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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 Aufrufe • vor 1 Jahr •via X (Twitter)

10 Kommentare

Profilbild von Pietro Schirano
Pietro Schiranovor 1 Jahr

Repo here:

Profilbild von anarki🌟
anarki🌟vor 1 Jahr

@arXivBangers on trust. thank for your service 🫡

Profilbild von Ivan Fioravanti ᯅ
Ivan Fioravanti ᯅvor 1 Jahr

Thanks Pietro! Simple, but powerful! 🙏

Profilbild von Sahil Bansal
Sahil Bansalvor 1 Jahr

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

Profilbild von FRobertsV
FRobertsVvor 1 Jahr

Amazing man

Profilbild von FutureAI
FutureAIvor 1 Jahr

Interesting! Thank you for sharing!

Profilbild von 93&:’ap&3
93&:’ap&3vor 1 Jahr

Is it better than Claude engineer?

Profilbild von Pietro Schirano
Pietro Schiranovor 1 Jahr

No

Profilbild von Vlad
Vladvor 1 Jahr

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?

Profilbild von Pietro Schirano
Pietro Schiranovor 1 Jahr

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 Aufrufe • vor 1 Jahr