| Overall Statistics |
|
Total Trades 0 Average Win 0% Average Loss 0% Compounding Annual Return 0% Drawdown 0% Expectancy 0 Net Profit 0% Sharpe Ratio 0 Loss Rate 0% Win Rate 0% Profit-Loss Ratio 0 Alpha 0 Beta 0 Annual Standard Deviation 0 Annual Variance 0 Information Ratio 0 Tracking Error 0 Treynor Ratio 0 Total Fees $0.00 |
import numpy as np
from datetime import datetime
class williams(QCAlgorithm):
def Initialize(self):
self.SetStartDate(2017,12,10) #Set Start Date
self.SetEndDate(2017,12,17) #Set End Date
self.SetCash(100000) #Set Strategy Cash
self.AddEquity("SPY", Resolution.Minute)
self.spy = self.AddEquity("SPY", Resolution.Minute).Symbol
# at market close
self.Schedule.On(self.DateRules.EveryDay(self.spy), \
self.TimeRules.AfterMarketOpen(self.spy, -15), \
Action(self.EveryDayAtMarketClose))
def OnData(self,data):
pass
def EveryDayAtMarketClose(self):
lookback = 14
hist = self.History([self.spy], lookback, Resolution.Daily)
highest_high = max(hist['high'][-lookback-1:])
lowest_low = min(hist['low'][-lookback-1:])
close = float(self.Securities[self.spy].Close)
self.will = (highest_high - close) / (highest_high - lowest_low) * - 100
self.Debug('will {}'.format(self.will))
#self.Plot('Trade Plot', 'Williams%R:', self.will)