Here is my approach that you may try:

```
import numpy as np
import matplotlib.pyplot as plt
w = 10
h = 10
fig = plt.figure(figsize=(8, 8))
columns = 4
rows = 5
for i in range(1, columns*rows +1):
img = np.random.randint(10, size=(h,w))
fig.add_subplot(rows, columns, i)
plt.imshow(img)
plt.show()
```

The resulting image:

(Original answer date: Oct 7 '17 at 4:20)

**Edit 1**

Since this answer is popular beyond my expectation. And I see that a small change is needed to enable flexibility for the manipulation of the individual plots. So that I offer this new version to the original code.
In essence, it provides:-

- access to individual axes of subplots
- possibility to plot more features on selected axes/subplot

New code:

```
import numpy as np
import matplotlib.pyplot as plt
w = 10
h = 10
fig = plt.figure(figsize=(9, 13))
columns = 4
rows = 5
# prep (x,y) for extra plotting
xs = np.linspace(0, 2*np.pi, 60) # from 0 to 2pi
ys = np.abs(np.sin(xs)) # absolute of sine
# ax enables access to manipulate each of subplots
ax = []
for i in range(columns*rows):
img = np.random.randint(10, size=(h,w))
# create subplot and append to ax
ax.append( fig.add_subplot(rows, columns, i+1) )
ax[-1].set_title("ax:"+str(i)) # set title
plt.imshow(img, alpha=0.25)
# do extra plots on selected axes/subplots
# note: index starts with 0
ax[2].plot(xs, 3*ys)
ax[19].plot(ys**2, xs)
plt.show() # finally, render the plot
```

The resulting plot:

**Edit 2**

In the previous example, the code provides access to the sub-plots with single index, which is inconvenient when the figure has many rows/columns of sub-plots. Here is an alternative of it. The code below provides access to the sub-plots with `[row_index][column_index]`

, which is more suitable for manipulation of array of many sub-plots.

```
import matplotlib.pyplot as plt
import numpy as np
# settings
h, w = 10, 10 # for raster image
nrows, ncols = 5, 4 # array of sub-plots
figsize = [6, 8] # figure size, inches
# prep (x,y) for extra plotting on selected sub-plots
xs = np.linspace(0, 2*np.pi, 60) # from 0 to 2pi
ys = np.abs(np.sin(xs)) # absolute of sine
# create figure (fig), and array of axes (ax)
fig, ax = plt.subplots(nrows=nrows, ncols=ncols, figsize=figsize)
# plot simple raster image on each sub-plot
for i, axi in enumerate(ax.flat):
# i runs from 0 to (nrows*ncols-1)
# axi is equivalent with ax[rowid][colid]
img = np.random.randint(10, size=(h,w))
axi.imshow(img, alpha=0.25)
# get indices of row/column
rowid = i // ncols
colid = i % ncols
# write row/col indices as axes' title for identification
axi.set_title("Row:"+str(rowid)+", Col:"+str(colid))
# one can access the axes by ax[row_id][col_id]
# do additional plotting on ax[row_id][col_id] of your choice
ax[0][2].plot(xs, 3*ys, color='red', linewidth=3)
ax[4][3].plot(ys**2, xs, color='green', linewidth=3)
plt.tight_layout(True)
plt.show()
```

The resulting plot:

**Ticks and Tick-labels for Array of Subplots**

Some of the ticks and tick-labels accompanying the subplots can be hidden to get cleaner plot if all of the subplots share the same value ranges. All of the ticks and tick-labels can be hidden except for the outside edges on the left and bottom like this plot.

To achieve the plot with only shared tick-labels on the left and bottom edges, you can do the following:-

Add options `sharex=True, sharey=True`

in `fig, ax = plt.subplots()`

That line of code will become:

```
fig,ax=plt.subplots(nrows=nrows,ncols=ncols,figsize=figsize,sharex=True,sharey=True)
```

To specify required number of ticks, and labels to plot,

inside the body of `for i, axi in enumerate(ax.flat):`

, add these code

```
axi.xaxis.set_major_locator(plt.MaxNLocator(5))
axi.yaxis.set_major_locator(plt.MaxNLocator(4))
```

the number 5, and 4 are the number of ticks/tick_labels to plot. You may need other values that suit your plots.