AI delegates are autonomous governance agents that learn a user’s preferences to vote on behalf of DAO members, aiming to reduce voter apathy and speed 0 Protocol’s AI delegates evolve from advisory chatbots to individual “digital twins” that cast votes aligned with member 1 delegates learn user behavior to automate DAO voting Rollout is staged: advisory chatbots → group delegates → one delegate per member Participation averages 15–25% in many DAOs; delegates aim to improve representation AI delegates Near Protocol DAO: learn preferences, vote on behalf of members, reduce voter apathy — read how to prepare your account for delegate 2 are AI delegates for Near Protocol DAO?
AI delegates are software agents developed for the Near Protocol DAO to represent member preferences in governance 3 analyze user inputs and historical behavior to recommend or cast votes, aiming to improve low participation and make governance decisions faster and more 4 the AI delegates rollout, it will be done in stages, with early models similar to chatbots, then representing large groups, and finally, each DAO 5 Near Foundation is developing artificial intelligence-powered delegates to address low voter participation in decentralized autonomous organizations (DAOs). The goal is to turn routine governance decisions into near-instant computations by using agents that know member 6 Rettig, a researcher at the Near Foundation specializing in AI and governance, told plain text press that the AI-powered governance overhaul is still in 7 Near Foundation oversees the layer-1 Near 8 Rettig explained the AI-powered governance overhaul in development for Near Protocol’s DAO.) How will AI delegates be trained on user behavior?
Delegates are trained by combining explicit user inputs, voting history, and public messages on community 9 includes interview-style onboarding, past vote records, and contextual signals from social platforms to model political and funding 10 intends to use a verifiable training approach that provides cryptographic proof of training cycles and inputs to maintain alignment and 11 data shows adoption of AI agents in crypto has accelerated: investment manager VanEck estimated over 10,000 agents by end-2024 and forecasted significant growth into 12 will a human remain in the loop? Near’s researchers emphasize a hybrid approach: AI can handle routine proposals, but humans will retain final authority on critical decisions like fund allocations or major strategy 13 preserves accountability and reduces the risk of catastrophic errors from autonomous 14 stated that delegates can nudge users and recommend votes, but certain categories of proposals require human judgment to “pull the trigger.” This hybrid model aims to balance efficiency with 15 will the rollout happen and what stages are planned?
Rollout is planned in stages: early agents will function like chatbots providing context and draft votes, then agents will represent groups with shared preferences, and finally one agent per individual member may be 16 stage prioritizes safety, transparency, and verifiable training records. Near’s main DAO already uses a sentiment and summarization tool called Pulse to surface important content and community 17 delegate models will have limited agency and focus on improving information flow and voter engagement before broader autonomy is 18 risks and safeguards are being discussed? Key risks include misaligned agent behavior, security vulnerabilities, and concentration of 19 proposed include verifiable training logs, human-in-the-loop gating for critical votes, and phased deployment with 20 recommend auditability and cryptographic proofs of training data to preserve 21 and researchers such as OpenAI and industry asset managers have highlighted both the potential and the security challenges of AI agents in decentralized 22 Asked Questions How do AI delegates improve DAO participation?
AI delegates automate routine voting by representing member preferences and nudging informed participation, helping convert low-engagement members into represented votes and increasing effective 23 delegates vote without user approval? Near’s stated approach favors human oversight; early phases emphasize advisory roles and explicit consent for automated voting, especially on high-impact 24 delegate training methods auditable? The Near team plans verifiable training records that provide cryptographic proof of model inputs and training cycles to maintain alignment and enable 25 Takeaways AI delegates : Automate representation by learning member preferences and recommending or casting 26 rollout : Starts with advisory tools, proceeds to group delegates, then individual digital 27 oversight : Critical decisions remain human-controlled; verifiable training and audits are 28 The Near Foundation’s AI delegate initiative aims to reduce voter apathy and streamline DAO governance by using trained agents that reflect member 29 phased deployment, verifiable training, and human oversight, the project balances automation with 30 for staged releases and governance updates as the system matures. , "description": "AI delegates for Near Protocol DAO learn member preferences to automate or recommend votes, aiming to reduce voter apathy and speed governance decisions."
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