Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

Web scraping using python #2090

Merged
merged 1 commit into from
Oct 3, 2022
Merged
Changes from all commits
Commits
File filter

Filter by extension

Filter by extension

Conversations
Failed to load comments.
Loading
Jump to
Jump to file
Failed to load files.
Loading
Diff view
Diff view
Original file line number Diff line number Diff line change
@@ -0,0 +1,152 @@
# import required modules
import json
import requests
from datetime import datetime
from urllib.parse import urlparse
from bs4 import BeautifulSoup
from beautifultable import BeautifulTable



def load_json(database_json_file="scraped_data.json"):
"""
This function will load json data from scraped_data.json file if it exist else crean an empty array
"""
try:
with open(database_json_file, "r") as read_it:
all_data_base = json.loads(read_it.read())
return all_data_base
except:
all_data_base = dict()
return all_data_base


def save_scraped_data_in_json(data, database_json_file="scraped_data.json"):
"""
This function Save the scraped data in json format. scraped_data.json file if it exist else create it.
if file already exist you can view previous scraped data
"""
file_obj = open(database_json_file, "w")
file_obj.write(json.dumps(data))
file_obj.close()


def existing_scraped_data_init(json_db):
"""
This function init data from json file if it exist have data else create an empty one
"""
scraped_data = json_db.get("scraped_data")
if scraped_data is None:
json_db['scraped_data'] = dict()

return None


def scraped_time_is():
"""
This function create time stamp for keep our book issue record trackable
"""
now = datetime.now()
dt_string = now.strftime("%d/%m/%Y %H:%M:%S")
return dt_string

def process_url_request(website_url):
"""
This function process provided URL get its data using requets module
and contrunct soup data using BeautifulSoup for scarping
"""
requets_data = requests.get(website_url)
if requets_data.status_code == 200:
soup = BeautifulSoup(requets_data.text,'html')
return soup
return None

def proccess_beautiful_soup_data(soup):
return {
'title': soup.find('title').text,
'all_anchor_href': [i['href'] for i in soup.find_all('a', href=True)],
'all_anchors': [str(i) for i in soup.find_all('a')],
'all_images_data': [ str(i) for i in soup.find_all('img')],
'all_images_source_data': [ i['src'] for i in soup.find_all('img')],
'all_h1_data': [i.text for i in soup.find_all('h1')],
'all_h2_data': [i.text for i in soup.find_all('h2')],
'all_h3_data': [i.text for i in soup.find_all('h3')],
'all_p_data': [i.text for i in soup.find_all('p')]
}



# Here I used infinite loop because i don't want to run it again and again.
while True:

print(""" ================ Welcome to this scraping program =============
==>> press 1 for checking existing scraped websites
==>> press 2 for scrap a single website
==>> press 3 for exit
""")

choice = int(input("==>> Please enter your choice :"))

# Load json function called for fetching/creating data from json file.
local_json_db = load_json()
existing_scraped_data_init(local_json_db)

if choice == 1:
# I used Beautiful table for presenting scraped data in a good way !!
# you guys can read more about from this link https://beautifultable.readthedocs.io/en/latest/index.html
scraped_websites_table = BeautifulTable()
scraped_websites_table.columns.header = ["Sr no.", "Allias name ", "Website domain", "title", "Scraped at", "Status"]
scraped_websites_table.set_style(BeautifulTable.STYLE_BOX_DOUBLED)


local_json_db = load_json()
for count, data in enumerate(local_json_db['scraped_data']):
scraped_websites_table.rows.append([count + 1,
local_json_db['scraped_data'][data]['alias'],
local_json_db['scraped_data'][data]['domain'],
local_json_db['scraped_data'][data]['title'],
local_json_db['scraped_data'][data]['scraped_at'],
local_json_db['scraped_data'][data]['status']])
# all_scraped_websites = [websites['name'] for websites in local_json_db['scraped_data']]
if not local_json_db['scraped_data']:
print('===> No existing data found !!!')
print(scraped_websites_table)

elif choice == 2:
print()
url_for_scrap = input("===> Please enter url you want to scrap:")
is_accessable = process_url_request(url_for_scrap)
if is_accessable:
scraped_data_packet = proccess_beautiful_soup_data(is_accessable)
print()
print(' =====> Data scraped successfully !!!')
key_for_storing_data = input("enter alias name for saving scraped data :")
scraped_data_packet['url'] = url_for_scrap
scraped_data_packet['name'] = key_for_storing_data
scraped_data_packet['scraped_at'] = scraped_time_is()
if key_for_storing_data in local_json_db['scraped_data']:
key_for_storing_data = key_for_storing_data + str(scraped_time_is())
print("Provided key is already exist so data stored as : {}".format(key_for_storing_data))
scraped_data_packet['alias'] = key_for_storing_data
scraped_data_packet['status'] = True
scraped_data_packet['domain'] = urlparse(url_for_scrap).netloc

local_json_db['scraped_data'][key_for_storing_data] = scraped_data_packet
print(
'scraped data is:', local_json_db['scraped_data'][key_for_storing_data]
)
save_scraped_data_in_json(local_json_db)
# load data
local_json_db = load_json()
print(' =====> Data saved successfully !!!')
print()
elif choice == 3:
print('Thank you for using !!!')
break

elif choice == 4:
print('Thank you for using !!!')
break

else:
print("enter a valid choice ")