Files
catalyst/zipline/utils/factory.py
T
Jeremiah Lowin cc39ec3aef ENH: Add support for TALib based transforms.
Provide a subclass of BatchTransforms that are powerd by the ta-lib
library.
2013-04-30 17:35:56 -04:00

487 lines
15 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.
"""
Factory functions to prepare useful data.
"""
import pytz
import random
from collections import OrderedDict
from delorean import Delorean
import pandas as pd
from pandas.io.data import DataReader
import numpy as np
from datetime import datetime, timedelta
from zipline.protocol import DailyReturn, Event, DATASOURCE_TYPE
from zipline.sources import (SpecificEquityTrades,
DataFrameSource,
DataPanelSource)
from zipline.finance.trading import SimulationParameters
import zipline.finance.trading as trading
from zipline.sources.test_source import (
date_gen,
create_trade
)
def create_simulation_parameters(year=2006, start=None, end=None,
capital_base=float("1.0e5"),
num_days=None
):
"""Construct a complete environment with reasonable defaults"""
if start is None:
start = datetime(year, 1, 1, tzinfo=pytz.utc)
if end is None:
if num_days:
trading.environment = trading.TradingEnvironment()
start_index = trading.environment.trading_days.searchsorted(
start)
end = trading.environment.trading_days[start_index + num_days - 1]
else:
end = datetime(year, 12, 31, tzinfo=pytz.utc)
sim_params = SimulationParameters(
period_start=start,
period_end=end,
capital_base=capital_base,
)
return sim_params
def create_noop_environment():
oneday = timedelta(days=1)
start = datetime(2006, 1, 1, tzinfo=pytz.utc)
bm_returns = []
tr_curves = OrderedDict()
for day in date_gen(start=start, delta=oneday, count=252):
dr = DailyReturn(day, 0.01)
bm_returns.append(dr)
curve = {
'10year': 0.0799,
'1month': 0.0799,
'1year': 0.0785,
'20year': 0.0765,
'2year': 0.0794,
'30year': 0.0804,
'3month': 0.0789,
'3year': 0.0796,
'5year': 0.0792,
'6month': 0.0794,
'7year': 0.0804,
'tid': 1752
}
tr_curves[day] = curve
load_nodata = lambda x: (bm_returns, tr_curves)
return trading.TradingEnvironment(load=load_nodata)
def create_random_simulation_parameters():
trading.environment = trading.TradingEnvironment()
treasury_curves = trading.environment.treasury_curves
for n in range(100):
random_index = random.randint(
0,
len(treasury_curves) - 1
)
start_dt = treasury_curves.keys()[random_index]
end_dt = start_dt + timedelta(days=365)
now = datetime.utcnow().replace(tzinfo=pytz.utc)
if end_dt <= now:
break
assert end_dt <= now, """
failed to find a suitable daterange after 100 attempts. please double
check treasury and benchmark data in findb, and re-run the test."""
sim_params = SimulationParameters(
period_start=start_dt,
period_end=end_dt
)
return sim_params, start_dt, end_dt
def get_next_trading_dt(current, interval):
naive = current.replace(tzinfo=None)
delo = Delorean(naive, pytz.utc.zone)
ex_tz = trading.environment.exchange_tz
next_dt = delo.shift(ex_tz).datetime
while True:
next_dt = next_dt + interval
next_delo = Delorean(next_dt.replace(tzinfo=None), ex_tz)
next_utc = next_delo.shift(pytz.utc.zone).datetime
if trading.environment.is_market_hours(next_utc):
break
return next_utc
def create_trade_history(sid, prices, amounts, interval, sim_params,
source_id="test_factory"):
trades = []
current = sim_params.first_open
oneday = timedelta(days=1)
use_midnight = interval >= oneday
for price, amount in zip(prices, amounts):
if use_midnight:
trade_dt = current.replace(hour=0, minute=0)
else:
trade_dt = current
trade = create_trade(sid, price, amount, trade_dt, source_id)
trades.append(trade)
current = get_next_trading_dt(current, interval)
assert len(trades) == len(prices)
return trades
def create_dividend(sid, payment, declared_date, ex_date, pay_date):
div = Event({
'sid': sid,
'gross_amount': payment,
'net_amount': payment,
'dt': declared_date.replace(hour=0, minute=0, second=0, microsecond=0),
'ex_date': ex_date.replace(hour=0, minute=0, second=0, microsecond=0),
'pay_date': pay_date.replace(hour=0, minute=0, second=0,
microsecond=0),
'type': DATASOURCE_TYPE.DIVIDEND
})
return div
def create_txn(sid, price, amount, datetime):
txn = Event({
'sid': sid,
'amount': amount,
'dt': datetime,
'price': price,
'type': DATASOURCE_TYPE.TRANSACTION
})
return txn
def create_txn_history(sid, priceList, amtList, interval, sim_params):
txns = []
current = sim_params.first_open
for price, amount in zip(priceList, amtList):
current = get_next_trading_dt(current, interval)
txns.append(create_txn(sid, price, amount, current))
current = current + interval
return txns
def create_returns_from_range(sim_params):
current = sim_params.first_open
end = sim_params.last_close
test_range = []
while current <= end:
r = DailyReturn(current, random.random())
test_range.append(r)
current = trading.environment.next_trading_day(current)
return test_range
def create_returns_from_list(returns, sim_params):
current = sim_params.first_open
test_range = []
#sometimes the range starts with a non-trading day.
