Combined Compute and Storage: Configurable Memristor Arrays to Accelerate Search
Yang Liu, Chris Dwyer, Alvin R. Lebeck

TL;DR
This paper introduces configurable memristor arrays for accelerating search queries, combining storage and computation to improve performance and lifetime in data-intensive applications.
Contribution
It presents MemCAM and hybrid data structures that leverage configurable memristor technology for efficient, durable search acceleration.
Findings
Memristor-based structures outperform traditional memory in search tasks.
Hybrid data structures extend memristor lifetime to years or decades.
Configurable arrays enable tuning between performance and endurance.
Abstract
Emerging technologies present opportunities for system designers to meet the challenges presented by competing trends of big data analytics and limitations on CMOS scaling. Specifically, memristors are an emerging high-density technology where the individual memristors can be used as storage or to perform computation. The voltage applied across a memristor determines its behavior (storage vs. compute), which enables a configurable memristor substrate that can embed computation with storage. This paper explores accelerating point and range search queries as instances of the more general configurable combined compute and storage capabilities of memristor arrays. We first present MemCAM, a configurable memristor-based content addressable memory for the cases when fast, infrequent searches over large datasets are required. For frequent searches, memristor lifetime becomes a concern. To…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Ferroelectric and Negative Capacitance Devices · Advanced biosensing and bioanalysis techniques
