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I have a DataFrame 'rpt' of Python pandas:

rpt
<class 'pandas.core.frame.DataFrame'>
MultiIndex: 47518 entries, ('000002', '20120331') to ('603366', '20091231')
Data columns:
STK_ID                    47518  non-null values
STK_Name                  47518  non-null values
RPT_Date                  47518  non-null values
sales                     47518  non-null values

I can filter the rows whose stock id is '600809' like this: rpt[rpt['STK_ID']=='600809']

<class 'pandas.core.frame.DataFrame'>
MultiIndex: 25 entries, ('600809', '20120331') to ('600809', '20060331')
Data columns:
STK_ID                    25  non-null values
STK_Name                  25  non-null values
RPT_Date                  25  non-null values
sales                     25  non-null values

and I want to get all the rows of some stocks together, such as ['600809','600141','600329'], that means I want a syntax like this:

stk_list = ['600809','600141','600329']

rst = rpt[rpt['STK_ID'] in stk_list] ### this does not works in pandas 

Since pandas not accept above command, how to achieve the target?

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1  
Say hi to my Chinese brother. These are Chinese stocks! – KidBroker Apr 12 '15 at 21:18
up vote 139 down vote accepted

Use the isin method. rpt[rpt['STK_ID'].isin(stk_list)].

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5  
what about the negation of this- what would be the correct way of going about a !isin()? – stites Jun 26 '13 at 15:14
29  
@dbyte: You just use the ~ operator: rpt[~rpt['STK_ID'].isin(stk_list)] – BrenBarn Jun 26 '13 at 17:43
    
perfect! thanks! – stites Jun 26 '13 at 17:56
1  
Related to what @mathtick asked: is there a way to do this on an index in general (needn't necessarily be a multindex)? – user1669710 Feb 27 '15 at 22:11
1  
@user1669710: Indexes also have an isin method. – BrenBarn Feb 27 '15 at 22:21

isin() is ideal if you have a list of exact matches, but if you have a list of partial matches or substrings to look for, you can filter using the str.contains method and regular expressions.

For example, if we want to return a DataFrame where all of the stock IDs which begin with '600' and then are followed by any three digits:

>>> rpt[rpt['STK_ID'].str.contains(r'^600[0-9]{3}$')] # ^ means start of string
...   STK_ID   ...                                    # [0-9]{3} means any three digits
...  '600809'  ...                                    # $ means end of string
...  '600141'  ...
...  '600329'  ...
...      ...   ...

Suppose now we have a list of strings which we want the values in 'STK_ID' to end with, e.g.

endstrings = ['01$', '02$', '05$']

We can join these strings with the regex 'or' character | and pass the string to str.contains to filter the DataFrame:

>>> rpt[rpt['STK_ID'].str.contains('|'.join(endstrings)]
...   STK_ID   ...
...  '155905'  ...
...  '633101'  ...
...  '210302'  ...
...      ...   ...

Finally, contains can ignore case (by setting case=False), allowing you to be more general when specifying the strings you want to match.

For example,

str.contains('pandas', case=False)

would match PANDAS, PanDAs, paNdAs123, and so on.

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You can also directly query your DataFrame for this information.

rpt.query('STK_ID in (600809,600141,600329)')

Or similarly search for ranges:

rpt.query('60000 < STK_ID < 70000')
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you can also use ranges by using:

b = df[(df['a'] > 1) & (df['a'] < 5)]
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