yaooqinn opened a new pull request #33636:
URL: https://github.com/apache/spark/pull/33636


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   ### What changes were proposed in this pull request?
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   This reverts SPARK-31475, as there are always more concurrent jobs running 
in AQE mode, especially when running multiple queries at the same time. 
Currently, the broadcast timeout does not record accurately for the 
BroadcastQueryStageExec only but also the time waiting for being scheduled. If 
all the resources are currently being occupied for materializing other stages, 
it timeouts without a chance to run actually.
   
    
   
   
   
![image](https://user-images.githubusercontent.com/8326978/128169612-4c96c8f6-6f8e-48ed-8eaf-450f87982c3b.png)
   
    
   
   The default value is 300s, and it's hard to adjust the timeout for AQE mode. 
Usually, you need an extremely large number for real-world cases. As you can 
see in the example, above, the timeout we used for it is 1800s, and obviously, 
it needs 3x more or something
   
    
   
   ### Why are the changes needed?
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   AQE is default now, we can make it more stable with this PR
   
   ### Does this PR introduce _any_ user-facing change?
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   yes, broadcast timeout now is not used for AQE
   
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   modified test


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