Oleksandr S.
Winning proposal- Projects 359
- Rating 5.0
- Rating 8 908
Budget: 200 UAH Deadline: 1 day
Good day
Ready to perform the parsing of the data from Instagram, after discussing the details.
Budget: 200 UAH Deadline: 1 day
Good day !
I can do it within 30 minutes. You just have to discuss one point in advance - write to me.
Budget: 500 UAH Deadline: 1 day
Hello Andrei !Our team has great experience in this and we will perform the task set at the highest level of quality.If necessary, we can collect a whole list of data for the same amount: numbers, mail, name, account information, link, ID, publications(col-vo) , subscriptions(col-vo) , subscribers (col-vo), whether the profile is closed, the availability of the avatar, whether there is verification and so on.(On some accounts some data may be hidden)
Shortly about the proposal:
Service: parsing numbers and mail from Instagram
Duration: 1 day
Cost: 500 UAH
You will definitely be happy and complete our list of positive reviews :)
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The Quality:
Number of orders: 400+
Orders successfully completed: 100%
Orders made in time: 100%
Repeated orders: 50 %
What customers say:
Angse: Parsing and inviting in the TG channel was done quickly and quality.⭐⭐⭐⭐⭐Take attention to the error in the TZ before starting to work
Vipivadim: It’s all great!The work plan was discussed within an hour, paid and the order was immediately fulfilled.I received 71 additional messages, which was very pleased.During the first few minutes, I received 4 requests from customers.satisfied with work.I will continue to cooperate with this customer.Margoslim: Well, when there are such professionals in his business as Alexander, literally in an hour my headache was resolved with the acquisition of the channel, all clearly dissolved on the regiments and make the right decision.A great thanks!!The !MAKS023: Friends, I want to leave the RESPONSIBILITY, for excellent work done quickly, quality in time.Respect to the execution.I have contacted you several times and I recommend you.Strategy2005: I am in shock with the quality and speed of this artist's work!Great work, listening to every wish, responding to the order very quickly and performing it very quality and in the shortest time possible.With such an artist I want to stay friends and partners for a long time.Everything is fast and quality!I will be 100% a permanent customer!Everyone has been given a free bonus that will definitely be useful and interesting to everyone even for money!)I highly recommend it!)Thank you SHARKGARANT!=========================================
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