Budget: 1600 UAH Deadline: 3 days
Good day. Ready to perform, I have repeatedly done similar work before. I will be glad to cooperate
Good afternoon.
It is necessary to parse all products. The number of products is about 15,000.
Extract the price, model, title, description, save the photos, and list the photo names in Excel.
See the example in Excel.
https://recambiosportalo.com/carroceria/faros/
Please send proposals and prices. Not urgent.
Thank you.
Sergiy
Budget: 1600 UAH Deadline: 3 days
Good day. Ready to perform, I have repeatedly done similar work before. I will be glad to cooperate
Budget: 1500 UAH Deadline: 1 day
Hello, Serhiy!
Ready to develop a script for data collection from the website recambiosportalo.com.
The script will collect:
– Product name (title)
– Model (if available)
– Price
– Description
– Download all photos (with filenames saved in Excel)
– Export to an Excel table according to the provided example
⚙️ I will do it using Python (Selenium / Requests + BeautifulSoup / lxml)
🧮 Data will be saved in Excel + photo archive
Deadline: 1-3 days
Cost: 1000-1500 UAH (depending on the depth of the structure and the uniqueness of the site's markup)
Budget: 1100 UAH Deadline: 3 days
Good day, Serhiy!
The project is 50% ready.
I am ready to hand it over to you, write to me in private messages.
Respectfully,
Victor
Budget: 1500 UAH Deadline: 3 days
Good day, Serhiy!
I can perform a full parsing for you, taking into account all requirements:
I will extract the price, model, title, description, SKU, OEM, category, brand, and other necessary fields.
I will save all photos in folders named according to the example in the Excel file (foto1, foto2, etc.).
All data will be formatted and consolidated into Excel in the structure you provided.
I will ensure duplicate checks so there are no repetitions.
The parser will work with pauses to avoid blocking.
If needed — I can provide a ready Python script so you can update the data repeatedly.
I am ready to perform a test parsing of several products to confirm quality.
Terms: 2-3 days from the start.
Cost: 1500 UAH (includes work with photos, parser setup, and final verification).
Looking forward to cooperation!
Budget: 1400 UAH Deadline: 1 day
Good day!
I have a ready parser for this website. It initially collects categories: name, description, number of products, links, and category images. For each category, a separate folder is created with an images folder and an Excel file containing product data.
Next, the parser goes through the products in each category — it retrieves small and large images, saves them in the folder, and records the filenames in Excel. It also gathers all product details with dynamic headers, as some products have different characteristics.
An example of the parser's work is already in the portfolio. I am ready to take on your task.
Budget: 1500 UAH Deadline: 3 days
Hello!
No problem, I can complete your task as I have extensive experience with parsers. I can both develop an application for self-parsing and extract all the necessary information.
The application will be developed in Python+Selenium. I can set up exporting the collected information to Excel/Google Sheets.
Budget: 3000 UAH Deadline: 4 days
Good day! Ready to complete your task. 15,000 product cards with fields as in the provided example, preserve photos and write photo names in Excel.
Budget: 1500 UAH Deadline: 2 days
Good day, I have experience in parsing a large number of products, a few examples are in the profile. I work in Python. I will do everything qualitatively.
Budget: 1000 UAH Deadline: 1 day
Good day. I have extensive experience in developing parsers. We can discuss in more detail.
Budget: 1000 UAH Deadline: 2 days
Good afternoon, Serhiy.
I can help with collecting all the goods
==================================
Budget: 1000 UAH Deadline: 3 days
Good afternoon! Ready to do it. Parsing, photos, Excel — all according to the example. I have experience.
Budget: 1000 UAH Deadline: 2 days
Hello,
I have extensive experience in parsing. I will write a script that parses incoming data using Playwright or Selenium and fills it into an Excel table.
Budget: 1000 UAH Deadline: 1 day
I've been doing parsing for 15 years. I will gather everything qualitatively.
I suggest discussing.
Budget: 1500 UAH Deadline: 3 days
Hello. Interested in your project. Ready to discuss and execute!
Budget: 3000 UAH Deadline: 3 days
Hello.
I can do everything qualitatively as specified in the description.
