Files
catalyst/catalyst/test_algorithms.py
T
Conner Fromknecht fce97176d6 Changed zipline -> catalyst import paths
* Updated cython build scripts
 * Updated setup.py to to install catalyst package
 * Updated momentum example to use catalyst package
 * catalyst executable now supports loading pipelines from multiple bundles
2017-06-19 14:43:10 -07:00

1192 lines
34 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.
"""
Algorithm Protocol
===================
For a class to be passed as a trading algorithm to the
:py:class:`catalyst.lines.SimulatedTrading` catalyst it must follow an
implementation protocol. Examples of this algorithm protocol are provided
below.
The algorithm must expose methods:
- initialize: method that takes no args, no returns. Simply called to
enable the algorithm to set any internal state needed.
- get_sid_filter: method that takes no args, and returns a list of valid
sids. List must have a length between 1 and 10. If None is returned the
filter will block all events.
- handle_data: method that accepts a :py:class:`catalyst.protocol.BarData`
of the current state of the simulation universe. An example data object:
.. This outputs the table as an HTML table but for some reason there
is no bounding box. Make the previous paraagraph ending colon a
double-colon to turn this back into blockquoted table in ASCII art.
+-----------------+--------------+----------------+-------------------+
| | sid(133) | sid(134) | sid(135) |
+=================+==============+================+===================+
| price | $10.10 | $22.50 | $13.37 |
+-----------------+--------------+----------------+-------------------+
| volume | 10,000 | 5,000 | 50,000 |
+-----------------+--------------+----------------+-------------------+
| mvg_avg_30 | $9.97 | $22.61 | $13.37 |
+-----------------+--------------+----------------+-------------------+
| dt | 6/30/2012 | 6/30/2011 | 6/29/2012 |
+-----------------+--------------+----------------+-------------------+
- set_order: method that accepts a callable. Will be set as the value of the
order method of trading_client. An algorithm can then place orders with a
valid sid and a number of shares::
self.order(sid(133), share_count)
- set_performance: property which can be set equal to the
cumulative_trading_performance property of the trading_client. An
algorithm can then check position information with the
Portfolio object::
self.Portfolio[sid(133)].cost_basis
- set_transact_setter: method that accepts a callable. Will
be set as the value of the set_transact_setter method of
the trading_client. This allows an algorithm to change the
slippage model used to predict transactions based on orders
and trade events.
"""
import numpy as np
from nose.tools import assert_raises
from six.moves import range
from six import itervalues
from catalyst.algorithm import TradingAlgorithm
from catalyst.api import (
FixedSlippage,
order,
set_slippage,
record,
sid,
)
from catalyst.errors import UnsupportedOrderParameters
from catalyst.assets import Future, Equity
from catalyst.finance.commission import PerShare, PerTrade
from catalyst.finance.execution import (
LimitOrder,
MarketOrder,
StopLimitOrder,
StopOrder,
)
from catalyst.finance.controls import AssetDateBounds
from catalyst.utils.math_utils import round_if_near_integer
class TestAlgorithm(TradingAlgorithm):
"""
This algorithm will send a specified number of orders, to allow unit tests
to verify the orders sent/received, transactions created, and positions
at the close of a simulation.
"""
def initialize(self,
sid,
amount,
order_count,
sid_filter=None,
slippage=None,
commission=None):
self.count = order_count
self.asset = self.sid(sid)
self.amount = amount
self.incr = 0
if sid_filter:
self.sid_filter = sid_filter
else:
self.sid_filter = [self.asset.sid]
if slippage is not None:
self.set_slippage(slippage)
if commission is not None:
self.set_commission(commission)
def handle_data(self, data):
# place an order for amount shares of sid
if self.incr < self.count:
self.order(self.asset, self.amount)
self.incr += 1
class HeavyBuyAlgorithm(TradingAlgorithm):
"""
This algorithm will send a specified number of orders, to allow unit tests
to verify the orders sent/received, transactions created, and positions
at the close of a simulation.
