Budget: 170 PLN Deadline: 1 day
Hello.
I would like to draw your attention to a few things:
1. This is a new profile. I will complete it later.
2. All detailed information regarding experience and skills is in my Linkedin profile:
https://www.linkedin.com/in/dmitriy-fedorenko-a437b489/
Regarding the task: I already have all the data from the website, so I guarantee a quick completion.
I will provide confirmation of the data if necessary.
Please write in PM if you are interested in cooperation.
Budget: 150 PLN Deadline: 1 day
Hello! Interested in your project, please contact me to discuss the details and deadlines for completing this project! I have already worked on parsing this website, so I will complete the project within a couple of minutes.
Budget: 150 PLN Deadline: 1 day
Ready to perform quickly and qualitatively. You will receive the file in the required format in the shortest possible time.
Budget: 150 PLN Deadline: 2 days
Good evening.
I have a lot of experience in parsing.
I will be glad to cooperate.
Have a nice day.
Budget: 150 PLN Deadline: 1 day
Good day, I will perform the task efficiently and quickly. I am waiting for you in private messages to discuss the work in more detail.
Budget: 150 PLN Deadline: 1 day
Hello, 2 years of experience, parsers, telegram bots, databases, excel. Always in touch, looking forward to long-term cooperation.
Budget: 150 PLN Deadline: 2 days
Hello.
I will do everything qualitatively. I have experience in parsing, reviews in the profile.
Do not hesitate, I will be happy to help.
Budget: 150 PLN Deadline: 3 days
I am ready to parse information from the website bymapka.me and present it in a tabular form with specified columns. Please specify which format of tabular data is preferable (csv, tsv, excel, etc.).
Budget: 150 PLN Deadline: 1 day
Hello,
I am a Backend developer and have been working in development for over 4 years. I have extensive experience in developing parsers and bots in various languages (Python, Node.JS). I am ready to help you with the implementation of your task! Everything is clear and understandable. I just want to clarify a couple of points. I assume that data export is required in Excel table format. I am ready to complete the project today!
Write me a message.
I look forward to working with you!
Best regards, Maxim.
Budget: 150 PLN Deadline: 2 days
Good day
I am ready to perform data parsing from the specified website.
Write, we will discuss everything.
Budget: 150 PLN Deadline: 1 day
Good day, ready to take on your project. I have extensive experience in parsing with JS. I will start right away, it will be ready today.
Budget: 150 PLN Deadline: 1 day
Hello. Interested in your project. Ready to discuss and execute!
Budget: 150 PLN Deadline: 3 days
Good day! I have extensive experience in data parsing with Python. I will do it in the best way!
Budget: 150 PLN Deadline: 1 day
Good day, ready to complete your task, have experience in parsing various websites. Write me in private messages, we will discuss the details, deadlines, and price. I will gladly help you with your building)
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