class Optimizer(object): # Write algo to optimize all the settings (Stop Loss point, Moving Average Cross overs) # How to identify the types of markets? def __init__(self): self.sd = StockData() self.systemScores = pd.DataFrame(columns=["Symbol", "near_ma", "far_ma", "Expectancy", "R-StdDev", "SQN"]) # print(scoresDict) def run(self, symbol_list, near_range=[10, 20, 30], far_range=[30, 60, 90], plot_results=False): for near_ma in near_range: for far_ma in far_range: print("Running for Near Moving Average=" + str(near_ma) + " and Far Moving Average=" + str(far_ma)) score = self.sd.backtest(symbol_list, near_ma, far_ma) # if plot_results: self.plot_results(symbol) self.systemScores = pd.concat([self.systemScores, score], ignore_index=True)
def __init__(self): self.sd = StockData() self.systemScores = pd.DataFrame(columns=["Symbol", "near_ma", "far_ma", "Expectancy", "R-StdDev", "SQN"])