# New column, sampled from list, based on column value

``````values = [1,2,3,2,3,1]
colors = ['r','g','b']
expected_output = ['r', 'g', 'b', 'g', 'b', 'r'] # how to create this in pandas?

df = pd.DataFrame({'values': values})
df['colors'] = expected_output
``````

I want to make a new column in my dataframe where the colors are selected based on values in an existing column. I remember doing this in xarray with a vectorised indexing trick, but I can't remember if the same thing is possible in pandas. It feels like it should be a basic indexing task.

The current answers are a nice start, thanks! They take a bit too much advantage of the numerical nature of "values" though. I'd rather something generic that would also work if say

``````values = ['a', 'b', 'c', 'b', 'c', 'a']
``````

I guess the "map" method probably still works.

Code

use numpy indexing

``````import numpy as np
df['colors'] = np.array(colors)[df['values'] - 1]
``````

df

``````   values color
0       1     r
1       2     g
2       3     b
3       2     g
4       3     b
5       1     r
``````

If you want to solve this problem using only Pandas, use `map` function. (with @Onyambu comment)

``````m = dict(enumerate(colors, 1))
df['colors'] = df['values'].map(m)
``````
• no need of `dict comprehension`. just use `m = dict(enumerate(colors, 1))` Mar 5 at 0:31
• @Onyambu you are right! I habitually used the code because I always mapped it to key: number. Mar 5 at 0:33
• Nice! The map method feels the most natural to me. The mapping dictionary is also nice to construct for any type of values, e.g. `m = dict(zip(unique_values, colors))` Mar 5 at 1:15
• @BenFarmer mapping a dict is an optimized operation (#2 in this answer is a bit relevant even though the context is different). It’s possibly the fastest way to do your task especially if there are a lot of colors to map. Mar 6 at 17:50

You can use `pd.cut`:

``````df["colors"] = pd.cut([1, 2, 3, 2, 3, 1], 3, labels=["r", "g", "b"])
``````

Result:

``````   values colors
0       1      r
1       2      g
2       3      b
3       2      g
4       3      b
5       1      r
``````

Another version, using `pd.Categorical`:

``````colors = ["r", "g", "b"]
df["colors"] = pd.Categorical.from_codes(df["values"] - 1, categories=colors)
print(df)
``````

Prints:

``````   values   colors
0       1        r
1       2        g
2       3        b
3       2        g
4       3        b
5       1        r
``````