Built on cutting-edge technology, Jatevo is a decentralized GPU LLM inference network that empowers users to route their prompts across a global network of GPUs for low-latency and cost-efficient large language model (LLM) inference. Operating as a distributed intelligence platform, Jatevo aggregates global GPU clusters via the DGON framework to deliver enterprise-grade, uncensored inference API.
Jatevo's technology is built on Claude Code, an open-source codebase that enables seamless integration with various AI tools and platforms. The platform's key features include multi-chain settlement, end-to-end encrypted AI, and a user-friendly interface that allows for easy integration in seconds. With a global average latency of 24ms and an uptime of 99.9%, Jatevo provides a reliable and efficient solution for LLM inference.
Jatevo's use cases span various industries, including education, research, and business. The platform enables users to access powerful open-source models, such as GLM-4.7, which is now the default model on the network. With its pay-per-use AI agents and x402 Tools Library, Jatevo provides a cost-effective solution for organizations seeking to leverage the power of LLMs without incurring significant infrastructure costs.
Jatevo's community has grown significantly since its launch, with over 12,403 active nodes and 3,365,027,937 tokens served. The platform's average cost per $1 million is $0.79, resulting in an impressive 81% savings compared to traditional LLM inference methods. With its SLA guarantee and robust infrastructure, Jatevo is poised to become a leading player in the decentralized AI landscape.
The Jatevo team has made significant strides in developing and refining the platform's technology, with a strong focus on community engagement and user experience. As the platform continues to grow and mature, it is likely to attract further attention from developers, researchers, and businesses seeking to leverage the power of LLMs in a decentralized and cost-effective manner.
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