95

I'm trying to reprogram my Stata code into Python for speed improvements, and I was pointed in the direction of PANDAS. I am, however, having a hard time wrapping my head around how to process the data.

Let's say I want to iterate over all values in the column head 'ID.' If that ID matches a specific number, then I want to change two corresponding values FirstName and LastName.

In Stata it looks like this:

replace FirstName = "Matt" if ID==103
replace LastName =  "Jones" if ID==103

So this replaces all values in FirstName that correspond with values of ID == 103 to Matt.

In PANDAS, I'm trying something like this

df = read_csv("test.csv")
for i in df['ID']:
    if i ==103:
          ...

Not sure where to go from here. Any ideas?

161

One option is to use Python's slicing and indexing features to logically evaluate the places where your condition holds and overwrite the data there.

Assuming you can load your data directly into pandas with pandas.read_csv then the following code might be helpful for you.

import pandas
df = pandas.read_csv("test.csv")
df.loc[df.ID == 103, 'FirstName'] = "Matt"
df.loc[df.ID == 103, 'LastName'] = "Jones"

As mentioned in the comments, you can also do the assignment to both columns in one shot:

df.loc[df.ID == 103, ['FirstName', 'LastName']] = 'Matt', 'Jones'

Note that you'll need pandas version 0.11 or newer to make use of loc for overwrite assignment operations.


Another way to do it is to use what is called chained assignment. The behavior of this is less stable and so it is not considered the best solution (it is explicitly discouraged in the docs), but it is useful to know about:

import pandas
df = pandas.read_csv("test.csv")
df['FirstName'][df.ID == 103] = "Matt"
df['LastName'][df.ID == 103] = "Jones"
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  • 16
    how about adding also this flavor: df.loc[df.ID == 103, ['FirstName', 'LastName']] = 'Matt', 'Jones' – Boud Oct 7 '13 at 13:54
  • 2
    -1 "Another way to do it is to use what is called chained assignment." No. Emphatically, no. It's only useful to know that chained assignment isn't reliable. It's not that it's a reliable, non-optimal solution, the situation is much worse. You've even acknowledged this elsewhere on Stack Overflow. Please try to avoid giving the illusion that chained assignment is a viable option. The first two methods you gave were enough, and are the preferred way to do this. – Phillip Cloud Oct 7 '13 at 15:55
  • 9
    I disagree. I do not understand why you persist in pedantically trying to assert that chained assignment is not a viable way. I acknowledged that it is not considered the preferred way. What more do you want. It's preposterous to act like this is not a way to do it. In fact, in my system right now (version 0.8), it is the right way to do it. I'm not interested in your up-votes if you are going to take this position. Feel free to signal your point with a downvote, but I have already reflected on your point and disagree with it. – ely Oct 7 '13 at 16:02
  • 11
    The internet is serious business. At any rate, EMS, I appreciated knowing the option exists. – Parseltongue Oct 9 '13 at 6:44
  • One issue you might run into is that the csv has periods/dots in the column names and assignments get messed up. You can fix the columns using something like this: cols = df.columns cols = cols.map(lambda x: x.replace('.', '_') if isinstance(x, str) else x) df.columns = cols – ski_squaw Nov 9 '16 at 19:29
35

You can use map, it can map vales from a dictonairy or even a custom function.

Suppose this is your df:

    ID First_Name Last_Name
0  103          a         b
1  104          c         d

Create the dicts:

fnames = {103: "Matt", 104: "Mr"}
lnames = {103: "Jones", 104: "X"}

And map:

df['First_Name'] = df['ID'].map(fnames)
df['Last_Name'] = df['ID'].map(lnames)

The result will be:

    ID First_Name Last_Name
0  103       Matt     Jones
1  104         Mr         X

Or use a custom function:

names = {103: ("Matt", "Jones"), 104: ("Mr", "X")}
df['First_Name'] = df['ID'].map(lambda x: names[x][0])
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  • 2
    Won't this generate a KeyError if the values do not exist in your dict? – EdChum Oct 7 '13 at 14:04
  • 1
    The custom function will, the others will work anyway. But i assumed the dict is created for the mapping. Otherwise some checking/cleaning can be done based on something like: df.ID.isin(names.keys()) – Rutger Kassies Oct 7 '13 at 14:12
  • The custom function can be expanded into any (non anonymous) function. – user989762 Feb 12 at 10:08
11

This question might still be visited often enough that it's worth offering an addendum to Mr Kassies' answer. The dict built-in class can be sub-classed so that a default is returned for 'missing' keys. This mechanism works well for pandas. But see below.

