io.net Partners with OpenLedger to Enhance AI Model Development

Tuesday, November 26, 2024 12:00 AM
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This week, decentralized distributed GPU resource platform io.net announced a strategic partnership with OpenLedger, a data blockchain specifically designed for artificial intelligence (AI). This collaboration will enable OpenLedger to utilize io.net’s global GPU compute resources, enhancing its ability to refine and train AI models. Known as the Internet of GPUs, io.net provides a powerful network of distributed GPU resources, allowing OpenLedger to accelerate the development of its AI models and empowering developers to create more efficient AI-based decentralized applications (DApps). According to Tausif Ahmad, Vice President of Business Development at io.net, this partnership will provide OpenLedger with a reliable infrastructure to scale its AI models and unlock new use cases, reinforcing its position as an innovative provider in the decentralized AI space.

In addition to providing GPU resources, io.net’s infrastructure will support the inference and hosting of AI models, ensuring optimal performance and scalability. This partnership is expected to enhance OpenLedger’s reputation as a leading provider of reliable datasets, fueling innovation at the intersection of blockchain and AI. The collaboration aims to create high-quality data securely and efficiently while driving innovation and performance. A team member from OpenLedger emphasized that leveraging io.net’s GPU infrastructure will allow users to fine-tune AI models more efficiently, ultimately leading to the development of trustworthy and explainable AI models.

A significant factor in OpenLedger’s choice of io.net as its GPU resource provider is the cost-effective and scalable compute solutions offered. This partnership will enable OpenLedger to expand its services without the constraints of high costs associated with centralized cloud providers. By processing larger datasets and developing AI models with unprecedented efficiency, OpenLedger aims to push the boundaries of decentralized AI innovation. Ultimately, this partnership aligns with OpenLedger’s mission to foster an open, collaborative data environment while promoting the adoption of blockchain-powered AI solutions.

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