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I am trying to compute a daily P&L, with 10 min prices in a .csv (there are 42 times for each date)---where number of buys and number of sells in a day could be unequal. If they are unequal, the program should use the closing price for that unique date df["price"][t] to subtract (from/by) depending on whether it's a buy or sell.

import pandas as pd

df=pd.read_csv("file.csv", names="date time price mag signal".split())

s=df["signal"]=="S"
b=df["signal"]=="B"
ns=df["signal"]!="S"
nb=df["signal"]!="B"
t=df["time"]=="1620"

a1=df["price"][buy|(nb & t)]
b1=df["date"][buy|(nb & t)]

h=df["price"][s|(ns & t)]
g=df["date"][s|(ns & t)]


c1=zip(b1,a1)
c=zip(g,h)

c1, c are lists containing number of buys and sells, alongside its respective date. The problem here is c1 & c are strings--once they're zipped; hence cannot be subtracted. Is it possible to make a1, h floating point numbers so that I can difference them?

I want to match dates in c, c1 to subtract the prices at the Sells-Buys: S_i-B_i, for all i on a given day, then sum all and return that one value, for every date. I'd like to difference the prices at h-a1, only when the dates match.

Some sample data:

date time price mag signal

1/3/2007 930 1422.8
1/3/2007 940 1423.2 0
1/3/2007 950 1422.8 0
1/3/2007 1000 1420.5 0
1/3/2007 1010 1422.8 0
1/3/2007 1020 1426.2 1 S

. . .

1/3/2007 1230 1424.2 -1 B

1/3/2007 1240 1424.8 0
1/3/2007 1250 1425.8 1 S

1/3/2007 1300 1426 0
1/3/2007 1310 1425 0
1/3/2007 1320 1423.5 -1 B

1/3/2007 1330 1421.8 0
1/3/2007 1340 1421.5 0
1/3/2007 1350 1420.5 0
1/3/2007 1400 1421 0
1/3/2007 1410 1417.2 -1 B

1/3/2007 1420 1412.8 -1 B

1/3/2007 1430 1414.8 0
1/3/2007 1440 1413.5 0
1/3/2007 1450 1410 0
1/3/2007 1500 1407.2 -1 B

1/3/2007 1510 1410.2 1 S

1/3/2007 1520 1409.5 -1 B

1/3/2007 1530 1410.5 1 S

1/3/2007 1540 1412.5 0
...

1/3/2007 1610 1415.5 1 S

1/3/2007 1620 1414 -1 B

1/4/2007 930 1412.2 0
1/4/2007 940 1411 0
1/4/2007 950 1413 0
1/4/2007 1000 1412.2 0
1/4/2007 1010 1407.2 -1 B

The result of the zip, say, c1 should look something like this:

[('1/3/2007', '1424.2'),
('1/3/2007', '1423.5'),
('1/3/2007', '1417.2'),
('1/3/2007', '1412.8'),
('1/3/2007', '1407.2'),
('1/3/2007', '1409.5'),
('1/3/2007', '1414'),

 etc - all dates in between

 ('8/30/2012','1324')]

Thanks very much.

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closed as too localized by Andy Hayden, Ridcully, Mark, Mike Mackintosh, Graviton Jan 5 '13 at 9:28

This question is unlikely to help any future visitors; it is only relevant to a small geographic area, a specific moment in time, or an extraordinarily narrow situation that is not generally applicable to the worldwide audience of the internet. For help making this question more broadly applicable, visit the help center.If this question can be reworded to fit the rules in the help center, please edit the question.

    
map before (or even after) the zip? –  user166390 Jan 3 '13 at 2:25
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1 Answer

up vote 2 down vote accepted

Don't use the zip, you can keep the data in pandas native datastructures.
Here prices should have read correctly as floats in the DataFrame.

You can do something like sub then groupby 'date':

df['dif'] = a1.sub(h, fill_value=0)
g = df.groubpy('date')['dif'].sum()

.

Note you can use read_csv keyword parse_dates as datetime objects:

df = pd.read_csv("file.csv",
                 names="date time price mag signal".split()
                 parse_dates=[['date','time']])
share|improve this answer
    
Elegant, thank you. –  Michele Reilly Jan 3 '13 at 16:07
    
After running this, the traceback gives: TypeError: unsupported operand type(s) for -: 'int' and 'str' which refers to sub() I'm not sure why? Since a1,h; prices, should both be floating point numbers. –  Michele Reilly Jan 3 '13 at 17:38
    
@user1374969 are they all floating numbers? read_csv should pick floats correctly, but perhaps you could force it: df['price'] = df['price'].apply(float) –  Andy Hayden Jan 3 '13 at 18:25
    
I ran a formula on the price col of the csv file. Indeed, they are all "numbers". apply(float) for some reason was rejected w/ValueError: could not convert string to float: price. The Traceback points to: -> mapped = lib.map_infer(self.values, f, convert=convert_dtype) as a problem here. Seems strange. –  Michele Reilly Jan 3 '13 at 21:36
    
If you use the interactive debugger (pdb) you can find what value it was which give you the error (which may explain it). –  Andy Hayden Jan 3 '13 at 22:04
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