Fast Multiplication in Binary Fields on GPUs via Register Cache.

ICS(2016)

引用 27|浏览190
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摘要
Finite fields of characteristic 2 -- \"binary fields\" -- are used in a variety of applications in cryptography and data storage. Multiplication of two finite field elements is a fundamental operation and a well-known computational bottleneck in many of these applications, as they often require multiplication of a large number of elements. In this work we focus on accelerating multiplication in \"large\" binary fields of sizes greater than 232. We devise a new parallel algorithm optimized for execution on GPUs. This algorithm makes it possible to multiply large number of finite field elements, and achieves high performance via bit-slicing and fine-grained parallelization. The key to the efficient implementation of the algorithm is a novel performance optimization methodology we call the register cache. This methodology speeds up an algorithm that caches its input in shared memory by transforming the code to use per-thread registers instead. We show how to replace shared memory accesses with the shuffle() intra-warp communication instruction, thereby significantly reducing or even eliminating shared memory accesses. We thoroughly analyze the register cache approach and characterize its benefits and limitations. We apply the register cache methodology to the implementation of the binary finite field multiplication algorithm on GPUs. We achieve up to 138x speedup for fields of size 232 over the popular, highly optimized Number Theory Library (NTL) [26], which uses the specialized CLMUL CPU instruction, and over 30x for larger fields of size below 2256. Our register cache implementation enables up to 50% higher performance compared to the traditional shared-memory based design.
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