Knowledge Graph of Knowledge Graphs

MLOps.community · Advanced ·🤖 AI Agents & Automation ·1y ago

Key Takeaways

The video discusses the concept of decentralized knowledge graphs, referred to as 'paranets', and their potential to create a collective memory for AI, with a focus on neighborhoods within the knowledge graph and the use of ontologies to define common rules and data structures.

Full Transcript

I think you told me there's like neighborhoods within the no Knowledge Graph right or cuz it's you can have a Global Knowledge Graph but then you've seen that there's certain areas of the name of the knowledge graph that are getting more populated yeah for sure so um you can you can even imagine it like as a knowledge graph of knowledge graphs uh you know a decentralized Knowledge Graph where you would have these neighborhoods uh which are populating with Knowledge Graph around certain topic let's say we actually call this paranet so parallel networks and you can imagine that this Global Knowledge Graph the decentralized knowledge graph being just an an endless um kind of assembly of these paranet uh coming together and this paranet they'll be um your neighborhoods which have let's say common set of rules that we Define uh let's say you you and I want to start a paret on on the mlops podcast and we'll say you know what like we want to see contributions with these ontologies uh that type of data structure because for us that's important when we'll be running our system like a solution on top which is yeah like an AI powered you know system where it's going to be some uh some some powerful ml that we want to perform on top we're going to know what to expect we're going to know what ontology we're getting their contributions in and then anyone can kind of contribute that we allowed to um or that we want to even motivate still with with incentives uh so this yeah neighborhoods are are something that's a important um important concept especially because knowledge graphs can be much more powerful if we um kind of use the things that they're natively built together with the ly ontologist [Music]

Original Description

Collective Memory for AI on Decentralized Knowledge Graph // MLOps Podcast #285 with Tomaz Levak, Founder of Trace Labs, Core Developers of OriginTrail. Tomaz Levak shed light on the concept of decentralized knowledge graphs (DKGs) or as he interestingly refers to them, 'paranets'. These paranets act like neighborhoods, each focusing on specific themes, structured with unique ontologies and data structures to optimize AI and machine learning systems. Tomaz emphasized how these neighborhoods could interact, significantly amplifying the power of knowledge graphs when harnessed with ontologies. // Abstract The talk focuses on how OriginTrail Decentralized Knowledge Graph serves as a collective memory for AI and enables neuro-symbolic AI. We cover the basics of OriginTrail's symbolic AI fundamentals (i.e. knowledge graphs) and go over details how decentralization improves data integrity, provenance, and user control. We'll cover the DKG role in AI agentic frameworks and how it helps with verifying and accessing diverse data sources, while maintaining compatibility with existing standards. We'll explore practical use cases from the enterprise sector as well as latest integrations into frameworks like ElizaOS. We conclude by outlining the future potential of decentralized AI, AI becoming the interface to "eat" SaaS and the general convergence of AI, Internet and Crypto. // Bio Tomaz Levak, founder of OriginTrail, is active at the intersection of Cryptocurrency, the Internet, and Artificial Intelligence (AI). At the core of OriginTrail is a pursuit of Verifiable Internet for AI, an inclusive framework addressing critical challenges of the world in an AI era. To achieve the goal of Verifiable Internet for AI, OriginTrail's trusted knowledge foundation ensures the provenance and verifiability of information while incentivizing the creation of high-quality knowledge. These advancements are pivotal to unlock the full potential of AI as they minimize the technology's short
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The video introduces the concept of decentralized knowledge graphs, or 'paranets', and their potential to create a collective memory for AI. It discusses the importance of neighborhoods within the knowledge graph and the use of ontologies to define common rules and data structures. By understanding these concepts, viewers can design and implement AI agents that utilize decentralized knowledge graphs and collective memory.

Key Takeaways
  1. Define the concept of decentralized knowledge graphs and paranets
  2. Identify the importance of neighborhoods within the knowledge graph
  3. Understand the role of ontologies in defining common rules and data structures
  4. Design AI agents that utilize decentralized knowledge graphs
  5. Implement collective memory for AI using paranets
💡 The use of decentralized knowledge graphs and paranets can create a collective memory for AI, enabling more powerful and efficient AI applications.

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