What is the use of Statistics box in QlikView

This recipe explains what is the use of Statistics box in QlikView

Recipe Objective:-What is the use of Statistics box in QlikView?

Step 1:-

Open QlikView 12 software. Here a Start page will, by default available; if we do not want we can also untick the check box given below and avoid the start page while launching QlikView every time.

Step 2:-

On the start page, we can see the Examples, Recent, and Favorites tab. The saved files will appear under the Recent tab.

Step 3:-

When the QlikView 12 Software gets Open, A blank window appears. Go to menu bar->click on File menu->click on New-> The Main sheet appears, Again go to menu bar->click on File menu->click on Edit script or we can also type Ctrl+E->Go to Table Files->Load the data source->here an excel file named as "Coffee Chain Sales" is being loaded->Now click on Reload button from the menu bar and save the file, So that data will also get loaded in sheet.

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Step 4:-

Now from Main Sheet->Right click->New sheet object->Statistics box->Window title"Sum [(Coffee Sales)]"->From the Displayed function, select "Sum"->From Available function, select "Numeric Count"->Ok.

Step 5:-

The Statistics box will be available in the Main sheet/QlikView Document.

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