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Suppose I have a DataFrame like so,

df = pd.DataFrame([['x', 1, 2], ['x', 1, 3], ['y', 2, 2]], 
                  columns=['a', 'b', 'c'])

To select all rows where c == 2 and a == 'x', I could do something like,

df[(df['a'] == 'x') & (df['c'] == 2)]

Or I could iterative refine by making temporary variables,

df1 = df[df['a'] == 'x']
df2 = df1[df1['c'] == 2]

Is there a way to iterative refine on rows?

  .refine(lambda row: row['a'] == 'x')     # this method doesn't exist
  .refine(lambda row: row['c'] == 2)
share|improve this question

While this isn't a solution for now, in pandas version 0.13 you'll be able to do

df.query('a == "x"').query('c == 2')

to achieve what you want.

You'll also be able to do

df['a == "x"']['c == 2']


df['a == "x" and c == 2']

What's wrong with

df[(df.a == 'x') & (df.c == 2)]

until 0.13?

share|improve this answer
@AndyHayden No, if I understand you correctly. In the case of chaining you'll call query as many times as you chain. I don't think there's a sane way to, say, turn a chain into an "and-ing" of the expressions in the [] – Phillip Cloud Aug 29 '13 at 21:47
It's just a stylistic preference. Method chaining makes my code clearer. Will pandas 0.13 allow me to filter on arbitrary functions of rows, rather than simple comparisons on individual columns via the DataFrame.query syntax? – duckworthd Aug 29 '13 at 21:56
Probably not. Right now function calls are not implemented in the parser. query yields large speedups for big arrays (> 10000 elements) by using numexpr, which doesn't support arbitrary function calls (it supports a few numpy math functions and where IIRC). Other backends could support arbitrary callables, but that hardly seems worth it just for style, although I could be convinced to implement it once the core query code is merged. Alternatively, a method on DataFrames could be added to do what you want (chained selection) but this seems like it will be inherently slow. – Phillip Cloud Aug 29 '13 at 22:03
@AndyHayden It sounds like you're talking about lazy evaluation, which is a much broader topic than eval/query. I'm looking at the filter method and wondering if something like that for DataFrame content (as opposed to the axes) might be useful. I wouldn't be opposed to refine... – Phillip Cloud Aug 29 '13 at 23:43
@PhillipCloud that's exactly the phrase which was eluding me last night. Very broad topic for sure. Not sure I follow re content vs axis. – Andy Hayden Aug 30 '13 at 17:06

If you have a number of terms; the number of which you don't know until runtime, you can do as below. I am not saying this is at all a beautiful way to achieve the goal but I can't see an alternative with Pandas 0.14.1:

df = pd.DataFrame([['x', 1, 2], ['x', 1, 3], ['y', 2, 2]],
                  columns=['a', 'b', 'c'])

conditions = {'a': 'x', 'c': 2}

def esc(term):
    if isinstance(term, str):
        return '"%s"' % term
    return str(term)

q_parts = ["%s == %s" % (k, esc(v)) for k, v in conditions.items()]
q = ' and '.join(q_parts)

print df.query(q)

Of course, the esc function or the wider snippet would need to be extended further to handle logical-NOT, is x in (x, y, z), etc...

share|improve this answer

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