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Hi,
I have a dataset from a callcenter with all inbound calls in 2013 (phonenumber, number called, time called, call duration, wait time, call forwarding etc).
I have a datetime field which shows the date and time the call was received (eg 2-1-2013 7:38:07). Now I want to create a timeline chart that shows a line displaying the average number of calls on a time (starting at 07:00 and ending at 19:00).
What is the easies way to do this? I've already started creating a master calendar.
Thanks in advance,
 maxgro
		
			maxgro
		
		
		
		
		
		
		
		
	
			
		
		
			
					
		try this
 
					
				
		
Thanks but that's not really what I am looking for. Here is an example of some DateTime values:
| DateCalc | 
| 12-06-13 12:21:26 | 
| 12-06-13 12:22:56 | 
| 12-06-13 12:40:17 | 
| 12-06-13 12:47:36 | 
| 12-06-13 12:47:36 | 
| 12-06-13 13:11:46 | 
| 12-06-13 13:12:13 | 
| 12-06-13 13:23:34 | 
| 12-06-13 13:33:28 | 
| 12-06-13 13:34:09 | 
| 12-06-13 13:35:19 | 
| 12-06-13 13:38:03 | 
| 12-06-13 13:39:57 | 
| 12-06-13 13:39:57 | 
| 12-06-13 13:41:57 | 
| 12-06-13 13:41:57 | 
| 12-06-13 13:51:16 | 
| 12-06-13 13:54:13 | 
| 12-06-13 13:54:13 | 
| 12-06-13 14:00:46 | 
| 12-06-13 14:15:30 | 
| 12-06-13 14:16:08 | 
| 12-06-13 14:21:52 | 
| 12-06-13 14:22:32 | 
| 12-06-13 14:34:26 | 
| 12-06-13 14:52:43 | 
| 12-06-13 15:00:30 | 
I think I am going to try to create an expression which only takes hh:mm (14:34) for all values and then use count. Then show the result against a dimension time (based on minutes).
 
					
				
		
I've create a new Dimensions in the script based on DateTime called Time: =Time(Hour(DateTime)&':' & Minute(DateTime)) as Time;
Now I've created a line chart with Time as Dimension and a simple expression: =Count(Time)
This gets the results I want but I am still curious to other solutions people could use.
 
					
				
		
you can also use the Round function in QlikView if you don't have a lot of data points to get a more even distribution (and you will be better able to see trends)
