Hello,

I tried the configuration you mentioned, but it doesn't seem to work. Still, 
thank you for your response! 















At 2025-05-13 17:54:03, "Sharath" <dsaishar...@gmail.com> wrote:
>Hello,
>
>Have you tried enabling the buffer debloating feature to improve checkpoint
>times? Refer taskmanager.network.memory.buffer-debloat.enabled in
>https://nightlies.apache.org/flink/flink-docs-master/docs/deployment/config/
>
>Regards,
>Sharath
>
>On Tue, May 13, 2025 at 1:59 AM 张河川 <milesian...@163.com> wrote:
>
>> Hi Flink community,
>>
>> I’m encountering an issue with PyFlink where a FlatMap operator invokes an
>> external service (using a PyTorch model to generate embedding vectors). The
>> operator processes data very slowly, leading to an extremely long initial
>> checkpoint start delay, which eventually causes checkpoint failures.The
>> external service has strict concurrency limits and cannot handle increased
>> parallel requests,increasing the parallelism of the operator did not
>> improve performance due to this bottleneck.
>>
>> Besides, when I use flink1.20.0, the operator processing speed seems to be
>> faster than that of flink2.0.0.
>>
>> Does anyone have any clue?
>>
>> Thank you for your insights!

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