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Humayun Sheikh: Fetch AI – Decentralising AI Economies
Media Type |
audio
Categories Via RSS |
Business
Entrepreneurship
Investing
Technology
Publication Date |
Mar 16, 2024
Episode Duration |
00:57:53

While large language models (LLMs) are rather passive from an economic perspective on their own, AI agents offer a preview of what truly autonomous AI applications can achieve. Fetch.ai aims to create a platform for economic interactions in the AI economy, where participants can provide many different kinds of stake, ranging from purely financial, in the form of cryptocurrency tokens, to utility based, in the form of data sets that LLMs can be trained on. It thus creates a supply chain that links different actors of the AI economy.

We were joined by Humayun Sheikh, co-founder & CEO of Fetch.ai, to discuss AI economic models and how LLMs can be integrated by agentic systems as a foundation for autonomous AI apps.

Topics covered in this episode:

  • Humayun’s background
  • Founding Fetch.ai
  • Multi-agent systems
  • Autonomous economic agent
  • Building a Cosmos based blockchain
  • Integrating ML with agent economy
  • Scalability & interoperability
  • Use cases & partnerships
  • AI x crypto projects
  • Incentivising developers
  • AI alignment problem
  • Fetch AI roadmap
  • The future of ML & LLMs

Episode links:

Sponsors:

  • Gnosis: Gnosis builds decentralized infrastructure for the Ethereum ecosystem, since 2015. This year marks the launch of Gnosis Pay— the world's first Decentralized Payment Network. Get started today at - gnosis.io
  • Chorus1: Chorus1 is one of the largest node operators worldwide, supporting more than 100,000 delegators, across 45 networks. The recently launched OPUS allows staking up to 8,000 ETH in a single transaction. Enjoy the highest yields and institutional grade security at - chorus.one

This episode is hosted by Friederike Ernst. Show notes and listening options: epicenter.tv/539

We were joined by Humayun Sheikh, co-founder & CEO of Fetch.ai, to discuss AI economic models and how LLMs can be integrated by agentic systems as a foundation for autonomous AI apps.

While large language models (LLMs) are rather passive from an economic perspective on their own, AI agents offer a preview of what truly autonomous AI applications can achieve. Fetch.ai aims to create a platform for economic interactions in the AI economy, where participants can provide many different kinds of stake, ranging from purely financial, in the form of cryptocurrency tokens, to utility based, in the form of data sets that LLMs can be trained on. It thus creates a supply chain that links different actors of the AI economy.

We were joined by Humayun Sheikh, co-founder & CEO of Fetch.ai, to discuss AI economic models and how LLMs can be integrated by agentic systems as a foundation for autonomous AI apps.

Topics covered in this episode:

  • Humayun’s background
  • Founding Fetch.ai
  • Multi-agent systems
  • Autonomous economic agent
  • Building a Cosmos based blockchain
  • Integrating ML with agent economy
  • Scalability & interoperability
  • Use cases & partnerships
  • AI x crypto projects
  • Incentivising developers
  • AI alignment problem
  • Fetch AI roadmap
  • The future of ML & LLMs

Episode links:

Sponsors:

  • Gnosis: Gnosis builds decentralized infrastructure for the Ethereum ecosystem, since 2015. This year marks the launch of Gnosis Pay— the world's first Decentralized Payment Network. Get started today at - gnosis.io
  • Chorus1: Chorus1 is one of the largest node operators worldwide, supporting more than 100,000 delegators, across 45 networks. The recently launched OPUS allows staking up to 8,000 ETH in a single transaction. Enjoy the highest yields and institutional grade security at - chorus.one

This episode is hosted by Friederike Ernst. Show notes and listening options: epicenter.tv/539

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