"""
def initialize(self, sid, amount):
self.asset = self.sid(sid)
self.amount = amount
self.incr = 0
def handle_data(self, data):
# place an order for 100 shares of sid
self.order(self.asset, self.amount)
self.incr += 1
class NoopAlgorithm(TradingAlgorithm):
"""
Dolce fa niente.
"""
def initialize(self):
pass
def handle_data(self, data):
pass
class ExceptionAlgorithm(TradingAlgorithm):
"""
Throw an exception from the method name specified in the
constructor.
"""
def initialize(self, throw_from, sid):
self.throw_from = throw_from
self.asset = self.sid(sid)
if self.throw_from == "initialize":
raise Exception("Algo exception in initialize")
else:
pass
def set_portfolio(self, portfolio):
if self.throw_from == "set_portfolio":
raise Exception("Algo exception in set_portfolio")
else:
pass
def handle_data(self, data):
if self.throw_from == "handle_data":
raise Exception("Algo exception in handle_data")
else:
pass
def get_sid_filter(self):
if self.throw_from == "get_sid_filter":
raise Exception("Algo exception in get_sid_filter")
else:
return [self.asset]
def set_transact_setter(self, txn_sim_callable):
pass
class DivByZeroAlgorithm(TradingAlgorithm):
def initialize(self, sid):
self.asset = self.sid(sid)
self.incr = 0
def handle_data(self, data):
self.incr += 1
if self.incr > 1:
5 / 0
pass
class TooMuchProcessingAlgorithm(TradingAlgorithm):
def initialize(self, sid):
self.asset = self.sid(sid)
def handle_data(self, data):
# Unless we're running on some sort of
# supercomputer this will hit timeout.
for i in range(1000000000):
self.foo = i
class TimeoutAlgorithm(TradingAlgorithm):
def initialize(self, sid):
self.asset = self.sid(sid)
self.incr = 0
def handle_data(self, data):
if self.incr > 4:
import time
time.sleep(100)
pass
class RecordAlgorithm(TradingAlgorithm):
def initialize(self):
self.incr = 0
def handle_data(self, data):
self.incr += 1
self.record(incr=self.incr)
name = 'name'
self.record(name, self.incr)
record(name, self.incr, 'name2', 2, name3=self.incr)
class TestOrderAlgorithm(TradingAlgorithm):
def initialize(self):
self.incr = 0
def handle_data(self, data):
if self.incr == 0:
assert 0 not in self.portfolio.positions
else:
assert self.portfolio.positions[0].amount == \
self.incr, "Orders not filled immediately."
assert self.portfolio.positions[0].last_sale_price == \
data.current(sid(0), "price"), \
"Orders not filled at current price."
self.incr += 1
self.order(self.sid(0), 1)
class TestOrderInstantAlgorithm(TradingAlgorithm):
def initialize(self):
self.incr = 0
self.last_price = None
def handle_data(self, data):
if self.incr == 0:
assert 0 not in self.portfolio.positions
else:
assert self.portfolio.positions[0].amount == \
self.incr, "Orders not filled immediately."
assert self.portfolio.positions[0].last_sale_price == \
self.last_price, "Orders was not filled at last price."
self.incr += 1
self.order_value(self.sid(0), data.current(sid(0), "price"))
self.last_price = data.current(sid(0), "price")
class TestOrderStyleForwardingAlgorithm(TradingAlgorithm):
"""
Test Algorithm for verifying that ExecutionStyles are properly forwarded by
order API helper methods. Pass the name of the method to be tested as a
string parameter to this algorithm's constructor.
