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I'm trying to Parse the following HTML pages using BeautifulSoup (I'm going to parse a bulk of pages).

I need to save all of the fields in every page, but they can change dynamically (on different pages).

here is an example of a page - Page 1 and a page with different fields order - Page 2

I've written the following code to parse the page.

import requests
from bs4 import BeautifulSoup

PTiD = 7680560

url = "http://patft.uspto.gov/netacgi/nph-Parser?Sect1=PTO1&Sect2=HITOFF&d=PALL&p=1&u=/netahtml/PTO/srchnum.htm&r=1&f=G&l=50&s1=" + str(PTiD) + ".PN.&OS=PN/" + str(PTiD) + "&RS=PN/" + str(PTiD)

res = requests.get(url, prefetch = True)

raw_html = res.content

print "Parser Started.. "

bs_html = BeautifulSoup(raw_html, "lxml")

#Initialize all the Search Lists
fonts = bs_html.find_all('font')
para = bs_html.find_all('p')
bs_text = bs_html.find_all(text=True)
onlytext = [x for x in bs_text if x != '\n' and x != ' ']

#Initialize the Indexes
AppNumIndex = onlytext.index('Appl. No.:\n')
FiledIndex = onlytext.index('Filed:\n  ')
InventorsIndex = onlytext.index('Inventors: ')
AssigneeIndex = onlytext.index('Assignee:')
ClaimsIndex = onlytext.index('Claims')
DescriptionIndex = onlytext.index(' Description')
CurrentUSClassIndex = onlytext.index('Current U.S. Class:')
CurrentIntClassIndex = onlytext.index('Current International Class: ')
PrimaryExaminerIndex = onlytext.index('Primary Examiner:')
AttorneyOrAgentIndex = onlytext.index('Attorney, Agent or Firm:')
RefByIndex = onlytext.index('[Referenced By]')

#~~Title~~
for a in fonts:
        if a.has_key('size') and a['size'] == '+1':
                d_title = a.string
print "title: " + d_title

#~~Abstract~~~
d_abstract = para[0].string
print "abstract: " + d_abstract

#~~Assignee Name~~
d_assigneeName = onlytext[AssigneeIndex +1]
print "as name: " + d_assigneeName

#~~Application number~~
d_appNum = onlytext[AppNumIndex + 1]
print "ap num: " + d_appNum

#~~Application date~~
d_appDate = onlytext[FiledIndex + 1]
print "ap date: " + d_appDate

#~~ Patent Number~~
d_PatNum = onlytext[0].split(':')[1].strip()
print "patnum: " + d_PatNum

#~~Issue Date~~
d_IssueDate = onlytext[10].strip('\n')
print "issue date: " + d_IssueDate

#~~Inventors Name~~
d_InventorsName = ''
for x in range(InventorsIndex+1, AssigneeIndex, 2):
    d_InventorsName += onlytext[x]
print "inv name: " + d_InventorsName

#~~Inventors City~~
d_InventorsCity = ''

for x in range(InventorsIndex+2, AssigneeIndex, 2):
    d_InventorsCity += onlytext[x].split(',')[0].strip().strip('(')

d_InventorsCity = d_InventorsCity.strip(',').strip().strip(')')
print "inv city: " + d_InventorsCity

#~~Inventors State~~
d_InventorsState = ''
for x in range(InventorsIndex+2, AssigneeIndex, 2):
    d_InventorsState += onlytext[x].split(',')[1].strip(')').strip() + ','

d_InventorsState = d_InventorsState.strip(',').strip()
print "inv state: " + d_InventorsState

#~~ Asignee City ~~
d_AssigneeCity = onlytext[AssigneeIndex + 2].split(',')[1].strip().strip('\n').strip(')')
print "asign city: " + d_AssigneeCity

#~~ Assignee State~~
d_AssigneeState = onlytext[AssigneeIndex + 2].split(',')[0].strip('\n').strip().strip('(')
print "asign state: " + d_AssigneeState

#~~Current US Class~~
d_CurrentUSClass = ''

for x in range (CuurentUSClassIndex + 1, CurrentIntClassIndex):
    d_CurrentUSClass += onlytext[x]
print "cur us class: " + d_CurrentUSClass

#~~ Current Int Class~~
d_CurrentIntlClass = onlytext[CurrentIntClassIndex +1]
print "cur intl class: " + d_CurrentIntlClass

#~~~Primary Examiner~~~
d_PrimaryExaminer = onlytext[PrimaryExaminerIndex +1]
print "prim ex: " + d_PrimaryExaminer

#~~d_AttorneyOrAgent~~
d_AttorneyOrAgent = onlytext[AttorneyOrAgentIndex +1]
print "agent: " + d_AttorneyOrAgent

#~~ Referenced by ~~
for x in range(RefByIndex + 2, RefByIndex + 400):
    if (('Foreign' in onlytext[x]) or ('Primary' in onlytext[x])):
        break
    else:
        d_ReferencedBy += onlytext[x]
print "ref by: " + d_ReferencedBy

#~~Claims~~
d_Claims = ''

for x in range(ClaimsIndex , DescriptionIndex):
    d_Claims += onlytext[x]
print "claims: " + d_Claims

I insert all the text from the page to a list (using BeautifulSoup's find_all(text=True)). then I try to Find The indexes of the fields Names, and go over the list from that location and save the members to a string until I reach the next field index.

When I tried the code on several different pages I've noticed that the structure of the members is changing, and I can't find their indexes in the list. for example, I search for the index of '123' and on some pages it shows in the list as '12','3'.

Can You think of any other way to parse the page that would be generic?

thanks.

share|improve this question
    
for patterns, I've update my post –  pinkdawn Jul 2 '12 at 11:48

2 Answers 2

up vote 0 down vote accepted

if you using beautifulsoup, and have dom <p>123</p> and find_all(text=True) you will have ['123']

however, if you have dom <p>12<b>3</b></p>, which have the same semantics as previous, but beautifulsoup will give you ['12','3']

maybe you could just find exactly which tag stucks you from getting complete ['123'] , and ignore / eliminate that tag first.

some fake code on how to eliminate <b> tag

import re
html='<p>12<b>3</b></p>'
reExp='<[\/\!]?b[^<>]*?>'
print re.sub(reExp,'',html)

for patterns, you could use this:

import re
patterns = '<TD align=center>(?P<VALUES_TO_FIND>.*?)<\/TD>'
print re.findall(patterns, your_html)
share|improve this answer
    
and what about patterns? if I want to find the content by searching before and after. for example, if i have the html code: <TR><TD align=center>Reissue of:</TD><TD align=center> VALUES_TO_FIND </TD><TD</TD></TR><TR><TD align=center></TD></TR></TABLE><HR> , and I know for sure that the code before and after VALUES_TO_FIND will always be the same. how can I find it using RE? thanks. –  Rgo Jul 2 '12 at 10:21
    
@Rgo I've updated the main post, for your information –  pinkdawn Jul 2 '12 at 11:47

I think the easiest solution is to use pyquery library http://packages.python.org/pyquery/api.html

you can select the elements of the page using jquery selectors.

share|improve this answer
    
PyQuery ftw. Painless rapid web scraping :D –  eMPee584 Jul 9 '13 at 18:35

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