Budget: 600 UAH Deadline: 1 day
Good evening
what to say)))
let's parse Instagram, there are a lot of them
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A database of practicing cosmetologists is required in the cities: Uzhhorod, Ternopil, Lutsk, Ivano-Frankivsk, Cherkasy.
Format of delivery - Excel table.
Required information:
First Name, Last Name
Contact phone
Link to Instagram
Budget: 600 UAH Deadline: 1 day
Good evening
what to say)))
let's parse Instagram, there are a lot of them
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Budget: 2000 UAH Deadline: 2 days
Good day!
I have extensive experience in both manual and automated data collection and processing of various kinds. You can view examples of completed projects and feedback on them in my profile, more in private messages.
Examples of completed projects:
https://freelancehunt.com/project/rozsilka-rezyume-na-indeed/1403537.html
https://freelancehunt.com/project/poshuk-blogeriv-pid-reklamu/1357178.html
https://freelancehunt.com/project/znayti-grupi-kanali-na-ryiznyi-tematiki/1341176.html
Available for work, ready to start immediately after discussing the details of cooperation.
Budget: 1000 UAH Deadline: 1 day
I can extract according to the KVED from a site like YouControl Market, all contacts will be available from the EDR database for individual entrepreneurs or legal entities, and additionally from tenders if available.
Budget: 500 UAH Deadline: 1 day
I can provide a couple of hundred pieces, but without Instagram. City, full name, and phone number.
Budget: 2000 UAH Deadline: 3 days
Hello!
I will gather a fresh quality database for you.
I work quickly and efficiently!
1 contact 15 UAH
Feel free to reach out!
Budget: 1000 UAH Deadline: 2 days
Good day, my name is Bohdan, and I would like to work on your project. I am ready to discuss the details and start the task.
Budget: 1000 UAH Deadline: 1 day
Good evening
I am interested in your project.
I would like to discuss everything in more detail.
Budget: 8000 UAH Deadline: 2 days
Good day. Ready to execute.
I have extensive experience in creating parsers.
I write in Python, I am ranked 3rd on the platform.
I will create a parser that will collect data on practicing cosmetologists in the required cities.
You will receive all the information in an Excel table (numbers, surnames, phones, and links to social networks).
My portfolio: Freelancehunt
Write to me, we will discuss the details and I will get to work.
Set up automatic daily updates of product availability on our website on prom.ua. We have a supplier who sends a price list of products in Excel format to our email every day. The items on our website and in the supplier's price list are the same. The values in the "stock" column are either out of stock, a number, or more than a box - these need to be updated on the site to either Ready for shipment or Out of stock. Items that are not in the supplier's price list should remain unchanged. Please propose a solution, timeline, and budget. Thank you in advance for your response, I look forward to collaborating with a specialist.
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Stages: (1) audit and metrics map → (2) MVP: Kommo + Stripe + Meta, funnel, traffic lights, roles → (3) deal cycle, early warning, additional payments and plan → (4) SEO, AI reports, alerts → (5) new advertising channels. Payment is staged, with a demo for each stage. In the response, indicate: similar projects (end-to-end analytics), stack with justification, timeline and cost estimates by stages, monthly ownership cost (hosting, tokens, licenses).