Hash First, Argue Later: Adaptive Verifiable Computations on Outsourced Data

D. Fiore, C. Fournet, Esha Ghosh, Markulf Kohlweiss, O. Ohrimenko, Bryan Parno
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引用次数: 63

Abstract

Proof systems for verifiable computation (VC) have the potential to make cloud outsourcing more trustworthy. Recent schemes enable a verifier with limited resources to delegate large computations and verify their outcome based on succinct arguments: verification complexity is linear in the size of the inputs and outputs (not the size of the computation). However, cloud computing also often involves large amounts of data, which may exceed the local storage and I/O capabilities of the verifier, and thus limit the use of VC. In this paper, we investigate multi-relation hash & prove schemes for verifiable computations that operate on succinct data hashes. Hence, the verifier delegates both storage and computation to an untrusted worker. She uploads data and keeps hashes; exchanges hashes with other parties; verifies arguments that consume and produce hashes; and selectively downloads the actual data she needs to access. Existing instantiations that fit our definition either target restricted classes of computations or employ relatively inefficient techniques. Instead, we propose efficient constructions that lift classes of existing arguments schemes for fixed relations to multi-relation hash & prove schemes. Our schemes (1) rely on hash algorithms that run linearly in the size of the input; (2) enable constant-time verification of arguments on hashed inputs; (3) incur minimal overhead for the prover. Their main benefit is to amortize the linear cost for the verifier across all relations with shared I/O. Concretely, compared to solutions that can be obtained from prior work, our new hash & prove constructions yield a 1,400x speed-up for provers. We also explain how to further reduce the linear verification costs by partially outsourcing the hash computation itself, obtaining a 480x speed-up when applied to existing VC schemes, even on single-relation executions.
先散列,后争论:外包数据的自适应可验证计算
可验证计算(VC)的证明系统有可能使云外包更值得信赖。最近的方案使具有有限资源的验证者能够委派大型计算并基于简洁的参数验证其结果:验证复杂性在输入和输出的大小(而不是计算的大小)中是线性的。然而,云计算也经常涉及大量数据,这些数据可能超出验证者的本地存储和I/O能力,从而限制了VC的使用。在本文中,我们研究了在简洁数据哈希上操作的可验证计算的多关系哈希和证明方案。因此,验证者将存储和计算都委托给不受信任的工作者。她上传数据并保存哈希;与其他各方交换哈希值;验证使用和产生哈希值的参数;选择性地下载她需要访问的实际数据。符合我们定义的现有实例要么针对受限制的计算类,要么采用相对低效的技术。相反,我们提出了有效的构造,将固定关系的现有参数方案提升为多关系哈希和证明方案。我们的方案(1)依赖于在输入大小上线性运行的哈希算法;(2)对散列输入的参数进行恒时验证;(3)为证明者带来最小的开销。它们的主要好处是在所有具有共享I/O的关系中分摊验证者的线性成本。具体来说,与以前的解决方案相比,我们的新哈希和证明结构为证明者带来了1400倍的速度提升。我们还解释了如何通过部分外包哈希计算本身来进一步降低线性验证成本,从而在应用于现有VC方案时获得480倍的加速,甚至在单关系执行时也是如此。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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