Overall Statistics |
Total Trades 15 Average Win 1.88% Average Loss -2.48% Compounding Annual Return -0.249% Drawdown 11.600% Expectancy 0.006 Net Profit -0.363% Sharpe Ratio 0.028 Loss Rate 43% Win Rate 57% Profit-Loss Ratio 0.76 Alpha 0.005 Beta -0.022 Annual Standard Deviation 0.067 Annual Variance 0.004 Information Ratio -0.551 Tracking Error 0.223 Treynor Ratio -0.085 Total Fees $31.13 |
# 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 datetime import datetime from clr import AddReference AddReference("System") AddReference("QuantConnect.Algorithm") AddReference("QuantConnect.Indicators") AddReference("QuantConnect.Common") from System import * from QuantConnect import * from QuantConnect.Algorithm import * from QuantConnect.Indicators import * class MACDTrendAlgorithm(QCAlgorithm): '''MACD Example Algorithm''' def __init__(self): self.__macd = None self.__previous = datetime.min self.__Symbol = "EURUSD" def Initialize(self): '''Initialise the data and resolution required, as well as the cash and start-end dates for your algorithm. All algorithms must initialized.''' self.SetStartDate(2009, 01, 01) #Set Start Date self.SetEndDate(2015, 01, 01) #Set End Date self.SetCash(100000) #Set Strategy Cash # Find more symbols here: http://quantconnect.com/data self.AddSecurity(SecurityType.Forex, self.__Symbol) # define our daily macd(12,26) with a 9 day signal self.__macd = self.MACD(self.__Symbol, 9, 26, 9, MovingAverageType.Exponential, Resolution.Daily) def OnData(self, data): '''OnData event is the primary entry point for your algorithm. Each new data point will be pumped in here. Arguments: data: TradeBars IDictionary object with your stock data ''' # wait for our macd to fully initialize if not self.__macd.IsReady: return pyTime = datetime(self.Time) # only once per day if self.__previous.date() == pyTime.date(): return # define a small tolerance on our checks to avoid bouncing tolerance = 0.0025; holdings = self.Portfolio[self.__Symbol].Quantity signalDeltaPercent = (self.__macd.Current.Value - self.__macd.Signal.Current.Value)/self.__macd.Fast.Current.Value # if our macd is greater than our signal, then let's go long if holdings <= 0 and signalDeltaPercent > tolerance: # 0.01% # longterm says buy as well self.SetHoldings(self.__Symbol, 1.0) # of our macd is less than our signal, then let's go short elif holdings >= 0 and signalDeltaPercent < -tolerance: self.Liquidate(self.__Symbol) # plot both lines self.Plot("MACD", self.__macd, self.__macd.Signal) self.Plot(self.__Symbol, self.__macd.Fast, self.__macd.Slow) self.__previous = pyTime