My code calculates the euclidean distance between all points in a set of samples I have. What I want to know is in general this the most efficient way to perform some operation between all elements in a set and then plot them, for instance to make a correlation matrix.

The index of samples is used to initialize the dataframe and provide labels. Then the 3d coordinates are provided as tuples in three_D_coordinate_tuple_list but this could easily be any measurement and then the variable distance could be any operation. I'm curious about finding a more efficient solution to making each column and then merging them again using pandas or numpy. Am I clogging up any memory with my solution? How can I make this cleaner?

```
def euclidean_distance_matrix_maker(three_D_coordinate_tuple_list, index_of_samples):
#list of tuples
#well_id or index as series or list
n=len(three_D_coordinate_tuple_list)
distance_matrix_df=pd.DataFrame(index_of_samples)
for i in range(0, n):
column=[]
#iterates through all elemetns calculates distance vs this element
for j in range(0, n):
distance=euclidean_dist_threeD_for_tuples( three_D_coordinate_tuple_list[i],
three_D_coordinate_tuple_list[j])
column.append(distance)
#adds euclidean distance to a list which overwrites old data frame then
#is appeneded with concat column wise to output matrix
new_column=pd.DataFrame(column)
distance_matrix_df=pd.concat([distance_matrix_df, new_column], axis=1)
distance_matrix_df=distance_matrix_df.set_index(distance_matrix_df.iloc[:,0])
distance_matrix_df=distance_matrix_df.iloc[:,1:]
distance_matrix_df.columns=distance_matrix_df.index
```