# Decentralized Ai Infra > Consensus 2024 Round-up **Published by:** [Audrey from the Block(chain)](https://paragraph.com/@0xoddrey/) **Published on:** 2024-06-05 **Categories:** web3, ai **URL:** https://paragraph.com/@0xoddrey/decentralized-ai-infra ## Content My time at Consensus this year was a deep exploration into Decentralized AI Infrastructure, and let me say: I’m Bullish! It's abundantly clear to the Web3 community that decentralized AI isn't just a passing trend – it's a critical necessity. We're collectively realizing that the potential impact of AI on our lives demands a departure from monopolistic control towards a decentralized approach. But navigating the transition to a decentralized AI landscape? That's a journey requiring solid groundwork, starting with the infrastructure. Throughout the week, I had the pleasure of engaging with numerous founders, and based on emerging trends, I've identified three primary categories within decentralized AI infrastructure: Data: At the heart of decentralized AI lies data – its collection, integrity, and accessibility. To compete with closed AI models, decentralized systems hinge on a steady flow of quality data. Fortunately, blockchain technology provides avenues for decentralized data collection and incentivisation, ensuring that contributors receive due recognition and rewards. Projects are tackling this through incentivized data collection, privacy-centric encryption, and robust validation processes. Yet, amidst the excitement, a pressing question looms: what's the true value of individual data in the expansive AI landscape? Example Projects:https://x.com/roam_networkhttps://x.com/openlayercohttps://x.com/cerboai Compute: Armed with data, the subsequent hurdle is securing computational power for training AI models. This stage demands substantial resources, with GPUs such as Nvidia h100s commanding hefty costs. Enter decentralized compute – a promising solution allowing individuals to harness their unused computational resources. While the current decentralized computer landscape may not yet be fully equipped for handling extensive AI tasks, it is steadily gaining traction, offering scalability and accessibility to AI enthusiasts. Example Projects:https://x.com/aethircloud Utilization: Now, we arrive at the utilization layer – where AI models transition from theory to practice. This crucial stage involves deploying AI models in real-world applications. Projects like Blockless and Theoriq are at the forefront of this arena, grappling with the intricacies of supporting and managing AI agents within a decentralized ecosystem. From optimizing resource allocation to addressing ethical considerations, the challenges are multifaceted, but the potential for real-world impact is immense. While it's true that infrastructure may not be the most glamorous aspect of AI, it's heartening to witness so many visionary founders laying the groundwork for Decentralized AI. This signifies that we're not merely caught in another AI hype cycle; instead, we're investing time and effort in constructing a sturdy foundation for a decentralized AI future. It's a journey filled with challenges and uncertainties, but with each innovative solution and collaborative effort, we're inching closer towards a more equitable and inclusive AI landscape. Example Projects:https://x.com/theoriqai ## Publication Information - [Audrey from the Block(chain)](https://paragraph.com/@0xoddrey/): Publication homepage - [All Posts](https://paragraph.com/@0xoddrey/): More posts from this publication - [RSS Feed](https://api.paragraph.com/blogs/rss/@0xoddrey): Subscribe to updates ## Optional - [Collect as NFT](https://paragraph.com/@0xoddrey/decentralized-ai-infra): Support the author by collecting this post - [View Collectors](https://paragraph.com/@0xoddrey/decentralized-ai-infra/collectors): See who has collected this post