Ole Dyring
Articles
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Dimension x and y named references:
E.g., @"[Reseller].[Denmark]" – refers to the column/row with the dimension values "Reseller" and "Denmark" as first and second levels respectively in a hierarchical dimension. Using this referenc...
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Relative x and y references
E.g. -2, -1, 0, 1, 2 etc. – zero refers to current column/row, negative integers refer to previous columns/rows and positive integers refer to subsequent columns/rows. E.g. in a calculation of dif...
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Absolute x and y references
E.g. d1, d2, d3 etc. – counting columns from top-to-bottom or rows from left-to-right. E.g. d-1, d-2, d-3 etc. – counting columns from bottom-to-top or rows from right-to-left.
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General Syntax for Cross table references
The general syntax for Cross table references are: sum([x range], [y range], [m range]), where x refers to columns, y to rows and m to measures.
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Notification agents - overview
TARGIT offers many options for exporting data from the system, or for monitoring data within the system. Monitoring data Notification Agents are useful when you need to monitor the development of ...
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Batch scheduling
Batch Scheduling enables you to mass-distribute a document in different versions to different recipients. Simply enable the Batch processing option as part of the scheduled job and select a dimensi...
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Scheduled Publishing, basics
One option when working with Scheduled Jobs, is the Publish option. With this option, you can publish your output to a fixed publishing link on the TARGIT server. The published output can then be ...
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Scheduled jobs - overview
While the Export options are ideal for manual ad-hoc exports, the Scheduled jobs can do essentially the same things – according to a fixed scheme, and without human interaction. To set up a schedul...
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Export - overview
This section is mainly about the manual Export options. If you are looking for automated, scheduled export options, you should head over here: Scheduled jobs - overview With the manual options, you...
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Color agents - overview
Color agents are useful to highlight specific data in an analysis, e.g. if a calculation results in positive as well as negative trends. The simplest way to add a color agent to a column is by righ...