Files
catalyst/tests/test_examples.py
T
Joe Jevnik 89542e33bd ENH: Adds quantopian-quandl bundle as new default.
This data bundle will use the quantopian mirror of the quandl WIKI data
instead of downloading from quandl directly. This dramatically improves
the speed because we do not pay the rate limiting for quandl and we can
send the data in the format zipline expects.
2016-05-05 18:22:13 -04:00

115 lines
3.6 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.
from functools import partial
import tarfile
import matplotlib
from nose_parameterized import parameterized
import pandas as pd
from zipline import examples, run_algorithm
from zipline.data.bundles import register, unregister
from zipline.testing import test_resource_path
from zipline.testing.fixtures import WithTmpDir, ZiplineTestCase
from zipline.testing.predicates import assert_equal
from zipline.utils.cache import dataframe_cache
# Otherwise the next line sometimes complains about being run too late.
_multiprocess_can_split_ = False
matplotlib.use('Agg')
class ExamplesTests(WithTmpDir, ZiplineTestCase):
# some columns contain values with unique ids that will not be the same
cols_to_check = [
'algo_volatility',
'algorithm_period_return',
'alpha',
'benchmark_period_return',
'benchmark_volatility',
'beta',
'capital_used',
'ending_cash',
'ending_exposure',
'ending_value',
'excess_return',
'gross_leverage',
'long_exposure',
'long_value',
'longs_count',
'max_drawdown',
'max_leverage',
'net_leverage',
'period_close',
'period_label',
'period_open',
'pnl',
'portfolio_value',
'positions',
'returns',
'short_exposure',
'short_value',
'shorts_count',
'sortino',
'starting_cash',
'starting_exposure',
'starting_value',
'trading_days',
'treasury_period_return',
]
@classmethod
def init_class_fixtures(cls):
super(ExamplesTests, cls).init_class_fixtures()
register('test', lambda *args: None)
cls.add_class_callback(partial(unregister, 'test'))
with tarfile.open(test_resource_path('example_data.tar.gz')) as tar:
tar.extractall(cls.tmpdir.path)
cls.expected_perf = dataframe_cache(
cls.tmpdir.getpath(
'example_data/expected_perf/%s' %
pd.__version__.replace('.', '-'),
),
serialization='pickle',
)
@parameterized.expand(e for e in dir(examples) if not e.startswith('_'))
def test_example(self, example):
mod = getattr(examples, example)
actual_perf = run_algorithm(
handle_data=mod.handle_data,
initialize=mod.initialize,
before_trading_start=getattr(mod, 'before_trading_start', None),
analyze=getattr(mod, 'analyze', None),
bundle='test',
environ={
'ZIPLINE_ROOT': self.tmpdir.getpath('example_data/root'),
},
capital_base=1e7,
**mod._test_args()
)
assert_equal(
actual_perf[self.cols_to_check],
self.expected_perf[example][self.cols_to_check],
# There is a difference in the datetime columns in pandas
# 0.16 and 0.17 because in 16 they are object and in 17 they are
# datetime[ns, UTC]. We will just ignore the dtypes for now.
check_dtype=False,
)