Aave DAO reports $140m revenue surge, highlighting growing influence and governance scrutiny Founder clarifies token purchase amid community concerns over votingAave DAO reports $140m revenue surge, highlighting growing influence and governance scrutiny Founder clarifies token purchase amid community concerns over voting

Aave DAO Revenue Hits $140m as Founder Addresses Governance and Token Concerns

  • Aave DAO reports $140m revenue surge, highlighting growing influence and governance scrutiny
  • Founder clarifies token purchase amid community concerns over voting power concentration
  • Revenue growth renews debate over DAO control, transparency, and protocol ownership structure

Aave returned to market focus after a strong revenue update reshaped discussions around governance and transparency. According to Stani Kulechov, the Aave DAO generated $140m in revenue this year, surpassing the combined income of the previous three years. That disclosure highlighted how quickly activity within the protocol has accelerated. At the same time, it placed renewed emphasis on how revenue growth aligns with decentralized control.


Moreover, Kulechov explained that AAVE token holders fully govern the DAO treasury and related spending decisions. He also admitted that the project failed to clearly communicate how its products consistently generate revenue. As a result, he committed to improving clarity around fee structures and income sources across the protocol. This promise arrived as community scrutiny over governance practices continued to intensify.


Meanwhile, attention shifted toward Kulechov’s personal $15m purchase of AAVE tokens. According to his statement, those tokens were not used to influence any recent governance vote. Significantly, he described the acquisition as a personal expression of long term belief in Aave’s future. However, the timing of the purchase became a focal point of community debate. Reports circulating within governance forums suggested roughly $10m of AAVE was bought shortly before a key proposal. Consequently, some analysts argued that such timing could affect perceptions of voting influence.


Also Read: Vitalik Warns Prediction Markets Could Shape Reality and Threaten Crypto Fairness


Revenue Growth Deepens Focus on Governance Structure

As discussions evolved, revenue allocation became central to broader governance tensions. Earlier concerns emerged after members identified swap fees linked to a new CoW Swap integration. Those fees reportedly flowed to an address controlled by Aave Labs instead of the DAO treasury. Critics claimed this setup diverted more than $10m annually away from community oversight.


Additionally, they argued that the arrangement lacked approval through a formal governance vote. This discovery escalated into a proposal aimed at transferring control of key brand assets to the DAO. The proposal included ownership of domain names and official social media channels. Although the vote failed, the debate exposed ongoing friction between developers and token holders.


According to Kulechov, the Aave ecosystem has grown large enough to support multiple independent service providers. He emphasized that his team plans to keep supporting and partnering with builders on the platform. Nevertheless, community members continued calling for clearer boundaries between Aave Labs and the DAO. They warned that unresolved governance issues could weaken trust as revenues expand.


Moreover, observers noted that rising protocol income often increases expectations for accountability. Aave’s $140m revenue milestone therefore intensified demands for transparency and governance clarity. Supporters viewed the earnings surge as confirmation of the protocol’s economic strength. Others stressed that sustainable growth depends on balanced power and clear operational separation.


Also Read: Peter Schiff Warns Bitcoin HODLers as $28B Options Expiry Looms


The post Aave DAO Revenue Hits $140m as Founder Addresses Governance and Token Concerns appeared first on 36Crypto.

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