k-Means clustering in its simplest form is averaging values and keep other average values around one central average value. Suppose you have the following values

```
1,2,3,4,6,7,8,9,10,11,12,21,22,33,40
```

Now if I do k-means clustering and remember that the k-means clustering will have a biasing (means/averaging) mechanism that shall either put values close to the center or far away from it. And we get the following.

```
cluster-1
1,2,3,4,5,6,7,8
cluster-2
10,11,12
cluster-3
21,22
cluster-4
33
cluster-5
40
```

Remember I just made up these cluster centers (cluster 1-5).
So the next, time you do clustering, the numbers would end up around any of these central means (also known as k-centers). The data above is single dimensional.

When you perform kmeans clustering on large data sets, with multi dimension (A multidimensional data is an array of values, you will have millions of them of the same dimension), you will need something bigger and scalable. You will first average one array, you will get a single value, like wise you will repeat the same for other arrays, and then perform the kmean clustering.

Read one of my questions Here

Hope this helps.

Programming Collective Intelligenceby Toby Segaran is worth a look. (Contains sections on both these algorithms and more). – matt Jun 1 '11 at 19:48