Budget: 700 UAH Deadline: 1 day
Good day.
Ready to take on. Write in private, we will discuss the details.
Budget: 1000 UAH Deadline: 2 days
Good day.
I have repeatedly performed such tasks
https://freelancehunt.com/showcase/work/prom-ua/1879741.html
There is also a ready database of PROM for April, containing 30k sites.
If needed, I can parse for you companies located in a specific product section on Prom.ua or companies based on a search query for certain products.
Please contact me privately to clarify details.
Fields that will be in the output file:
Company ID Name Website Email extra Email Name Address Phones City Region Registration Date Company Age Was on site Parsing Date Number of orders Number of reviews Positive percentage Categories in which the company sells Category from which parsing was conducted
Budget: 700 UAH Deadline: 1 day
Hello!
I am a professional Python developer with extensive experience in automation, parsing, creating bots, and web tools.
I have completed over 500 projects — from simple competitor price parsers to complex systems that collect millions of products from Amazon, bypass Cloudflare, CAPTCHAs, IP blocks, and authorizations.
I have worked with sites such as:
- Amazon
- Instagram
- Facebook
- Google
- Twitter
- LinkedIn
- Walmart
and many others.
Technologies I work with:
- Python
- Requests
- BeautifulSoup
- Selenium
- Playwright
- Scrapy
- Undetected Chromedriver
- IP rotation
- Django + PostgreSQL.
For large projects, I create admin panels and databases for convenient management of collected data.
I also have my own lead database with emails, phones, and social media accounts, which can help accelerate your marketing or sales.
I am ready to show a test example before starting work so you can evaluate the quality. Write to me, tell me about your task — and we will find the best solution for your business.
Budget: 1000 UAH Deadline: 1 day
Good afternoon, Oleg! I am ready to do this work for you. Feel free to contact me!
Budget: 700 UAH Deadline: 2 days
Good day!
I can implement parsing of stores on Prom.ua based on specified criteria — the output will be a list of links, as well as contacts (if available on the page).
Please provide details: which specific criteria, output format (Excel, CSV, txt), and the desired deadline.
I am ready to start soon.
Oleg N.
Winning proposal- Projects 53
- Rating 5.0
- Rating 1 867
Budget: 700 UAH Deadline: 1 day
Hello! Ready to complete your task, I have experience with similar problems.
Budget: 700 UAH Deadline: 1 day
Hello!
I am interested in your project and 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 various complexities (Telethon, Pyrogram, Aiogram).
I have a personal parser for Prom, I will do it quickly and efficiently!
Contact me to discuss the details and deadlines for this project!
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