Gate Square “Creator Certification Incentive Program” — Recruiting Outstanding Creators!
Join now, share quality content, and compete for over $10,000 in monthly rewards.
How to Apply:
1️⃣ Open the App → Tap [Square] at the bottom → Click your [avatar] in the top right.
2️⃣ Tap [Get Certified], submit your application, and wait for approval.
Apply Now: https://www.gate.com/questionnaire/7159
Token rewards, exclusive Gate merch, and traffic exposure await you!
Details: https://www.gate.com/announcements/article/47889
Many reasons for the failure of AI × Crypto projects are not actually due to model capabilities, but rather the data itself.
Untrustworthy, non-reproducible, and unverified data sources ultimately lead to AI outputs that cannot be validated, let alone form long-term value on the chain.
@useTria's entry point is precisely here.
It is not about building models or application shells, but focusing on the most overlooked yet critical layer in AI training and inference: structured, verifiable data foundations.
Tria clearly records the source, contribution, and usage relationships of data through on-chain mechanisms, allowing AI systems to no longer rely on black-box data inputs, but to establish auditable and traceable trust pathways. This is especially important for AI Agents, on-chain decision systems, and future autonomous protocols.
From this perspective, the value of $TRIA does not come from short-term narratives, but from whether it can become a default layer in AI infrastructure that is routinely invoked.
If AI is to truly scale and operate on the chain, data layers like Tria are not optional but essential.
@KaitoAI @cookiedotfuncn @cookiedotfun @MindoAI #TriaTreasure @easydotfunX