# How to combine 2 columns of a dataframe into another

I have a dataframe with a name of a location in the index and 2 columns, Latitude and Longitude.

``````           LATITUDE LONGITUDE
SITE
LE0039  59.522583   29.566056

LE0073  59.287991   31.369472

LE0142  59.350241   32.531339

LE0278  59.964750   29.195850

.....
.....
``````

I need to calculate the minimum distance from one site to any other and store it in a third column for each site. I want to calculate the distance matrix with scipy.spatial.distance.pdist() but in order to do it I first need a new column with (LATITUDE, LONGITUDE) in order to pass it to pdist().

So I have 2 questions. One is how to combine lat and long to have an array of (lat,long) and the other if you think there is a better way to calculate the minimum distance

Thanks

use the good old combo of `list` + `zip`. `zip` creates the paired object and list creates the list so it can be assigned to the dataframe

``````df['combined'] = list(zip(df.LATITUDE, df.LONGITUDE))
``````

output:

``````LE0039  59.522583   29.566056   (59.522583, 29.566056)
LE0073  59.287991   31.369472   (59.287991000000005, 31.369472)
LE0142  59.350241   32.531339   (59.350241000000004, 32.531339)
LE0278  59.964750   29.195850   (59.96475, 29.19585)
``````

Sidenote: I'm very intrigued by the decimal expansion, no idea why there's a 000005

Regarding distances, `numpy` and `scipy` should have a plethora of options, way more than what I'm familiar with, so you should find many good alternatives after doing a quick search on google :) I usually stick with pdist()

• Hi Yuca, thanks for the reply, – manuel quiros Dec 6 '18 at 20:13
• saludos Manuel! – Yuca Dec 6 '18 at 20:23
• I ended up using df[["LATITUDE","LONGITUDE"]].values, with the way you suggested I still got an error. I used scipy.spatial.distance.pdist() and worked perfectly – manuel quiros Dec 10 '18 at 15:55
• what kind of error? include the actual code you're running so we can understand better – Yuca Dec 10 '18 at 15:58