partially resolves issue #956

* fix: typo error instead of end_date, it was written end_ate

* feat: adds support for downloading stocks historic prices from Brazil's stocks exchange (B3)

Together with commit c2f933 it resolves issue #956

* fix: code formatted with black.

* wip: Creating code logic for brazils stock market data normalization

* docs: brazils stock market data normalization code documentation

* fix: code formatted the with black

* docs: fixed typo

* docs: more info about python version used to generate requirements.txt file

* docs: added BeautifulSoup requirements

* feat: removed debug prints

* feat: added ibov_index_composition variable as a class attribute of IBOVIndex

* feat: added increment to generate the four month period used by the ibov index

* refactor: Added get_instruments() method inside utils.py for better code usability.

Message in the PR request to understand the context of the change

In the course of reviewing this PR we found two issues.

    1. there are multiple places where the get_instruments() method is used,
	and we feel that scripts.index.py is the best place for the
	get_instruments() method to go.
    2. data_collector.utils has some very generic stuff put inside it.

* refactor: improve brazils stocks download speed

The reason to use retry=2 is due to the fact that
Yahoo Finance unfortunately does not keep track of the majority
of Brazilian stocks.

Therefore, the decorator deco_retry with retry argument
set to 5 will keep trying to get the stock data 5 times,
which makes the code to download Brazilians stocks very slow.

In future, this may change, but for now
I suggest to leave retry argument to 1 or 2 in
order to improve download speed.

In order to achieve this code logic an argument called retry_config
was added into YahooCollectorBR1d and YahooCollectorBR1min

* fix: added __main__ at the bottom of the script

* refactor: changed interface inside each index

Using partial as `fire.Fire(partial(get_instruments, market_index="br_index" ))`
will make the interface easier for the user to execute the script.
Then all the collector.py CLI in each folder can remove a redundant arguments.

* refactor: implemented  class interface retry into YahooCollectorBR

* docs: added BR as a possible region into the documentation

* refactor: make retry attribute part of the interface

This way we don't have to use hasattr to access the retry attribute as previously done
This commit is contained in:
igor17400
2022-04-05 22:01:29 -03:00
committed by GitHub
parent 6edd0bf298
commit 56cfa480dc
10 changed files with 577 additions and 89 deletions

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@@ -0,0 +1,61 @@
# iBOVESPA History Companies Collection
## Requirements
- Install the libs from the file `requirements.txt`
```bash
pip install -r requirements.txt
```
- `requirements.txt` file was generated using python3.8
## For the ibovespa (IBOV) index, we have:
<hr/>
### Method `get_new_companies`
#### <b>Index start date</b>
- The ibovespa index started on 2 January 1968 ([wiki](https://en.wikipedia.org/wiki/%C3%8Dndice_Bovespa)). In order to use this start date in our `bench_start_date(self)` method, two conditions must be satisfied:
1) APIs used to download brazilian stocks (B3) historical prices must keep track of such historic data since 2 January 1968
2) Some website or API must provide, from that date, the historic index composition. In other words, the companies used to build the index .
As a consequence, the method `bench_start_date(self)` inside `collector.py` was implemented using `pd.Timestamp("2003-01-03")` due to two reasons
1) The earliest ibov composition that have been found was from the first quarter of 2003. More informations about such composition can be seen on the sections below.
2) Yahoo finance, one of the libraries used to download symbols historic prices, keeps track from this date forward.
- Within the `get_new_companies` method, a logic was implemented to get, for each ibovespa component stock, the start date that yahoo finance keeps track of.
#### <b>Code Logic</b>
The code does a web scrapping into the B3's [website](https://sistemaswebb3-listados.b3.com.br/indexPage/day/IBOV?language=pt-br), which keeps track of the ibovespa stocks composition on the current day.
Other approaches, such as `request` and `Beautiful Soup` could have been used. However, the website shows the table with the stocks with some delay, since it uses a script inside of it to obtain such compositions.
Alternatively, `selenium` was used to download this stocks' composition in order to overcome this problem.
Futhermore, the data downloaded from the selenium script was preprocessed so it could be saved into the `csv` format stablished by `scripts/data_collector/index.py`.
<hr/>
### Method `get_changes`
No suitable data source that keeps track of ibovespa's history stocks composition has been found. Except from this [repository](https://github.com/igor17400/IBOV-HCI) which provide such information have been used, however it only provides the data from the 1st quarter of 2003 to 3rd quarter of 2021.
With that reference, the index's composition can be compared quarter by quarter and year by year and then generate a file that keeps track of which stocks have been removed and which have been added each quarter and year.
<hr/>
### Collector Data
```bash
# parse instruments, using in qlib/instruments.
python collector.py --index_name IBOV --qlib_dir ~/.qlib/qlib_data/br_data --method parse_instruments
# parse new companies
python collector.py --index_name IBOV --qlib_dir ~/.qlib/qlib_data/br_data --method save_new_companies
```

