# QUANTCONNECT.COM - Democratizing Finance, Empowering Individuals.# Lean Algorithmic Trading Engine v2.0. Copyright 2014 QuantConnect Corporation.## 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.from AlgorithmImports import *### <summary>### Demonstration of how to define a universe as a combination of use the coarse fundamental data and fine fundamental data### </summary>### <meta name="tag" content="using data" />### <meta name="tag" content="universes" />### <meta name="tag" content="coarse universes" />### <meta name="tag" content="regression test" />class CoarseFineFundamentalRegressionAlgorithm(QCAlgorithm):def initialize(self):self.set_start_date(2014,3,24) #Set Start Dateself.set_end_date(2014,4,7) #Set End Dateself.set_cash(50000) #Set Strategy Cashself.universe_settings.resolution = Resolution.DAILY# this add universe method accepts two parameters:# - coarse selection function: accepts an List[CoarseFundamental] and returns an List[Symbol]# - fine selection function: accepts an List[FineFundamental] and returns an List[Symbol]self.add_universe(self.coarse_selection_function, self.fine_selection_function)self.changes = Noneself.number_of_symbols_fine = 2# return a list of three fixed symbol objectsdef coarse_selection_function(self, coarse):tickers = [ "GOOG", "BAC", "SPY" ]if self.time.date() < date(2014, 4, 1):tickers = [ "AAPL", "AIG", "IBM" ]return [ Symbol.create(x, SecurityType.EQUITY, Market.USA) for x in tickers ]# sort the data by market capitalization and take the top 'number_of_symbols_fine'def fine_selection_function(self, fine):# sort descending by market capitalizationsorted_by_market_cap = sorted(fine, key=lambda x: x.market_cap, reverse=True)# take the top entries from our sorted collectionreturn [ x.symbol for x in sorted_by_market_cap[:self.number_of_symbols_fine] ]def on_data(self, data):# if we have no changes, do nothingif self.changes is None: return# liquidate removed securitiesfor security in self.changes.removed_securities:if security.invested:self.liquidate(security.symbol)self.debug("Liquidated Stock: " + str(security.symbol.value))# we want 50% allocation in each security in our universefor security in self.changes.added_securities:if (security.fundamentals.earning_ratios.equity_per_share_growth.one_year > 0.25):self.set_holdings(security.symbol, 0.5)self.debug("Purchased Stock: " + str(security.symbol.value))self.changes = None# this event fires whenever we have changes to our universedef on_securities_changed(self, changes):self.changes = changes
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