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I would like to pull out the price at the next day's open currently stored in (row + 1) and store it in a new column, if some condition is met.

df['b']=''

df['shift']=''

df['shift']=df['open'].shift(-1)

df['b']=df[x for x in df['shift'] if df["MA10"]>df["MA100"]]
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If you want to use the result of list comprehension as an index, you should use: df[[x for x in df['shift'] if df["MA10"]>df["MA100"]]], but I think this will raise some exception. Please post your sample data and desired result. –  HYRY Apr 11 '13 at 5:28
    
@HYRY Thanks for your comment. I posted a link to my sample data. I used your suggestion before posting and got the error "invalid syntax" as I mentioned. –  Michele Reilly Apr 11 '13 at 11:28
    
@user1374969: count the number of brackets in HYRY's suggestion, and then count the number in yours. –  DSM Apr 11 '13 at 11:36
    
@DSM Thanks. If I go with HYRY's I receive the ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all() python doesnt know whether this is bitwise or the entire column comparison. –  Michele Reilly Apr 11 '13 at 11:59
    
That's what HYRY meant by "raise some exception". Your attempts had both syntax problems and interface problems. –  DSM Apr 11 '13 at 12:05

1 Answer 1

up vote 5 down vote accepted

There are a few approaches. Using apply:

>>> df = pd.read_csv("bondstack.csv")
>>> df["shift"] = df["open"].shift(-1)
>>> df["b"] = df.apply(lambda row: row["shift"] if row["MA10"] > row["MA100"] else np.nan, axis=1)

which produces

>>> df[["MA10", "MA100", "shift", "b"]][:10]
        MA10      MA100      shift          b
0  16.915625  17.405625  16.734375        NaN
1  16.871875  17.358750  17.171875        NaN
2  16.893750  17.317187  17.359375        NaN
3  16.950000  17.279062  17.359375        NaN
4  17.137500  17.254062  18.640625        NaN
5  17.365625  17.229063  18.921875  18.921875
6  17.550000  17.200312  18.296875  18.296875
7  17.681250  17.177500  18.640625  18.640625
8  17.812500  17.159375  18.609375  18.609375
9  17.943750  17.142813  18.234375  18.234375

For a more vectorized approach, you could use

>>> df = pd.read_csv("bondstack.csv")
>>> df["b"] = np.nan
>>> df["b"][df["MA10"] > df["MA100"]] = df["open"].shift(-1)

or my preferred approach:

>>> df = pd.read_csv("bondstack.csv")
>>> df["b"] = df["open"].shift(-1).where(df["MA10"] > df["MA100"])
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can't tell you how much I have appreciated (on this site) your thoughtful suggestions and multiple ways of viewing the same question. Thank you. –  Michele Reilly Apr 11 '13 at 12:18
    
For approach #3 I get time series object has no attribute 'where' given where is a numpy attribute I used the np.where() with the same error. Do you have an idea of what is happening? –  Michele Reilly Apr 11 '13 at 13:16
    
Which version of pandas are you using? I'm using 0.10.1, and the above code works just fine on your data. –  DSM Apr 11 '13 at 13:35
    
Ok, yes, think it's running version '0.9.1'. With df['open'].shift(-1), I was trying to pull the next row's value (i+1) from where the condition in 'where' is met. I.E., at the row where we satisfy the condition defined in 'where', call it i , df["b"] should store the value in df['open'] on the next i+1 after that condition is observed. (Right now, it appears to store the df['open'] value starting at-- 1 shifted from the very---beginning--- of the file). Seems that simply df["open"][i+1] will not do the trick. –  Michele Reilly Apr 11 '13 at 14:18
    
I'm not sure I follow. Call the condition M. If you had [Monday open=1, M=True; Tuesday open=2, M=False; Wednesday open=3, M=True], do you want Monday's b value to be 2 or 3? What b value should Tuesday have? –  DSM Apr 11 '13 at 14:28

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