I do a lot of work with very large spreadsheet data (most of which is numeric data). I have been using nested lists to work with the data, accessing attributes by their index. I have recently been told that this is not a very efficient way to work with this type of data.
I am curious if there is a more efficient way of structuring this type of data using Dictionaries.
For instance, if I have a spreadsheet that would normally look like this as nested lists:
sheet = [['ACCOUNT', 'VALUE1', 'VALUE2', 'VALUE3'], ['Account1', '3.4332', '2.524', '4,567.23'], ['Account2', '1,235.67', '8.98', '4,321.78']]
How could I set this up using (nested?)Dictionaries so that I can access values by an "Account" key and a "Header" key? (basically easily access Account1, Value2)
I'd prefer the implementation to be efficient from a performance standpoint when iterating over accounts and extracting account/value pairs to compare/mutate. (I do lots of analysis on arrays from one day to the next, where the array structure remains the same, but the numeric data changes).