"""
def __init__(self, *args, **kwargs):
self.method_name = kwargs.pop('method_name')
super(TestOrderStyleForwardingAlgorithm, self)\
.__init__(*args, **kwargs)
def initialize(self):
self.incr = 0
self.last_price = None
def handle_data(self, data):
if self.incr == 0:
assert len(self.portfolio.positions.keys()) == 0
method_to_check = getattr(self, self.method_name)
method_to_check(self.sid(133),
data.current(sid(0), "price"),
style=StopLimitOrder(10, 10))
assert len(self.blotter.open_orders[self.sid(133)]) == 1
result = self.blotter.open_orders[self.sid(133)][0]
assert result.limit == 10
assert result.stop == 10
self.incr += 1
class TestOrderValueAlgorithm(TradingAlgorithm):
def initialize(self):
self.incr = 0
self.sale_price = None
def handle_data(self, data):
if self.incr == 0:
assert 0 not in self.portfolio.positions
else:
assert self.portfolio.positions[0].amount == \
self.incr, "Orders not filled immediately."
assert self.portfolio.positions[0].last_sale_price == \
data.current(sid(0), "price"), \
"Orders not filled at current price."
self.incr += 2
multiplier = 2.
if isinstance(self.sid(0), Future):
multiplier *= self.sid(0).multiplier
self.order_value(
self.sid(0),
data.current(sid(0), "price") * multiplier
)
class TestTargetAlgorithm(TradingAlgorithm):
def initialize(self):
self.set_slippage(FixedSlippage())
self.target_shares = 0
self.sale_price = None
def handle_data(self, data):
if self.target_shares == 0:
assert 0 not in self.portfolio.positions
else:
assert self.portfolio.positions[0].amount == \
self.target_shares, "Orders not filled immediately."
assert self.portfolio.positions[0].last_sale_price == \
data.current(sid(0), "price"), \
"Orders not filled at current price."
self.target_shares = 10
self.order_target(self.sid(0), self.target_shares)
class TestOrderPercentAlgorithm(TradingAlgorithm):
def initialize(self):
self.set_slippage(FixedSlippage())
self.target_shares = 0
self.sale_price = None
def handle_data(self, data):
if self.target_shares == 0:
assert 0 not in self.portfolio.positions
self.order(self.sid(0), 10)
self.target_shares = 10
return
else:
assert self.portfolio.positions[0].amount == \
self.target_shares, "Orders not filled immediately."
assert self.portfolio.positions[0].last_sale_price == \
data.current(sid(0), "price"), \
"Orders not filled at current price."
self.order_percent(self.sid(0), .001)
if isinstance(self.sid(0), Equity):
price = data.current(sid(0), "price")
new_shares = (.001 * self.portfolio.portfolio_value) / price
elif isinstance(self.sid(0), Future):
new_shares = (.001 * self.portfolio.portfolio_value) / \
(data.current(sid(0), "price") *
self.sid(0).contract_multiplier)
new_shares = int(round_if_near_integer(new_shares))
self.target_shares += new_shares
class TestTargetPercentAlgorithm(TradingAlgorithm):
def initialize(self):
self.ordered = False
self.sale_price = None
# this makes the math easier to check
self.set_slippage(FixedSlippage())
self.set_commission(PerShare(0))
def handle_data(self, data):
if not self.ordered:
assert not self.portfolio.positions
else:
# Since you can't own fractional shares (at least in this
# example), we want to make sure that our target amount is
# no more than a share's value away from our current
# holdings.
target_value = self.portfolio.portfolio_value * 0.002
position_value = self.portfolio.positions[0].amount * \
self.sale_price
assert abs(target_value - position_value) <= self.sale_price, \
"Orders not filled correctly"
assert self.portfolio.positions[0].last_sale_price == \
data.current(sid(0), "price"), \
"Orders not filled at current price."
self.sale_price = data.current(sid(0), "price")
self._order(sid(0), .002)
self.ordered = True
def _order(self, asset, target):
return self.order_target_percent(asset, target)
class TestTargetValueAlgorithm(TradingAlgorithm):
def initialize(self):
self.set_slippage(FixedSlippage())
self.target_shares = 0
self.sale_price = None
def handle_data(self, data):
if self.target_shares == 0:
assert 0 not in self.portfolio.positions
self.order(self.sid(0), 10)
self.target_shares = 10
return
else:
assert self.portfolio.positions[0].amount == \
self.target_shares, "Orders not filled immediately."
assert self.portfolio.positions[0].last_sale_price == \
data.current(sid(0), "price"), \
"Orders not filled at current price."