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@@ -0,0 +1,277 @@
# Copyright (c) Microsoft Corporation.
# Licensed under the MIT License.
from functools import partial
import sys
from pathlib import Path
import importlib
import datetime
import fire
import pandas as pd
from tqdm import tqdm
from loguru import logger
CUR_DIR = Path(__file__).resolve().parent
sys.path.append(str(CUR_DIR.parent.parent))
from data_collector.index import IndexBase
from data_collector.utils import get_instruments
quarter_dict = {"1Q": "01-03", "2Q": "05-01", "3Q": "09-01"}
class IBOVIndex(IndexBase):
ibov_index_composition = "https://raw.githubusercontent.com/igor17400/IBOV-HCI/main/historic_composition/{}.csv"
years_4_month_periods = []
def __init__(
self,
index_name: str,
qlib_dir: [str, Path] = None,
freq: str = "day",
request_retry: int = 5,
retry_sleep: int = 3,
):
super(IBOVIndex, self).__init__(
index_name=index_name, qlib_dir=qlib_dir, freq=freq, request_retry=request_retry, retry_sleep=retry_sleep
)
self.today: datetime = datetime.date.today()
self.current_4_month_period = self.get_current_4_month_period(self.today.month)
self.year = str(self.today.year)
self.years_4_month_periods = self.get_four_month_period()
@property
def bench_start_date(self) -> pd.Timestamp:
"""
The ibovespa index started on 2 January 1968 (wiki), however,
no suitable data source that keeps track of ibovespa's history
stocks composition has been found. Except from the repo indicated
in README. Which keeps track of such information starting from
the first quarter of 2003
"""
return pd.Timestamp("2003-01-03")
def get_current_4_month_period(self, current_month: int):
"""
This function is used to calculated what is the current
four month period for the current month. For example,
If the current month is August 8, its four month period
is 2Q.
OBS: In english Q is used to represent *quarter*
which means a three month period. However, in
portuguese we use Q to represent a four month period.
In other words,
Jan, Feb, Mar, Apr: 1Q
May, Jun, Jul, Aug: 2Q
Sep, Oct, Nov, Dez: 3Q
Parameters
----------
month : int
Current month (1 <= month <= 12)
Returns
-------
current_4m_period:str
Current Four Month Period (1Q or 2Q or 3Q)
"""
if current_month < 5:
return "1Q"
if current_month < 9:
return "2Q"
if current_month <= 12:
return "3Q"
else:
return -1
def get_four_month_period(self):
"""
The ibovespa index is updated every four months.
Therefore, we will represent each time period as 2003_1Q
which means 2003 first four mount period (Jan, Feb, Mar, Apr)
"""
four_months_period = ["1Q", "2Q", "3Q"]
init_year = 2003
now = datetime.datetime.now()
current_year = now.year
current_month = now.month
for year in [item for item in range(init_year, current_year)]:
for el in four_months_period:
self.years_4_month_periods.append(str(year)+"_"+el)
# For current year the logic must be a little different
current_4_month_period = self.get_current_4_month_period(current_month)
for i in range(int(current_4_month_period[0])):
self.years_4_month_periods.append(str(current_year) + "_" + str(i+1) + "Q")
return self.years_4_month_periods
def format_datetime(self, inst_df: pd.DataFrame) -> pd.DataFrame:
"""formatting the datetime in an instrument
Parameters
----------
inst_df: pd.DataFrame
inst_df.columns = [self.SYMBOL_FIELD_NAME, self.START_DATE_FIELD, self.END_DATE_FIELD]
Returns
-------
inst_df: pd.DataFrame
"""
logger.info("Formatting Datetime")
if self.freq != "day":
inst_df[self.END_DATE_FIELD] = inst_df[self.END_DATE_FIELD].apply(
lambda x: (pd.Timestamp(x) + pd.Timedelta(hours=23, minutes=59)).strftime("%Y-%m-%d %H:%M:%S")
)
else:
inst_df[self.START_DATE_FIELD] = inst_df[self.START_DATE_FIELD].apply(
lambda x: (pd.Timestamp(x)).strftime("%Y-%m-%d")
)
inst_df[self.END_DATE_FIELD] = inst_df[self.END_DATE_FIELD].apply(
lambda x: (pd.Timestamp(x)).strftime("%Y-%m-%d")
)
return inst_df
