Why zkML? Because @OpenText just unveiled its Next-Generation AI Data Platform, built to let AI systems interpret, organize, and act on enterprise information at massive scale.
When AI becomes the interface to an organization’s source-of-truth data, verifying how conclusions are derived becomes a core requirement.

2/
This platform doesn’t just store content.
It fuses documents, records, and operational knowledge into AI-ready context — powering agents that summarize, classify, extract insights, and drive automated decisions.
But as enterprise workflows become AI-interpreted, the challenge shifts from scale to interpretation integrity.
3/
The issue: enterprise AI often functions as a black-box interpreter. Teams see outputs, but not the reasoning behind them:
-Which artifacts shaped the conclusion
-Whether policy constraints were followed
-Whether the correct model version was used
-Whether logic drifted outside approved boundaries
For operational decisions, unseen reasoning is unacceptable.
4/
That’s where zkML matters:
✅ Prove insights were generated using the approved model
✅Prove which inputs contributed without revealing their content
✅ Prove reasoning chains followed organizational policies
✅Allow auditors to validate outcomes while keeping data sealed
zkML transforms AI-generated insights into verifiable enterprise intelligence.
5/
As AI rewires how organizations understand and act on their own data, explainability isn’t enough — proof is required.
That’s what @PolyhedraZK is building: workflows you can verify, not just trust.
2,188
17
本页面内容由第三方提供。除非另有说明,欧易不是所引用文章的作者,也不对此类材料主张任何版权。该内容仅供参考,并不代表欧易观点,不作为任何形式的认可,也不应被视为投资建议或购买或出售数字资产的招揽。在使用生成式人工智能提供摘要或其他信息的情况下,此类人工智能生成的内容可能不准确或不一致。请阅读链接文章,了解更多详情和信息。欧易不对第三方网站上的内容负责。包含稳定币、NFTs 等在内的数字资产涉及较高程度的风险,其价值可能会产生较大波动。请根据自身财务状况,仔细考虑交易或持有数字资产是否适合您。

