Budget: 1000 UAH Deadline: 5 days
Готов продолжить начатое в личных сообщениях обсуждение в рабочей области проекта и довести до конца отправленный образец.
Добрый день!
Для рекламной кампании на Фейсбуке я сейчас собираюсь линки эккаунтов, которые являются моей потенциальной аудиторией.
Для запуска рекламы мне необходимо добавить в рекламный кабинет файл с такими колонками:
1. Фамилия.
2. Имя
3. uid
4. Страна
5. Город
6. Пол м/ж
7. email, заканчивающийся на @fb.com
Вышеуказанная информация собирается из каждого эккаунта или линка, который я предоставлю.
Есть ли решение автоматизации сбора информации?
Budget: 1000 UAH Deadline: 5 days
Готов продолжить начатое в личных сообщениях обсуждение в рабочей области проекта и довести до конца отправленный образец.
Budget: 4000 UAH Deadline: 5 days
Добрый вечер, Анна. Делала очень похожую работу по парсингу фейсбук аккаунтов. Буду рада помочь, обращайтесь.
Budget: 111 UAH Deadline: 14 days
Здравствуйте.
Есть опыт в решении задач подобного рода.
Для оценки сроков и стоимости нужно обсудить детальнее.
С Уважением, Александр.
Добрый день, скорее всего есть. Раскажите дательнее сколько таких аккаунтов нужно обработать? Есть ли данная информация
на страницах?
А с помощью API не думали? Не уверен что соцсети не защищены от парсинга.
Hello! I am looking for a performer for ongoing collaboration who is knowledgeable about Opencart. A person who is available and has a positive attitude) Parsing, uploading products in two languages UA + ru, as well as forming the necessary markup immediately I want to complete the work in several stages. 1. Update stock for all suppliers and completely remove outdated products from the site and database. 2. Refinement of the product category, specifically parsing subcategories. 3. Parse new items in old categories. 4. Parse new suppliers into new categories.
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;
Channel requirements: 1. Content language: Russian or Ukrainian (mixed RU/UA content is allowed) 2. Number of subscribers: At least 500 subscribers 3. Activity: The last post published no later than 32 hours ago 4. Comments: Comments must be open under the posts (through a group or embedded) 5. Quantity: Minimum 15,000 lines 6. Theme: War, news, politics, fights, trash/gore, sports, cars, crypto, fishing, and others Data to be collected for each channel Mandatory fields: Channel name username (link) Number of subscribers Theme (news, crypto, humor, business, etc.) Language (RU / UA / MIX) Date and time of the last post Presence of comments (yes) File format: Google Sheets / Excel (.xlsx)
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. .
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