def format_quarter(self, cell: str):
"""
Parameters
----------
cell: str
It must be on the format 2003_1Q --> years_4_month_periods
Returns
----------
date: str
Returns date in format 2003-03-01
"""
cell_split = cell.split("_")
return cell_split[0] + "-" + quarter_dict[cell_split[1]]
def get_changes(self):
"""
Access the index historic composition and compare it quarter
by quarter and year by year in order to generate a file that
keeps track of which stocks have been removed and which have
been added.
The Dataframe used as reference will provided the index
composition for each year an quarter:
pd.DataFrame:
symbol
SH600000
SH600001
.
.
.
Parameters
----------
self: is used to represent the instance of the class.
Returns
----------
pd.DataFrame:
symbol date type
SH600000 2019-11-11 add
SH600001 2020-11-10 remove
dtypes:
symbol: str
date: pd.Timestamp
type: str, value from ["add", "remove"]
"""
logger.info("Getting companies changes in {} index ...".format(self.index_name))
try:
df_changes_list = []
for i in tqdm(range(len(self.years_4_month_periods) - 1)):
df = pd.read_csv(self.ibov_index_composition.format(self.years_4_month_periods[i]), on_bad_lines="skip")["symbol"]
df_ = pd.read_csv(self.ibov_index_composition.format(self.years_4_month_periods[i + 1]), on_bad_lines="skip")["symbol"]
## Remove Dataframe
remove_date = self.years_4_month_periods[i].split("_")[0] + "-" + quarter_dict[self.years_4_month_periods[i].split("_")[1]]
list_remove = list(df[~df.isin(df_)])
df_removed = pd.DataFrame(
{
"date": len(list_remove) * [remove_date],
"type": len(list_remove) * ["remove"],
"symbol": list_remove,
}
)
## Add Dataframe
add_date = self.years_4_month_periods[i + 1].split("_")[0] + "-" + quarter_dict[self.years_4_month_periods[i + 1].split("_")[1]]
list_add = list(df_[~df_.isin(df)])
df_added = pd.DataFrame(
{"date": len(list_add) * [add_date], "type": len(list_add) * ["add"], "symbol": list_add}
)
df_changes_list.append(pd.concat([df_added, df_removed], sort=False))
df = pd.concat(df_changes_list).reset_index(drop=True)
df["symbol"] = df["symbol"].astype(str) + ".SA"
return df
except Exception as E:
logger.error("An error occured while downloading 2008 index composition - {}".format(E))
def get_new_companies(self):
"""
Get latest index composition.
The repo indicated on README has implemented a script
to get the latest index composition from B3 website using
selenium. Therefore, this method will download the file
containing such composition
Parameters
----------
self: is used to represent the instance of the class.
Returns
----------
pd.DataFrame:
symbol start_date end_date
RRRP3 2020-11-13 2022-03-02
ALPA4 2008-01-02 2022-03-02
dtypes:
symbol: str
start_date: pd.Timestamp
end_date: pd.Timestamp
"""
logger.info("Getting new companies in {} index ...".format(self.index_name))
try:
## Get index composition
df_index = pd.read_csv(
self.ibov_index_composition.format(self.year + "_" + self.current_4_month_period), on_bad_lines="skip"
)
df_date_first_added = pd.read_csv(
self.ibov_index_composition.format("date_first_added_" + self.year + "_" + self.current_4_month_period),
on_bad_lines="skip",
)
df = df_index.merge(df_date_first_added, on="symbol")[["symbol", "Date First Added"]]
df[self.START_DATE_FIELD] = df["Date First Added"].map(self.format_quarter)
# end_date will be our current quarter + 1, since the IBOV index updates itself every quarter
df[self.END_DATE_FIELD] = self.year + "-" + quarter_dict[self.current_4_month_period]
df = df[["symbol", self.START_DATE_FIELD, self.END_DATE_FIELD]]
df["symbol"] = df["symbol"].astype(str) + ".SA"
return df
except Exception as E:
logger.error("An error occured while getting new companies - {}".format(E))
def filter_df(self, df: pd.DataFrame) -> pd.DataFrame:
if "Código" in df.columns:
return df.loc[:, ["Código"]].copy()
if __name__ == "__main__":
fire.Fire(partial(get_instruments, market_index="br_index" ))

