Tory Green: io.net’s 500,000 GPUs Powering Crypto x AI on Solana episode artwork

EPISODE · Apr 8, 2024 · 56 MIN

Tory Green: io.net’s 500,000 GPUs Powering Crypto x AI on Solana

from The Delphi Podcast · host The Delphi Podcast

io.net is a distributed training and inference project built on Solana. They aim to solve the problem of the GPU shortage in the AI industry by building a decentralized network that connects underutilized GPUs from multiple sources. Ionet uses clustering technology to combine GPUs from different geographic locations, allowing for more efficient and cost-effective AI compute. They are attracting both web2 and web3 customers, with a focus on inferencing, which makes up the majority of the market. The goal is to decentralize the AI ecosystem and prevent big tech companies from controlling all aspects of AI. io.net is a decentralized AI network that provides GPU compute power for AI workloads. They are focused on solving the compute aspect of decentralized AI and offer a network of choice for users to perform inference, fine-tuning, and training. The team is driven by a sense of urgency and executes quickly, following operational best practices. They have a disciplined go-to-market approach, targeting Series A to seed-generated AI companies. io.net aims to be the currency at the center of decentralized AI and is exploring the possibility of building a decentralized model marketplace and expanding into other areas like gaming and zero knowledge. Tory's Twitter Chapters 00:00 Introduction to Ionet 01:03 Solving the GPU Shortage 13:24 Attracting Web2 and Web3 Customers 27:51 Building a Decentralized Model Marketplace 29:47 The Role of Crypto in Incentivizing Participants 32:37 Easy Onboarding for GPU Workers 34:00 Organic Demand and Onboarding Sales Process 37:20 Choice and Flexibility in Compute Options 43:22 Conquering the Three Key Stakeholders in Decentralized AI Disclosures Disclosures: This podcast is strictly informational and educational and is not investment advice or a solicitation to buy or sell any tokens or securities or to make any financial decisions. Do not trade or invest in any project, tokens, or securities based upon this podcast episode. The host and members at Delphi Ventures may personally own tokens or art that are mentioned on the podcast. Our current show features paid sponsorships which may be featured at the start, middle, and/or the end of the episode. These sponsorships are for informational purposes only and are not a solicitation to use any product, service or token. Delphi’s transparency page can be viewed ⁠⁠⁠⁠⁠⁠⁠here⁠⁠⁠⁠⁠⁠⁠.

io.net is a distributed training and inference project built on Solana. They aim to solve the problem of the GPU shortage in the AI industry by building a decentralized network that connects underutilized GPUs from multiple sources. Ionet uses clustering technology to combine GPUs from different geographic locations, allowing for more efficient and cost-effective AI compute. They are attracting both web2 and web3 customers, with a focus on inferencing, which makes up the majority of the marke...

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Tory Green: io.net’s 500,000 GPUs Powering Crypto x AI on Solana

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This episode was published on April 8, 2024.

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io.net is a distributed training and inference project built on Solana. They aim to solve the problem of the GPU shortage in the AI industry by building a decentralized network that connects underutilized GPUs from multiple sources. Ionet uses...

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