Depending on your needs, either matplotlib's `imshow`

or glumpy are probably the best options.

Matplotlib is infinitely more flexible, but slower (animations in matplotlib can be suprisingly resource intensive even when you do everything right.). However, you'll have a really wonderful, full-featured plotting library at your disposal.

Glumpy is perfectly suited for the quick, openGL based display and animation of a 2D numpy array, but is much more limited in what it does. If you need to animate a series of images or display data in realtime, it's a far better option than matplotlib, though.

Using matplotlib (using the pyplot API instead of pylab):

```
import matplotlib.pyplot as plt
import numpy as np
# Generate some data...
x, y = np.meshgrid(np.linspace(-2,2,200), np.linspace(-2,2,200))
x, y = x - x.mean(), y - y.mean()
z = x * np.exp(-x**2 - y**2)
# Plot the grid
plt.imshow(z)
plt.gray()
plt.show()
```

Using glumpy:

```
import glumpy
import numpy as np
# Generate some data...
x, y = np.meshgrid(np.linspace(-2,2,200), np.linspace(-2,2,200))
x, y = x - x.mean(), y - y.mean()
z = x * np.exp(-x**2 - y**2)
window = glumpy.Window(512, 512)
im = glumpy.Image(z.astype(np.float32), cmap=glumpy.colormap.Grey)
@window.event
def on_draw():
im.blit(0, 0, window.width, window.height)
window.mainloop()
```