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@@ -0,0 +1,34 @@
async-generator==1.10
attrs==21.4.0
certifi==2021.10.8
cffi==1.15.0
charset-normalizer==2.0.12
cryptography==36.0.1
fire==0.4.0
h11==0.13.0
idna==3.3
loguru==0.6.0
lxml==4.8.0
multitasking==0.0.10
numpy==1.22.2
outcome==1.1.0
pandas==1.4.1
pycoingecko==2.2.0
pycparser==2.21
pyOpenSSL==22.0.0
PySocks==1.7.1
python-dateutil==2.8.2
pytz==2021.3
requests==2.27.1
requests-futures==1.0.0
six==1.16.0
sniffio==1.2.0
sortedcontainers==2.4.0
termcolor==1.1.0
tqdm==4.63.0
trio==0.20.0
trio-websocket==0.9.2
urllib3==1.26.8
wget==3.2
wsproto==1.1.0
yahooquery==2.2.15

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@@ -21,6 +21,7 @@ sys.path.append(str(CUR_DIR.parent.parent))
from data_collector.index import IndexBase
from data_collector.utils import get_calendar_list, get_trading_date_by_shift, deco_retry
from data_collector.utils import get_instruments
NEW_COMPANIES_URL = "https://csi-web-dev.oss-cn-shanghai-finance-1-pub.aliyuncs.com/static/html/csindex/public/uploads/file/autofile/cons/{index_code}cons.xls"
@@ -315,7 +316,7 @@ class CSIIndex(IndexBase):
return df
class CSI300(CSIIndex):
class CSI300Index(CSIIndex):
@property
def index_code(self):
return "000300"
@@ -458,46 +459,5 @@ class CSI500(CSIIndex):
return df
def get_instruments(
qlib_dir: str,
index_name: str,
method: str = "parse_instruments",
freq: str = "day",
request_retry: int = 5,
retry_sleep: int = 3,
):
"""
Parameters
----------
qlib_dir: str
qlib data dir, default "Path(__file__).parent/qlib_data"
index_name: str
index name, value from ["csi100", "csi300"]
method: str
method, value from ["parse_instruments", "save_new_companies"]
freq: str
freq, value from ["day", "1min"]
request_retry: int
request retry, by default 5
retry_sleep: int
request sleep, by default 3
Examples
-------
# parse instruments
$ python collector.py --index_name CSI300 --qlib_dir ~/.qlib/qlib_data/cn_data --method parse_instruments
# parse new companies
$ python collector.py --index_name CSI300 --qlib_dir ~/.qlib/qlib_data/cn_data --method save_new_companies
"""
_cur_module = importlib.import_module("data_collector.cn_index.collector")
obj = getattr(_cur_module, f"{index_name.upper()}")(
qlib_dir=qlib_dir, index_name=index_name, freq=freq, request_retry=request_retry, retry_sleep=retry_sleep
)
getattr(obj, method)()
if __name__ == "__main__":
fire.Fire(get_instruments)

