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Just added DeepSeek-Engineer on Github 🐋 Wanted to test the API, so I created a quick coding assistant that can read, create, and diff edit files using structured outputs. It's very simple and minimal, and a good foundation if you want to learn how coding assistants work!

73,503 просмотров • 1 год назад •via X (Twitter)

Комментарии: 10

Фото профиля Pietro Schirano
Pietro Schirano1 год назад

Repo here:

Фото профиля anarki🌟
anarki🌟1 год назад

@arXivBangers on trust. thank for your service 🫡

Фото профиля Ivan Fioravanti ᯅ
Ivan Fioravanti ᯅ1 год назад

Thanks Pietro! Simple, but powerful! 🙏

Фото профиля Sahil Bansal
Sahil Bansal1 год назад

This looks really fun, will check it on the weekend!

Фото профиля FRobertsV
FRobertsV1 год назад

Amazing man

Фото профиля FutureAI
FutureAI1 год назад

Interesting! Thank you for sharing!

Фото профиля 93&:’ap&3
93&:’ap&31 год назад

Is it better than Claude engineer?

Фото профиля Pietro Schirano
Pietro Schirano1 год назад

No

Фото профиля Vlad
Vlad1 год назад

what is your take on it Pietro, I have seen some posts claiming is better than Sonnet 3.5, do you see that being the case?

Фото профиля Pietro Schirano
Pietro Schirano1 год назад

Definitely a great model, but I would not go that far! Still trying to figure out what coding languages it’s more proficient in. Not that great in JS.

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89,578 просмотров • 1 год назад