compete_jobs/common_task.py

136 lines
6.0 KiB
Python
Raw Normal View History

2023-10-12 20:03:40 +00:00
import pandas as pd
import boto3
from datetime import datetime
import glob
from naukri.search_india import NaukriJobScraper
from naukri.jobdata_india import NaukriJobDetailScraper
2023-10-13 15:55:22 +00:00
# from naukri.search_gulf_r import
2023-10-12 20:03:40 +00:00
import time
import os
def upload_file_to_bucket(localFilePath, localFileName):
s3 = boto3.client('s3')
bucket_name = 'compete-syndication'
file_path = localFilePath
s3_key = f'naukri/{localFileName}'
s3.upload_file(file_path, bucket_name, s3_key)
print(f'File "{file_path}" uploaded to S3 bucket "{bucket_name}" as "{s3_key}"')
def read_s3_file(filenameInS3):
aws_access_key_id = 'AKIAWWHGITBE7XFXWA7U'
aws_secret_access_key = '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'
# bucket_name =
# file_key = 'naukri/test_data.csv'
# file_key = f'naukri/{filenameInS3}'
s3_bucket = 'compete-syndication'
s3_file_key = f'naukri/{filenameInS3}'
session = boto3.Session(
aws_access_key_id=aws_access_key_id,
aws_secret_access_key=aws_secret_access_key
)
s3_client = session.client('s3')
s3_object = s3_client.get_object(Bucket=s3_bucket, Key=s3_file_key)
df = pd.read_csv(s3_object['Body'])
print(df)
# file_content = response['Body'].read()
# # Print or process the file contents
# print(file_content.decode('utf-8')) # Assumes the file is text; adjust accordingly
def do_the_difference(today_file, last_file, column_for_diff, fresh_output, expired_output, common_output):
today_df = pd.read_csv(today_file)
last_file_df = pd.read_csv(last_file)
print(today_df.shape, last_file_df.shape)
today_df.drop_duplicates(subset=[column_for_diff], keep='first', inplace=True)
# today_df.to_csv('unique Compete_1_09-10-2023.csv', index=False)
last_file_df.drop_duplicates(subset=[column_for_diff], keep='first', inplace=True)
# last_file_df.to_csv('unique Compete_1_29-09-2023.csv', index=False)
print(today_df.shape, last_file_df.shape)
new_df = pd.merge(today_df, last_file_df, on=column_for_diff, how='left', indicator=True, suffixes=('', '_ignored')).query('_merge == "left_only"').drop(['_merge'], axis=1)
new_df.to_csv(fresh_output, index=False)
expired_df = pd.merge(last_file_df, today_df, on=column_for_diff, how='left', indicator=True, suffixes=('', '_ignored')).query('_merge == "left_only"').drop(['_merge'], axis=1)
expired_df.to_csv(expired_output, index=False)
print(new_df.shape, expired_df.shape)
common_df = pd.merge(today_df, last_file_df, on=column_for_diff, how='inner')
print(common_df.shape)
common_df.to_csv(common_output, index=False)
def extract_date_from_filename(filename):
date_str = filename.split("_")[-1].replace(".csv", "")
return datetime.strptime(date_str, "%d-%m-%Y")
def find_second_latest_file(folder_path, search_pattern):
files = glob.glob(os.path.join(folder_path, search_pattern))
files.sort(key=extract_date_from_filename, reverse=True)
if len(files) >= 2:
second_latest_file = files[1]
print("Second latest file:", second_latest_file)
return second_latest_file
else:
print("There are not enough files in the folder to find the second latest file.")
return None
def run_india_scraper():
current_date = datetime.now()
today_date = current_date.strftime('%d-%m-%Y')
india_search_input_file = "naukri/_industry_urls.csv"
india_search_output_file = f"india_data/daily_search_results/search_result_india_{today_date}.csv"
india_search_error_file = f"india_data/daily_error_folder/search_error_india_{today_date}.csv"
2023-10-14 05:39:35 +00:00
# india_search_stats_file = f"india_data/daily_stats_folder/stats_india_search_{today_date}.txt"
# start_time = time.time()
# scraper = NaukriJobScraper(india_search_input_file, india_search_output_file, india_search_error_file)
# scraper.scrape()
# end_time = time.time()
# duration_hours = (end_time - start_time) / 3600
# print(f"Search program took {duration_hours:.2f} hours to run.")
# with open(india_search_stats_file, "a") as stat:
# stat.write(f"Search program took {duration_hours:.2f} hours to run. \n")
# folder_path = "india_data/daily_search_results/"
# search_pattern = "search_result_india_*.csv"
# last_file = find_second_latest_file(folder_path, search_pattern)
# fresh_output = f"india_data/daily_process_folder/new_jobs_on_{today_date}.csv"
2023-10-12 20:03:40 +00:00
expired_output = f"india_data/daily_upload_folder/expired_Compete_1_India_{today_date}.csv"
2023-10-14 05:39:35 +00:00
# common_output = f"india_data/daily_common_folder/common_data_on_{today_date}.csv"
# do_the_difference(india_search_output_file, last_file, 'jdURL',
# fresh_output, expired_output, common_output)
2023-10-12 20:03:40 +00:00
india_detail_file = f"india_data/daily_upload_folder/Compete_1_India_{today_date}.csv"
2023-10-14 05:39:35 +00:00
# india_detail_error_file = f"india_data/daily_error_folder/error_on_India_detail_{today_date}.txt"
# start_time = time.time()
# scraper = NaukriJobDetailScraper(fresh_output, india_detail_file, india_detail_error_file)
# scraper.scrape()
# end_time = time.time()
# duration_hours = (end_time - start_time) / 3600
# print(f"Jobdata program took {duration_hours:.2f} hours to run.")
# with open(f'india_data/daily_stats_folder/stats_file_of_{today_date}.txt', "a") as stat:
# stat.write(f"Jobdata program took {duration_hours:.2f} hours to run.\n")
2023-10-14 06:09:39 +00:00
# upload_file_to_bucket(expired_output, f"expired_Compete_1_India_{today_date}.csv" )
# upload_file_to_bucket(india_detail_file, f"Compete_1_India_{today_date}.csv" )
2023-10-14 06:16:35 +00:00
upload_file_to_bucket("india_data/daily_upload_folder/Compete_1_India_13-10-2023.csv", f"Compete_1_India_{today_date}.csv" )
2023-10-12 20:03:40 +00:00
def run_gulf_scraper():
2023-10-13 15:55:22 +00:00
2023-10-12 20:03:40 +00:00
pass
if __name__ == "__main__":
print("Choose which function to run:")
print("1 for India Scraper")
print("2 for Gulf scraper")
choice = input("Enter your choice (1 or 2): ")
if choice == "1":
run_india_scraper()
elif choice == "2":
run_gulf_scraper()
else:
print("Invalid choice. Please enter 1 or 2.")