Budget: 7000 UAH Deadline: 8 days
Hello Victoria!✋
I have experience in web scraping, data collection automation, and integration.
I am ready to help with the implementation of your project!
🔹 What I offer:
✅ Parsing all possible data from source websites
✅ Storage formats:
✅ Direct parsing into MySQL database (automatic addition of products to MiniShop2)
✅ Parsing into CSV/XLSX + import via msImportExport
✅ Import automation via xParser (if installed)
🔹 Technologies:
🛠 Python 3.x, Scrapy, Selenium, BeautifulSoup, pandas, MySQL Connector
📡 Bypassing JavaScript loads (if needed)
🔹 Terms and cost:
⏳ Time estimate:
Basic parsing + CSV/XLSX: 3 days
Direct import into MySQL: 1 day
Optimization for xParser: 2 days (with the plugin installed)
Corrections: 2 days
💰 Cost estimate – depends on the volume and complexity of the donor site. Ready to discuss details personally.
🚀 I will implement the parser qualitatively and automate the import according to your needs!
Sincerely,
Andriy!
- Projects -
- Rating -
- Rating 282
Budget: 4321 UAH Deadline: 2 days
😄 Hello,
I appreciate you taking the time to review my job application and understand what your project entails. With significant experience in data collection and database management, I am confident that I can meet your requirements.
One of the most interesting projects I worked on was creating a scraper that directly transfers data to a MySQL database. Specifically, I needed to collect data from various e-commerce sites, including images and files, and store them on the server. For data collection, I used Python libraries — BeautifulSoup and requests, and for interacting with the database and file server — MySQL Connector/Python and Flask, respectively.
I also needed to store certain data in CSV and XLSX formats. For this, I used the pandas library in Python, which provides powerful tools for data processing. The collected data was then imported using the msImportExport plugin, which allowed for effective data management while preserving its structure to ensure consistency.
In another part of the project, I used the xParser plugin. It had to be installed for parsing HTML data, and it was the perfect choice due to its extensive customization options for specific needs. xParser proved to be particularly useful for parsing complex data structures that other tools struggled with.
🕒 I am available for both part-time and full-time work and flexible regarding different time zones. I am confident that my experience will be beneficial for the successful execution of your project. Trust me, you won't regret collaborating with me.
I look forward to further discussing the details of your project.
Thank you for taking the time to review my proposal! 😊
- Projects -
- Rating -
- Rating 735
Budget: 4321 UAH Deadline: 5 days
Good evening!
I propose:
1. Parsing can be done using Scrapy or site APIs and saved to a database, you can use Postgresql
2. It can be saved in the form of csv or json
Uploading files and photos to the site needs to be discussed separately as a stage.
I will be happy to help you with your task.
Budget: 4321 UAH Deadline: 2 days
I have extensive experience in developing various parsers. I will do everything quickly, efficiently, and cheaper than 4000. For details, please contact me privately.
Budget: 4321 UAH Deadline: 2 days
Hello.
I can complete your task.
In this variant:
Parsing to CSV, XLSX + further import using the msImportExport plugin
We can discuss more details in private messages.
Oleg N.
Winning proposal- Projects 53
- Rating 5.0
- Rating 1 867
Budget: 700 UAH Deadline: 1 day
Hello, I am ready to complete your task, to scrape all the necessary data from the specified donor websites and upload it to your Modx.
Implementation option - Parsing in CSV, XLSX + further import using the msImportExport plugin.
Budget: 4321 UAH Deadline: 7 days
Hello!
I am interested in your task and can offer to complete it according to the first or second option you described at the end. I have just one question - are you interested in a one-time information collection or on a regular basis? This will affect the completion time (it will take approximately 5-7 days). The cost is up to 5000 UAH.
We can connect in private messages and discuss everything in detail.
Feel free to reach out, I would be happy to collaborate!
Budget: 5000 UAH Deadline: 5 days
Good day!
I am ready to take on your order. I have experience in data parsing using Python and Selenium. I can parse directly into the database and upload data to the server.
Budget: 10000 UAH Deadline: 1 day
Good day, I am not familiar with this platform, I can also parse in Excel format, into a database as well. Right now, they won't take on many websites.
As far as I understand, it is necessary to adjust the categories of the websites, from the parsed ones and this site where the products will be uploaded.
The deadlines are conditional, the timelines too.
Proposals are currently absent
Budget: 4321 UAH Deadline: 1 day
Hello! I am ready to complete your task quickly and efficiently. I have experience in various fields, which makes me an excellent choice for your business. Feel free to reach out!
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