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@@ -19,7 +19,7 @@ class IndexBase:
SYMBOL_FIELD_NAME = "symbol"
DATE_FIELD_NAME = "date"
START_DATE_FIELD = "start_date"
END_DATE_FIELD = "end_ate"
END_DATE_FIELD = "end_date"
CHANGE_TYPE_FIELD = "type"
INSTRUMENTS_COLUMNS = [SYMBOL_FIELD_NAME, START_DATE_FIELD, END_DATE_FIELD]
REMOVE = "remove"

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@@ -2,6 +2,7 @@
# Licensed under the MIT License.
import abc
from functools import partial
import sys
import importlib
from pathlib import Path
@@ -20,6 +21,7 @@ sys.path.append(str(CUR_DIR.parent.parent))
from data_collector.index import IndexBase
from data_collector.utils import deco_retry, get_calendar_list, get_trading_date_by_shift
from data_collector.utils import get_instruments
WIKI_URL = "https://en.wikipedia.org/wiki"
@@ -269,46 +271,6 @@ class SP400Index(WIKIIndex):
logger.warning(f"No suitable data source has been found!")
def get_instruments(
qlib_dir: str,
index_name: str,
method: str = "parse_instruments",
freq: str = "day",
request_retry: int = 5,
retry_sleep: int = 3,
):
"""
Parameters
----------
qlib_dir: str
qlib data dir, default "Path(__file__).parent/qlib_data"
index_name: str
index name, value from ["SP500", "NASDAQ100", "DJIA", "SP400"]
method: str
method, value from ["parse_instruments", "save_new_companies"]
freq: str
freq, value from ["day", "1min"]
request_retry: int
request retry, by default 5
retry_sleep: int
request sleep, by default 3
Examples
-------
# parse instruments
$ python collector.py --index_name SP500 --qlib_dir ~/.qlib/qlib_data/us_data --method parse_instruments
# parse new companies
$ python collector.py --index_name SP500 --qlib_dir ~/.qlib/qlib_data/us_data --method save_new_companies
"""
_cur_module = importlib.import_module("data_collector.us_index.collector")
obj = getattr(_cur_module, f"{index_name.upper()}Index")(
qlib_dir=qlib_dir, index_name=index_name, freq=freq, request_retry=request_retry, retry_sleep=retry_sleep
)
getattr(obj, method)()
if __name__ == "__main__":
fire.Fire(get_instruments)
fire.Fire(partial(get_instruments, market_index="us_index"))

