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I would like to ask a completely new question regarding this code.

The code in the link above returns a numpy array for open and close:

open = np.array([ for q in quotes]).astype(np.float)
close = np.array([q.close for q in quotes]).astype(np.float)

As per Dan's help, quotes returns:

In your case you are using asobject=True so the format you get is date, year, month, day, d, open, close, high, low, volume, adjusted_close.

Therefore, open and close must be elements [5] and [6] of quotes.

>>> open
array([[ 28.12235692,  28.32908451,  28.482779  , ...,  84.8198783 ,
         84.1401    ,  84.64308037],
       [ 22.49848073,  22.66286426,  22.91112016, ...,  63.66703704,
         64.57105722,  64.12120097]])


>>> close
array([[ 28.5 ,  28.53,  29.23, ...,  83.8 ,  84.99,  83.82],
       [ 22.91,  22.71,  23.53, ...,  63.52,  64.78,  63.92]])

I do not understand exacty what open and close represent.

Is each element of open and close all the prices for that specific stock?

Can you please help me to understand exactly what do open and close contain? Are they just lists of lists of prices per symbol per day?

share|improve this question

closed as not a real question by ecatmur, tereško, tchrist, the Tin Man, xdazz Oct 7 '12 at 4:26

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center.If this question can be reworded to fit the rules in the help center, please edit the question.

up vote 1 down vote accepted

quotes is a list which contains stock information per symbol:

In [43]: len(quotes)
Out[43]: 61

In [44]: len(symbols)
Out[44]: 61

In [45]: symbols
array(['COP', 'AXP', 'RTN', 'BA', 'AAPL', 'PEP', 'NAV', 'GSK', 'MSFT',
       'KMB', 'R', 'SAP', 'GS', 'CL', 'WAG', 'WMT', 'GE', 'SNE', 'PFE',
       'AMZN', 'MAR', 'NVS', 'KO', 'MMM', 'CMCSA', 'SNY', 'IBM', 'CVX',
       'WFC', 'DD', 'CVS', 'TOT', 'CAT', 'CAJ', 'BAC', 'AIG', 'TWX', 'HD',
       'TXN', 'KFT', 'VLO', 'NWS', 'F', 'CVC', 'TM', 'PG', 'LMT', 'K',
       'HMC', 'GD', 'HPQ', 'DELL', 'MTU', 'XRX', 'YHOO', 'XOM', 'JPM',
       'MCD', 'CSCO', 'NOC', 'UN'], 

For example the first element in quotes is for the 'COP' symbol and contains an array of values by date:

In [49]: symbols[0]
Out[49]: 'COP'

In [50]: quotes[0].open
array([ 13.81001419,  14.01678947,  14.01500099, ...,  56.77238579,
        56.82699428,  56.89080408])

In [51]: quotes[0].date
array([2003-01-02, 2003-01-03, 2003-01-06, ..., 2007-12-27, 2007-12-28,
       2007-12-31], dtype=object)
share|improve this answer
thank you daniel! i got it to work. do you have a few moments to describe exactly what is affinity propogation?… – l--''''''---------'''''''''''' Oct 5 '12 at 18:39
here's the additional q i asked, thanks again!… – l--''''''---------'''''''''''' Oct 5 '12 at 19:55
ask your question on some of the machine learning q&a sites – Daniel Velkov Oct 5 '12 at 20:45
thanks! can you recommend one? – l--''''''---------'''''''''''' Oct 5 '12 at 20:47
can you please recommend a machine learning q and a site? – l--''''''---------'''''''''''' Oct 5 '12 at 22:04

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