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Hello there
I would like to present my data according to the principle of vintage analysis for monitoring the credit quality. I intend to present them in the form of a table, like the one below :
The information comes from these 2 tables :
"Date of Granting Loans" and "Intial Value of Granted Loans" come from the table "FACT_PAR_DETAIL".
"Date of Granting Loans" is split in YEAR-MONTH and comes from the credit start date.
"Intial Value of Granted Loans" comes from the amount allocated in credit and is segmented by YEAR-MONTH, for each measure of late payment (table DIM_PAR : "1 to 7" days, "8 to 14" days, ...).
I have tried to use a table based visual, but it does not work properly, because the number of lines must change dynamicaly, accordind to the start date that is selected.
Your suggestions are welcome to tell me how to proceed.
In advance, thank you very much.
Hi @PaulMoses,
Kindly share your sample data and excepted result to me.
Regards,
Frank
Hi Frank
Thank you for your message.
Can you, please, tell me how to share with you the sample data ?
Regards.
Hello All,
I would like to share data with Franck, but I do not see how to do it on the forum.
Can somebody, please, show me how to post a sample data ?
Thanks.
Hi @PaulMoses,
You can upload your file to dropbox and share the link here.
Regards,
Frank
Hi Frank
Here is the link to the file :
https://www.dropbox.com/s/k64anm29w32b39z/Table%20DIM_PAR%20et%20FACT_PAR_DETAIL%20-%20OK.ods?dl=0
And the result expected :
"Date of Granting Loans" is split in YEAR-MONTH and comes from the credit start date (column LOAN_CNTRT_START_DATE, table FACT_PAR_DETAIL).
"Intial Value of Granted Loans" comes from the amount allocated (column LOAN_CNTRT_AMT, table FACT_PAR_DETAIL).
The others columns are the measures of late payment (table DIM_PAR)
Thank you a lot for your kindness and help
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