I'm trying get some traction with Matplotlib and Numpy but it is not very easy.
I'm doing a mini project to start dealing with Matplotlib and Numpy but I'm stuck...
Here is the code:
# Modules import datetime import numpy as np import matplotlib.finance as finance import matplotlib.mlab as mlab import matplotlib.pyplot as plot # Define quote startdate = datetime.date(2010,10,1) today = enddate = datetime.date.today() ticker = 'uso' # Catch CSV fh = finance.fetch_historical_yahoo(ticker, startdate, enddate) # From CSV to REACARRAY r = mlab.csv2rec(fh); fh.close() # Order by Desc r.sort() ### Methods Begin def moving_average(x, n, type='simple'): """ compute an n period moving average. type is 'simple' | 'exponential' """ x = np.asarray(x) if type=='simple': weights = np.ones(n) else: weights = np.exp(np.linspace(-1., 0., n)) weights /= weights.sum() a = np.convolve(x, weights, mode='full')[:len(x)] a[:n] = a[n] return a ### Methods End prices = r.adj_close dates = r.date ma20 = moving_average(prices, 20, type='simple') ma50 = moving_average(prices, 50, type='simple') # Get when ma20 crosses ma50 equal = np.round(ma20,1)==np.round(ma50,1) dates_cross = (dates[equal]) prices_cross = (prices[equal]) # Get when ma20 > ma50 ma20_greater_than_ma50 = np.round(ma20,1) > np.round(ma50,1) dates_ma20_greater_than_ma50 = (dates[ma20_greater_than_ma50]) prices_ma20_greater_than_ma50 = (prices[ma20_greater_than_ma50]) print dates_ma20_greater_than_ma50 print prices_ma20_greater_than_ma50
Now I need to do something like this:
store the price of the "price_cross" see if one day after the "ma20_greater_than_ma50" statment is true, if true store the price as "price of the one day after" now do "next price_cross" - "price of the one day after" (price2 - price1) for all occurences
How can I do this math and more important. How can I get traction with Matplotlib and Numpy. What books should I buy?
Give me some clues.