基于多任务学习的RocksDB高维贝叶斯优化

Sami Alabed, Eiko Yoneki
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引用次数: 14

摘要

RocksDB是一个通用的嵌入式键值存储,可用于多种不同的设置。它的多功能性是以复杂的调优配置为代价的。本文研究了通过自动调整不同范围的10个参数来最大化RocksDB 10操作的吞吐量。现成的优化器在高维问题空间中挣扎,并且需要大量的训练样本。我们提出了两种技术来解决这个问题:多任务建模和聚类降维。通过在模型中加入相邻优化,该模型收敛速度更快,并发现了其他调谐器无法找到的复杂设置。这种方法有额外的计算复杂性开销,我们通过对RocksDB的了解,手动为每个子目标分配参数,从而减轻了这一点。然后将该模型整合到标准贝叶斯优化循环中,以找到最大化RocksDB 10吞吐量的参数。通过对Facebook社交图谱流量的模拟进行基准测试,我们的方法实现了x1.3的改进,与其他需要50个步骤的先进方法相比,我们的方法只需要10个优化步骤。
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High-Dimensional Bayesian Optimization with Multi-Task Learning for RocksDB
RocksDB is a general-purpose embedded key-value store used in multiple different settings. Its versatility comes at the cost of complex tuning configurations. This paper investigates maximizing the throughput of RocksDB 10 operations by auto-tuning ten parameters of varying ranges. Off-the-shelf optimizers struggle with high-dimensional problem spaces and require a large number of training samples. We propose two techniques to tackle this problem: multitask modeling and dimensionality reduction through clustering. By incorporating adjacent optimization in the model, the model converged faster and found complicated settings that other tuners could not find. This approach had an additional computational complexity overhead, which we mitigated by manually assigning parameters to each sub-goal through our knowledge of RocksDB. The model is then incorporated in a standard Bayesian Optimization loop to find parameters that maximize RocksDB's 10 throughput. Our method achieved x1.3 improvement when bench-marked against a simulation of Facebook's social graph traffic, and converged in ten optimization steps compared to other state-of-the-art methods that required fifty steps.
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