Budget: 2000 UAH Deadline: 1 day
Hello!
I am interested in your project, I have extensive experience in automating/emulating user actions (JavaScript, Selenium, Playwright), asynchronous/multithreaded parsing (Requests, WebSockets, HTTPX, BS4), data processing (Openpyxl, JSON, MySQL, MongoDB), and developing Telegram bots of varying complexity (Telethon, Pyrogram, Aiogram).
Contact me to discuss the details and deadlines for this project!
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- Rating 282
Budget: 2000 UAH Deadline: 2 days
😄 Hello,
Undoubtedly, after reviewing your job description, I see that your project is primarily related to web scraping, data cleaning, and exporting them. As an experienced developer in this field, I am confident in my ability to complete this task without any issues.
I have used Python and the BeautifulSoup library for parsing HTML. It is great for navigating, searching, and modifying the parse tree. To automate script execution, I have used the built-in Python sched module for task scheduling, similar to cron jobs.
Additionally, for sending HTTP requests and receiving responses, I have used the requests module, and to bypass Cloudflare protection and similar services, I worked with cfscrape.
Regarding websites that render content using JavaScript, I have used Selenium WebDriver along with PhantomJS, which allowed me to simulate user behavior in the browser and obtain dynamic content, and to bypass Cloudflare protection and similar services, I worked with undetected_chromedriver.
🕒 I am open to both part-time and full-time employment, and I am flexible regarding time zones. I am confident that I can deliver quality execution of your project, and I guarantee that you will not be disappointed with our collaboration.
I look forward to further discussion. Thank you for considering my proposal!
Budget: 2000 UAH Deadline: 3 days
Good afternoon. I have experience parsing complex portals protected by Cloudflare. I can easily parse it into a table; is there a requirement for the structure or can I do it at my discretion?
Budget: 2000 UAH Deadline: 3 days
Good day, it doesn't seem very complicated. I am ready to take on the work. I will complete everything quickly.
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- Rating 358
Budget: 2000 UAH Deadline: 2 days
Good day, I am interested in this project, I have experience in web scraping, I have collected large data sets for Prom and other websites. I would be happy to collaborate.
Budget: 1900 UAH Deadline: 1 day
Has experience in parsing with Python using libraries such as requests, selenium, BS4, etc.
I will save the obtained data in a format convenient for you.
Write to me, we will discuss the details.
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- Rating 376
Budget: 1900 UAH Deadline: 1 day
I have experience in similar projects. Over 500 completed spiders using Python 3, Scrapy, and BeautifulSoup.
Dmitro Karpov
Winning proposal- Projects 12
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- Rating 376
Budget: 1500 UAH Deadline: 21 days
Good day!
I offer my services.
If you need contact details of businesses and you have a paid account, I can scrape the information for you. Right now, I am working on another task on the same site. We can discuss the details in private messages.
Feel free to reach out, I would be happy to collaborate!
Budget: 1950 UAH Deadline: 1 day
Hello! I am ready to complete your task of parsing contacts from the tripoli website, I will provide a result file in excel format with all fields and the necessary structure.
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