# How to speed up creating Point GeoSeries with large data?

I have two 1D arrays and want to combine them into one Point GeoSeries like this:

``````import numpy as np
from geopandas import GeoSeries
from shapely.geometry import Point

x = np.random.rand(int(1e6))
y = np.random.rand(int(1e6))
GeoSeries(map(Point, zip(x, y)))
``````

It costs about 5 seconds on my laptop. Is it possible to accelerate the generation of GeoSeries?

Instead of using `map`, to speed up this process, you need to use vectorized operations. `points_from_xy` function provided by GeoPandas is specifically optimized for this purpose. Here's an example run on my machine:

``````import numpy as np
from geopandas import GeoSeries
from shapely.geometry import Point
import geopandas as gpd
import time

x = np.random.rand(int(1e6))
y = np.random.rand(int(1e6))

s = time.time()

GeoSeries(map(Point, zip(x, y)))

f = time.time()
print("time elapsed with `map` : ", f - s)

geo_series = gpd.GeoSeries(gpd.points_from_xy(x, y))

print("time elapsed with `points_from_xy` : ", time.time() - f)
``````

Output:

``````time elapsed with `map` :  9.318699359893799
time elapsed with `points_from_xy` :  0.654371976852417
``````

see, the `points_from_xy` is almost 10x times faster as this utilized a vectorized approach.

Checkout `geopandas.points_from_xy` documentation from here to learn more: https://geopandas.org/en/stable/docs/reference/api/geopandas.points_from_xy.html