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@@ -2,6 +2,7 @@
# Licensed under the MIT License.
import re
import importlib
import time
import bisect
import pickle
@@ -19,6 +20,7 @@ from yahooquery import Ticker
from tqdm import tqdm
from functools import partial
from concurrent.futures import ProcessPoolExecutor
from bs4 import BeautifulSoup
HS_SYMBOLS_URL = "http://app.finance.ifeng.com/hq/list.php?type=stock_a&class={s_type}"
@@ -34,6 +36,7 @@ CALENDAR_BENCH_URL_MAP = {
# NOTE: Use the time series of ^GSPC(SP500) as the sequence of all stocks
"US_ALL": "^GSPC",
"IN_ALL": "^NSEI",
"BR_ALL": "^BVSP",
}
_BENCH_CALENDAR_LIST = None
@@ -41,6 +44,7 @@ _ALL_CALENDAR_LIST = None
_HS_SYMBOLS = None
_US_SYMBOLS = None
_IN_SYMBOLS = None
_BR_SYMBOLS = None
_EN_FUND_SYMBOLS = None
_CALENDAR_MAP = {}
@@ -69,7 +73,9 @@ def get_calendar_list(bench_code="CSI300") -> List[pd.Timestamp]:
calendar = _CALENDAR_MAP.get(bench_code, None)
if calendar is None:
if bench_code.startswith("US_") or bench_code.startswith("IN_"):
if bench_code.startswith("US_") or bench_code.startswith("IN_") or bench_code.startswith("BR_"):
print(Ticker(CALENDAR_BENCH_URL_MAP[bench_code]))
print(Ticker(CALENDAR_BENCH_URL_MAP[bench_code]).history(interval="1d", period="max"))
df = Ticker(CALENDAR_BENCH_URL_MAP[bench_code]).history(interval="1d", period="max")
calendar = df.index.get_level_values(level="date").map(pd.Timestamp).unique().tolist()
else:
@@ -345,6 +351,57 @@ def get_in_stock_symbols(qlib_data_path: [str, Path] = None) -> list:
return _IN_SYMBOLS
def get_br_stock_symbols(qlib_data_path: [str, Path] = None) -> list:
"""get Brazil(B3) stock symbols
Returns
-------
B3 stock symbols
"""
global _BR_SYMBOLS
@deco_retry
def _get_ibovespa():
_symbols = []
url = "https://www.fundamentus.com.br/detalhes.php?papel="
# Request
agent = {"User-Agent": "Mozilla/5.0"}
page = requests.get(url, headers=agent)
# BeautifulSoup
soup = BeautifulSoup(page.content, "html.parser")
tbody = soup.find("tbody")
children = tbody.findChildren("a", recursive=True)
for child in children:
_symbols.append(str(child).split('"')[-1].split(">")[1].split("<")[0])
return _symbols
if _BR_SYMBOLS is None:
_all_symbols = _get_ibovespa()
if qlib_data_path is not None:
for _index in ["ibov"]:
ins_df = pd.read_csv(
Path(qlib_data_path).joinpath(f"instruments/{_index}.txt"),
sep="\t",
names=["symbol", "start_date", "end_date"],
)
_all_symbols += ins_df["symbol"].unique().tolist()
def _format(s_):
s_ = s_.strip()
s_ = s_.strip("$")
s_ = s_.strip("*")
s_ = s_ + ".SA"
return s_
_BR_SYMBOLS = sorted(set(map(_format, _all_symbols)))
return _BR_SYMBOLS
def get_en_fund_symbols(qlib_data_path: [str, Path] = None) -> list:
"""get en fund symbols
@@ -502,6 +559,50 @@ def generate_minutes_calendar_from_daily(
return pd.Index(sorted(set(np.hstack(res))))
def get_instruments(
qlib_dir: str,
index_name: str,
method: str = "parse_instruments",
freq: str = "day",
request_retry: int = 5,
retry_sleep: int = 3,
market_index: str = "cn_index"
):
"""
Parameters
----------
qlib_dir: str
qlib data dir, default "Path(__file__).parent/qlib_data"
index_name: str
index name, value from ["csi100", "csi300"]
method: str
method, value from ["parse_instruments", "save_new_companies"]
freq: str
freq, value from ["day", "1min"]
request_retry: int
request retry, by default 5
retry_sleep: int
request sleep, by default 3
market_index: str
Where the files to obtain the index are located,
for example data_collector.cn_index.collector
Examples
-------
# parse instruments
$ python collector.py --index_name CSI300 --qlib_dir ~/.qlib/qlib_data/cn_data --method parse_instruments
# parse new companies
$ python collector.py --index_name CSI300 --qlib_dir ~/.qlib/qlib_data/cn_data --method save_new_companies
"""
_cur_module = importlib.import_module("data_collector.{}.collector".format(market_index))
obj = getattr(_cur_module, f"{index_name.upper()}Index")(
qlib_dir=qlib_dir, index_name=index_name, freq=freq, request_retry=request_retry, retry_sleep=retry_sleep
)
getattr(obj, method)()
if __name__ == "__main__":
assert len(get_hs_stock_symbols()) >= MINIMUM_SYMBOLS_NUM
assert len(get_hs_stock_symbols()) >= MINIMUM_SYMBOLS_NUM

