Video wird geladen...

Video konnte nicht geladen werden

Zur Startseite

We’re kicking off 2025 with everything we've got! 🤩 Introducing CodeGPT's Knowledge Graphs, navigating through the entire Anthropic SDK repository. In this example, we loaded Anthropic Python SDK repository and successfully provided the LLM with all the knowledge it needs to fully understand the codebase. You can leverage these...

35,682 Aufrufe • vor 1 Jahr •via X (Twitter)

10 Kommentare

Profilbild von Daniel San
Daniel Sanvor 1 Jahr

Hey @alexalbert__ , we’d love to teach the Anthropic developer community how to use the SDK with our repository knowledge graphs 🌐 Happy to collaborate on something together!

Profilbild von Cris
Crisvor 1 Jahr

@AnthropicAI I dont think people realize what can be achieved with this 🍰

Profilbild von Arjun
Arjunvor 1 Jahr

@AnthropicAI Looks amazing... I bet this would be more useful than the repo search that Cursor does. @cursor_ai should open up the ecosystem for us to integrate with such tools!

Profilbild von Daniel San
Daniel Sanvor 1 Jahr

@aiguy_arjun @AnthropicAI @cursor_ai We would love to connect our Knowledge Graphs with Cursor... happy to collaborate! 🙌 @cursor_ai @amanrsanger

Profilbild von Rethynk AI
Rethynk AIvor 1 Jahr

@AnthropicAI This is an incredible start to 2025! CodeGPT’s Knowledge Graphs are a game-changer for navigating complex repositories like Anthropic’s SDK. Simplifying codebase understanding for developers will boost productivity and collaboration.

Profilbild von David Olivencia
David Olivenciavor 1 Jahr

@AnthropicAI Let's GOOOOOOO @codegptAI 🚀 #AI #Copilot #AgenticAI

Profilbild von stijn sagaert
stijn sagaertvor 1 Jahr

@AnthropicAI @VictorTaelin is this something you are looking for to use with your codebase?

Profilbild von 🐧 lalo adrian morales 𝕏
🐧 lalo adrian morales 𝕏vor 1 Jahr

@AnthropicAI and it looks cool too!

Profilbild von Saïd Aitmbarek
Saïd Aitmbarekvor 1 Jahr

@AnthropicAI looks amazing, big fan of ontologies brings a lot of explainability to datasets!

Profilbild von Kekius Optimus
Kekius Optimusvor 1 Jahr

@AnthropicAI "In this example, we loaded @AnthropicAI Python SDK repository" Nothing like scratching his own back first, right?

Ähnliche Videos

Build better RAG by letting a team of agents extract and connect your reference materials into a knowledge graph. Our new short course, “Agentic Knowledge Graph Construction,” taught by Neo4j Innovation Lead Andreas Kollegger, shows you how. Knowledge graphs are an important way to store information accurately but they are a lot of work to build manually. In this course you’ll learn how to build a team of agents that turn data– in this case product reviews and invoices from suppliers–into structured graphs of entities and relationships for RAG. Learn how agents can automatically handle the time-consuming work of building graphs — extracting entities and relationships (e.g., Product "contains" Assembly, Part "supplied_by" Supplier, Customer review "mentions" Product), deduplicating them, fact-checking them, and committing them to a graph database — so your retrieval system can find right information to generate accurate output. For example, you can use agents to help trace customer complaints directly to specific suppliers, manufacturing processes, and product hierarchies, thus turning fragmented information into queryable business intelligence. Skills you’ll gain: - Build, store, and access knowledge graphs using the Neo4j graph database - Build multi-agent systems using Google’s Agent Development Kit (ADK) - Set up a loop of agentic workflows to propose and refine a graph schema through fact-checking - Connect agent-generated graphs of unstructured and structured data into a unified knowledge graph This course gets into the practicum of why knowledge graphs give more accurate information retrieval than vector search alone, especially for high-stakes applications where precision matters more than fuzzy similarity matching. Sign up here:

Andrew Ng

167,710 Aufrufe • vor 9 Monaten