ronakj16
06-20-2022, 06:29 AM
HELLO,
I am Using VBA Chart tool to display a chart and it also has label showing values (43,27 ,32 ,31 etc....).
is there any way we can conditionally format chart label.
for eg if label value is negative than show label in red color, if value is positive than show it in green.
29853
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I am Using VBA Chart tool to display a chart and it also has label showing values (43,27 ,32 ,31 etc....).
is there any way we can conditionally format chart label.
for eg if label value is negative than show label in red color, if value is positive than show it in green.
29853
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