I'm learning python requests and BeautifulSoup. For an exercise, I've chosen to write a quick NYC parking ticket parser. I am able to get an html response which is quite ugly. I need to grab the lineItemsTable and parse all the tickets.

You can reproduce the page by going here: https://paydirect.link2gov.com/NYCParking-Plate/ItemSearch and entering a NY plate T630134C

soup = BeautifulSoup(plateRequest.text)
#print soup.find_all('tr')

table = soup.find("table", { "class" : "lineItemsTable" })
for row in table.findAll("tr"):
    cells = row.findAll("td")
    print cells

Can someone please help me out? Simple looking for all tr does not get me anywhere.

  • On a closer read, I'm not actually sure what your question is. Can you clarify exactly what part you need help with?
    – TML
    Apr 30, 2014 at 0:42
  • question links-broken: Bellow a working example for a generic <table>.
    – iambr
    Jun 3, 2020 at 13:08

5 Answers 5


Here you go:

data = []
table = soup.find('table', attrs={'class':'lineItemsTable'})
table_body = table.find('tbody')

rows = table_body.find_all('tr')
for row in rows:
    cols = row.find_all('td')
    cols = [ele.text.strip() for ele in cols]
    data.append([ele for ele in cols if ele]) # Get rid of empty values

This gives you:

[ [u'1359711259', u'SRF', u'08/05/2013', u'5310 4 AVE', u'K', u'19', u'125.00', u'$'], 
  [u'7086775850', u'PAS', u'12/14/2013', u'3908 6th Ave', u'K', u'40', u'125.00', u'$'], 
  [u'7355010165', u'OMT', u'12/14/2013', u'3908 6th Ave', u'K', u'40', u'145.00', u'$'], 
  [u'4002488755', u'OMT', u'02/12/2014', u'NB 1ST AVE @ E 23RD ST', u'5', u'115.00', u'$'], 
  [u'7913806837', u'OMT', u'03/03/2014', u'5015 4th Ave', u'K', u'46', u'115.00', u'$'], 
  [u'5080015366', u'OMT', u'03/10/2014', u'EB 65TH ST @ 16TH AV E', u'7', u'50.00', u'$'], 
  [u'7208770670', u'OMT', u'04/08/2014', u'333 15th St', u'K', u'70', u'65.00', u'$'], 
  [u'$0.00\n\n\nPayment Amount:']

Couple of things to note:

  • The last row in the output above, the Payment Amount is not a part of the table but that is how the table is laid out. You can filter it out by checking if the length of the list is less than 7.
  • The last column of every row will have to be handled separately since it is an input text box.
  • 8
    i wonder why it works for you... I get rows = table_body.find_all('tr') AttributeError: 'NoneType' object has no attribute 'find_all'
    – Cmag
    Apr 30, 2014 at 0:50
  • 3
    Ok I resolved my error: In inspect view of html it shows tbody, however, when I printed the value of table = soup.find('table', attrs={'class':'analysis'}) it showed no tbody over there, so simply finding td and tr did the job. So according to me the cause of getting error AttributeError: 'NoneType' object has no attribute 'find_all' is when we pass a tag or field which is not in the html of the page. Apr 11, 2017 at 9:43
  • 2
    If you see something when you inspect the view but it is not found in the tree, try changing the parser for lxml or html5lib crummy.com/software/BeautifulSoup/bs4/doc/#parser-installation May 29, 2019 at 6:56
  • @Cmag Maybe its related to your html file structure, such as lacking of the tbody level. Just simplify the code to text table = soup.find('table', attrs={'class':'lineItemsTable'}) rows = table.find_all('tr')
    – Lebecca
    Sep 14, 2019 at 17:04
  • 1
    Beautiful Answer.
    – rjha94
    Jun 21, 2020 at 13:03

Updated Answer

If a programmer is interested in only parsing a table from a webpage, they can utilize the pandas method pandas.read_html.

Let's say we want to extract the GDP data table from the website: https://worldpopulationreview.com/countries/countries-by-gdp/#worldCountries

Then following codes does the job perfectly (No need of beautifulsoup and fancy html):

Using pandas only

# sometimes we can directly read from the website
url = "https://en.wikipedia.org/wiki/AFI%27s_100_Years...100_Movies#:~:text=%20%20%20%20Film%20%20%20,%20%204%20%2025%20more%20rows%20"
df = pd.read_html(url)

Using pandas and requests (More General Case)

# if pd.read_html does not work, we can use pd.read_html using requests.
import pandas as pd
import requests

url = "https://worldpopulationreview.com/countries/countries-by-gdp/#worldCountries"

r = requests.get(url)
df_list = pd.read_html(r.text) # this parses all the tables in webpages to a list
df = df_list[0]

Required modules

pip install lxml
pip install requests
pip install pandas


First five lines of the table from the Website

  • 5
    Agreed - this is clearly the best approach as of 2020!
    – kfmfe04
    Aug 30, 2020 at 0:16
  • 3
    Only if you already use pandas somewhere in your project. Too much dependencies for one table Sep 21, 2020 at 10:21
  • haha you copied my exampled bellow and improved the answer. Well, at least I liked to get to know that pandas has such method. Nice!
    – iambr
    Dec 4, 2020 at 14:49
  • Yeah, I used to data url of GDP from your example. Yes if you like quick methods, we can simply use pd.read_html instead of whole dancing of requests and beautifulsoup. Dec 5, 2020 at 22:39
  • 4
    Signed in just to upvote this answer. This literally saved me 100's of lines of code.
    – Rahib
    Nov 5, 2021 at 13:01