if not trading.environment.is_trading_day(current):
current = trading.environment.next_trading_day(current)
for return_val in returns:
r = DailyReturn(current, return_val)
test_range.append(r)
current = trading.environment.next_trading_day(current)
return test_range
def create_daily_trade_source(sids, trade_count, sim_params,
concurrent=False):
"""
creates trade_count trades for each sid in sids list.
first trade will be on sim_params.period_start, and daily
thereafter for each sid. Thus, two sids should result in two trades per
day.
Important side-effect: sim_params.period_end will be modified
to match the day of the final trade.
"""
return create_trade_source(
sids,
trade_count,
timedelta(days=1),
sim_params,
concurrent=concurrent
)
def create_minutely_trade_source(sids, trade_count, sim_params,
concurrent=False):
"""
creates trade_count trades for each sid in sids list.
first trade will be on sim_params.period_start, and every minute
thereafter for each sid. Thus, two sids should result in two trades per
minute.
Important side-effect: sim_params.period_end will be modified
to match the day of the final trade.
"""
return create_trade_source(
sids,
trade_count,
timedelta(minutes=1),
sim_params,
concurrent=concurrent
)
def create_trade_source(sids, trade_count,
trade_time_increment, sim_params,
concurrent=False):
args = tuple()
kwargs = {
'count': trade_count,
'sids': sids,
'start': sim_params.first_open,
'delta': trade_time_increment,
'filter': sids,
'concurrent': concurrent
}
source = SpecificEquityTrades(*args, **kwargs)
# TODO: do we need to set the trading environment's end to same dt as
# the last trade in the history?
#sim_params.period_end = trade_history[-1].dt
return source
def create_test_df_source(sim_params=None):
if sim_params:
index = sim_params.trading_days
else:
start = pd.datetime(1990, 1, 3, 0, 0, 0, 0, pytz.utc)
end = pd.datetime(1990, 1, 8, 0, 0, 0, 0, pytz.utc)
index = pd.DatetimeIndex(
start=start,
end=end,
freq=pd.datetools.BDay()
)
x = np.arange(0, len(index))
df = pd.DataFrame(x, index=index, columns=[0])
return DataFrameSource(df), df
def create_test_panel_source(sim_params=None):
start = sim_params.first_open \
if sim_params else pd.datetime(1990, 1, 3, 0, 0, 0, 0, pytz.utc)
end = sim_params.last_close \
if sim_params else pd.datetime(1990, 1, 8, 0, 0, 0, 0, pytz.utc)
index = pd.DatetimeIndex(start=start, end=end, freq=pd.datetools.day)
price = np.arange(0, len(index))
volume = np.ones(len(index)) * 1000
arbitrary = np.ones(len(index))
df = pd.DataFrame({'price': price,
'volume': volume,
'arbitrary': arbitrary},
index=index)
panel = pd.Panel.from_dict({0: df})
return DataPanelSource(panel), panel
def create_test_panel_ohlc_source(sim_params=None):
start = sim_params.first_open \
if sim_params else pd.datetime(1990, 1, 3, 0, 0, 0, 0, pytz.utc)
end = sim_params.last_close \
if sim_params else pd.datetime(1990, 1, 8, 0, 0, 0, 0, pytz.utc)
index = pd.DatetimeIndex(start=start, end=end, freq=pd.datetools.day)
price = np.arange(0, len(index)) + 100
high = price * 1.05
low = price * 0.95
open_ = price + .1 * (price % 2 - .5)
volume = np.ones(len(index)) * 1000
arbitrary = np.ones(len(index))
df = pd.DataFrame({'price': price,
'high': high,
'low': low,
'open': open_,
'volume': volume,
'arbitrary': arbitrary},
index=index)
panel = pd.Panel.from_dict({0: df})
return DataPanelSource(panel), panel
def _load_raw_yahoo_data(indexes=None, stocks=None, start=None, end=None):
"""Load closing prices from yahoo finance.
