XDC Staking and Tokenomics -- Improvement Proposal: Enhancing Sustainability and Decentralization on the Eve of XDC 2.0
- URL: http://arxiv.org/abs/2409.07420v1
- Date: Wed, 11 Sep 2024 17:07:54 GMT
- Title: XDC Staking and Tokenomics -- Improvement Proposal: Enhancing Sustainability and Decentralization on the Eve of XDC 2.0
- Authors: Van Khanh Nguyen,
- Abstract summary: This research proposes a comprehensive improvement plan for the network's staking and tokenomics mechanisms.
By addressing the intricacies of staking and tokenomics, this research paves the way for XDC to solidify its position as a leading decentralized network.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As the XDC network celebrates five years of stable mainnet operation and prepares for the highly anticipated launch of XDC 2.0, this research proposes a comprehensive improvement plan for the network's staking and tokenomics mechanisms. Our analysis reveals opportunities to optimize the current model, ensuring a more sustainable, decentralized, and resilient ecosystem. We introduce novel concepts, including validator NFTs, decentralized governance, and utility-based tokenomics, to increase validator node liquidity and promote staking participation. Our proposal aims to establish a robust foundation for XDC 2.0, fostering a thriving ecosystem that rewards validators, stakeholders, and users alike. By addressing the intricacies of staking and tokenomics, this research paves the way for XDC to solidify its position as a leading decentralized network, poised for long-term success and growth.
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