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Introducing Auto Documentation powered by Codebase Knowledge Graphs With CodeGPT, we traverse your entire repo to build a Knowledge Graph that understands how your software works. Capturing relationships between classes, modules, and dependencies. This allows us to generate robust, accurate documentation that misses no detail. We’re helping top companies...

53,329 views • 1 year ago •via X (Twitter)

10 Comments

Defi.Central's profile picture
Defi.Central1 year ago

You must make it public. Because their is no bigger company then opensource code lib. That uses by developers around world.

Rainmaker's profile picture
Rainmaker2 years ago

Here I share an XGBoost model that delivers a 25% CAGR with minimal drawdown on Visa stock. In this free Substack post I share code and commentary for a powerful Machine Learning strategy that delivers powerful returns.

benferrum - e/jounce's profile picture
benferrum - e/jounce1 year ago

awesome, now go 3D and AR

ANIRUDDHA ADAK's profile picture
ANIRUDDHA ADAK1 year ago

That is just a wow

Parag's profile picture
Parag1 year ago

How does CodeGPT handle dynamically typed or metaprogrammed code when constructing the Knowledge Graph, especially in languages like Python or JavaScript?

Jacek (Jomsborg.eth)'s profile picture
Jacek (Jomsborg.eth)1 year ago

what is addeded value vs RAG

Ben Woodward's profile picture
Ben Woodward1 year ago

@kevinvangundy really cool

UmbraAtrox's profile picture
UmbraAtrox1 year ago

I've been waiting for this

options enjoyer's profile picture
options enjoyer1 year ago

Is this similar to lightRAG ?

David Olivencia's profile picture
David Olivencia1 year ago

Great feature. Go @codegptAI

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Andrew Ng

167,710 views • 9 months ago