self.order_target_value(self.sid(0), 20)
self.target_shares = np.round(20 / data.current(sid(0), "price"))
if isinstance(self.sid(0), Equity):
self.target_shares = np.round(20 / data.current(sid(0), "price"))
if isinstance(self.sid(0), Future):
self.target_shares = np.round(
20 / (data.current(sid(0), "price") * self.sid(0).multiplier))
class FutureFlipAlgo(TestAlgorithm):
def handle_data(self, data):
if len(self.portfolio.positions) > 0:
if self.portfolio.positions[self.asset.sid]["amount"] > 0:
self.order_target(self.asset, -self.amount)
else:
self.order_target(self.asset, 0)
else:
self.order_target(self.asset, self.amount)
############################
# AccountControl Test Algos#
############################
class SetMaxLeverageAlgorithm(TradingAlgorithm):
def initialize(self, max_leverage=None):
self.set_max_leverage(max_leverage=max_leverage)
############################
# TradingControl Test Algos#
############################
class SetMaxPositionSizeAlgorithm(TradingAlgorithm):
def initialize(self, asset=None, max_shares=None, max_notional=None):
self.set_slippage(FixedSlippage())
self.order_count = 0
self.set_max_position_size(asset=asset,
max_shares=max_shares,
max_notional=max_notional)
class SetMaxOrderSizeAlgorithm(TradingAlgorithm):
def initialize(self, asset=None, max_shares=None, max_notional=None):
self.order_count = 0
self.set_max_order_size(asset=asset,
max_shares=max_shares,
max_notional=max_notional)
class SetDoNotOrderListAlgorithm(TradingAlgorithm):
def initialize(self, sid=None, restricted_list=None, on_error='fail'):
self.order_count = 0
self.set_do_not_order_list(restricted_list, on_error)
class SetAssetRestrictionsAlgorithm(TradingAlgorithm):
def initialize(self, sid=None, restrictions=None, on_error='fail'):
self.order_count = 0
self.set_asset_restrictions(restrictions, on_error)
class SetMultipleAssetRestrictionsAlgorithm(TradingAlgorithm):
def initialize(self, restrictions1, restrictions2, on_error='fail'):
self.order_count = 0
self.set_asset_restrictions(restrictions1, on_error)
self.set_asset_restrictions(restrictions2, on_error)
class SetMaxOrderCountAlgorithm(TradingAlgorithm):
def initialize(self, count):
self.order_count = 0
self.set_max_order_count(count)
self.minute_count = 0
class SetLongOnlyAlgorithm(TradingAlgorithm):
def initialize(self):
self.order_count = 0
self.set_long_only()
class SetAssetDateBoundsAlgorithm(TradingAlgorithm):
"""
Algorithm that tries to order 1 share of sid 999 on every bar and has an
AssetDateBounds() trading control in place.
"""
def initialize(self):
self.register_trading_control(AssetDateBounds(on_error='fail'))
def handle_data(algo, data):
algo.order(algo.sid(999), 1)
class TestRegisterTransformAlgorithm(TradingAlgorithm):
def initialize(self, *args, **kwargs):
self.set_slippage(FixedSlippage())
def handle_data(self, data):
pass
class AmbitiousStopLimitAlgorithm(TradingAlgorithm):
"""
Algorithm that tries to buy with extremely low stops/limits and tries to
sell with extremely high versions of same. Should not end up with any
positions for reasonable data.
"""
def initialize(self, *args, **kwargs):
self.asset = self.sid(kwargs.pop('sid'))
def handle_data(self, data):
########
# Buys #
########
# Buy with low limit, shouldn't trigger.
self.order(self.asset, 100, limit_price=1)
# But with high stop, shouldn't trigger
self.order(self.asset, 100, stop_price=10000000)
# Buy with high limit (should trigger) but also high stop (should
# prevent trigger).
self.order(self.asset, 100, limit_price=10000000, stop_price=10000000)
