Opis projektu
Poprawa efektywności uczenia głębokiego
Uczenie głębokie umożliwia powstawanie wielu rozwiązań przydatnych nowoczesnemu społeczeństwu, w postaci różnych narzędzi i urządzeń stosowanych zarówno w codziennym życiu, jak i w przemyśle. Mimo tych zalet uczenie głębokie wymaga od urządzeń dużo pamięci, mocy obliczeniowej i energii, co utrudnia jego wykorzystanie w narzędziach codziennego użytku. Zespół finansowanego ze środków UE projektu REDIAL planuje to zmienić, badając problem tego zapotrzebowania na zasoby i próbując mu zaradzić. W tym celu badacze projektu wykorzystają skuteczne programy trenujące i przeprowadzą dalsze badania nad efektywnością uczenia głębokiego.
Cel
In just a few short years, breakthroughs from the field of deep learning have transformed how computers perform a wide-variety of tasks such as recognizing a face, driving a car or translating a language. Not only has deep learning become an everyday tool, it is also the most promising direction for tackling a number of still open problems in machine learning and artificial intelligence. However, routine deep learning activities (such as training a model) exert severe resource demands (e.g. memory, compute, energy) that are currently slowing the advancement of the field, and preventing full global participation in this research to only the largest of companies.
The goal of REDIAL is to solve core technical challenges that span the areas of machine learning and system research which collectively can enable a radical jump in the efficiency of deep learning. It aims to address both the challenge of high training costs and time, as well as the barrier to deploying models on constrained devices (like wearables, sensors) that currently require new efficiency techniques to be invented each time a deep learning innovation occurs. To accomplish this REDIAL takes two complementary approaches. First, it seeks to build a theoretical understanding of current approaches to deep learning efficiency, a desperately needed step given current over reliance on empirical observations. Second, it aims to develop new architectures and methods for training and inference that tackle core efficiency bottlenecks, such as: dependencies preventing parallelization and excessive on-chip data movement; while also opening new opportunities including the greater adoption of analog processing within accelerators. REDIAL aims to change the way the world trains its models, and deploys them to constrained devices, by producing a series of new deep architectures and algorithms with properties that promote high efficiency that can serve as a foundation for new machine learning innovation.
Dziedzina nauki
Program(-y)
Temat(-y)
System finansowania
ERC-STG - Starting GrantInstytucja przyjmująca
CB2 1TN Cambridge
Zjednoczone Królestwo