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🤯 this genius stores his entire codebase syntax in a graph database and queries it so provide context to an llm

1,991,118 görüntüleme • 1 yıl önce •via X (Twitter)

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Dan Mac profil fotoğrafı
Dan Mac1 yıl önce

one day things like this will be standard

Milk Road profil fotoğrafı
Milk Road1 yıl önce

Wall Street ain't ready for this... Coinbase launched Base ~1 year ago This Layer 2 blockchain has raked in ~$1.2M every week on average Now Wall Street is FOMOing into crypto. Front run them by reading Milk Road. 5 minutes. Every day. For free.

kev profil fotoğrafı
kev1 yıl önce

@Austen Hey that’s me! I’m currently working on v2 of this app and will be launching a public beta in the near future. Anybody is free to shoot me a DM with questions or follow me if they want to hear when the beta drops.

Dan Mac profil fotoğrafı
Dan Mac1 yıl önce

@Austen that’s awesome Kev - such a cool idea following and looking forward to hearing more about the project!

Gobie Nanthakumar profil fotoğrafı
Gobie Nanthakumar1 yıl önce

Isn’t that already part of every IDE…like indexing and referencing function definitions?

joey - e/acc 🇿🇦 profil fotoğrafı
joey - e/acc 🇿🇦1 yıl önce

You can do it for free on mordecai, it’s very very simple to implement, it doesn’t make you a genius, it’s called “RAG” and uses a vector database not a graph database.

Shantanu Goel profil fotoğrafı
Shantanu Goel1 yıl önce

Guy said AST. Tweeter picks up on "syntax" and says guy stores "codebase syntax in a graph database". 🤦‍♂️

Johannes Schmidt 🌌👾 profil fotoğrafı
Johannes Schmidt 🌌👾1 yıl önce

cursor does this, they create embeddings and use them to look up code

Dan Mac profil fotoğrafı
Dan Mac1 yıl önce

think that’s a little different though embeddings arent legible to a human, whereas a graph is

Saurabh Suri⚡🥷🏼 profil fotoğrafı
Saurabh Suri⚡🥷🏼1 yıl önce

alright you have my attention @taykv2

Bryce DeFigueiredo profil fotoğrafı
Bryce DeFigueiredo1 yıl önce

@Austen This project brought to you by Velo nicotine pouches

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200,673 görüntüleme • 1 yıl önce