# Buy with low stop (should trigger), but also low limit (should
# prevent trigger).
self.order(self.asset, 100, limit_price=1, stop_price=1)
#########
# Sells #
#########
# Sell with high limit, shouldn't trigger.
self.order(self.asset, -100, limit_price=1000000)
# Sell with low stop, shouldn't trigger.
self.order(self.asset, -100, stop_price=1)
# Sell with low limit (should trigger), but also high stop (should
# prevent trigger).
self.order(self.asset, -100, limit_price=1000000, stop_price=1000000)
# Sell with low limit (should trigger), but also low stop (should
# prevent trigger).
self.order(self.asset, -100, limit_price=1, stop_price=1)
###################
# Rounding Checks #
###################
self.order(self.asset, 100, limit_price=.00000001)
self.order(self.asset, -100, stop_price=.00000001)
class SetPortfolioAlgorithm(TradingAlgorithm):
"""
An algorithm that tries to set the portfolio directly.
The portfolio should be treated as a read-only object
within the algorithm.
"""
def initialize(self, *args, **kwargs):
pass
def handle_data(self, data):
self.portfolio = 3
class TALIBAlgorithm(TradingAlgorithm):
"""
An algorithm that applies a TA-Lib transform. The transform object can be
passed at initialization with the 'talib' keyword argument. The results are
stored in the talib_results array.
"""
def initialize(self, *args, **kwargs):
if 'talib' not in kwargs:
raise KeyError('No TA-LIB transform specified '
'(use keyword \'talib\').')
elif not isinstance(kwargs['talib'], (list, tuple)):
self.talib_transforms = (kwargs['talib'],)
else:
self.talib_transforms = kwargs['talib']
self.talib_results = dict((t, []) for t in self.talib_transforms)
def handle_data(self, data):
for t in self.talib_transforms:
result = t.handle_data(data)
if result is None:
if len(t.talib_fn.output_names) == 1:
result = np.nan
else:
result = (np.nan,) * len(t.talib_fn.output_names)
self.talib_results[t].append(result)
class EmptyPositionsAlgorithm(TradingAlgorithm):
"""
An algorithm that ensures that 'phantom' positions do not appear in
portfolio.positions in the case that a position has been entered
and fully exited.
"""
def initialize(self, sids, *args, **kwargs):
self.ordered = False
self.exited = False
self.sids = sids
def handle_data(self, data):
if not self.ordered:
for s in self.sids:
self.order(self.sid(s), 1)
self.ordered = True
if not self.exited:
amounts = [pos.amount for pos
in itervalues(self.portfolio.positions)]
if (
len(amounts) > 0 and
all([(amount == 1) for amount in amounts])
):
for stock in self.portfolio.positions:
self.order(self.sid(stock), -1)
self.exited = True
# Should be 0 when all positions are exited.
self.record(num_positions=len(self.portfolio.positions))
class TestPositionWeightsAlgorithm(TradingAlgorithm):
"""
An algorithm that records the weights of its portfolio holdings each day.
"""
def initialize(self, sids_and_amounts, *args, **kwargs):
self.ordered = False
self.sids_and_amounts = sids_and_amounts
self.set_commission(us_equities=PerTrade(0), us_futures=PerTrade(0))
self.set_slippage(
us_equities=FixedSlippage(0), us_futures=FixedSlippage(0),
)
def handle_data(self, data):
if not self.ordered:
for s, amount in self.sids_and_amounts:
self.order(self.sid(s), amount)
self.ordered = True
self.record(position_weights=self.portfolio.current_portfolio_weights)
class InvalidOrderAlgorithm(TradingAlgorithm):
"""
An algorithm that tries to make various invalid order calls, verifying that
appropriate exceptions are raised.
