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I have a piece of code that queries a server that returns a big json object(elasticsearch, BTW), It takes a lot of time to read the results. parsing the json object is very fast.

tic = time.time()
req_resp = urllib2.urlopen(req, timeout = 60)
toc=time.time()
a = toc-tic

tic = time.time()
json_str = req_resp.read()
toc=time.time()
b = toc-tic

tic = time.time()
resp = json.loads(json_str)
toc=time.time()
c = toc-tic

print 'Fetch %.1f Process %.1f, load Json %.1f' %(a,b,c)

Output:

Fetch 0.5 Process 3.5, load Json 0.0

It seems strange that this takes so much time, while loading the json is fast. What am I doing wrong? any way to do this faster?

FYI this is a query for 1000 documents in elasticsearch, returning a few string fields which are several words long.

I am using python 2.7

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2  
That's not strange at all. It shows that network (and server processing) are the bottleneck, which is to be expected. – korylprince Jun 9 '13 at 9:28
    
Why don't you just query elastic search database directly? I'm not familiar with elastic search but I doubt that it runs via HTTP server? – nacholibre Jun 9 '13 at 9:32
    
Do you run this query only once or many times? – Glaslos Jun 9 '13 at 10:08
1  
@eran no that is incorrect. The body is transferred in the read. I am not sure exactly what all goes in the urlopen, but I believe it is only the request. – korylprince Jun 9 '13 at 13:27
1  
Last follow up. Doing print inspect.getsource(req_resp.read) you can see any response that is buffered is given, then socket.recv is used for the rest, basically confirming my previous comment. – korylprince Jun 9 '13 at 14:49

The socket module relies on _socket which is written in C++ (I think?). Presumably there is an overhead transferring large amounts of data between C++ and Python. I also get an oddly large overhead with .read() thou I have not tried it with huge data sets so it wasn't bigger than the fetch time. I'm not sure there is any thing you can do apart from switching to a different language. I will do some more testing and get back to you if I find any thing else.

share|improve this answer
    
Thanks, it'd be much appreciated – eran Jun 9 '13 at 12:43

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