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I am attempting to use an oscillator (relative strength index) to know when to buy and sell a stock. I created a dataframe for RSI and closing price. I am able to plot both but I want to also add to my plot when the RSI hits a buy and sell signal. So in order to do this I need to create a comparison of my RSI column when the RSI drops below 25, which will trigger my buy signal and a sell signal for my RSI if it goes over 85. My issue is that I cannot figure out pull my closing price column on the date when my RSI column drops below 25 until the date when my RSI column rises above 85. All I get is Nan in my new dataframe column.
#rsi import pandas import warnings import pandas_datareader.data as web import datetime import matplotlib.pyplot as plt warnings.filterwarnings('ignore') # Window length for moving average window_length = 14 # Dates start = datetime.datetime(2016, 1, 5) end = datetime.datetime(2016, 12, 31) # Get data data = web.DataReader('FB', 'morningstar', start, end) df= pd.DataFrame(data) # Get just the close close = data['Close'] # Get the difference in price from previous step delta = close.diff() # Get rid of the first row, which is NaN since it did not have a previous # row to calculate the differences delta = delta[1:] # Make the positive gains (up) and negative gains (down) Series up, down = delta.copy(), delta.copy() up[up < 0] = 0 down[down > 0] = 0 # Calculate the EWMA roll_up1 = pandas.stats.moments.ewma(up, window_length) roll_down1 = pandas.stats.moments.ewma(down.abs(), window_length) # Calculate the RSI based on EWMA RS1 = roll_up1 / roll_down1 RSI1 = 100.0 - (100.0 / (1.0 + RS1)) # Calculate the SMA roll_up2 = pandas.rolling_mean(up, window_length) roll_down2 = pandas.rolling_mean(down.abs(), window_length) # Calculate the RSI based on SMA RS2 = roll_up2 / roll_down2 RSI2 = 100.0 - (100.0 / (1.0 + RS2)) df['RSI2']=RSI2 df=df.dropna(axis=0) df['RSI2']=df['RSI2'].astype(float) df['BUY']=df['Close'][df['RSI2'] < 25] print (df['BUY']) # Compare graphically plt.figure() df['BUY'].plot(title='FB',figsize = (20, 5)) plt.show() RSI1.plot(title='Relative Strength Index',figsize = (20, 5)) RSI2.plot(figsize = (20, 5)) plt.legend(['RSI via EWMA', 'RSI via SMA']) plt.show()