"""
def initialize(self, *args, **kwargs):
self.asset = self.sid(kwargs.pop('sids')[0])
def handle_data(self, data):
from catalyst.api import (
order_percent,
order_target,
order_target_percent,
order_target_value,
order_value,
)
for style in [MarketOrder(), LimitOrder(10),
StopOrder(10), StopLimitOrder(10, 10)]:
with assert_raises(UnsupportedOrderParameters):
order(self.asset, 10, limit_price=10, style=style)
with assert_raises(UnsupportedOrderParameters):
order(self.asset, 10, stop_price=10, style=style)
with assert_raises(UnsupportedOrderParameters):
order_value(self.asset, 300, limit_price=10, style=style)
with assert_raises(UnsupportedOrderParameters):
order_value(self.asset, 300, stop_price=10, style=style)
with assert_raises(UnsupportedOrderParameters):
order_percent(self.asset, .1, limit_price=10, style=style)
with assert_raises(UnsupportedOrderParameters):
order_percent(self.asset, .1, stop_price=10, style=style)
with assert_raises(UnsupportedOrderParameters):
order_target(self.asset, 100, limit_price=10, style=style)
with assert_raises(UnsupportedOrderParameters):
order_target(self.asset, 100, stop_price=10, style=style)
with assert_raises(UnsupportedOrderParameters):
order_target_value(self.asset, 100,
limit_price=10,
style=style)
with assert_raises(UnsupportedOrderParameters):
order_target_value(self.asset, 100,
stop_price=10,
style=style)
with assert_raises(UnsupportedOrderParameters):
order_target_percent(self.asset, .2,
limit_price=10,
style=style)
with assert_raises(UnsupportedOrderParameters):
order_target_percent(self.asset, .2,
stop_price=10,
style=style)
##############################
# Quantopian style algorithms
# Noop algo
def initialize_noop(context):
pass
def handle_data_noop(context, data):
pass
# API functions
def initialize_api(context):
context.incr = 0
context.sale_price = None
set_slippage(FixedSlippage())
def handle_data_api(context, data):
if context.incr == 0:
assert 0 not in context.portfolio.positions
else:
assert context.portfolio.positions[0].amount == \
context.incr, "Orders not filled immediately."
assert context.portfolio.positions[0].last_sale_price == \
data.current(sid(0), "price"), \
"Orders not filled at current price."
context.incr += 1
order(sid(0), 1)
record(incr=context.incr)
###########################
# AlgoScripts as strings
noop_algo = """
# Noop algo
def initialize(context):
pass
def handle_data(context, data):
pass
"""
no_handle_data = """
def initialize(context):
pass
"""
api_algo = """
from catalyst.api import (order,
set_slippage,
FixedSlippage,
record,
sid)
def initialize(context):
context.incr = 0
context.sale_price = None
set_slippage(FixedSlippage())
def handle_data(context, data):
if context.incr == 0:
assert 0 not in context.portfolio.positions
else:
assert context.portfolio.positions[0].amount == \
context.incr, "Orders not filled immediately."
assert context.portfolio.positions[0].last_sale_price == \
data.current(sid(0), "price"), \
"Orders not filled at current price."
context.incr += 1
order(sid(0), 1)
record(incr=context.incr)
"""
api_get_environment_algo = """
from catalyst.api import get_environment, order, symbol
def initialize(context):
context.environment = get_environment()
def handle_data(context, data):
pass
"""
api_symbol_algo = """
from catalyst.api import (order,
symbol)
def initialize(context):
pass
def handle_data(context, data):
order(symbol('TEST'), 1)
"""
call_order_in_init = """
from catalyst.api import (sid, order)
def initialize(context):
order(sid(0), 10)
pass
def handle_data(context, data):
pass
"""
access_portfolio_in_init = """
def initialize(context):
var = context.portfolio.cash
pass
def handle_data(context, data):
pass
"""
access_account_in_init = """
def initialize(context):
var = context.account.settled_cash
pass
def handle_data(context, data):
pass
"""
call_all_order_methods = """
from catalyst.api import (order,
order_value,
order_percent,
order_target,
order_target_value,
order_target_percent,
sid)
def initialize(context):
pass
def handle_data(context, data):
order(sid(0), 10)
order_value(sid(0), 300)
order_percent(sid(0), .1)
order_target(sid(0), 100)
order_target_value(sid(0), 100)
order_target_percent(sid(0), .2)
"""
record_variables = """
from catalyst.api import record
def initialize(context):
context.stocks = [0, 1]
context.incr = 0
