I got very wide table of monthly indexes look like:
index_id | ... | Mar2009 | Apr2009 | May2009 | ... | Feb2010 | 1 | ... | value1 | value2 | value3 | ... | value11 |
There are 180 columns, names are in series what represent month and year (Mar2009, Apr2009, ...), and there are about 5000 records, this table is updated monthly.
I also got second table with data like:
index | some other data | index_id | saledate | saleprice | estimated price | 1234 | other data ... | 1 | 03/05/09 | 100 | ??????????????? |
(about 1 milion records) and I need to delivered full record based on index including
estimated_price which is calculated as:
saleprice * ( value1 / value11 ) value1 because saledate id in March 2009, value11 because of current month.
I got 2 options, both need to access specific column based on value, second can have work around:
Calculate on fly ( and how I can access correct column in indexes table based of saledate and current data ) - be aware that data table is big and indexes are not samll either
When update indexes table run a job to calculate estimated price place it in data table, how ever same question as above ( how access correct column in indexes table based of saledate )
Second solution looks more effective at first look, however I afraid that that update process can take too long... I consider a stagging table that will convert wide index table to long table like:
index_id | date_from_column | index_value |
this way it could be easier to merge tables, however I will need to after update indexes table TRUNCATE long table and run 180 INSERTs like:
INSERT INTO long_table SELECT index_id, 'Mar2009' AS date_from_column, Mar2009 AS index_value FROM indexes_table
where each next INSERT will have next column name form indexes