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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

Machine Learning on DNA-Encoded Libraries: A New Paradigm for Hit Finding

TL;DR: In this article, a new approach applying machine learning to DEL selection data by identifying active molecules from large libraries of commercial and easily synthesizable compounds is presented. But the approach is limited to DEL-encoded small molecule libraries.
Proceedings ArticleDOI

Search to Distill: Pearls Are Everywhere but Not the Eyes

TL;DR: This work presents a new architecture-aware Knowledge Distillation approach that finds student models (pearls for the teacher) that are best for distilling the given teacher model and leverages Neural Architecture Search (NAS), equipped with the authors' KD-guided reward, to search for the best student architectures for a given teacher.
Journal ArticleDOI

Suitability of recent hardware accelerators (DSPs, FPGAs, and GPUs) for computer vision and image processing algorithms

TL;DR: The practical details of chip architectures, available tools and utilities, development time, and the relative advantages and disadvantages of using DSPs, FPGAs, and GPUs are discussed.
Posted Content

Heterogeneity-Aware Cluster Scheduling Policies for Deep Learning Workloads

TL;DR: Gavel is proposed, a heterogeneity-aware scheduler that systematically generalizes a wide range of existing scheduling policies that allow a heterogeneous cluster to sustain higher input load, and improve end objectives such as average job completion time and makespan by up to 3.5x compared to heterogeneity-agnostic policies.
Journal ArticleDOI

Review and Benchmarking of Precision-Scalable Multiply-Accumulate Unit Architectures for Embedded Neural-Network Processing

TL;DR: This work exhaustively reviews the state-of-the-art precision-scalable MAC architectures and unifies them in a new taxonomy, aiming to understand the key trends to reduce computation costs in neural-network processing.
References
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TL;DR: This best-selling title, considered for over a decade to be essential reading for every serious student and practitioner of computer design, has been updated throughout to address the most important trends facing computer designers today.
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