In this way it's possible to avoid key errors.

>>> import pandas as pd
>>> data = { 'ID': [ 101, 201, 301, 401 ] }
>>> df = pd.DataFrame(data)
>>> class SurnameMap(dict):
...     def __missing__(self, key):
...         return ''
...     
>>> surnamemap = SurnameMap()
>>> surnamemap[101] = 'Mohanty'
>>> surnamemap[301] = 'Drake'
>>> df['Surname'] = df['ID'].apply(lambda x: surnamemap[x])
>>> df
    ID  Surname
0  101  Mohanty
1  201         
2  301    Drake
3  401         

The same thing can be done more simply in the following way. The use of the 'default' argument for the get method of a dict object makes it unnecessary to subclass a dict.

>>> import pandas as pd
>>> data = { 'ID': [ 101, 201, 301, 401 ] }
>>> df = pd.DataFrame(data)
>>> surnamemap = {}
>>> surnamemap[101] = 'Mohanty'
>>> surnamemap[301] = 'Drake'
>>> df['Surname'] = df['ID'].apply(lambda x: surnamemap.get(x, ''))
>>> df
    ID  Surname
0  101  Mohanty
1  201         
2  301    Drake
3  401         
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  • 1
    this is by far the best and easiest answer I've seen, with excellent default handling. Thank you. – Brendan Mar 12 '18 at 22:58
  • @Brendan: Oh! Thanks very much. – Bill Bell Mar 13 '18 at 2:59
9

The original question addresses a specific narrow use case. For those who need more generic answers here are some examples:

Creating a new column using data from other columns

Given the dataframe below:

import pandas as pd
import numpy as np

df = pd.DataFrame([['dog', 'hound', 5],
                   ['cat', 'ragdoll', 1]],
                  columns=['animal', 'type', 'age'])

In[1]:
Out[1]:
  animal     type  age
----------------------
0    dog    hound    5
1    cat  ragdoll    1

Below we are adding a new description column as a concatenation of other columns by using the + operation which is overridden for series. Fancy string formatting, f-strings etc won't work here since the + applies to scalars and not 'primitive' values:

df['description'] = 'A ' + df.age.astype(str) + ' years old ' \
                    + df.type + ' ' + df.animal

In [2]: df
Out[2]:
  animal     type  age                description
-------------------------------------------------
0    dog    hound    5    A 5 years old hound dog
1    cat  ragdoll    1  A 1 years old ragdoll cat

We get 1 years for the cat (instead of 1 year) which we will be fixing below using conditionals.

Modifying an existing column with conditionals

Here we are replacing the original animal column with values from other columns, and using np.where to set a conditional substring based on the value of age:

# append 's' to 'age' if it's greater than 1
df.animal = df.animal + ", " + df.type + ", " + \
    df.age.astype(str) + " year" + np.where(df.age > 1, 's', '')

In [3]: df
Out[3]:
                 animal     type  age
-------------------------------------
0   dog, hound, 5 years    hound    5
1  cat, ragdoll, 1 year  ragdoll    1

Modifying multiple columns with conditionals

A more flexible approach is to call .apply() on an entire dataframe rather than on a single column:

def transform_row(r):
    r.animal = 'wild ' + r.type
    r.type = r.animal + ' creature'
    r.age = "{} year{}".format(r.age, r.age > 1 and 's' or '')
    return r

df.apply(transform_row, axis=1)

In[4]:
Out[4]:
         animal            type      age
----------------------------------------
0    wild hound    dog creature  5 years
1  wild ragdoll    cat creature   1 year

In the code above the transform_row(r) function takes a Series object representing a given row (indicated by axis=1, the default value of axis=0 will provide a Series object for each column). This simplifies processing since we can access the actual 'primitive' values in the row using the column names and have visibility of other cells in the given row/column.

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  • 1
    Thanks for taking the time to write up such a comprehensive answer. Much appreciated. – Parseltongue Jun 22 '18 at 1:42

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