Budget: 2000 UAH Deadline: 4 days
Ready to take it on.
But we need to clarify the order details, write!
I will implement it with a script in Python.
The Ibis website - ibis-gear.com
The site is very large, but we only need about 1/3 of it for parsing; I will provide a list of categories with links if needed.
We need basic data, which I have listed in the file as an example for the parser. The main requirements are the name in 2 languages (Ukrainian and Russian) and the description in 2 languages (Ukrainian and Russian), characteristics, price, article number, availability.
Also, on the Ibis website, there are products that have variations; for example, there is a product knife 1, and it is indicated that it has 10 variations. You go into the product, and there will be these 10 variations, for example, with a black handle, blue, and so on. All these variations need to be parsed as separate products.
ibis-gear.com/nozhi-likhtari/details/nizh-spyderco-tenacious-d2-titanium-blue/
And one more important thing - the article number of the product. On the Ibis website, the article number is without dots, for example, 12461072 or 3427512, but it needs to have dots added to the article number, every 2 characters from the end, twice.
So if it was 12461072, it should be in the file as 1246.10.72; if it was 3427512, it should be 342.75.12.
And regarding if this will be a program in Python, I have a Mac OS, so it should work on my PC.
Categories
Weapons and accessories
Knives and tools
Camping and tourism
Clothing and equipment
Subcategories:
Air weapons
Flobert cartridge weapons
Signal-noise weapons
Throwing weapons
Air ammunition
Flobert cartridges
Arrows
Accessories for air weapons
Accessories for throwing weapons
AR15 tuning
AK tuning
Fixed-blade knives
Folding knives
Training weapons
Kitchen knives
Storage and transportation
Cleaning and maintenance
Multitools
Machetes
Axes
Shovels
Saws
Portable sharpeners
Table sharpeners
Replacement stones
Accessories for sharpeners
Load-bearing and bulletproof vests
Tactical elbow and knee pads
Pouches
Backpacks
Bags
Thermal underwear
Gloves
Folding furniture
Tents and accessories
Sleeping bags
Mats and sleeping pads
Backpacks
Bags
Pouches
Burners
Thermal products
Tourist dishes
Headlamps
Handheld flashlights
Camping lanterns
Bicycle lights
Weapon lights
Budget: 2000 UAH Deadline: 4 days
Ready to take it on.
But we need to clarify the order details, write!
I will implement it with a script in Python.
Budget: 4000 UAH Deadline: 3 days
Hello.
I develop bots and parsers in NodeJS. I'm ready to take it on. Write to me, we will discuss.
Budget: 3000 UAH Deadline: 5 days
Hello!
I am interested in your project, I have extensive experience in automation and emulation of user actions (JavaScript, Selenium, Playwright), asynchronous/multithreaded parsing (Requests, WebSockets, HTTPX, BS4) and data processing (Openpyxl, JSON, MySQL, MongoDB);
We developed a similar parser for Rozetka; the OS that the parser will support - Win/Mac/Linux;
Contact me to discuss the details and deadlines for this project!
Budget: 4000 UAH Deadline: 4 days
Hello!
I have been engaged in parsing and automating data collection for over 3 years and have solved such cases in large companies. I have already analyzed your website ibis-gear.com and can create a parser that will collect all the necessary data:
Title, description, specifications, price, article number, availability (in Ukrainian and Russian).
All product variations will be saved as separate items.
The article number will be automatically formatted in the required form (for example, 1246.10.72).
The program will work on MacOS without any issues.
I can quickly develop a solution tailored to your requirements. If you're interested, let's continue the discussion in private messages.
Best regards,
Oleksandr.
Budget: 20000 UAH Deadline: 25 days
Good day!
I am interested in your project, I will implement it in nodejs + typescript. I can help upload the parser to hosting or provide it as an executable file.
Write to me, we will discuss the details.
Вітаю. Можливо є сенс використовувати готові модулі парсингу. на чому у вас сайт?
Цікаво в чому порушення. Збираються відкриті дані без якихось намагань зламати бази даних чи атакувати сервер купою запитів.
Це все одно що ви зайдете на той самий сайт і випишете собі ручкою на папірці назву товару та пару характеристик з ціною.
Парсинг сайту не заборонений.
Відповідальність наступає в момент комерційного використання.Тому те, що ви пишете - це повна маячня.
Яке авторське право? Я співпрацюю з компанією Ібіс. Це мій постачальник, але через те, що у них немає загрузочного файлу. Всі товари з їхнього сайту мені потрібно додавати вручну і витрачати на це купу часу. Ібіс з моїх продажів кошти має, тому що я їх товар у них же і купую.
Доброго дня можу надати вам feed з усіма товарами які доступні на сайтах
Навіщо парсити? Я ж вас одразу кину в блок(Зверніться до свого менеджера
Наскільки я знаю у Ібіса немає фіду з товарами, але спробую звернутися, дякую
Good day! Two tasks need to be completed: 1. Develop a product parser from an external website (10–40 thousand items, marketplace) with structured data saved in MySQL for subsequent output in WordPress. 2. Install and configure n8n on VPS, as well as organize AI content processing: prompt setup, text rewriting, image processing, SEO optimization, and text checking for AI detection. You can estimate the cost of completing both the entire project and each task separately. .
It is necessary to perform parsing from Viber channels (Total number - 49 channels, about 80 thousand subscribers).
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