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qlib/examples/data/monitor.py
2021-06-06 07:43:26 +00:00

155 lines
4.6 KiB
Python

"""
This script is the demonstrating the implementation of following requirements.
NOTE: A lot of details is not considered in this script
- Corner case that will raise error( std == 0)
· Transformer:
1) Basic statistics on different slices of the DataFrame df:
§ The statistics include:
· STD, Mean, Skewnes, Kurtosis
§ The above statistics can be calculated on the following data slices:
· df.groupby(['datetime'])
· df.groupby(['datetime', 'industry' ])
· df.groupby(['instrument', 'factor'])
· df.apply("<expresion>").groupby([..]), in which [..] could be any one of the above slicing rules.
2) Advanced statistics on different slices of the DataFrame df:
§ Auto-correlation:
· Calculate corr(df.loc[t, :, :], df.loc[t-w, :, :]), w=1, 2, ….
§ Correlation between factors:
· For any pair of factors (i, j): calculate corr(df.loc[t, :, i], df.loc[t, :, j]). The result is a correlation matrix with each element corresponds to a correlation value between a pair of factors.
§ The data slices are the same as those in 1).
· Monitor:
1) Algorithms:
§ Basic checks: NaN.
§ Point anomaly detection.
§ Segment anomaly detection.
2) Scenarios:
§ Online anomaly detection: monitoring streaming data.
Offline anomaly detection: verifying whole historical data.
"""
# AUTO download data
from qlib.utils import exists_qlib_data
from qlib.tests.data import GetData
from qlib.config import REG_CN
provider_uri = "~/.qlib/qlib_data/cn_data" # target_dir
if not exists_qlib_data(provider_uri):
print(f"Qlib data is not found in {provider_uri}")
GetData().qlib_data(target_dir=provider_uri, region=REG_CN)
import qlib
qlib.init()
import pandas as pd
from qlib.contrib.data.handler import Alpha158
from qlib.data.dataset.loader import QlibDataLoader
from qlib.data.monitor.metric import format_conv
from qlib.data.monitor.metric import MeanM, SkewM, KurtM, StdM, AutoCM, CorrM
from qlib.data.monitor.detector import NDDetector, SWNDD, ThresholdD
from qlib.data import D
def get_factor_df(col_idx=0):
dh = Alpha158(instruments="csi300", infer_processors=[], learn_processors=[], start_time="20200101")
df = dh.fetch()
print(df.head())
# We don't have industries in dataframe, we generate the with fake data
industry = pd.Series(df.index.get_level_values("instrument").str.slice(stop=2).to_list(), index=df.index)
# select a factor
factor_df = format_conv(df.iloc[:, col_idx], industry=industry)
print(f"Selected metric: {df.columns[col_idx]}")
print(factor_df)
return factor_df
def case_1_1():
factor_df = get_factor_df()
# 1) Extract metrics
# 1.1) df.groupby(["datetime"])
mtrc = MeanM()
m_mean = mtrc.extract(factor_df)
print(m_mean)
ndd = NDDetector()
ndd.fit(m_mean) # use historical data to fit detector
check_res = ndd.check(m_mean)
print(check_res) # detecting on new data or historical data
print(check_res.value_counts())
def case_1_2():
factor_df = get_factor_df()
# 1.2) df.groupby("datetime", "industry")
mtrc = MeanM(group=["industry"])
m_multi = mtrc.extract(factor_df)
print(m_multi)
for col_name, s in m_multi.iteritems():
print(col_name)
ndd = NDDetector()
ndd.fit(s) # use historical data to fit detector
check_res = ndd.check(s)
print(check_res) # detecting on new data or historical data
print(check_res.value_counts())
def case_1_3_1_4():
# case 1.3 and case 1.4
# factor_df = get_factor_df()
qdl = QlibDataLoader(config=(["$close/Ref($close, 1) - 1"], ["return"]))
df = qdl.load(instruments=["SH600519"], start_time="20200101")
df = format_conv(df)
s = df.iloc[:, 0]
print(s)
dtc = SWNDD(window=20)
dtc.fit(s) # fit use historical data (TODO: updating will be supported in the future)
check_res = dtc.check(s) #
print(check_res)
print(check_res.value_counts())
print(check_res[check_res])
def case_2_1():
# · Calculate corr(df.loc[t, :, :], df.loc[t-w, :, :]), w=1, 2, ….
factor_df = get_factor_df()
acm = AutoCM()
mtrc = acm.extract(factor_df)
print(mtrc)
thd = ThresholdD(0.0, reverse=True)
check_res = thd.check(mtrc)
print(check_res)
print(check_res.value_counts())
def case_2_2():
factor_df1, factor_df2 = get_factor_df(0), get_factor_df(1)
cm = CorrM()
mtrc = cm.extract(factor_df1, factor_df2)
print(mtrc)
thd = ThresholdD(0.0, reverse=True)
check_res = thd.check(mtrc)
print(check_res)
print(check_res.value_counts())
if __name__ == "__main__":
case_1_1()
case_1_2()
case_1_3_1_4()
case_2_1()
case_2_2()