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I have grouped following DF by host and operation columns:

df
Out[163]:
<class 'pandas.core.frame.DataFrame'>
Int64Index: 100 entries, 10069 to 1003
Data columns (total 8 columns):
args             100  non-null values
host             100  non-null values
kwargs           100  non-null values
log_timestamp    100  non-null values
operation        100  non-null values
thingy             100  non-null values
status           100  non-null values
time             100  non-null values
dtypes: float64(1), int64(2), object(5)


g = df.groupby(['host','operation'])

g
Out[165]: <pandas.core.groupby.DataFrameGroupBy object at 0x7f46ec731890>

g.groups.keys()[:10]
Out[166]:
[('yy39.segm1.org', 'gtfull'),
 ('yy39.segm1.org', 'updateWidg'),
 ('yy36.segm1.org', 'notifyTestsDelivered'),
 ('yy32.segm1.org', 'notifyTestsDelivered'),
 ('yy20.segm1.org', 'gSettings'),
 ('yy32.segm1.org', 'x_gWidgboxParams'),
 ('yy39.segm1.org', 'clearElems'),
 ('yy3.segm1.org', 'gxyzinf'),
 ('yy34.segm1.org', 'setFlagsOneWidg'),
 ('yy13.segm1.org', 'x_gbinf')]

Now I need to get individual DataFrames for each ('host', 'operation') pair. I can do it by iterating over groups keys:

for el in g.groups.keys():
     ...:     print el, 'VALUES', g.groups[el]
     ...:
('yy25.segm1.org', 'x_gbinf') VALUES [10021]
('yy36.segm1.org', 'gxyzinf') VALUES [10074, 10085]
('yy25.segm1.org', 'updateWidg') VALUES [10022]
('yy25.segm1.org', 'gtfull') VALUES [10019]
('yy16.segm1.org', 'gxyzinf') VALUES [10052, 10055, 10062, 10064]
('yy32.segm1.org', 'addWidging2') VALUES [10034]
('yy16.segm1.org', 'notifyTestsDelivered') VALUES [10056, 10065]

Questions:

Q1. I'm wondering if I should split the DataFrameGroupBy object or is there a faster way of achieving the goal here?

Strategically: I need to calculate exponential weighted moving average and exponential weighted standard deviation (although std dev should be attenuated much more slowly).

To this end, I need have it:

a. grouped by host, operation

b. each host/operation subset sorted by log_timestamp

c. ewma and ewmstd calculated for time column.

Is there a way of achieving this without splitting DataFrameGroupBy?

Q2. The goal is to signal when particular time for host/operation becomes abnormal in the last several minutes (overload condition). I've had an idea that if I calculate 'slow ewmstd' and 'slow ewma' (for longer period of time, say, 1 hr) then the short-term ewma (say 5 minutes) could be interpreted as emergency value if it's more than 2 slow std deviations from the slow ewma (three sigma rule). I'm not even sure if this is correct / best approach. Is it?

It may be, since this is roughly similar to how UNIX 1m, 5m, and 15m load averages work: if 15m is normal but 1m load avg is much higher, you know that the load has been much higher than usual. But I'm not sure of that.

share|improve this question
    
read here: pandas.pydata.org/pandas-docs/dev/groupby.html, you just need to df.groupby(['host','operation']).apply(lambda x: do your calc on x). –  Jeff Dec 19 '13 at 19:56
    
if you make it an answer, I'll check it as accepted. –  John Doe Dec 19 '13 at 20:24

1 Answer 1

up vote 2 down vote accepted

docs are here

you just need to:

def f(x):
     return a calculation on x

f can also be lambda x: ....

df.groupby(['host','operation']).apply(f)
share|improve this answer
    
One thing that was news to me: x up there is a full blown Pandas object (usually a DataFrame, sometimes a Series, depends on context). So you can do all sorts of useful stuff to x within f. For example: x['newcol'] = super_awesome_function(x) works fine. As does something like x['movavg'] = pd.rolling_mean(x, periods=20). So you can use f to tack a few more columns onto x and then, ultimately, just return x. –  8one6 Dec 19 '13 at 20:33
    
groupby is very powerful. you can do quite complicated types of ops with it. however, sometimes it makese sense to use the vectorized on the whole frame, either before after a groupby (as a groupby is essentially a looped operation). –  Jeff Dec 19 '13 at 20:37
    
in general it IS faster to return a new object (and not to modify the current object); this is the slow/fast path stuff. –  Jeff Dec 19 '13 at 20:37

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