I Have a DF in which I am trying to convert the eastings/northings to long/lats. My df looks like this:

import pandas as pd
import numpy as np
import pyproj

    Postcode    Eastings    Northings
0   AB101AB     394235      806529
1   AB101AF     394181      806429
2   AB101AG     394230      806469
3   AB101AH     394371      806359
4   AB101AL     394296      806581

I am using a well know code block to convert the eastings and northings to long/lats and add those long/lats as new columns to the df:

def proj_transform(df):
    bng = pyproj.Proj("+init=EPSG:27700")
    wgs84 = pyproj.Proj("+init=EPSG:4326")
    lats = pd.Series()
    lons = pd.Series()
    for idx, val in enumerate(df['Eastings']):
        lon, lat = pyproj.transform(bng, wgs84, df['Eastings'][idx], df['Northings'][idx])
        lats.set_value(idx, lat)
        lons.set_value(idx, lon)
    df['lat'] = lats
    df['lon'] = lons
    return df

df_transform = proj_transform(my_df)

However, I keep getting the following error, "input must be an array, list, tuple or scalar". Does anyone have any insight into where I am going wrong here?


You can use DataFrame.apply with axis=1 and change function like:

def proj_transform(x):
    e = x['Eastings']
    n = x['Northings']
    bng = pyproj.Proj("+init=EPSG:27700")
    wgs84 = pyproj.Proj("+init=EPSG:4326")
    lon, lat = pyproj.transform(bng, wgs84, e, n)

    return pd.Series([lon, lat])

my_df[['lat','lon']] = my_df.apply(proj_transform, axis=1)

This is the fastest method:


from pyproj import Transformer

trans = Transformer.from_crs(
xx, yy = trans.transform(my_df["Eastings"].values, my_df["Northings"].values)
my_df["X"] = xx
my_df["Y"] = yy

Also helpful for reference:

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.