I was looking to find a way to optimize my code when I heard some good things about threads and urllib3. Apparently, people disagree which solution is the best.
The problem with my script below is the execution time: so slow!
Step 1: I fetch this page http://www.cambridgeesol.org/institutions/results.php?region=Afghanistan&type=&BULATS=on
Step 2: I parse the page with BeautifulSoup
Step 3: I put the data in an excel doc
Step 4: I do it again, and again, and again for all the countries in my list (big list) (I am just changing "Afghanistan" in the url to another country)
Here is my code:
ws = wb.add_sheet("BULATS_IA") #We add a new tab in the excel doc
x = 0 # We need x and y for pulling the data into the excel doc
y = 0
Countries_List = ['Afghanistan','Albania','Andorra','Argentina','Armenia','Australia','Austria','Azerbaijan','Bahrain','Bangladesh','Belgium','Belize','Bolivia','Bosnia and Herzegovina','Brazil','Brunei Darussalam','Bulgaria','Cameroon','Canada','Central African Republic','Chile','China','Colombia','Costa Rica','Croatia','Cuba','Cyprus','Czech Republic','Denmark','Dominican Republic','Ecuador','Egypt','Eritrea','Estonia','Ethiopia','Faroe Islands','Fiji','Finland','France','French Polynesia','Georgia','Germany','Gibraltar','Greece','Grenada','Hong Kong','Hungary','Iceland','India','Indonesia','Iran','Iraq','Ireland','Israel','Italy','Jamaica','Japan','Jordan','Kazakhstan','Kenya','Kuwait','Latvia','Lebanon','Libya','Liechtenstein','Lithuania','Luxembourg','Macau','Macedonia','Malaysia','Maldives','Malta','Mexico','Monaco','Montenegro','Morocco','Mozambique','Myanmar (Burma)','Nepal','Netherlands','New Caledonia','New Zealand','Nigeria','Norway','Oman','Pakistan','Palestine','Papua New Guinea','Paraguay','Peru','Philippines','Poland','Portugal','Qatar','Romania','Russia','Saudi Arabia','Serbia','Singapore','Slovakia','Slovenia','South Africa','South Korea','Spain','Sri Lanka','Sweden','Switzerland','Syria','Taiwan','Thailand','Trinadad and Tobago','Tunisia','Turkey','Ukraine','United Arab Emirates','United Kingdom','United States','Uruguay','Uzbekistan','Venezuela','Vietnam']
Longueur = len(Countries_List)
for Countries in Countries_List:
y = 0
htmlSource = urllib.urlopen("http://www.cambridgeesol.org/institutions/results.php?region=%s&type=&BULATS=on" % (Countries)).read() # I am opening the page with the name of the correspondant country in the url
s = soup(htmlSource)
tableGood = s.findAll('table')
try:
rows = tableGood[3].findAll('tr')
for tr in rows:
cols = tr.findAll('td')
y = 0
x = x + 1
for td in cols:
hum = td.text
ws.write(x,y,hum)
y = y + 1
wb.save("%s.xls" % name_excel)
except (IndexError):
pass
So I know that all is not perfect but I am looking forward to learn new things in Python ! The script is very slow because urllib2 is not that fast, and BeautifulSoup. For the soup thing, I guess I can't really make it better, but for urllib2, I don't.
EDIT 1 : Multiprocessing useless with urllib2? Seems to be interesting in my case. What do you guys think about this potential solution ?!
# Make sure that the queue is thread-safe!!
def producer(self):
# Only need one producer, although you could have multiple
with fh = open('urllist.txt', 'r'):
for line in fh:
self.queue.enqueue(line.strip())
def consumer(self):
# Fire up N of these babies for some speed
while True:
url = self.queue.dequeue()
dh = urllib2.urlopen(url)
with fh = open('/dev/null', 'w'): # gotta put it somewhere
fh.write(dh.read())
EDIT 2: URLLIB3 Can anyone tell me more things about that ?
Re-use the same socket connection for multiple requests (HTTPConnectionPool and HTTPSConnectionPool) (with optional client-side certificate verification). https://github.com/shazow/urllib3
As far as I am requesting 122 times the same website for different pages, I guess reusing the same socket connection can be interesting, am I wrong ? Cant it be faster ? ...
http = urllib3.PoolManager()
r = http.request('GET', 'http://www.bulats.org')
for Pages in Pages_List:
r = http.request('GET', 'http://www.bulats.org/agents/find-an-agent?field_continent_tid=All&field_country_tid=All&page=%s' % (Pages))
s = soup(r.data)