Here is how you could do it with Python preprocessing and plotting with gnuplot.

### Variant 1

The first variant works with gnuplot's `pm3d`

plotting style. This gives allows nice interpolation of the histogram data, so that the image looks smoother. But may give problems for large data sets, also depending on the output image format (see Variant 2).

The Python script `process.py`

uses `numpy.histogram2d`

to generate the histogram, the output is saved as gnuplot's `nonuniform matrix`

format.

```
# process.py
from __future__ import print_function
import numpy as np
import sys
M = np.loadtxt('datafile.dat', skiprows=1)
bins_x = 100
bins_y = 100
H, xedges, yedges = np.histogram2d(M[:,0], M[:,1], [bins_x, bins_y])
# output as 'nonuniform matrix' format, see gnuplot doc.
print(bins_x, end=' ')
np.savetxt(sys.stdout, xedges, newline=' ')
print()
for i in range(0, bins_y):
print(yedges[i], end=' ')
np.savetxt(sys.stdout, H[:,i], newline=' ')
print(H[-1,i])
# print the last line twice, then 'pm3d corners2color' works correctly
print(yedges[-1], end=' ')
np.savetxt(sys.stdout, H[:,-1], newline=' ')
print(H[-1,-1])
```

To plot, just run the following gnuplot script:

```
reset
set terminal pngcairo
set output 'test.png'
set autoscale xfix
set autoscale yfix
set xtics out
set ytics out
set pm3d map interpolate 2,2 corners2color c1
splot '< python process.py' nonuniform matrix t ''
```

### Variant 2

The second variant works with the `image`

plotting style, which may be suitable for large data sets (large histogram size), but doesn't look good e.g. for `100x100`

matrix:

```
# process2.py
from __future__ import print_function
import numpy as np
import sys
M = np.loadtxt('datafile.dat', skiprows=1)
bins_x = 100
bins_y = 200
H, xedges, yedges = np.histogram2d(M[:,0], M[:,1], [bins_x, bins_y])
# remap xedges and yedges to contain the bin center coordinates
xedges = xedges[:-1] + 0.5*(xedges[1] - xedges[0])
yedges = yedges[:-1] + 0.5*(yedges[1] - yedges[0])
# output as 'nonuniform matrix' format, see gnuplot doc.
print(bins_x, end=' ')
np.savetxt(sys.stdout, xedges, newline=' ')
print()
for i in range(0, bins_y):
print(yedges[i], end=' ')
np.savetxt(sys.stdout, H[:,i], newline=' ')
print()
```

To plot, just run the following gnuplot script:

```
reset
set terminal pngcairo
set output 'test2.png'
set autoscale xfix
set autoscale yfix
set xtics out
set ytics out
plot '< python process2.py' nonuniform matrix with image t ''
```

There might be some parts to improve (especially in the Python script), but it should work. I don't post a result image, because it looks ugly with the few data points you showed `;)`

.

`gnuplot`

itself, that is possible only in 1D using`smooth kdensity`

. If you want to plot the data with gnuplot you must use some other tool (e.g. Python) to preprocess the data. – Christoph Aug 30 '13 at 8:18