Files
catalyst/tests/test_risk_compare_batch_iterative.py
T
Eddie Hebert fd6c71286d MAINT: Use sim_params for risk metrics init.
Prepare for adding emission_rate in risk metrics logic.
2013-04-25 15:30:34 -04:00

165 lines
6.1 KiB
Python

#
# Copyright 2013 Quantopian, Inc.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import numbers
import unittest
import datetime
import pytz
import numpy as np
import pandas as pd
import zipline.finance.risk as risk
import zipline.finance.trading as trading
from zipline.finance.trading import SimulationParameters
from zipline.protocol import DailyReturn
from test_risk import RETURNS
class RiskCompareIterativeToBatch(unittest.TestCase):
"""
Assert that RiskMetricsIterative and RiskMetricsBatch
behave in the same way.
"""
def setUp(self):
self.start_date = datetime.datetime(
year=2006,
month=1,
day=1,
hour=0,
minute=0,
tzinfo=pytz.utc)
self.end_date = datetime.datetime(
year=2006, month=12, day=31, tzinfo=pytz.utc)
def test_risk_metrics_returns(self):
trading.environment = trading.TradingEnvironment()
# Advance start date to first date in the trading calendar
if trading.environment.is_trading_day(self.start_date):
start_date = self.start_date
else:
start_date = trading.environment.next_trading_day(self.start_date)
self.all_benchmark_returns = pd.Series({
x.date: x.returns
for x in trading.environment.benchmark_returns
if x.date >= self.start_date
})
start_index = trading.environment.trading_days.searchsorted(start_date)
end_date = trading.environment.trading_days[
start_index + len(RETURNS)]
sim_params = SimulationParameters(start_date, end_date)
risk_metrics_refactor = risk.RiskMetricsIterative(sim_params)
todays_date = start_date
cur_returns = []
for i, ret in enumerate(RETURNS):
todays_return_obj = DailyReturn(
todays_date,
ret
)
cur_returns.append(todays_return_obj)
# Move forward day counter to next trading day
todays_date = trading.environment.next_trading_day(todays_date)
try:
risk_metrics_original = risk.RiskMetricsBatch(
start_date=start_date,
end_date=todays_date,
returns=cur_returns
)
except Exception as e:
#assert that when original raises exception, same
#exception is raised by risk_metrics_refactor
np.testing.assert_raises(
type(e),
risk_metrics_refactor.update,
todays_date,
self.all_benchmark_returns[todays_return_obj.date]
)
continue
risk_metrics_refactor.update(
todays_date,
ret,
self.all_benchmark_returns[todays_return_obj.date])
self.assertEqual(
risk_metrics_original.start_date,
risk_metrics_refactor.start_date)
self.assertEqual(
risk_metrics_original.end_date,
risk_metrics_refactor.algorithm_returns.index[-1])
self.assertEqual(
risk_metrics_original.treasury_period_return,
risk_metrics_refactor.treasury_period_return)
np.testing.assert_allclose(
risk_metrics_original.benchmark_returns,
risk_metrics_refactor.benchmark_returns,
rtol=0.001
)
np.testing.assert_allclose(
risk_metrics_original.algorithm_returns,
risk_metrics_refactor.algorithm_returns,
rtol=0.001
)
risk_original_dict = risk_metrics_original.to_dict()
risk_refactor_dict = risk_metrics_refactor.to_dict()
self.assertEqual(set(risk_original_dict.keys()),
set(risk_refactor_dict.keys()))
err_msg_format = """\
"In update step {iter}: {measure} should be {truth} but is {returned}!"""
for measure in risk_original_dict.iterkeys():
if measure == 'max_drawdown':
np.testing.assert_almost_equal(
risk_refactor_dict[measure],
risk_original_dict[measure],
err_msg=err_msg_format.format(
iter=i,
measure=measure,
truth=risk_original_dict[measure],
returned=risk_refactor_dict[measure]))
else:
if isinstance(risk_original_dict[measure], numbers.Real):
np.testing.assert_allclose(
risk_original_dict[measure],
risk_refactor_dict[measure],
rtol=0.001,
err_msg=err_msg_format.format(
iter=i,
measure=measure,
truth=risk_original_dict[measure],
returned=risk_refactor_dict[measure])
)
else:
np.testing.assert_equal(
risk_original_dict[measure],
risk_refactor_dict[measure],
err_msg=err_msg_format.format(
iter=i,
measure=measure,
truth=risk_original_dict[measure],
returned=risk_refactor_dict[measure])
)