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@@ -66,7 +66,7 @@ pip install -r requirements.txt
- `source_dir`: save the directory
- `interval`: `1d` or `1min`, by default `1d`
> **due to the limitation of the *YahooFinance API*, only the last month's data is available in `1min`**
- `region`: `CN` or `US` or `IN`, by default `CN`
- `region`: `CN` or `US` or `IN` or `BR`, by default `CN`
- `delay`: `time.sleep(delay)`, by default *0.5*
- `start`: start datetime, by default *"2000-01-01"*; *closed interval(including start)*
- `end`: end datetime, by default `pd.Timestamp(datetime.datetime.now() + pd.Timedelta(days=1))`; *open interval(excluding end)*
@@ -80,14 +80,21 @@ pip install -r requirements.txt
python collector.py download_data --source_dir ~/.qlib/stock_data/source/cn_data --start 2020-01-01 --end 2020-12-31 --delay 1 --interval 1d --region CN
# cn 1min data
python collector.py download_data --source_dir ~/.qlib/stock_data/source/cn_data_1min --delay 1 --interval 1min --region CN
# us 1d data
python collector.py download_data --source_dir ~/.qlib/stock_data/source/us_data --start 2020-01-01 --end 2020-12-31 --delay 1 --interval 1d --region US
# us 1min data
python collector.py download_data --source_dir ~/.qlib/stock_data/source/us_data_1min --delay 1 --interval 1min --region US
# in 1d data
python collector.py download_data --source_dir ~/.qlib/stock_data/source/in_data --start 2020-01-01 --end 2020-12-31 --delay 1 --interval 1d --region IN
# in 1min data
python collector.py download_data --source_dir ~/.qlib/stock_data/source/in_data_1min --delay 1 --interval 1min --region IN
# br 1d data
python collector.py download_data --source_dir ~/.qlib/stock_data/source/br_data --start 2003-01-03 --end 2022-03-01 --delay 1 --interval 1d --region BR
# br 1min data
python collector.py download_data --source_dir ~/.qlib/stock_data/source/br_data_1min --delay 1 --interval 1min --region BR
```
2. normalize data: `python scripts/data_collector/yahoo/collector.py normalize_data`
@@ -116,8 +123,15 @@ pip install -r requirements.txt
```bash
# normalize 1d cn
python collector.py normalize_data --source_dir ~/.qlib/stock_data/source/cn_data --normalize_dir ~/.qlib/stock_data/source/cn_1d_nor --region CN --interval 1d
# normalize 1min cn
python collector.py normalize_data --qlib_data_1d_dir ~/.qlib/qlib_data/cn_data --source_dir ~/.qlib/stock_data/source/cn_data_1min --normalize_dir ~/.qlib/stock_data/source/cn_1min_nor --region CN --interval 1min
# normalize 1d br
python scripts/data_collector/yahoo/collector.py normalize_data --source_dir ~/.qlib/stock_data/source/br_data --normalize_dir ~/.qlib/stock_data/source/br_1d_nor --region BR --interval 1d
# normalize 1min br
python collector.py normalize_data --qlib_data_1d_dir ~/.qlib/qlib_data/br_data --source_dir ~/.qlib/stock_data/source/br_data_1min --normalize_dir ~/.qlib/stock_data/source/br_1min_nor --region BR --interval 1min
```
3. dump data: `python scripts/dump_bin.py dump_all`

View File

@@ -2,6 +2,7 @@
# Licensed under the MIT License.
import abc
from re import I
import sys
import copy
import time
@@ -35,6 +36,7 @@ from data_collector.utils import (
get_hs_stock_symbols,
get_us_stock_symbols,
