Ad jumps around when page is still loading


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Has happened lately with some ads, when the page still hasn't fully loaded (I guess my laggy work vpn is to blame), some ads, jump around and require a refresh on my end, though not something that happens a lot.




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Yeah this has to do with the required 'viewability' of ads which needs to be in view for 30 secs, and then springs away. We could do a better job of making it look nicer, I agree.

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On 2017-5-11 at 1:51 AM, Steven P. said:

Yeah this has to do with the required 'viewability' of ads which needs to be in view for 30 secs, and then springs away. We could do a better job of making it look nicer, I agree.

ah so it's a feature :p

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