热门话题
#
Bonk 生态迷因币展现强韧势头
#
有消息称 Pump.fun 计划 40 亿估值发币,引发市场猜测
#
Solana 新代币发射平台 Boop.Fun 风头正劲

Liz Harkavy
加密货币@a16z |在 @Facebook、@NASAJPL 和 @GoldmanSachs 工作 |物理与计算机科学 @MIT Meng EECS @MIT ||
我从告诉人工智能模型它们是错的中获得了一种奇怪的快乐。事实证明,这种直觉实际上是有价值的——人类反馈使人工智能模型变得更好,而@pankaj和Yupp团队构建了一个完美的平台来利用这一点。
我非常兴奋地支持@yupp_ai,因为他们正在构建用于人工智能模型评估的开放基础设施。

Chris Dixon2025年6月14日
I’m excited to announce we’ve led a $33 million seed round in @yupp_ai, a consumer product that allows anyone to discover and compare the latest AI models for free. AI needs robust and trustworthy human data. Crypto is built to provide it.
Modern AI systems are shaped not only by compute and algorithms but by human feedback. Companies use post-training techniques such as Reinforcement Learning from Human Feedback (RLHF) and Direct Preference Optimisation (DPO) to improve their models. These techniques can reduce bias and enable higher quality, more coherent responses to prompts — crucial for accelerating progress in AI. Model evaluation is similarly critical, but a model can only be made better after first deciding what “better” means.
That’s where challenges arise: Companies don't like to share — they keep their data and training processes secret. As a result, model improvements are constrained by what can be learned from closed systems or static benchmarks that are rarely informed by real-world use. These constraints make AI models difficult to evaluate. Users are also left in the dark, with little insight into how their feedback shapes models or whether it’s used at all. Some leaderboards and crowdsourcing sites attempt to shed light here, but they generally don’t enable users to audit their contributions or see any direct benefit from participating. Platforms that claim to be fair and transparent often rely more on good faith than enforceable standards.
We believe crypto can bring transparency and ownership to this murky area of AI. Blockchains can make it easier for people to receive rewards for their contributions. They can also provide AI builders with assurances about the quality and provenance of the feedback data and evaluations they’re incorporating into their models. So users get incentives, builders get trustworthy data, and everyone can audit either side of the open market.
Yupp crowdsources model evaluation: users enter prompts, see multiple AI-generated responses side-by-side, and then pick the best ones. Their choices create digitally signed “packets” of preference data that are useful for AI post-training and evaluation. In addition to users getting access to the latest models for free, they receive rewards based on the feedback that they provide.
Yupp’s design turns human judgment into a renewable economic resource. Data “expires” as newer interactions replace it, creating a natural flywheel: more usage yields fresher evaluations; fresher evaluations yield better models; better models attract more usage. All participants — from users to AI model builders — can participate and see that the same transparent rules apply to everyone, ensuring a credibly neutral marketplace. No one can hide the scoreboard, and no one can manipulate the rewards or results.
The founders bring deep experience in both AI and crypto. They built consumer-scale machine learning products together in the early days of Twitter. @pankaj ran global consumer engineering for Google Pay and @Coinbase. @gilad was a machine learning lead at GoogleX. The early team already counts senior engineers from Google, Coinbase, and top research labs.
AI needs strong, reliable evaluation based on large-scale human input. Crypto is the trust machine that can help deliver it. By enabling people worldwide to contribute model-improving feedback, Yupp aims to become the default evaluation layer for the future of AI. We’re proud to back Yupp and look forward to helping them build the onchain feedback loop that ensures the rewards of AI innovation are shared by everyone who helps create it.

2.54K
热门
排行
收藏
链上热点
X 热门榜
近期融资
最受认可