get_in_stock_symbols,
get_br_stock_symbols,
generate_minutes_calendar_from_daily,
)
@@ -42,6 +44,8 @@ INDEX_BENCH_URL = "http://push2his.eastmoney.com/api/qt/stock/kline/get?secid=1.
class YahooCollector(BaseCollector):
retry = 5 # Configuration attribute. How many times will it try to re-request the data if the network fails.
def __init__(
self,
save_dir: [str, Path],
@@ -146,7 +150,7 @@ class YahooCollector(BaseCollector):
def get_data(
self, symbol: str, interval: str, start_datetime: pd.Timestamp, end_datetime: pd.Timestamp
) -> pd.DataFrame:
@deco_retry(retry_sleep=self.delay)
@deco_retry(retry_sleep=self.delay, retry=self.retry)
def _get_simple(start_, end_):
self.sleep()
_remote_interval = "1m" if interval == self.INTERVAL_1min else interval
@@ -311,6 +315,55 @@ class YahooCollectorIN1min(YahooCollectorIN):
pass
class YahooCollectorBR(YahooCollector, ABC):
def retry(cls):
""""
The reason to use retry=2 is due to the fact that
Yahoo Finance unfortunately does not keep track of some
Brazilian stocks.
Therefore, the decorator deco_retry with retry argument
set to 5 will keep trying to get the stock data up to 5 times,
which makes the code to download Brazilians stocks very slow.
In future, this may change, but for now
I suggest to leave retry argument to 1 or 2 in
order to improve download speed.
To achieve this goal an abstract attribute (retry)
was added into YahooCollectorBR base class
"""
raise NotImplementedError
def get_instrument_list(self):
logger.info("get BR stock symbols......")
symbols = get_br_stock_symbols() + [
"^BVSP",
]
logger.info(f"get {len(symbols)} symbols.")
return symbols
def download_index_data(self):
pass
def normalize_symbol(self, symbol):
return code_to_fname(symbol).upper()
@property
def _timezone(self):
return "Brazil/East"
class YahooCollectorBR1d(YahooCollectorBR):
retry = 2
pass
class YahooCollectorBR1min(YahooCollectorBR):
retry = 2
pass
class YahooNormalize(BaseNormalize):
COLUMNS = ["open", "close", "high", "low", "volume"]
DAILY_FORMAT = "%Y-%m-%d"
@@ -833,6 +886,29 @@ class YahooNormalizeCN1min(YahooNormalizeCN, YahooNormalize1minOffline):
return get_calendar_list("ALL")
class YahooNormalizeBR:
def _get_calendar_list(self) -> Iterable[pd.Timestamp]:
return get_calendar_list("BR_ALL")
class YahooNormalizeBR1d(YahooNormalizeBR, YahooNormalize1d):
pass
class YahooNormalizeBR1min(YahooNormalizeBR, YahooNormalize1minOffline):
CALC_PAUSED_NUM = False
def _get_calendar_list(self) -> Iterable[pd.Timestamp]:
# TODO: support 1min
raise ValueError("Does not support 1min")
def _get_1d_calendar_list(self):
return get_calendar_list("BR_ALL")
def symbol_to_yahoo(self, symbol):
return fname_to_code(symbol)
class Run(BaseRun):
def __init__(self, source_dir=None, normalize_dir=None, max_workers=1, interval="1d", region=REGION_CN):
"""
@@ -848,7 +924,7 @@ class Run(BaseRun):
interval: str
freq, value from [1min, 1d], default 1d
region: str
region, value from ["CN", "US"], default "CN"
region, value from ["CN", "US", "BR"], default "CN"
"""
super().__init__(source_dir, normalize_dir, max_workers, interval)
self.region = region

View File

@@ -7,3 +7,6 @@ tqdm
lxml
yahooquery
joblib
beautifulsoup4
bs4
soupsieve