:Optional:
indexes : dict (Default: {'SPX': '^GSPC'})
Financial indexes to load.
stocks : list (Default: ['AAPL', 'GE', 'IBM', 'MSFT',
'XOM', 'AA', 'JNJ', 'PEP', 'KO'])
Stock closing prices to load.
start : datetime (Default: datetime(1993, 1, 1, 0, 0, 0, 0, pytz.utc))
Retrieve prices from start date on.
end : datetime (Default: datetime(2002, 1, 1, 0, 0, 0, 0, pytz.utc))
Retrieve prices until end date.
:Note:
This is based on code presented in a talk by Wes McKinney:
http://wesmckinney.com/files/20111017/notebook_output.pdf
"""
assert indexes is not None or stocks is not None, """
must specify stocks or indexes"""
if start is None:
start = pd.datetime(1990, 1, 1, 0, 0, 0, 0, pytz.utc)
if not start is None and not end is None:
assert start < end, "start date is later than end date."
data = OrderedDict()
if stocks is not None:
for stock in stocks:
print stock
stkd = DataReader(stock, 'yahoo', start, end).sort_index()
data[stock] = stkd
if indexes is not None:
for name, ticker in indexes.iteritems():
print name
stkd = DataReader(ticker, 'yahoo', start, end).sort_index()
data[name] = stkd
return data
def load_from_yahoo(indexes=None,
stocks=None,
start=None,
end=None,
adjusted=True):
"""
Loads price data from Yahoo into a dataframe for each of the indicated
securities. By default, 'price' is taken from Yahoo's 'Adjusted Close',
which removes the impact of splits and dividends. If the argument
'adjusted' is False, then the non-adjusted 'close' field is used instead.
:Arguments:
indexes : dict (Default: {'SPX': '^GSPC'})
Financial indexes to load.
stocks : list (Default: ['AAPL', 'GE', 'IBM', 'MSFT',
'XOM', 'AA', 'JNJ', 'PEP', 'KO'])
Stock closing prices to load.
start : datetime (Default: datetime(1993, 1, 1, 0, 0, 0, 0, pytz.utc))
Retrieve prices from start date on.
end : datetime (Default: datetime(2002, 1, 1, 0, 0, 0, 0, pytz.utc))
Retrieve prices until end date.
adjusted : bool (Default: True)
Adjust the price for splits and dividends.
"""
data = _load_raw_yahoo_data(indexes, stocks, start, end)
if adjusted:
close_key = 'Adj Close'
else:
close_key = 'Close'
df = pd.DataFrame({key: d[close_key] for key, d in data.iteritems()})
df.index = df.index.tz_localize(pytz.utc)
return df
def load_bars_from_yahoo(indexes=None,
stocks=None,
start=None,
end=None,
adjusted=True):
"""
Loads data from Yahoo into a panel with the following
column names for each indicated security:
- open
- high
- low
- close
- volume
- price
Note that 'price' is Yahoo's 'Adjusted Close', which removes the
impact of splits and dividends. If the argument 'adjusted' is True, then
the open, high, low, and close values are adjusted as well.
:Arguments:
indexes : dict (Default: {'SPX': '^GSPC'})
Financial indexes to load.
stocks : list (Default: ['AAPL', 'GE', 'IBM', 'MSFT',
'XOM', 'AA', 'JNJ', 'PEP', 'KO'])
Stock closing prices to load.
start : datetime (Default: datetime(1993, 1, 1, 0, 0, 0, 0, pytz.utc))
Retrieve prices from start date on.
end : datetime (Default: datetime(2002, 1, 1, 0, 0, 0, 0, pytz.utc))
Retrieve prices until end date.
adjusted : bool (Default: True)
Adjust open/high/low/close for splits and dividends. The 'price'
field is always adjusted.
"""
data = _load_raw_yahoo_data(indexes, stocks, start, end)
panel = pd.Panel(data)
# Rename columns
panel.minor_axis = ['open', 'high', 'low', 'close', 'volume', 'price']
panel.major_axis = panel.major_axis.tz_localize(pytz.utc)
# Adjust data
if adjusted:
adj_cols = ['open', 'high', 'low', 'close']
for ticker in panel.items:
ratio = (panel[ticker]['price'] / panel[ticker]['close'])
ratio_filtered = ratio.fillna(0).values
for col in adj_cols:
panel[ticker][col] *= ratio_filtered
return panel