You can load them using `numpy.loadtxt`

:

```
>>> import numpy as np
>>> data1 = np.loadtxt("1.txt", dtype=np.object, delimiter=",")
>>> data2 = np.loadtxt("2.txt", dtype=np.object, delimiter=",")
>>> print data1
[['A' 'B' 'D']
['E' 'G' 'A']]
```

If you want to stack both arrays use `numpy.vstack`

:

```
>>> np.vstack( (data1, data2) )
[['A' 'B' 'D']
['E' 'G' 'A']
['A' 'B' 'D']
['E' 'G' 'A']]
```

And if you want to add the source:

```
>>> first_col = np.vstack( (np.array([[1] * data1.shape[0]]).T, np.array([[2] * data2.shape[0]]).T) )
>>> stack = np.vstack( (data1, data2) )
>>> data = np.hstack( (first_col, stack) )
>>> print data
[[1 'A' 'B' 'D']
[1 'E' 'G' 'A']
[2 'A' 'B' 'D']
[2 'E' 'G' 'A']]
```

If you want to save it with the save format:

```
>>> np.savetxt('data.txt', data, fmt='%s', delimiter=",")
```

This will generate **data.txt**:

```
1,A,B,D
1,E,G,A
2,A,B,D
2,E,G,A
```

**Update:** Function for handling unlimited number of files (I am assuming that files are named as numbers with .txt extension in the same way you specify in your question: 1.txt, 2.txt, 3.txt... n.txt):

```
import numpy as np
def get_from_csv(fname):
data = np.loadtxt(fname, dtype=np.object, delimiter=",")
col = np.array([[ int(fname.rstrip(".txt")) ] * data.shape[0]]).T
return np.hstack( (col, data) )
files = ["1.txt", "2.txt", "3.txt"]
for f in files:
try:
data = np.vstack( (data, get_from_csv(f)) )
except:
data = get_from_csv(f)
print data
```

Which will output:

```
[[1 'A' 'B' 'D']
[1 'E' 'G' 'A']
[2 'A' 'B' 'D']
[2 'E' 'G' 'A']
[3 'A' 'B' 'D']
[3 'E' 'G' 'A']]
```