Aleksandr K.
Winning proposal- Projects 1 205
- Rating 5.0
- Rating 28 954
Budget: 2700 UAH Deadline: 7 days
The experience of such developments is
Examples in the portfolio
Freelancehunt
There are options
Parting into XML file
Parsign in Excel file
Options of translation
- paid - Google translate API - (it is of course expensive, but automatically)
- free - using the Excel file (to translate and fill the table will need to be manually)
Unfortunately, the universal parser will not be able to do, as the parser is attached to the layer, and it’s different at different sites.
For the installation of the parser will be required a web-site
Budget: 15000 UAH Deadline: 14 days
Good day . Interesting task. Write, I will be happy to work with you!
Proposals are currently absent
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Tymofii Tarakanov 8 January 2023Какое примерное кол-во товаров для парсинга?
Автоперевод de-ua используя Google Translate API.
Какой у вас бюджет на перевод? Translate API платный. 20 usd за 1 млн символов.
По своему опыту скажу что большинство заказчиков отказываются когда просчитывают примерный бюджет затрат на перевод.
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Dmitry Chenkov
9 January 2023
Здравствуйте. Интересно я об этом и не знал просто раньше не сталкивался. А количество символов считается только что будет парсится или все что отображается на странице сайта донора ?
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Dmitry Chenkov
9 January 2023
Тогда получается еще надо будет сделать так чтобы те товары которые ранее были спарсены только парсило наличие и цену а новые переводило и парсило целиком с описанием фото и т.д
Мне нужна универсальная программа чтобы в дальнейшем можно было добавлять другие сайты (понятное дело что потребуется дополнительно настраивать под него программу) потому что в планах несколько сайтов.
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Dmitry Chenkov
9 January 2023
Я долгое время использовал парсинг в Exsel и програмист есть который на каждый сайт делает настройку, но мне так стало очень не удобно так как надо все ручную делать, а мне надо автоматизировать чтобы наличие и цены сами обновлялись и новинки добавлялись
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