I am trying to explore Pandas library and stopped by an example that I frequently face and I think pandas had the solution for it. Given the folloing code:

```
In [63]: d1 = np.random.rand(3,3)
In [63]: d2 = np.random.rand(3,3)
In [64]:s1 = pandas.Series(d1,index = [['a1']*d1.shape[0],
[4]*d1.shape[0],
range(d1.shape[0])])
Out[64]:a1 4 0 [ 0.00881133 0.71344668 0.03611378]
1 [ 0.37328776 0.63195947 0.23000941]
2 [ 0.68466443 0.85891677 0.31740809]
In [65]: s2 = pandas.Series(d2,index = [['a2']*d2.shape[0],
[5]*d2.shape[0],
range(d2.shape[0])])
Out[65]:a2 5 0 [ 0.00881133 0.71344668 0.03611378]
1 [ 0.37328776 0.63195947 0.23000941]
2 [ 0.68466443 0.85891677 0.31740809]
s = s1.append(s2)
a1 4 0 [ 0.00881133 0.71344668 0.03611378]
1 [ 0.37328776 0.63195947 0.23000941]
2 [ 0.68466443 0.85891677 0.31740809]
5 0 [ 0.00881133 0.71344668 0.03611378]
1 [ 0.37328776 0.63195947 0.23000941]
2 [ 0.68466443 0.85891677 0.31740809]
```

How to obtain a list of all the data matrices alone without their labels?