What is the most efficient way to convert numpy arrays to Shapely Points?

I have a function that outputs a grid of points as x and y numpy arrays for interpolation, but before I interpolate, I want to use Geopandas to perform an intersection with my research boundary (otherwise half of my interpolation points fall in the ocean).

I'm generating points like this:

``````import geopandas as gpd
import numpy as np
import matplotlib.pyplot as plt
from shapely.geometry import Point

x = np.linspace(0,100,100)
y = np.linspace(0,100,100)
x, y = np.meshgrid(x, y)
x, y = x.flatten(), y.flatten()

f, ax = plt.subplots()

plt.scatter(x, y)
plt.axis('equal')
plt.show()
``````

Is there an efficient way to convert these numpy arrays to `shapely.Point([x, y])` so they can be placed in a geopandas geodataframe?

This is my current approach:

``````interp_points = []
index = 0
y_list = yi.tolist()
for x in xi.tolist():
interp_points.append(Point(x,y_list[index]))
index += 1
``````

But it seems like converting to lists and then iterating is likely not a good approach for performance, and I have approximately 160,000 points.

There is no built-in way to do this with `shapely`, so you need to iterate through the values yourself. For doing that, this should be a rather efficient way:

``````In [4]: from geopandas import GeoSeries

In [5]: s = GeoSeries(map(Point, zip(x, y)))

Out[6]:
0                    POINT (0 0)
1     POINT (1.01010101010101 0)
2     POINT (2.02020202020202 0)
3     POINT (3.03030303030303 0)
4    POINT (4.040404040404041 0)
dtype: object

In [6]: %timeit GeoSeries(map(Point, zip(x, y)))
114 ms ± 8.45 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
``````

(or slight alternative `GeoSeries(list(zip(x, y))).map(Point)`)

See here for some example doing this: http://geopandas.readthedocs.io/en/latest/gallery/create_geopandas_from_pandas.html

There is some (stalled) work to include this in geopandas directly: https://github.com/geopandas/geopandas/pull/75

• Thank you, I'd been trying to make a solution using `map()` and `zip` but my approach failed for some reason. This is exactly what I was looking for!
– Ryan
Commented Jun 21, 2018 at 15:32
• Just to note that this has eventually been implemented as `points_from_xy()`: see geopandas.org/en/stable/gallery/… for an example. Reference here Commented Feb 27 at 10:34

I think this is a good way:

``````import numpy as np
from shapely import geometry

points_np_array = np.random.rand(50,2)
polygon_1 = geometry.Polygon(np.squeeze(points_np_array))
``````

Better use this list comprehention:

[tuple(x) for x in arr.tolist()]

As of geopandas version 0.5.0 (April 25, 2019), you can use `points_from_xy` for that purpose:

``````# continuing from your example:
df = gpd.GeoDataFrame(geometry = gpd.points_from_xy(x, y))
df.plot()
plt.show()
``````

(Embedding in a `GeoSeries`, i.e., `gpd.GeoSeries(gpd.points_from_xy(x, y))`, would work equally well, but I wanted to replicate your plot.)

There is an example in the GeoPandas gallery, and the full documentation is here.