Solved, this is how your parse their html results:

table = soup.find("table", { "class" : "lineItemsTable" })
for row in table.findAll("tr"):
    cells = row.findAll("td")
    if len(cells) == 9:
        summons = cells[1].find(text=True)
        plateType = cells[2].find(text=True)
        vDate = cells[3].find(text=True)
        location = cells[4].find(text=True)
        borough = cells[5].find(text=True)
        vCode = cells[6].find(text=True)
        amount = cells[7].find(text=True)
        print amount
  • Thank you so much, it works perfect to me in a website full of JS. Mar 23, 2021 at 22:34

Here is working example for a generic <table>. (question links-broken)

Extracting the table from here countries by GDP (Gross Domestic Product).

htmltable = soup.find('table', { 'class' : 'table table-striped' })
# where the dictionary specify unique attributes for the 'table' tag

The tableDataText function parses a html segment started with tag <table> followed by multiple <tr> (table rows) and inner <td> (table data) tags. It returns a list of rows with inner columns. Accepts only one <th> (table header/data) in the first row.

def tableDataText(table):       
    rows = []
    trs = table.find_all('tr')
    headerow = [td.get_text(strip=True) for td in trs[0].find_all('th')] # header row
    if headerow: # if there is a header row include first
        trs = trs[1:]
    for tr in trs: # for every table row
        rows.append([td.get_text(strip=True) for td in tr.find_all('td')]) # data row
    return rows

Using it we get (first two rows).

list_table = tableDataText(htmltable)

  "GDP (IMF '19)",
  "GDP (UN '16)",
  'GDP Per Capita',
  '2019 Population'],
  'United States',
  '21.41 trillion',
  '18.62 trillion',

That can be easily transformed in a pandas.DataFrame for more advanced tools.

import pandas as pd
dftable = pd.DataFrame(list_table[1:], columns=list_table[0])

pandas DataFrame html table output

from behave import *
from selenium import webdriver
from selenium.webdriver.common.by import By
from selenium.webdriver.support.wait import WebDriverWait
from selenium.webdriver.support import expected_conditions as ec
import pandas as pd
import requests
from bs4 import BeautifulSoup
from tabulate import tabulate

class readTableDataFromDB: 
    def LookupValueFromColumnSingleKey(context, tablexpath, rowName, columnName):
        print("element present readData From Table")
        element = context.driver.find_elements_by_xpath(tablexpath+"/descendant::th")
        indexrow = 1
        indexcolumn = 1
        for values in element:
            valuepresent = values.text
            print("text present here::"+valuepresent+"rowName::"+rowName)
            if valuepresent.find(columnName) != -1:
                 print("current row"+str(indexrow) +"value"+valuepresent)
                 indexrow = indexrow+1    

        indexvalue = context.driver.find_elements_by_xpath(
        for valuescolumn in indexvalue:
            valuepresentcolumn = valuescolumn.text
            print("Team text present here::" +
            if valuepresentcolumn.find(rowName) != -1:
                print("current column"+str(indexcolumn) +
                indexcolumn = indexcolumn+1

        print("index column"+str(indexcolumn))
        print(tablexpath +"//descendant::tr["+str(indexcolumn)+"]/td["+str(indexrow)+"]")
        #lookupelement = context.driver.find_element_by_xpath(tablexpath +"//descendant::tr["+str(indexcolumn)+"]/td["+str(indexrow)+"]")
        return context.driver.find_elements_by_xpath(tablexpath+"//descendant::tr["+str(indexcolumn)+"]/td["+str(indexrow)+"]")

    def LookupValueFromColumnTwoKeyssss(context, tablexpath, rowName, columnName, columnName1):
        print("element present readData From Table")
        element = context.driver.find_elements_by_xpath(
        indexrow = 1
        indexcolumn = 1
        indexcolumn1 = 1
        for values in element:
            valuepresent = values.text
            print("text present here::"+valuepresent)
            indexrow = indexrow+1
            if valuepresent == columnName:
                print("current row value"+str(indexrow)+"value"+valuepresent)

        for values in element:
            valuepresent = values.text
            print("text present here::"+valuepresent)
            indexrow = indexrow+1
            if valuepresent.find(columnName1) != -1:
                print("current row value"+str(indexrow)+"value"+valuepresent)

        indexvalue = context.driver.find_elements_by_xpath(
        for valuescolumn in indexvalue:
            valuepresentcolumn = valuescolumn.text
            print("Team text present here::"+valuepresentcolumn)
            indexcolumn = indexcolumn+1
            if valuepresent.find(rowName) != -1:
                print("current column"+str(indexcolumn) +
        print("index column"+str(indexcolumn))
        lookupelement = context.driver.find_element_by_xpath(
        print(tablexpath +
        return context.driver.find_element_by_xpath(tablexpath+"//descendant::tr["+str(indexrow)+"]/td["+str(indexcolumn)+"]")

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