def handle_data(context, data):
context.incr += 1
record(incr=context.incr)
"""
record_float_magic = """
from catalyst.api import record
def initialize(context):
context.stocks = [0, 1]
context.incr = 0
def handle_data(context, data):
context.incr += 1
record(data=float('%s'))
"""
call_with_kwargs = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
price_history = data.history(assets=symbol('TEST'), fields="price",
bar_count=5, frequency="1d")
current = data.current(assets=symbol('TEST'), fields="price")
"""
call_without_kwargs = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
price_history = data.history(symbol('TEST'), "price", 5, "1d")
current = data.current(symbol('TEST'), "price")
is_stale = data.is_stale(symbol('TEST'))
can_trade = data.can_trade(symbol('TEST'))
"""
call_with_bad_kwargs_history = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
price_history = data.history(assets=symbol('TEST'), fields="price",
blahblah=5, frequency="1d")
"""
call_with_bad_kwargs_current = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
current = data.current(assets=symbol('TEST'), blahblah="price")
"""
bad_type_history_assets = """
def initialize(context):
pass
def handle_data(context, data):
data.history(1, 'price', 5, '1d')
"""
bad_type_history_fields = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
data.history(symbol('TEST'), 10 , 5, '1d')
"""
bad_type_history_bar_count = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
data.history(symbol('TEST'), 'price', '5', '1d')
"""
bad_type_history_frequency = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
data.history(symbol('TEST'), 'price', 5, 1)
"""
bad_type_current_assets = """
def initialize(context):
pass
def handle_data(context, data):
data.current(1, 'price')
"""
bad_type_current_fields = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
data.current(symbol('TEST'), 10)
"""
bad_type_is_stale_assets = """
def initialize(context):
pass
def handle_data(context, data):
data.is_stale('TEST')
"""
bad_type_can_trade_assets = """
def initialize(context):
pass
def handle_data(context, data):
data.can_trade('TEST')
"""
bad_type_history_assets_kwarg = """
def initialize(context):
pass
def handle_data(context, data):
data.history(frequency='1d', fields='price', assets=1, bar_count=5)
"""
bad_type_history_fields_kwarg = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
data.history(frequency='1d', fields=10, assets=symbol('TEST'),
bar_count=5)
"""
bad_type_history_bar_count_kwarg = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
data.history(frequency='1d', fields='price', assets=symbol('TEST'),
bar_count='5')
"""
bad_type_history_frequency_kwarg = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
data.history(frequency=1, fields='price', assets=symbol('TEST'),
bar_count=5)
"""
bad_type_current_assets_kwarg = """
def initialize(context):
pass
def handle_data(context, data):
data.current(fields='price', assets=1)
"""
bad_type_current_fields_kwarg = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
data.current(fields=10, assets=symbol('TEST'))
"""
bad_type_history_assets_kwarg_list = """
def initialize(context):
pass
def handle_data(context, data):
data.history(assets=[1,2], fields='price', bar_count=5, frequency="1d")
"""
call_with_bad_kwargs_get_open_orders = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
context.get_open_orders(sid=symbol('TEST'))
"""
call_with_good_kwargs_get_open_orders = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
context.get_open_orders(asset=symbol('TEST'))
"""
call_with_no_kwargs_get_open_orders = """
from catalyst.api import symbol
def initialize(context):
pass
def handle_data(context, data):
context.get_open_orders(symbol('TEST'))
"""
empty_positions = """
from catalyst.api import record, schedule_function, time_rules, date_rules, \
symbol
def initialize(context):
schedule_function(test_history, date_rules.every_day(),
time_rules.market_open(hours=1))
context.sid = symbol('TEST')
def test_history(context,data):
record(amounts=context.portfolio.positions[context.sid].amount)
record(num_positions=len(context.portfolio.positions))
"""
set_benchmark_algo = """
from catalyst.api import symbol, set_benchmark
def initialize(context):
set_benchmark(symbol('TEST'))
context.sid = symbol('TEST')
def handle_data(context, data):
pass
"""