# Nodes Recruitment

### Join the Future of Decentralized AI Computing! <a href="#join-the-future-of-decentralized-ai-computing" id="join-the-future-of-decentralized-ai-computing"></a>

Exclusively PoW-Based: Ensuring fairer token distribution, setting DEKUBE apart from the majority of projects in the market.

**Vision: Making AI Innovation Accessible to All, Beneficial for All Values: Fairness, Openness, Democracy**

DEKUBE is the world's first network capable of distributed training of large AI models, converting consumer-grade GPUs into enterprise-level AI computing power. DEKUBE has already demonstrated its prowess by successfully completing Llama2 70B distributed training tests. With development ongoing since pre-2019, it boasts its own public chain boasting a TPS of 12,000+. Led by highly skilled developers, core system development nears completion, heralding imminent commercialization. A testnet launch is slated before July 2024.

**Total Supply:** 21 billion tokens

**Token Allocation**:

&#x20;         • 5.0% Service Nodes

&#x20;         • 7.5% Compute Nodes

&#x20;         • 7.5% Testnet

&#x20;         • 80% Mainnet

By becoming a node operator, you will be part of an innovative, decentralized AI computing network with the potential to revolutionize the industry.

For more detailed information regarding our private sale tokenomics, interested investors can contact us directly.

Request Detailed Information:

To access detailed tokenomics and private sale information, please reach out to our investor relations team.

Contact Information:\
Investor Relations: <BD@dekube.ai>


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