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I am trying to shift the Pandas dataframe column data by group of first index. Here is the demo code:

 In [8]: df = mul_df(5,4,3)

In [9]: df
Out[9]:
                 COL000  COL001  COL002
STK_ID RPT_Date
A0000  B000     -0.5505  0.7445 -0.3645
       B001      0.9129 -1.0473 -0.5478
       B002      0.8016  0.0292  0.9002
       B003      2.0744 -0.2942 -0.7117
A0001  B000      0.7064  0.9636  0.2805
       B001      0.4763  0.2741 -1.2437
       B002      1.1563  0.0525 -0.7603
       B003     -0.4334  0.2510 -0.0105
A0002  B000     -0.6443  0.1723  0.2657
       B001      1.0719  0.0538 -0.0641
       B002      0.6787 -0.3386  0.6757
       B003     -0.3940 -1.2927  0.3892
A0003  B000     -0.5862 -0.6320  0.6196
       B001     -0.1129 -0.9774  0.7112
       B002      0.6303 -1.2849 -0.4777
       B003      0.5046 -0.4717 -0.2133
A0004  B000      1.6420 -0.9441  1.7167
       B001      0.1487  0.1239  0.6848
       B002      0.6139 -1.9085 -1.9508
       B003      0.3408 -1.3891  0.6739

In [10]: grp = df.groupby(level=df.index.names[0])

In [11]: grp.shift(1)
Out[11]:
                 COL000  COL001  COL002
STK_ID RPT_Date
A0000  B000         NaN     NaN     NaN
       B001     -0.5505  0.7445 -0.3645
       B002      0.9129 -1.0473 -0.5478
       B003      0.8016  0.0292  0.9002
A0001  B000         NaN     NaN     NaN
       B001      0.7064  0.9636  0.2805
       B002      0.4763  0.2741 -1.2437
       B003      1.1563  0.0525 -0.7603
A0002  B000         NaN     NaN     NaN
       B001     -0.6443  0.1723  0.2657
       B002      1.0719  0.0538 -0.0641
       B003      0.6787 -0.3386  0.6757
A0003  B000         NaN     NaN     NaN
       B001     -0.5862 -0.6320  0.6196
       B002     -0.1129 -0.9774  0.7112
       B003      0.6303 -1.2849 -0.4777
A0004  B000         NaN     NaN     NaN
       B001      1.6420 -0.9441  1.7167
       B002      0.1487  0.1239  0.6848
       B003      0.6139 -1.9085 -1.9508

The mul_df() code is attached here : How to speed up Pandas multilevel dataframe sum?

Now I want to grp.shift(1) for a big dataframe.

In [1]: df = mul_df(5000,30,400)
In [2]: grp = df.groupby(level=df.index.names[0])
In [3]: timeit grp.shift(1)
1 loops, best of 3: 5.23 s per loop

5.23s is too slow. How to speed it up ?

(My computer configuration is: Pentium Dual-Core T4200@2.00GHZ, 3.00GB RAM, WindowXP, Python 2.7.4, Numpy 1.7.1, Pandas 0.11.0, numexpr 2.0.1 , Anaconda 1.5.0 (32-bit))

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2 Answers 2

up vote 2 down vote accepted

How about shift the total DataFrame object and then set the first row of every group to NaN?

dfs = df.shift(1)
dfs.iloc[df.groupby(level=0).size().cumsum()[:-1]] = np.nan
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it works. How to let it work for grp.shift(n) ? –  bigbug Jul 2 '13 at 8:00

the problem is that the shift operation is not cython optimized, so it involves callback to python. Compare this with:

In [84]: %timeit grp.shift(1)
1 loops, best of 3: 1.77 s per loop

In [85]: %timeit grp.sum()
1 loops, best of 3: 202 ms per loop

added an issue for this: https://github.com/pydata/pandas/issues/4095

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