pythonhttptimeoutconnection-poolingmax-size

http request with timeout, maximum size and connection pooling


I'm looking for a way in Python (2.7) to do HTTP requests with 3 requirements:

I've checked quite every python HTTP librairies, but none of them meet my requirements. For instance:

urllib2: good, but no pooling

import urllib2
import json

r = urllib2.urlopen('https://github.com/timeline.json', timeout=5)
content = r.read(100+1)
if len(content) > 100: 
    print 'too large'
    r.close()
else:
    print json.loads(content)

r = urllib2.urlopen('https://github.com/timeline.json', timeout=5)
content = r.read(100000+1)
if len(content) > 100000: 
    print 'too large'
    r.close()
else:
    print json.loads(content)

requests: no max size

import requests
r = requests.get('https://github.com/timeline.json', timeout=5, stream=True)
r.headers['content-length'] # does not exists for this request, and not safe
content = r.raw.read(100000+1)
print content # ARF this is gzipped, so not the real size
print json.loads(content) # content is gzipped so pretty useless
print r.json() # Does not work anymore since raw.read was used

urllib3: never got the "read" method working, even with a 50Mo file ...

httplib: httplib.HTTPConnection is not a pool (only one connection)

I can hardly belive that urllib2 is the best HTTP library I can use ! So if anyone knows what librairy can do this or how to use one of the previous librairy ...


Solution

  • You can do it with requests just fine; but you need to know that the raw object is part of the urllib3 guts and make use of the extra arguments the HTTPResponse.read() call supports, which lets you specify you want to read decoded data:

    import requests
    r = requests.get('https://github.com/timeline.json', timeout=5, stream=True)
    
    content = r.raw.read(100000+1, decode_content=True)
    if len(content) > 100000:
        raise ValueError('Too large a response')
    print content
    print json.loads(content)
    

    Alternatively, you can set the decode_content flag on the raw object before reading:

    import requests
    r = requests.get('https://github.com/timeline.json', timeout=5, stream=True)
    
    r.raw.decode_content = True
    content = r.raw.read(100000+1)
    if len(content) > 100000:
        raise ValueError('Too large a response')
    print content
    print json.loads(content)
    

    If you don't like reaching into urllib3 guts like that, use the response.iter_content() to iterate over the decoded content in chunks; this uses the underlying HTTPResponse too (using the .stream() generator version:

    import requests
    
    r = requests.get('https://github.com/timeline.json', timeout=5, stream=True)
    
    maxsize = 100000
    content = ''
    for chunk in r.iter_content(2048):
        content += chunk
        if len(content) > maxsize:
            r.close()
            raise ValueError('Response too large')
    
    print content
    print json.loads(content)
    

    There is of subtle difference here in how compressed data sizes are handled here; r.raw.read(100000+1) will only ever read 100k bytes of compressed data; the uncompressed data is tested against your max size. The iter_content() method will read more uncompressed data in the rare case the compressed stream is larger than the uncompressed data.

    Neither method allows r.json() to work; the response._content attribute isn't set by these; you can do so manually of course. But since the .raw.read() and .iter_content() calls already give you access to the content in question, there is really no need.