367,133 research outputs found
On the Throughput and Energy Efficiency of Cognitive MIMO Transmissions
In this paper, throughput and energy efficiency of cognitive multiple-input
multiple-output (MIMO) systems operating under quality-of-service (QoS)
constraints, interference limitations, and imperfect channel sensing, are
studied. It is assumed that transmission power and covariance of the input
signal vectors are varied depending on the sensed activities of primary users
(PUs) in the system. Interference constraints are applied on the transmission
power levels of cognitive radios (CRs) to provide protection for the PUs whose
activities are modeled as a Markov chain. Considering the reliability of the
transmissions and channel sensing results, a state-transition model is
provided. Throughput is determined by formulating the effective capacity. First
derivative of the effective capacity is derived in the low-power regime and the
minimum bit energy requirements in the presence of QoS limitations and
imperfect sensing results are identified. Minimum energy per bit is shown to be
achieved by beamforming in the maximal-eigenvalue eigenspace of certain
matrices related to the channel matrix. In a special case, wideband slope is
determined for more refined analysis of energy efficiency. Numerical results
are provided for the throughput for various levels of buffer constraints and
different number of transmit and receive antennas. The impact of interference
constraints and benefits of multiple-antenna transmissions are determined. It
is shown that increasing the number of antennas when the interference power
constraint is stringent is generally beneficial. On the other hand, it is shown
that under relatively loose interference constraints, increasing the number of
antennas beyond a certain level does not lead to much increase in the
throughput
Maximizing resource utilization by slicing of superscalar architecture
Superscalar architectural techniques increase instruction throughput from one instruction per cycle to more than one instruction per cycle. Modern processors make use of several processing resources to achieve this kind of throughput. Control units perform various functions to minimize stalls and to ensure a continuous feed of instructions to execution units. It is vital to ensure that instructions ready for execution do not encounter a bottleneck in the execution stage; This thesis work proposes a dynamic scheme to increase efficiency of execution stage by a methodology called block slicing. Implementing this concept in a wide, superscalar pipelined architecture introduces minimal additional hardware and delay in the pipeline. The hardware required for the implementation of the proposed scheme is designed and assessed in terms of cost and delay. Performance measures of speed-up, throughput and efficiency have been evaluated for the resulting pipeline and analyzed
Exascale Deep Learning for Climate Analytics
We extract pixel-level masks of extreme weather patterns using variants of
Tiramisu and DeepLabv3+ neural networks. We describe improvements to the
software frameworks, input pipeline, and the network training algorithms
necessary to efficiently scale deep learning on the Piz Daint and Summit
systems. The Tiramisu network scales to 5300 P100 GPUs with a sustained
throughput of 21.0 PF/s and parallel efficiency of 79.0%. DeepLabv3+ scales up
to 27360 V100 GPUs with a sustained throughput of 325.8 PF/s and a parallel
efficiency of 90.7% in single precision. By taking advantage of the FP16 Tensor
Cores, a half-precision version of the DeepLabv3+ network achieves a peak and
sustained throughput of 1.13 EF/s and 999.0 PF/s respectively.Comment: 12 pages, 5 tables, 4, figures, Super Computing Conference November
11-16, 2018, Dallas, TX, US
Wireless Sensor Networks:A case study for Energy Efficient Environmental Monitoring
Energy efficiency is a key issue for wireless sensor networks, since sensors nodes can often be powered by non-renewable batteries. In this paper, we examine four MAC protocols in terms of energy consumption, throughput and energy efficiency. A forest fire detection application has been simulated using the well-known ns-2 in order to fully evaluate these protocols
- …
