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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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Proceedings ArticleDOI

Algorithm-Hardware Co-Design of Adaptive Floating-Point Encodings for Resilient Deep Learning Inference

TL;DR: An algorithm-hardware co-design centered around a novel floating-point inspired number format, AdaptivFloat, that dynamically maximizes and optimally clips its available dynamic range, at a layer granularity, in order to create faithful encodings of neural network parameters.
Proceedings ArticleDOI

TENET: a framework for modeling tensor dataflow based on relation-centric notation

TL;DR: TENET as mentioned in this paper is a framework that models hardware dataflow of tensor applications using relation-centric notation, which is more expressive than the compute-centric and data-centric notations by using more sophisticated affine transformations.
Journal ArticleDOI

Efficient training of physics-informed neural networks via importance sampling

TL;DR: Physics-informed neural networks (PINNs) as mentioned in this paper are a class of deep neural networks that are trained, using automatic differentiation, to compute the response of systems governed by partial diffe...
Proceedings ArticleDOI

FIdelity: Efficient Resilience Analysis Framework for Deep Learning Accelerators

TL;DR: FIdelity enables resilience analysis starting from the very beginning of the design process to ensure that the reliability requirements are met, so that deep learning accelerators can be safely deployed for a wide range of applications, including safety-critical applications such as self-driving cars.
Proceedings ArticleDOI

Llama: A Heterogeneous & Serverless Framework for Auto-Tuning Video Analytics Pipelines

TL;DR: In this paper, the authors present Llama, a framework for auto-tuning video pipelines, which is based on a cost-based optimizer to assign configurations across heterogeneous hardware that best meet the calculated per-invocation latency.
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