I have many files (~2,000,000) generated by another program that I need to extract data from. These files have common indices with a different value for different methods, I am not sure how to phrase this well so here is a three dimensional example:

```
[x1,y1,z1,method1]
[x1,y1,z1,method2]
[x2,y2,z2,method1]
[x2,y2,z2,method2]
```

Ultimately what I would like to have is a pandas dataframe that looks something like this:

```
x y z method1 method2 ... methodn
0 x1 y1 z1 data data data
1 x2 y2 z2 data data data
2 x3 y3 z3 NaN data data
3 x4 y4 z4 data NaN data
...
n xn yn zn data NaN NaN
```

There will be some holes in the method and the data is not aligned.

The following shows the pseudocode:

```
file_list=glob.glob('/scratch/project/*')
method1_list=[]
method2_list=[]
...
methodn_list=[]
#Obtain data in the correct list
for outfile in file_list:
indices=(#function that obtains indices)
data=(#function that obtains primary data)
if method1: method1_list.append([indices,data])
elif method2: method2_list.append([indices,data])
...
else methodn: methodn_list.append([indices,data])
#Convert list to dataframe
method1_pd=pd.DataFrame(method1_list,columns[indices,method1])
method2_pd=pd.DataFrame(method2_list,columns[indices,method1])
...
methodn_pd=pd.DataFrame(methodn_list,columns[indices,method1])
#Apply multi index
method1=method1.set_index(indices)
method2=method2.set_index(indices)
...
methodn=methodn.set_index(indices)
#Combine data
out=method1.combine_first(method2)
out=out.combine_first(method3)
...
out=out.combine_first(methodn)
```

This works really well, however as the number of the methods is growing this is becoming fairly tedious to write and seems rather unpythonic. So I have the following questions:

- Is there a better way to create a DataFrame in this way? Everything after the for loop is already wrapped in a definition, but it did not help readability here. I still have to state each method three times.
- Is there an easy way to omit already read files if I would like to update the dataset?
- Is there a better way to align pandas data in this way?