Files
catalyst/tests/test_tradesimulation.py
2017-06-19 14:43:10 -07:00

152 lines
5.3 KiB
Python

#
# Copyright 2014 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.
from datetime import time
import pandas as pd
from mock import patch
from nose_parameterized import parameterized
from six.moves import range
from catalyst import TradingAlgorithm
from catalyst.gens.sim_engine import BEFORE_TRADING_START_BAR
from catalyst.finance.performance import PerformanceTracker
from catalyst.finance.asset_restrictions import NoRestrictions
from catalyst.gens.tradesimulation import AlgorithmSimulator
from catalyst.sources.benchmark_source import BenchmarkSource
from catalyst.test_algorithms import NoopAlgorithm
from catalyst.testing.fixtures import (
WithDataPortal,
WithSimParams,
WithTradingEnvironment,
ZiplineTestCase,
)
from catalyst.utils import factory
from catalyst.testing.core import FakeDataPortal
from catalyst.utils.calendars.trading_calendar import days_at_time
class BeforeTradingAlgorithm(TradingAlgorithm):
def __init__(self, *args, **kwargs):
self.before_trading_at = []
super(BeforeTradingAlgorithm, self).__init__(*args, **kwargs)
def before_trading_start(self, data):
self.before_trading_at.append(self.datetime)
def handle_data(self, data):
pass
FREQUENCIES = {'daily': 0, 'minute': 1} # daily is less frequent than minute
class TestTradeSimulation(WithTradingEnvironment, ZiplineTestCase):
def fake_minutely_benchmark(self, dt):
return 0.01
def test_minutely_emissions_generate_performance_stats_for_last_day(self):
params = factory.create_simulation_parameters(num_days=1,
data_frequency='minute',
emission_rate='minute')
with patch.object(BenchmarkSource, "get_value",
self.fake_minutely_benchmark):
algo = NoopAlgorithm(sim_params=params, env=self.env)
algo.run(FakeDataPortal(self.env))
self.assertEqual(len(algo.perf_tracker.sim_params.sessions), 1)
@parameterized.expand([('%s_%s_%s' % (num_sessions, freq, emission_rate),
num_sessions, freq, emission_rate)
for freq in FREQUENCIES
for emission_rate in FREQUENCIES
for num_sessions in range(1, 4)
if FREQUENCIES[emission_rate] <= FREQUENCIES[freq]])
def test_before_trading_start(self, test_name, num_days, freq,
emission_rate):
params = factory.create_simulation_parameters(
num_days=num_days, data_frequency=freq,
emission_rate=emission_rate)
def fake_benchmark(self, dt):
return 0.01
with patch.object(BenchmarkSource, "get_value",
self.fake_minutely_benchmark):
algo = BeforeTradingAlgorithm(sim_params=params, env=self.env)
algo.run(FakeDataPortal(self.env))
self.assertEqual(
len(algo.perf_tracker.sim_params.sessions),
num_days
)
bts_minutes = days_at_time(
params.sessions, time(8, 45), "US/Eastern"
)
self.assertTrue(
bts_minutes.equals(
pd.DatetimeIndex(algo.before_trading_at)
),
"Expected %s but was %s." % (params.sessions,
algo.before_trading_at))
class BeforeTradingStartsOnlyClock(object):
def __init__(self, bts_minute):
self.bts_minute = bts_minute
def __iter__(self):
yield self.bts_minute, BEFORE_TRADING_START_BAR
class TestBeforeTradingStartSimulationDt(WithSimParams,
WithDataPortal,
ZiplineTestCase):
def test_bts_simulation_dt(self):
code = """
def initialize(context):
pass
"""
algo = TradingAlgorithm(script=code,
sim_params=self.sim_params,
env=self.env)
algo.perf_tracker = PerformanceTracker(
sim_params=self.sim_params,
trading_calendar=self.trading_calendar,
env=self.env,
)
dt = pd.Timestamp("2016-08-04 9:13:14", tz='US/Eastern')
algo_simulator = AlgorithmSimulator(
algo,
self.sim_params,
self.data_portal,
BeforeTradingStartsOnlyClock(dt),
algo._create_benchmark_source(),
NoRestrictions(),
None
)
# run through the algo's simulation
list(algo_simulator.transform())
# since the clock only ever emitted a single before_trading_start
# event, we can check that the simulation_dt was properly set
self.assertEqual(dt, algo_simulator.simulation_dt)