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visits member for 2 years, 8 months
seen Jul 29 at 6:30

Jun
5
comment Can extended Backus Naur Form (EBNF) describe an unordered set of values?
Thanks @rici, good idea about setting the requirement of no repeating elements.
Jun
5
accepted Can extended Backus Naur Form (EBNF) describe an unordered set of values?
Jun
4
asked Can extended Backus Naur Form (EBNF) describe an unordered set of values?
May
20
revised Parsing CSV data based on header fields using Pyparsing
added 15 characters in body
May
20
comment Parsing CSV data based on header fields using Pyparsing
@JanVlcinsky, do mind listing a few references to "manage relations between customer and order" as I need to do this for later processing. I didn't mention it in my question so that it was focused. Thanks again!
May
20
accepted Parsing CSV data based on header fields using Pyparsing
May
20
comment Parsing CSV data based on header fields using Pyparsing
Thanks JanVlcinsky, good solution. I was hoping for @PaulMcGuire would chime in too :)
May
20
comment Parsing CSV data based on header fields using Pyparsing
For mapping the CSV headers to python friendly names, I guess the easiest solution would be to use a dictionary look up. translation_dict={'FirstName': 'first_name', 'Surname': 'surname', 'Address': 'address', 'Notes':'notes', 'PhoneHome': 'phone_home', 'PhoneMobile': 'phone_mobile', 'PurchaseOrder': 'purchase_order', 'OrderDate': 'order_date', 'Total': 'total'}
May
16
comment Parsing CSV data based on header fields using Pyparsing
Thank you @JanVlcinsky.
May
15
revised Parsing CSV data based on header fields using Pyparsing
added 1368 characters in body
May
15
comment Parsing CSV data based on header fields using Pyparsing
I guess the initial reason for using the pyparsing was the bonus that it would validate the header of the CSV file. I'm not sure how I'll do that if I use the approach suggested by @Jan Vlcinsky.
May
15
comment Parsing CSV data based on header fields using Pyparsing
@EOL ok, that is a good idea. How do I create the correct objects after getting the dictionary from the CSV. Should I still use the pyparsing parser to capture the nested nature of the data structure and parse the keys of the DictReader object? Or there is another approach that I can try? Thanks for your suggestions :)
May
15
comment Parsing CSV data based on header fields using Pyparsing
Thanks Jan, but I wish it was that easy. As I said, I need capture the nested nature of the date, eg customer + Order. That's why I created a custom parser. A dictionary would not allow me to capture that would it?
May
15
asked Parsing CSV data based on header fields using Pyparsing
Oct
20
comment Set hasOne() dropdown field as readonly in forms
Sorry DarkSide, just read your comment. I got the latest github version. Thanks.
Oct
20
comment Set hasOne() dropdown field as readonly in forms
I just realised that display(array('form'=>'readonly')) has a problem, when saving the form those fields set with display(array('form'=>'readonly')) are replaced with NULL in the table. This is noted in the discussion groups.google.com/forum/?fromgroups=#!topic/agile-toolkit-devel/….
Oct
20
revised Set hasOne() dropdown field as readonly in forms
deleted 6 characters in body
Oct
20
asked Set hasOne() dropdown field as readonly in forms
Oct
14
awarded  Supporter
Oct
14
accepted Using ref() with linking tables in ATK