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I am experienced in R and new to Python Pandas. I am trying to index a DataFrame to retrieve rows that meet a set of several logical conditions - much like the "where" statement of SQL.

I know how to do this in R with dataframes (and with R's data.table package, which is more like a Pandas DataFrame than R's native dataframe).

Here's some sample code that constructs a DataFrame and a description of how I would like to index it. Is there an easy way to do this?

import pandas as pd
import numpy as np

# generate some data
mult = 10000
fruits = ['Apple', 'Banana', 'Kiwi', 'Grape', 'Orange', 'Strawberry']*mult
vegetables = ['Asparagus', 'Broccoli', 'Carrot', 'Lettuce', 'Rutabaga', 'Spinach']*mult
animals = ['Dog', 'Cat', 'Bird', 'Fish', 'Lion', 'Mouse']*mult
xValues = np.random.normal(loc=80, scale=2, size=6*mult)
yValues = np.random.normal(loc=79, scale=2, size=6*mult)

data = {'Fruit': fruits,
        'Vegetable': vegetables, 
        'Animal': animals, 
        'xValue': xValues,
        'yValue': yValues,}

df = pd.DataFrame(data)

# shuffle the columns to break structure of repeating fruits, vegetables, animals
np.random.shuffle(df.Fruit)
np.random.shuffle(df.Vegetable)
np.random.shuffle(df.Animal)

df.head(30)

# filter sets
fruitsInclude = ['Apple', 'Banana', 'Grape']
vegetablesExclude = ['Asparagus', 'Broccoli']

# subset1:  All rows and columns where:
#   (fruit in fruitsInclude) AND (Vegetable not in vegetablesExlude)

# subset2:  All rows and columns where:
#   (fruit in fruitsInclude) AND [(Vegetable not in vegetablesExlude) OR (Animal == 'Dog')]

# subset3:  All rows and specific columns where above logical conditions are true.

All help and inputs welcomed and highly appreciated!

Thanks, Randall

share|improve this question
    
Wow. Exactly what I needed. Thanks for a quick and direct answer. Note that I spelled vegetablesExlude wrong... should have been vegetablesExclude (with the c). Corrected it in the code above so is should be copy and paste to test. Thanks again. Randall. –  user2537610 Jul 1 '13 at 3:50

1 Answer 1

# subset1:  All rows and columns where:
#   (fruit in fruitsInclude) AND (Vegetable not in vegetablesExlude)
df.ix[df['Fruit'].isin(fruitsInclude) & ~df['Vegetable'].isin(vegetablesExclude)]

# subset2:  All rows and columns where:
#   (fruit in fruitsInclude) AND [(Vegetable not in vegetablesExlude) OR (Animal == 'Dog')]
df.ix[df['Fruit'].isin(fruitsInclude) & (~df['Vegetable'].isin(vegetablesExclude) | (df['Animal']=='Dog'))]

# subset3:  All rows and specific columns where above logical conditions are true.
df.ix[df['Fruit'].isin(fruitsInclude) & ~df['Vegetable'].isin(vegetablesExclude) & (df['Animal']=='Dog')]
share|improve this answer
    
Barely beat me too it! That was the exact same solution I came up with +1 –  spencerlyon2 Jul 1 '13 at 3:16
    
If all I wanted was the indexes, is there a shorter way than this: df.ix[df['Fruit'].isin(fruitsInclude).index –  Zhubarb Jan 8 at 9:04
    
@Zhubarb: df.index[df['Fruit'].isin(fruitsInclude)] is shorter and (on my machine ~33%) faster than df.ix[df['Fruit'].isin(fruitsInclude)].index. –  unutbu Jan 8 at 13:22

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