You can use regular python lists (which are dynamic) as vectors. Trivial example follows.

```
from scipy.spatial.distance import sqeuclidean
a = [1,2,3]
b = [0,0,0]
print sqeuclidean(a,b) # 14
```

As per aganders3's suggestion, do note that you can also use numpy arrays if needed:

```
import numpy
a = numpy.array([1,2,3])
```

If the sparse part of your question is crucial I'd use scipy for that - it has support for sparse matrixes. You can define a 1xn matrix and use it as a vector. This works (the parameter is the size of the matrix, filled with zeroes by default):

```
sqeuclidean(scipy.sparse.coo_matrix((1,3)),scipy.sparse.coo_matrix((1,3))) # 0
```

There are many kinds of sparse matrixes, some dictionary based (see comment). You can define a row sparse matrix from a list like this:

```
scipy.sparse.csr_matrix([1,2,3])
```