دانلود مقاله انگلیسی رایگان:از دست دادن جنگل برای درختان: عملکرد کاربردی هوش مصنوعی تا پایان در  مراکز داده لبه ای - 2020
بلافاصله پس از پرداخت دانلود کنید
دانلود مقاله انگلیسی هوش مصنوعی رایگان
  • Missing the Forest for the Trees: End-to-End AI Application Performance in Edge Data Centers Missing the Forest for the Trees: End-to-End AI Application Performance in Edge Data Centers
    Missing the Forest for the Trees: End-to-End AI Application Performance in Edge Data Centers

    سال انتشار:

    2020


    عنوان انگلیسی مقاله:

    Missing the Forest for the Trees: End-to-End AI Application Performance in Edge Data Centers


    ترجمه فارسی عنوان مقاله:

    از دست دادن جنگل برای درختان: عملکرد کاربردی هوش مصنوعی تا پایان در مراکز داده لبه ای


    منبع:

    IEEE - 2020 IEEE International Symposium on High Performance Computer Architecture (HPCA);2020; ; ;10.1109/HPCA47549.2020.00049


    نویسنده:

    Daniel Richins1, Dharmisha Doshi2, Matthew Blackmore2, Aswathy Thulaseedharan Nair2, Neha Pathapati2, Ankit Patel2, Brainard Daguman2, Daniel Dobrijalowski2, Ramesh Illikkal2, Kevin Long2, David Zimmerman2, and Vijay Janapa Reddi1,3


    چکیده انگلیسی:

    Artificial intelligence and machine learning are experiencing widespread adoption in the industry, academia, and even public consciousness. This has been driven by the rapid advances in the applications and accuracy of AI through increasingly complex algorithms and models; this, in turn, has spurred research into developing specialized hardware AI accelerators. The rapid pace of the advances makes it easy to miss the forest for the trees: they are often developed and evaluated in a vacuum without considering the full application environment in which they must eventually operate. In this paper, we deploy and characterize Face Recognition, an AI-centric edge video analytics application built using open source and widely adopted infrastructure and ML tools. We evaluate its holistic, end-to-end behavior in a production- size edge data center and reveal the “AI tax” for all the processing that is involved. Even though the application is built around state-of-the-art AI and ML algorithms, it relies heavily on pre- and post-processing code which must be executed on a general-purpose CPU. As AI-centric applications start to reap the acceleration promised by so many accelerators, we find they impose stresses on the underlying software infrastructure and the data center’s capabilities: storage and network bandwidth become major bottlenecks with increasing AI acceleration. By not having to serve a wide variety of applications, we show that a purposebuilt edge data center can be designed to accommodate the stresses of accelerated AI at 15% lower TCO than one derived from homogeneous servers and infrastructure. We also discuss how our conclusions generalize beyond Face Recognition as many AI-centric applications at the edge rely upon the same underlying software and hardware infrastructure.


    سطح: متوسط
    تعداد صفحات فایل pdf انگلیسی: 14
    حجم فایل: 358 کیلوبایت

    قیمت: رایگان


    توضیحات اضافی:




اگر این مقاله را پسندیدید آن را در شبکه های اجتماعی به اشتراک بگذارید (برای به اشتراک گذاری بر روی ایکن های زیر کلیک کنید)

تعداد نظرات : 0

الزامی
الزامی
الزامی
rss مقالات ترجمه شده rss مقالات انگلیسی rss کتاب های انگلیسی rss مقالات آموزشی
logo-samandehi