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

180 lines
5.2 KiB
Python

"""
Base class for Pipeline API unit tests.
"""
from functools import wraps
import numpy as np
from numpy import arange, prod
from pandas import DataFrame, Timestamp
from six import iteritems
from catalyst.pipeline.engine import SimplePipelineEngine
from catalyst.pipeline import ExecutionPlan
from catalyst.pipeline.term import AssetExists, InputDates
from catalyst.testing import (
check_arrays,
ExplodingObject,
)
from catalyst.testing.fixtures import (
WithAssetFinder,
WithTradingSessions,
ZiplineTestCase,
)
from catalyst.utils.functional import dzip_exact
from catalyst.utils.pandas_utils import explode
def with_defaults(**default_funcs):
"""
Decorator for providing dynamic default values for a method.
Usages:
@with_defaults(foo=lambda self: self.x + self.y)
def func(self, foo):
...
If a value is passed for `foo`, it will be used. Otherwise the function
supplied to `with_defaults` will be called with `self` as an argument.
"""
def decorator(f):
@wraps(f)
def method(self, *args, **kwargs):
for name, func in iteritems(default_funcs):
if name not in kwargs:
kwargs[name] = func(self)
return f(self, *args, **kwargs)
return method
return decorator
with_default_shape = with_defaults(shape=lambda self: self.default_shape)
class BasePipelineTestCase(WithTradingSessions,
WithAssetFinder,
ZiplineTestCase):
START_DATE = Timestamp('2014', tz='UTC')
END_DATE = Timestamp('2014-12-31', tz='UTC')
ASSET_FINDER_EQUITY_SIDS = list(range(20))
@classmethod
def init_class_fixtures(cls):
super(BasePipelineTestCase, cls).init_class_fixtures()
cls.default_asset_exists_mask = cls.asset_finder.lifetimes(
cls.nyse_sessions[-30:],
include_start_date=False,
)
@property
def default_shape(self):
"""Default shape for methods that build test data."""
return self.default_asset_exists_mask.shape
def run_graph(self, graph, initial_workspace, mask=None):
"""
Compute the given TermGraph, seeding the workspace of our engine with
`initial_workspace`.
Parameters
----------
graph : catalyst.pipeline.graph.TermGraph
Graph to run.
initial_workspace : dict
Initial workspace to forward to SimplePipelineEngine.compute_chunk.
mask : DataFrame, optional
This is a value to pass to `initial_workspace` as the mask from
`AssetExists()`. Defaults to a frame of shape `self.default_shape`
containing all True values.
Returns
-------
results : dict
Mapping from termname -> computed result.
"""
engine = SimplePipelineEngine(
lambda column: ExplodingObject(),
self.nyse_sessions,
self.asset_finder,
)
if mask is None:
mask = self.default_asset_exists_mask
dates, assets, mask_values = explode(mask)
initial_workspace.setdefault(AssetExists(), mask_values)
initial_workspace.setdefault(InputDates(), dates)
return engine.compute_chunk(
graph,
dates,
assets,
initial_workspace,
)
def check_terms(self,
terms,
expected,
initial_workspace,
mask,
check=check_arrays):
"""
Compile the given terms into a TermGraph, compute it with
initial_workspace, and compare the results with ``expected``.
"""
start_date, end_date = mask.index[[0, -1]]
graph = ExecutionPlan(
terms,
all_dates=self.nyse_sessions,
start_date=start_date,
end_date=end_date,
)
results = self.run_graph(graph, initial_workspace, mask)
for key, (res, exp) in dzip_exact(results, expected).items():
check(res, exp)
return results
def build_mask(self, array):
"""
Helper for constructing an AssetExists mask from a boolean-coercible
array.
"""
ndates, nassets = array.shape
return DataFrame(
array,
# Use the **last** N dates rather than the first N so that we have
# space for lookbacks.
index=self.nyse_sessions[-ndates:],
columns=self.ASSET_FINDER_EQUITY_SIDS[:nassets],
dtype=bool,
)
@with_default_shape
def arange_data(self, shape, dtype=np.float64):
"""
Build a block of testing data from numpy.arange.
"""
return arange(prod(shape), dtype=dtype).reshape(shape)
@with_default_shape
def randn_data(self, seed, shape):
"""
Build a block of testing data from a seeded RandomState.
"""
return np.random.RandomState(seed).randn(*shape)
@with_default_shape
def eye_mask(self, shape):
"""
Build a mask using np.eye.
"""
return ~np.eye(*shape, dtype=bool)
@with_default_shape
def ones_mask(self, shape):
return np.ones(shape, dtype=bool)