4.6 Article

Resistive RAM Endurance: Array-Level Characterization and Correction Techniques Targeting Deep Learning Applications

Journal

IEEE TRANSACTIONS ON ELECTRON DEVICES
Volume 66, Issue 3, Pages 1281-1288

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TED.2019.2894387

Keywords

Characterization; deep learning; HfO2; performance; reliability; resistive RAM (RRAM); variability

Funding

  1. Defense Advanced Research Projects Agency
  2. NSF-SRC/Nanoelectronics Research Initiative/Global Research Collaboration Energy-Efficient Computing: From Devices to Architectures
  3. STARnet SONIC
  4. NSF
  5. Stanford SystemX Alliance
  6. NTU Startup Grant [M4082035]
  7. AME Programmatic Hardware Software Co-Optimization for Deep Learning [M4070301]

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Limited endurance of resistive RAM (RRAM) is a major challenge for future computing systems. Using thorough endurance tests that incorporate fine-grained read operations at the array level, we quantify for the first time temporary write failures (TWFs) caused by intrinsic RRAM cycle-to-cycle and cell-to-cell variations. We also quantify permanent write failures (PWFs) caused by irreversible breakdown/dissolution of the conductive filament. We show how technology-, RRAM programing-, and system resilience-level solutions can be effectively combined to design new generations of energy-efficient computing systems that can successfully run deep learning (and other machine learning) applications despite TWFs and PWFs. We analyze corresponding system lifetimes and TWF bit error ratio.

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