I have the following function which is being executed by 100 greenlets in parallel.

def func(a):
  arg = RpcArg(a=a)
  start = time.time()
  ret = rpc_client.Rpc(arg)
  finish = time.time()
  return (finish - start)

The Rpc is a remote procedure call to the server. The aim is to calculate the time taken by the server to process the Rpc. The requests are being fired in parallel using greenlets using the following code snippet:

def timer():
  threads = []
  for i in xrange(100):
    threads.append(gevent.spawn(func, a))
  gevent.joinall(threads)

The server can execute atmost 5 requests in parallel. The time taken by the Rpc call as seen on the server is significantly different from what is being reported by the above script.

According to me, the issue is because of greenlet switches happening after calling rpc_client.Rpc(arg) which is blocking operation until the server returns a value. The greenlet after being switched out of context will come back into action when other the server returns the response and when it gets backs a chance to run again. So, the overheads by other greenlets also get added before finish time is being calculated.

So, what is the correct way to find the correct execution time taken by some part or full function which runs in a greenlet?

I went through this post as well: Why the amount of greenlets will impact the elapsed time of the responses

  • Any help on this? – likecs Dec 7 at 2:14

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