Brevis 与 Linea 达成战略合作,推出 Linea Ignition 长期激励方案

深潮Publicado em 2025-09-02Última atualização em 2025-09-03

Linea Ignition 只是一个开始,Linea 与 Brevis 的合作将展示一种全新的激励机制。

Linea 正式启动为期 10 周的「Linea Ignition」增长计划,将分发 10 亿枚 LINEA 代币激励用户在 Etherex、Aave 和 Euler 上提供流动性。

与此同时,ZK 全链数据计算和验证平台 Brevis 宣布与 Linea 达成战略合作,Linea Ignition 增长计划中所有奖励计算均通过 Brevis 的零知识证明(ZK)技术实现完全去中心化、透明化且无需信任的验证机制。通过将复杂计算移交 Brevis 进行链下处理,仅需在链上验证证明,建立了安全、公平且可扩展的协议激励新范式。

Linea Ignition:为 DeFi 增长注入健康流动性

流动性是 DeFi 生态命脉,缺乏深度且分布合理的流动性将导致交易滑点增加、借贷利率攀升及协议稳定性风险。

Linea Ignition通过激励「有效流动性」精准应对这一挑战:

  • 在Etherex上:不再仅按提供流动性数量奖励,而是根据头寸产生的实际交易量(含执行时滑点因素)动态激励做市商。在流动性薄弱或波动剧烈区域(价格影响最大处)提供流动性的做市商将获得更高回报,从而平滑流动性分布、降低交易滑点并提升资金池抗波动能力。

  • 在Aave与Euler上:基于时间加权金库份额动态奖励做市商,强化关键借贷市场,促进更健康的借贷能力、降低贷款利率并显著减少连环清算风险。

用户无需额外操作,仅需通过Etherex、Aave、Euler或Turtle金库向Linea市场提供流动性,即可通过Linea Ignition平台直接申领奖励。

无注册要求、无隐藏步骤,真实参与获得真实回报。

兼顾规模与信任的激励方案

设计这样的激励方案面临三大核心挑战:

  • 透明性:用户需要相信奖励逻辑是公平且完全可审计的。

  • 安全性:中心化脚本或不透明的服务器可能带来操纵或错误风险。

  • 可扩展性:若直接在链上运行这些奖励计算公式,成本将高得难以承受且运行缓慢。

这正是 Brevis 发挥作用的地方。

Brevis 通过在链下计算所有用户行为——如交易量、滑点因素、金库份额,并生成零知识证明来实现无信任的奖励分配。该证明能证明:

  • 奖励计算所用量化数据(用户流动性头寸、交易记录等)真实存在于区块链历史中。

  • 严格遵循Linea预设公式执行计算。

随后,该证明由 Linea Ignition 合约在链上验证。不依赖隐藏流程,无需信任,每一步都可验证且透明。

这种由 Brevis 驱动的模型带来多重优势:

  • 激励长期增长:奖励流向真正提升流动性和市场健康的参与者,而不是逐利的短期投机者。

  • 可验证且无需信任:每个证明都由数学保障,确保公平与责任。

  • 高效低成本:复杂计算可在链下大规模运行,简洁的证明保持链上成本最小化。

  • 灵活透明:Linea 可通过治理透明地调整分配逻辑,用户全程可见。

未来展望

Linea Ignition 只是一个开始,在最初的 10 周计划中,Linea 与 Brevis 的合作将展示一种全新的激励机制——透明、去中心化,并由零知识证明提供保障。

通过率先采用这一模型,Linea 正在为整个区块链生态系统的可持续增长树立新的标杆。Brevis 很荣幸成为这一路径背后的 ZK 引擎,并期待与 Linea 深化合作,探索更多信任最小化计算与可扩展证明在 DeFi 中释放新可能的应用场景。

我们不仅在推动 Linea 的成长,更在共同塑造去中心化、可验证金融的未来。

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