The result is a ready Excel file, the structure will be as indicated. Also, an archive with photos. The names in Excel will exactly match the photos in the archive.
Budget: 1000 UAH Deadline: 3 days
Good day
There are 25631 products on the website in all categories.
I can parse them in the format you need.
Write in private messages
Budget: 1000 UAH Deadline: 1 day
Hello!
I have extensive experience in data parsing.
I will complete your order quickly and efficiently.
Write to discuss the details.
Budget: 950 UAH Deadline: 2 days
Good day! I have experience in writing parsers in Python. Feel free to contact me, I will be happy to help!
Budget: 1000 UAH Deadline: 1 day
Today I will do it
Today I will do it
Today I will do it
Today I will do it
Today I will do it
Today I will do it
Budget: 1000 UAH Deadline: 2 days
Ready to take on the task.
But I need to clarify the order details, write!
I will implement with a Python script.
Budget: 1001 UAH Deadline: 1 day
Good day, Serhiy!
I have experience parsing large online stores, including photos, descriptions, and saving structured data in Excel. I will do a complete export: price, model, description, title + saving photos with specified names, as in the example.
I work carefully, write code individually tailored to the website — everything will be clear and without unnecessary noise. Ready to discuss the price and convenient format. Write to me — I will be glad to cooperate!
Budget: 1000 UAH Deadline: 2 days
Good day)
Ready to parse all your products - 15 thousand
I have extensive experience in this
I have my own script that will gather all the products
Regarding the price, we can agree in private messages
Feel free to contact!
About the Company Trading company. We work with a product group of more than 2000 items across different categories.Current Situation Currently, the nomenclature is maintained in Google Sheets — data is consolidated by tabs (categories). Tab Structure: Product name Price groups: cost price, wholesale, retail Characteristics: weight, quantity per package, etc. Important: the number of columns varies for different product categories, as they have different characteristics.Why the Current Solution is Inadequate Google Sheets does not allow setting access rights at the level of individual columns. We need to: Grant users rights to view certain columns (for example, only cost prices) Grant rights to edit certain columns (for example, retail prices) While restricting access to other columns in the same tabWhat Needs to Be DoneMain Requirements Flexible Rights Management System Access at the level of individual columns (read/write) Assignment of rights by roles or users Management of rights without the involvement of programmers Support for Different Data Structures Different product categories have different sets of characteristics Adding new columns/characteristics without programming Independence from Developers Administration by internal staff Adding categories, columns, users — through the interface Integration with ERP Exporting current prices to our ERP system Export or automatic integration via API Data Analysis Using AI (preferably) Ability to analyze the entire nomenclature list Enrichment, verification, recommendations — if you have ideas, please describeExpected Result A working solution in which: The nomenclature is structured by categories with different sets of characteristics Column rights are flexibly configured (view/edit) Data is exported to ERP The team can manage the system independentlyWhat We Need from You When Responding Describe in general terms how you envision the solution: What tool/platform do you propose
A simple program or Telegram bot is required for parsing participants of chats and discussions in Telegram channels. Functionality: The user enters a link to the channel or chat. If a link to a channel is provided, the program should automatically navigate to the "Discussions" section and perform parsing specifically for discussion participants. The result should export only unique links to user profiles without duplicates. Additional selection requirements: Only users with their own public channel specified in their profile should be included. The user's channel must have at least 200 subscribers. Users with smaller channels are not suitable. A maximally simple and convenient tool is needed: just paste the link and start collecting data based on the specified criteria. I am not a programmer, so I would appreciate an assessment of the feasibility of such a solution and your suggestions for the optimal way to develop it. Standard parsers are not of interest to us — the implementation of the logic described above is required. Responses to your proposals may be within a day.
Good evening, there is a task: you need to check the availability and relevance of the prices of products added to the website (the website is on the prom.ua platform) from the supplier's site 1-2 times a day. Can you calculate the price and how it will look?
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.
A project needs to be implemented for collecting and structuring a large array of images from open web sources (initially 2000 images). The task includes: - automated image collection; - uploading files in the highest available quality; - classifying images by categories. Expected results: - a structured image database; - a clear cataloging system; - delivery of the results via Google Drive or another agreed method;