Public Blockchain Supra Launches Native Threshold-style AI Oracle, Driving Deep Integration of AI and Blockchain

Blockbeats
29 May

BlockBeats News, May 29th, L1 blockchain Supra launched a native Threshold-style AI Oracle, aiming to address pain points in the traditional AI off-chain integration process such as complexity, low security, and lack of credibility. The innovation of this protocol lies in integrating AI inference natively into the blockchain, ensuring that smart contracts can securely call AI insights in real-time through context-aware inference, verifiable AI logic, and on-demand activation. These core features not only significantly reduce reliance on off-chain AI services but also greatly lower transaction costs and simplify dApp architecture, further driving the development of more intelligent, dynamic, and decentralized on-chain applications, accelerating the deep integration of AI and blockchain.

Furthermore, this Threshold-style AI Oracle protocol also enriches Supra's vertical integration technology stack in native price oracles, dVRF, automation, cross-chain without bridges, and other areas, providing developers with more complete and powerful infrastructure support.

Disclaimer: Investing carries risk. This is not financial advice. The above content should not be regarded as an offer, recommendation, or solicitation on acquiring or disposing of any financial products, any associated discussions, comments, or posts by author or other users should not be considered as such either. It is solely for general information purpose only, which does not consider your own investment objectives, financial situations or needs. TTM assumes no responsibility or warranty for the accuracy and completeness of the information, investors should do their own research and may seek professional advice before investing.

Most Discussed

  1. 1
     
     
     
     
  2. 2
     
     
     
     
  3. 3
     
     
     
     
  4. 4
     
     
     
     
  5. 5
     
     
     
     
  6. 6
     
     
     
     
  7. 7
     
     
     
     
  8. 8
     
     
     
     
  9. 9
     
     
     
     
  10. 10