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232 lines
6.8 KiB
Python
232 lines
6.8 KiB
Python
"""
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Factory functions to prepare useful data for tests.
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"""
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import os
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import pytz
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import msgpack
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import random
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from os.path import join, abspath, dirname
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from operator import attrgetter
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from datetime import datetime, timedelta
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import zipline.finance.risk as risk
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import zipline.protocol as zp
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from zipline.gens.tradegens import RandomEquityTrades
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from zipline.gens.tradegens import SpecificEquityTrades
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from zipline.gens.utils import create_trade
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from zipline.finance.trading import TradingEnvironment
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# TODO
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def data_path():
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from zipline import data
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data_path = dirname(abspath(data.__file__))
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return data_path
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def logger_path():
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import zipline
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log_path = dirname(abspath(zipline.__file__))
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return os.join(log_path, 'logging.cfg')
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def load_market_data():
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fp_bm = open(join(data_path(), "benchmark.msgpack"), "rb")
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bm_list = msgpack.loads(fp_bm.read())
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bm_returns = []
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for packed_date, returns in bm_list:
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event_dt = zp.tuple_to_date(packed_date)
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#event_dt = event_dt.replace(
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# hour=0,
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# minute=0,
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# second=0,
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# tzinfo=pytz.utc
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#)
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daily_return = risk.DailyReturn(date=event_dt, returns=returns)
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bm_returns.append(daily_return)
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bm_returns = sorted(bm_returns, key=attrgetter('date'))
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fp_tr = open(join(data_path(), "treasury_curves.msgpack"), "rb")
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tr_list = msgpack.loads(fp_tr.read())
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tr_curves = {}
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for packed_date, curve in tr_list:
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tr_dt = zp.tuple_to_date(packed_date)
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#tr_dt = tr_dt.replace(hour=0, minute=0, second=0, tzinfo=pytz.utc)
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tr_curves[tr_dt] = curve
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return bm_returns, tr_curves
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def create_trading_environment(year=2006):
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"""Construct a complete environment with reasonable defaults"""
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benchmark_returns, treasury_curves = load_market_data()
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start = datetime(year, 1, 1, tzinfo=pytz.utc)
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end = datetime(year, 12, 31, tzinfo=pytz.utc)
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trading_environment = TradingEnvironment(
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benchmark_returns,
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treasury_curves,
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period_start = start,
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period_end = end,
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capital_base = 100000.0
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)
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return trading_environment
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def get_next_trading_dt(current, interval, trading_calendar):
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next = current
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while True:
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next = next + interval
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if trading_calendar.is_market_hours(next):
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break
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return next
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def create_trade_history(sid, prices, amounts, interval, trading_calendar):
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trades = []
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current = trading_calendar.first_open
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for price, amount in zip(prices, amounts):
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trade = create_trade(sid, price, amount, current)
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trades.append(trade)
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current = get_next_trading_dt(current, interval, trading_calendar)
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assert len(trades) == len(prices)
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return trades
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def create_txn(sid, price, amount, datetime, btrid=None):
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txn = zp.ndict({
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'sid' : sid,
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'amount' : amount,
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'dt' : datetime,
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'price' : price,
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})
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return txn
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def create_txn_history(sid, priceList, amtList, interval, trading_calendar):
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txns = []
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current = trading_calendar.first_open
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for price, amount in zip(priceList, amtList):
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current = get_next_trading_dt(current, interval, trading_calendar)
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txns.append(create_txn(sid, price, amount, current))
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current = current + interval
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return txns
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def create_returns(daycount, trading_calendar):
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"""
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For the given number of calendar (not trading) days return all the trading
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days between start and start + daycount.
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"""
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test_range = []
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current = trading_calendar.first_open
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one_day = timedelta(days = 1)
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for day in range(daycount):
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current = current + one_day
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if trading_calendar.is_trading_day(current):
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r = risk.DailyReturn(current, random.random())
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test_range.append(r)
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return test_range
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def create_returns_from_range(trading_calendar):
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current = trading_calendar.first_open
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end = trading_calendar.last_close
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one_day = timedelta(days = 1)
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test_range = []
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while current <= end:
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r = risk.DailyReturn(current, random.random())
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test_range.append(r)
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current = get_next_trading_dt(current, one_day, trading_calendar)
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return test_range
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def create_returns_from_list(returns, trading_calendar):
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current = trading_calendar.first_open
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one_day = timedelta(days = 1)
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test_range = []
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#sometimes the range starts with a non-trading day.
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if not trading_calendar.is_trading_day(current):
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current = get_next_trading_dt(current, one_day, trading_calendar)
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for return_val in returns:
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r = risk.DailyReturn(current, return_val)
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test_range.append(r)
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current = get_next_trading_dt(current, one_day, trading_calendar)
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return test_range
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def create_random_trade_source(sid, trade_count, trading_environment):
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# create the source
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source = RandomEquityTrades(sid, trade_count)
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# make the period_end of trading_environment match
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cur = trading_environment.first_open
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one_day = timedelta(days = 1)
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for i in range(trade_count + 2):
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cur = get_next_trading_dt(cur, one_day, trading_environment)
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trading_environment.period_end = cur
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return source
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def create_daily_trade_source(sids, trade_count, trading_environment):
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"""
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creates trade_count trades for each sid in sids list.
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first trade will be on trading_environment.period_start, and daily
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thereafter for each sid. Thus, two sids should result in two trades per
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day.
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Important side-effect: trading_environment.period_end will be modified
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to match the day of the final trade.
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"""
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return create_trade_source(
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sids,
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trade_count,
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timedelta(days=1),
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trading_environment
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)
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def create_minutely_trade_source(sids, trade_count, trading_environment):
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"""
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creates trade_count trades for each sid in sids list.
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first trade will be on trading_environment.period_start, and every minute
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thereafter for each sid. Thus, two sids should result in two trades per
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minute.
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Important side-effect: trading_environment.period_end will be modified
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to match the day of the final trade.
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"""
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return create_trade_source(
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sids,
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trade_count,
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timedelta(minutes=1),
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trading_environment
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)
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def create_trade_source(sids, trade_count, trade_time_increment, trading_environment):
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#Set up source a. One minute between events.
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args = tuple()
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kwargs = {
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'count' : trade_count,
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'sids' : sids,
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'start' : trading_environment.first_open,
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'delta' : trade_time_increment,
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'filter' : sids
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}
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source = SpecificEquityTrades(*args, **kwargs)
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# TODO: do we need to set the trading environment's end to same dt as
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# the last trade in the history?
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#trading_environment.period_end = trade_history[-1].dt
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return source
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