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Open AccessProceedings ArticleDOI

In-Datacenter Performance Analysis of a Tensor Processing Unit

TLDR
The Tensor Processing Unit (TPU) as discussed by the authors is a custom ASIC deployed in datacenters since 2015 that accelerates the inference phase of neural networks (NN) using a 65,536 8-bit MAC matrix multiply unit that offers a peak throughput of 92 TeraOps/second (TOPS).
Abstract
Many architects believe that major improvements in cost-energy-performance must now come from domain-specific hardware. This paper evaluates a custom ASIC---called a Tensor Processing Unit (TPU) --- deployed in datacenters since 2015 that accelerates the inference phase of neural networks (NN). The heart of the TPU is a 65,536 8-bit MAC matrix multiply unit that offers a peak throughput of 92 TeraOps/second (TOPS) and a large (28 MiB) software-managed on-chip memory. The TPU's deterministic execution model is a better match to the 99th-percentile response-time requirement of our NN applications than are the time-varying optimizations of CPUs and GPUs that help average throughput more than guaranteed latency. The lack of such features helps explain why, despite having myriad MACs and a big memory, the TPU is relatively small and low power. We compare the TPU to a server-class Intel Haswell CPU and an Nvidia K80 GPU, which are contemporaries deployed in the same datacenters. Our workload, written in the high-level TensorFlow framework, uses production NN applications (MLPs, CNNs, and LSTMs) that represent 95% of our datacenters' NN inference demand. Despite low utilization for some applications, the TPU is on average about 15X -- 30X faster than its contemporary GPU or CPU, with TOPS/Watt about 30X -- 80X higher. Moreover, using the CPU's GDDR5 memory in the TPU would triple achieved TOPS and raise TOPS/Watt to nearly 70X the GPU and 200X the CPU.

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Journal ArticleDOI

DLUX: A LUT-Based Near-Bank Accelerator for Data Center Deep Learning Training Workloads

TL;DR: DLUX, a high performance and energy-efficient 3D-PIM accelerator for DNN training using the near-bank architecture, is proposed and a small scratchpad buffer together with a lightweight transformation engine is proposed to exploit the locality and enable flexible data layout without the expensive cache.
Proceedings ArticleDOI

Optimizing tensor contractions for embedded devices with racetrack memory scratch-pads

TL;DR: This work aims at investigating strategies for performance- and energy-efficient tensor contractions on embedded systems, using racetrack memory (RTM)-based scratch-pad memory (SPM) and proposes optimizations to reduce the shifting overhead in RTMs.
Posted Content

SimVLM: Simple Visual Language Model Pretraining with Weak Supervision

TL;DR: SimVLM as discussed by the authors reduces the training complexity by exploiting large-scale weak supervision, and is trained end-to-end with a single prefix language modeling objective, achieving state-of-the-art results on a wide range of discriminative and generative vision-language benchmarks.
Proceedings ArticleDOI

CELIA: A Device and Architecture Co-Design Framework for STT-MRAM-Based Deep Learning Acceleration

TL;DR: This paper enables STT-MRAM, for the firs time, as an effective and practical deep learning accelerator, and proposes a full-stack solution across multiple design layers, including device-level fabrication, circuit-level enhancement, architecture-level data quantization, and system-level accelerator design.
Proceedings Article

CacheCloud: Towards Speed-of-light Datacenter Communication

TL;DR: It is argued that in this environment, a major performance bottleneck is DRAM latency, which has stagnated at 100ns per access, and data should be kept entirely in the CPU cache which has an order of magnitude lower latency and RAM should be considered a slower backing store.
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