Budget: 1500 UAH Deadline: 2 days
Hello, I have extensive experience in data parsing. Write to me, we will discuss the details.
I will support your project and fix issues even after the completion is confirmed.Budget: 4000 UAH Deadline: 1 day
If visually representing where to take some data, then I can.
Budget: 700 UAH Deadline: 1 day
Good morning, Petro!
In general, the task is clear, but for an accurate answer regarding the deadlines and price, I would like to clarify some questions that arose after analyzing your task.
Please write in private messages — we will discuss the details and your wishes.
Budget: 5000 UAH Deadline: 4 days
Hello.
I work with the Meta Marketing (Graph) API and have implemented tasks for collecting and structuring targeting categories through official endpoints.
It is important to clarify right away:
full "parsing" of the Meta Ads interface through scraping is impossible without violating the ToS. However, through the API, it is possible to legally access available targeting categories.
Possible solution:
• Targeting Search API — collection of interests, behavioral categories, demographics
• Reach Estimate API — obtaining approximate audience sizes
• Graph API with pagination and batching
• bypassing rate limits through optimized requests
• automatic normalization and deduplication of data
Result:
✔ complete structured list of categories
✔ breakdown by types (interests / behaviors / demographics / job titles)
✔ audience sizes (where the API allows)
✔ export to CSV / Excel / JSON
✔ if needed — a script for regular updates
Technologies: Python (requests / aiohttp), working with access tokens, Business Manager permissions.
The implementation timeline depends on access to the advertising account and access rights (ads_management / business_management).
I am ready to discuss the details and propose an optimal architecture.
Budget: 4000 UAH Deadline: 1 day
Good day. I am ready to complete this project; I have extensive experience in developing various applications.
Alona S.
Winning proposal- Projects 24
- Rating 5.0
- Rating 3 015
Budget: 10000 UAH Deadline: 5 days
Hello!
I am ready to help with a complete extraction of interests, job titles, and behavioral audiences from Meta Ads.
If you need a complete list of available audiences for targeting, I will gather everything that can be extracted:
interests, professions, behaviors, activity categories, as well as an estimated audience size for each item (if Meta allows data retrieval).
What I will do:
- I will compile a complete list of interests available in Meta Ads.
- I will extract behavioral audiences.
- I will gather categories by job titles and professional activity.
- I will try to obtain an estimated audience size for each category.
- I will deliver the results in a convenient format: Excel / Google Sheets.
Technical approach
I use my own tools for data collection through the Meta Ads interface + available external libraries.
Please note: Meta does not officially provide complete lists through the API, so I work with a combined method — maximum depth of collection.
What you will receive:
- A structured table with all collected interests.
- Separate blocks: interests / behaviors / professions / other categories.
- Data on audience sizes (if possible).
- A ready database that can be used for targeting, creative setup, and strategy.
I am ready to clarify details and get started.
Budget: 5000 UAH Deadline: 2 days
Good day, Petro
I have extensive experience in data parsing, but I have not parsed for meta advertising yet. If you show me where to get this data, I will do it.
Write to me, I am waiting for feedback.
Budget: 2000 UAH Deadline: 3 days
Hello! After reviewing your project, I am ready to start working on it. I can offer optimal solutions to achieve the best result.
Budget: 11111 UAH Deadline: 1 day
Hello, I have extensive experience in parsing. Send me a detailed technical specification in private about what to parse from where and how to save it. We will discuss.
Proposals concealed
Proposals are currently absent
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Oleksii B. 28 FebruaryМета не позволяет парсить аудитории. Получение вего списка невозможно. Максимум на что можно рассчитывать - делать в АПИ запросы по ключевым словам, собирать интересы в ответах. Но есть ограничение на количество запросов...
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