My previous code was list of list of pandas dataframes as follows
rowResults = [ [df, df, df], [df, df, df], ... [df, df, df] ] results=results.append(rowResults)
Since all dataframes have exact same columns, when I appended above list, it converted the whole data structure into a single dataframe with same columns as individual dataframe.
Now, I have converted the small dataframes into a dictionary because of performance issues. If I create large number of dataframes, I see that there is some kind of memory leak in storing meta data information used by pandas dataframes. This doesn't occur when I use a dictionary instead.
my new code looks as follows
rowResults = [ [dict, dict, dict], [dict, dict, dict], ... [dict, dict, dict] ] results=results.append(rowResults)
Above code doesn't has same effect as in previous case which is normal. How can I convert above list of list of dictionaries so that final pandas dataframes has same columns as that of dictionary keys? In case of dictionaries, my output looks as follows
(Pdb) results <class 'pandas.core.frame.DataFrame'> Int64Index: 799 entries, 0 to 798 Data columns: 0 799 non-null values 1 799 non-null values 2 799 non-null values column1 0 non-null values column2 0 non-null values column3 0 non-null values column4 0 non-null values