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https://issues.apache.org/jira/browse/FLINK-12852?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=16879607#comment-16879607
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Yun Gao commented on FLINK-12852:
---------------------------------

Very thanks [~StephanEwen] for the detailed comparison of the different 
options. I also agree with that ATM option (4) should be the one method with 
the least modification. For option (4), we might also need to give users 
explicit guideline on the semantic changes of the buffer size. 

On the other side, I still think that the core/max semantics of the local 
buffer pool might be more flexible, and might have performance gain for cases 
like the ability of the downstream tasks is not stable. The core/max semantics 
might still be an option if other conditions are satisfied in the more longer 
future. 

At last, in considering of the advantages and disadvantages of the current 
options, and the publish timeline of 1.9, now do we still plan to have this 
issue fixed (to some extend) with some method in 1.9.0 ?

> Deadlock occurs when requiring exclusive buffer for RemoteInputChannel
> ----------------------------------------------------------------------
>
>                 Key: FLINK-12852
>                 URL: https://issues.apache.org/jira/browse/FLINK-12852
>             Project: Flink
>          Issue Type: Bug
>          Components: Runtime / Network
>    Affects Versions: 1.7.2, 1.8.1, 1.9.0
>            Reporter: Yun Gao
>            Assignee: Yun Gao
>            Priority: Blocker
>              Labels: pull-request-available
>             Fix For: 1.9.0
>
>          Time Spent: 10m
>  Remaining Estimate: 0h
>
> When running tests with an upstream vertex and downstream vertex, deadlock 
> occurs when submitting the job:
> {code:java}
> "Sink: Unnamed (3/500)" #136 prio=5 os_prio=0 tid=0x00007f2cca81b000 
> nid=0x38845 waiting on condition [0x00007f2cbe9fe000]
> java.lang.Thread.State: TIMED_WAITING (parking)
> at sun.misc.Unsafe.park(Native Method)
> - parking to wait for <0x000000073ed6b6f0> (a 
> java.util.concurrent.locks.AbstractQueuedSynchronizer$ConditionObject)
> at java.util.concurrent.locks.LockSupport.parkNanos(LockSupport.java:233)
> at 
> java.util.concurrent.locks.AbstractQueuedSynchronizer$ConditionObject.awaitNanos(AbstractQueuedSynchronizer.java:2078)
> at java.util.concurrent.ArrayBlockingQueue.poll(ArrayBlockingQueue.java:418)
> at 
> org.apache.flink.runtime.io.network.buffer.NetworkBufferPool.requestMemorySegments(NetworkBufferPool.java:180)
> at 
> org.apache.flink.runtime.io.network.buffer.NetworkBufferPool.requestMemorySegments(NetworkBufferPool.java:54)
> at 
> org.apache.flink.runtime.io.network.partition.consumer.RemoteInputChannel.assignExclusiveSegments(RemoteInputChannel.java:139)
> at 
> org.apache.flink.runtime.io.network.partition.consumer.SingleInputGate.assignExclusiveSegments(SingleInputGate.java:312)
> - locked <0x000000073fbc81f0> (a java.lang.Object)
> at 
> org.apache.flink.runtime.io.network.partition.consumer.SingleInputGate.setup(SingleInputGate.java:220)
> at 
> org.apache.flink.runtime.taskmanager.Task.setupPartionsAndGates(Task.java:836)
> at org.apache.flink.runtime.taskmanager.Task.run(Task.java:598)
> at java.lang.Thread.run(Thread.java:834)
> {code}
> This is due to the required and max of local buffer pool is not the same and 
> there may be over-allocation, when assignExclusiveSegments there are no 
> available memory.
>  
> The detail of the scenarios is as follows: The parallelism of both upstream 
> vertex and downstream vertex are 1500 and 500 respectively. There are 200 TM 
> and each TM has 10696 buffers( in total and has 10 slots. For a TM that runs 
> 9 upstream tasks and 1 downstream task, the 9 upstream tasks start first with 
> local buffer pool \{required = 500, max = 2 * 500 + 8 = 1008}, it produces 
> data quickly and each occupy about 990 buffers. Then the DownStream task 
> starts and try to assigning exclusive buffers for 1500 -9 = 1491 
> InputChannels. It requires 2981 buffers but only 1786 left. Since not all 
> downstream tasks can start, the job will be blocked finally and no buffer can 
> be released, and the deadlock finally occurred.
>  
> I think although increasing the network memory solves the problem, the 
> deadlock may not be acceptable.  Fined grained resource management  
> Flink-12761 can solve this problem, but AFAIK in 1.9 it will not include the 
> network memory into the ResourceProfile.



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