# # 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 pandas as pd import numpy as np from datetime import datetime, timedelta from zipline.protocol import Event, DATASOURCE_TYPE from zipline.sources import (SpecificEquityTrades, DataFrameSource, DataPanelSource) from zipline.finance.trading import SimulationParameters, TradingEnvironment from zipline.sources.test_source import create_trade # For backwards compatibility from zipline.data.loader import (load_from_yahoo, load_bars_from_yahoo) __all__ = ['load_from_yahoo', 'load_bars_from_yahoo'] def create_simulation_parameters(year=2006, start=None, end=None, capital_base=float("1.0e5"), num_days=None, load=None, data_frequency='daily', emission_rate='daily', env=None): """Construct a complete environment with reasonable defaults""" if env is None: env = TradingEnvironment(load=load) if start is None: start = datetime(year, 1, 1, tzinfo=pytz.utc) if end is None: if num_days: start_index = env.trading_days.searchsorted( start) end = env.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, data_frequency=data_frequency, emission_rate=emission_rate, env=env, ) return sim_params def get_next_trading_dt(current, interval, env): next_dt = pd.Timestamp(current).tz_convert(env.exchange_tz) while True: # Convert timestamp to naive before adding day, otherwise the when # stepping over EDT an hour is added. next_dt = pd.Timestamp(next_dt.replace(tzinfo=None)) next_dt = next_dt + interval next_dt = pd.Timestamp(next_dt, tz=env.exchange_tz) next_dt_utc = next_dt.tz_convert('UTC') if env.is_market_hours(next_dt_utc): break next_dt = next_dt_utc.tz_convert(env.exchange_tz) return next_dt_utc def create_trade_history(sid, prices, amounts, interval, sim_params, env, 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, env) 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, 'payment_sid': None, 'ratio': None, 'declared_date': pd.tslib.normalize_date(declared_date), 'ex_date': pd.tslib.normalize_date(ex_date), 'pay_date': pd.tslib.normalize_date(pay_date), 'type': DATASOURCE_TYPE.DIVIDEND, 'source_id': 'MockDividendSource' }) return div def create_stock_dividend(sid, payment_sid, ratio, declared_date, ex_date, pay_date): return Event({ 'sid': sid, 'payment_sid': payment_sid, 'ratio': ratio, 'net_amount': None, 'gross_amount': None, 'dt': pd.tslib.normalize_date(declared_date), 'ex_date': pd.tslib.normalize_date(ex_date), 'pay_date': pd.tslib.normalize_date(pay_date), 'type': DATASOURCE_TYPE.DIVIDEND, 'source_id': 'MockDividendSource' }) def create_split(sid, ratio, date): return Event({ 'sid': sid, 'ratio': ratio, 'dt': date.replace(hour=0, minute=0, second=0, microsecond=0), 'type': DATASOURCE_TYPE.SPLIT, 'source_id': 'MockSplitSource' }) def create_txn(sid, price, amount, datetime): txn = Event({ 'sid': sid, 'amount': amount, 'dt': datetime, 'price': price, 'type': DATASOURCE_TYPE.TRANSACTION, 'source_id': 'MockTransactionSource' }) return txn def create_commission(sid, value, datetime): txn = Event({ 'dt': datetime, 'type': DATASOURCE_TYPE.COMMISSION, 'cost': value, 'sid': sid, 'source_id': 'MockCommissionSource' }) return txn def create_txn_history(sid, priceList, amtList, interval, sim_params, env): txns = [] current = sim_params.first_open for price, amount in zip(priceList, amtList): current = get_next_trading_dt(current, interval, env) txns.append(create_txn(sid, price, amount, current)) current = current + interval return txns def create_returns_from_range(sim_params): return pd.Series(index=sim_params.trading_days, data=np.random.rand(len(sim_params.trading_days))) def create_returns_from_list(returns, sim_params): return pd.Series(index=sim_params.trading_days[:len(returns)], data=returns) def create_daily_trade_source(sids, sim_params, env, 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. """ return create_trade_source( sids, timedelta(days=1), sim_params, env=env, concurrent=concurrent, ) def create_minutely_trade_source(sids, sim_params, env, 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. """ return create_trade_source( sids, timedelta(minutes=1), sim_params, env=env, concurrent=concurrent, ) def create_trade_source(sids, trade_time_increment, sim_params, env, concurrent=False): # If the sim_params define an end that is during market hours, that will be # used as the end of the data source if env.is_market_hours(sim_params.period_end): end = sim_params.period_end # Otherwise, the last_close after the period_end is used as the end of the # data source else: end = sim_params.last_close args = tuple() kwargs = { 'sids': sids, 'start': sim_params.first_open, 'end': end, 'delta': trade_time_increment, 'filter': sids, 'concurrent': concurrent, 'env': env, } source = SpecificEquityTrades(*args, **kwargs) return source def create_test_df_source(sim_params=None, env=None, bars='daily'): if bars == 'daily': freq = pd.datetools.BDay() elif bars == 'minute': freq = pd.datetools.Minute() else: raise ValueError('%s bars not understood.' % bars) if sim_params and bars == 'daily': index = sim_params.trading_days else: if env is None: env = TradingEnvironment() start = pd.datetime(1990, 1, 3, 0, 0, 0, 0, pytz.utc) end = pd.datetime(1990, 1, 8, 0, 0, 0, 0, pytz.utc) days = env.days_in_range(start, end) if bars == 'daily': index = days if bars == 'minute': index = pd.DatetimeIndex([], freq=freq) for day in days: day_index = env.market_minutes_for_day(day) index = index.append(day_index) x = np.arange(1, len(index) + 1) df = pd.DataFrame(x, index=index, columns=[0]) return DataFrameSource(df), df def create_test_panel_source(sim_params=None, env=None, source_type=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) if env is None: env = TradingEnvironment() index = env.days_in_range(start, end) 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) if source_type: source_types = np.full(len(index), source_type) df['type'] = source_types panel = pd.Panel.from_dict({0: df}) return DataPanelSource(panel), panel def create_test_panel_ohlc_source(sim_params, env): 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 = env.days_in_range(start, end) 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