Why zkML? Because Tencent’s latest developer report shows that over 50% of new production code is now AI-generated, with 90%+ of engineers using AI coding assistants daily. Software is no longer manually authored — it’s produced by models at scale. When AI shapes the logic that runs real systems, how do we verify the reasoning behind that code?
2/ AI-generated code defines: - Service behavior - Failure recovery paths - System coordination - Security boundaries This isn’t “autocomplete.” It’s AI determining how systems operate in production. Correctness becomes a reasoning assurance problem — not a formatting problem.
3/ zkML enables verifiable code generation: - Proof the model followed the intended development policy - Proof no unintended logic branches were introduced - Without exposing proprietary architectures or internal repos When execution logic is determined by a model, verifying its reasoning equals verifying the system itself.
4/ Imagine development where: ✅Every function ships with a cryptographic execution trace ✅Enterprises can audit behavior without revealing codebases ✅Software supply chains trust code through verifiability, not statements zkML makes code production auditable at scale.
5/ As AI becomes the author of software, trust must shift from belief → to verification. That’s what @PolyhedraZK is building: verifiable intelligence at the code execution layer.
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