Publication | Open Access
Deep Learning Inference in Facebook Data Centers: Characterization, Performance Optimizations and Hardware Implications
82
Citations
42
References
2018
Year
Graph Neural NetworkEngineeringMachine LearningData ScienceMachine Learning ModelNetwork EstimationSparse Neural NetworkFederated LearningDeep Learning InferenceFacebook Data CentersDeep Learning TechniquesMachine Learning ModelsHardware ImplicationsComputer ScienceNeural Architecture SearchEmbedded Machine LearningDeep LearningDeep Learning Models
The application of deep learning techniques resulted in remarkable improvement of machine learning models. In this paper provides detailed characterizations of deep learning models used in many Facebook social network services. We present computational characteristics of our models, describe high performance optimizations targeting existing systems, point out their limitations and make suggestions for the future general-purpose/accelerated inference hardware. Also, we highlight the need for better co-design of algorithms, numerics and computing platforms to address the challenges of workloads often run in data centers.
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