Low-power devices are usually highly constrained in terms of CPU computing power, memory, and GPGPU resources for real-time applications to run. In this paper, we describe RAPID, a complete framework suite for computation offloading to help low-powered devices overcome these limitations. RAPID supports CPU and GPGPU computation offloading on Linux and Android devices. Moreover, the framework implements lightweight secure data transmission of the offloading operations. We present the architecture of the framework, showing the integration of the CPU and GPGPU offloading modules. We show by extensive experiments that the overhead introduced by the security layer is negligible. We present the first benchmark results showing that Java/Android GP...
Attacks on data stored in mobile devices are increasingly getting more efficient and successful, esp...
Driven by breakthroughs in mobile and IoT devices, on-device computation becomes promising. Meanwhil...
AbstractThis position paper presents a novel heterogeneous CPU-GPU multi-level cloud acceleration fo...
Low-power devices are usually highly constrained in terms of CPU computing power, memory, and GPGPU ...
37th IEEE International Conference on Distributed Computing Systems, ICDCS 2017, Atlanta, GA, USA, 5...
ABSTRACT As GPU becomes an integrated component in handheld devices like smartphones, we have been i...
Computation offloading has been proposed as an efficient technique to mitigate the computational and...
International audienceMobile devices are equipped with limited processing power and battery charge. ...
ii Multicore CPUs (Central Processing Units) and GPUs (Graphics Processing Units) are omnipresent in...
Nowadays, mobile devices are suffering from limited computational resource. To increase capabilities...
International audienceLow-power operating system runtimes used on IoT microcontrollers typically pro...
Abstract. The Graphics Processor Unit (GPU) has expanded its role from an accelerator for rendering ...
Smart mobile devices including smart phones and tablets have become one of the most popular devices ...
Abstract—Graphics processing units (GPUs) are increasingly being used for general purpose parallel c...
Mobile devices like smartphones can augment their low-power processors by offloading portions of mob...
Attacks on data stored in mobile devices are increasingly getting more efficient and successful, esp...
Driven by breakthroughs in mobile and IoT devices, on-device computation becomes promising. Meanwhil...
AbstractThis position paper presents a novel heterogeneous CPU-GPU multi-level cloud acceleration fo...
Low-power devices are usually highly constrained in terms of CPU computing power, memory, and GPGPU ...
37th IEEE International Conference on Distributed Computing Systems, ICDCS 2017, Atlanta, GA, USA, 5...
ABSTRACT As GPU becomes an integrated component in handheld devices like smartphones, we have been i...
Computation offloading has been proposed as an efficient technique to mitigate the computational and...
International audienceMobile devices are equipped with limited processing power and battery charge. ...
ii Multicore CPUs (Central Processing Units) and GPUs (Graphics Processing Units) are omnipresent in...
Nowadays, mobile devices are suffering from limited computational resource. To increase capabilities...
International audienceLow-power operating system runtimes used on IoT microcontrollers typically pro...
Abstract. The Graphics Processor Unit (GPU) has expanded its role from an accelerator for rendering ...
Smart mobile devices including smart phones and tablets have become one of the most popular devices ...
Abstract—Graphics processing units (GPUs) are increasingly being used for general purpose parallel c...
Mobile devices like smartphones can augment their low-power processors by offloading portions of mob...
Attacks on data stored in mobile devices are increasingly getting more efficient and successful, esp...
Driven by breakthroughs in mobile and IoT devices, on-device computation becomes promising. Meanwhil...
AbstractThis position paper presents a novel heterogeneous CPU-GPU multi-level cloud acceleration fo...