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Polyhedra Network has unveiled breakthrough advancements in zero-knowledge proof systems, achieving over 2000x performance improvements via GPU acceleration.
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The latest optimizations focused on the Sumcheck protocol have taken advantage of the immense processing power of GPUs, promising improved scalability and efficiency in blockchain applications.
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According to Polyhedra lead researcher Tiancheng, “ZK has evolved. What started as a privacy-focused technology is now a gateway to the scalability of blockchain,” highlighting the transformational potential of their innovations.
Polyhedra Network’s breakthrough in zero-knowledge proof systems improves blockchain scalability and AI security, potentially transforming the decentralized application landscape.
Breakthrough performance improvement for zero-knowledge proofs
The team at Polyhedra has made significant progress in the field zero-knowledge proofs (ZKPs)which achieves exceptional performance improvement by using GPU acceleration. This innovation is mainly reflected in their testing Expanderproof systemwhich demonstrated unprecedented execution times compared to traditional CPU methods. When compared to the NVIDIA 4090 and H100 graphics cards, the results highlight the transformative impact of this technology:
- For 134M ports with Mersenne extension:
- CPU time: 15.08 s
- NVIDIA 4090 Time: 41.0 ms
- NVIDIA H100 time: 16.4ms (919x improvement)
- For 0.5B ports with Mersenne extension:
- CPU ran OOM*
- NVIDIA 4090 Time: 59.5 ms
- NVIDIA H100 Time: 1019x improvement
These results demonstrate how GPU acceleration can fundamentally improve the efficiency of ZK-proof systems, paving the way for broader adoption of these technologies in decentralized networks.
Applications of Zero-Knowledge Proofs in AI security and privacy
The intersection of ZKPs and artificial intelligence appears to be a crucial development area. Machine learning without knowledge (zkML) is a notable advancement that allows users to verify the accuracy of AI models without revealing sensitive training data. By integrating ZKPs, developers can create AI systems that ensure user privacy while maintaining transparency.
This is especially critical as AI systems are increasingly relied upon for critical decisions in industries such as healthcare and finance. With zkML, stakeholders can ensure that their algorithms are not only operationally sound, but also free from biases that are common in machine learning datasets.