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800 - 1,500

Posted on

3/9/18 11:56 AM

Buyer:

Iri***

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Description

Hi, i need parser for Facebook. Purpose: parsing all Facebook.

Realization:

Facebook has rigid limits on almost all parsing, except parsing on type a name + the city.

We will also use it.

We specify the list by the city and the list of names. We parse everything that we are given out.

The algorithm will be approximately such:

There are cities of New York, Philadelphia

names: Mindi, John, Alice

The parser processes so:

Mindi + New York, John + New York, Alice + New York

Mindi + Philadelphia, John + Philadelphia, Alice + Philadelphia

It is required about 1000 streams. Possibly to use Amazon (as I understand, they for these purposes have servers)

ipv6 proxy.

Possibly, via the browser or his imitation. Though it is possible and through хттп to try inquiries.

Accounts, anyway, will fly to the ban so the registrar which will tighten accounts for the period of parsing is necessary.

Further all this is going to base. In which we can:

1) To use minus word on categories necessary to us. (for example, name and word "Lera". All people with a name of Ler, will leave)

2) Plus words on categories necessary to us. For example, name and word "Lera". All people with a name of Ler, will remain.

Filtration stage multistage. I.e. operations plus and minus of words can be used several times. As in a usual DB.

And also the rating on the most popular coincidence is required. I will give an example. We have a category Name. Software considers how many names coincide and build rating from the most large number to the most smaller.

If at us in the List:

Sergey Filatov

Sergey Yesenin

Alexander Pushkin

Software will build everything so:

Sergey - 2

Alexander 1

Categories:

1)! All! column Favorites (rating)

2) Education

3) City

4) name and surname

5) Favourite quotes (rating _)

6) Work (rating)

7) floor