计算机科学
巨量平行
软件
计算机硬件
内存处理
瓶颈
计算机工程
计算机体系结构
并行计算
嵌入式系统
情报检索
搜索引擎
Web搜索查询
按示例查询
程序设计语言
作者
Yifei Yu,Shaocong Wang,Woyu Zhang,Xinyuan Zhang,Xiuzhe Wu,Yangu He,Jichang Yang,Yue Zhang,Ning Lin,Bo Wang,Xi Chen,Songqi Wang,Xumeng Zhang,Xiaojuan Qi,Zhongrui Wang,Dashan Shang,Qi Liu,Kwang‐Ting Cheng,Ming Liu
出处
期刊:Cornell University - arXiv
日期:2024-04-15
标识
DOI:10.48550/arxiv.2404.09613
摘要
Human beings construct perception of space by integrating sparse observations into massively interconnected synapses and neurons, offering a superior parallelism and efficiency. Replicating this capability in AI finds wide applications in medical imaging, AR/VR, and embodied AI, where input data is often sparse and computing resources are limited. However, traditional signal reconstruction methods on digital computers face both software and hardware challenges. On the software front, difficulties arise from storage inefficiencies in conventional explicit signal representation. Hardware obstacles include the von Neumann bottleneck, which limits data transfer between the CPU and memory, and the limitations of CMOS circuits in supporting parallel processing. We propose a systematic approach with software-hardware co-optimizations for signal reconstruction from sparse inputs. Software-wise, we employ neural field to implicitly represent signals via neural networks, which is further compressed using low-rank decomposition and structured pruning. Hardware-wise, we design a resistive memory-based computing-in-memory (CIM) platform, featuring a Gaussian Encoder (GE) and an MLP Processing Engine (PE). The GE harnesses the intrinsic stochasticity of resistive memory for efficient input encoding, while the PE achieves precise weight mapping through a Hardware-Aware Quantization (HAQ) circuit. We demonstrate the system's efficacy on a 40nm 256Kb resistive memory-based in-memory computing macro, achieving huge energy efficiency and parallelism improvements without compromising reconstruction quality in tasks like 3D CT sparse reconstruction, novel view synthesis, and novel view synthesis for dynamic scenes. This work advances the AI-driven signal restoration technology and paves the way for future efficient and robust medical AI and 3D vision applications.
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