5,852 research outputs found
An Experimental Study of Reduced-Voltage Operation in Modern FPGAs for Neural Network Acceleration
We empirically evaluate an undervolting technique, i.e., underscaling the
circuit supply voltage below the nominal level, to improve the power-efficiency
of Convolutional Neural Network (CNN) accelerators mapped to Field Programmable
Gate Arrays (FPGAs). Undervolting below a safe voltage level can lead to timing
faults due to excessive circuit latency increase. We evaluate the
reliability-power trade-off for such accelerators. Specifically, we
experimentally study the reduced-voltage operation of multiple components of
real FPGAs, characterize the corresponding reliability behavior of CNN
accelerators, propose techniques to minimize the drawbacks of reduced-voltage
operation, and combine undervolting with architectural CNN optimization
techniques, i.e., quantization and pruning. We investigate the effect of
environmental temperature on the reliability-power trade-off of such
accelerators. We perform experiments on three identical samples of modern
Xilinx ZCU102 FPGA platforms with five state-of-the-art image classification
CNN benchmarks. This approach allows us to study the effects of our
undervolting technique for both software and hardware variability. We achieve
more than 3X power-efficiency (GOPs/W) gain via undervolting. 2.6X of this gain
is the result of eliminating the voltage guardband region, i.e., the safe
voltage region below the nominal level that is set by FPGA vendor to ensure
correct functionality in worst-case environmental and circuit conditions. 43%
of the power-efficiency gain is due to further undervolting below the
guardband, which comes at the cost of accuracy loss in the CNN accelerator. We
evaluate an effective frequency underscaling technique that prevents this
accuracy loss, and find that it reduces the power-efficiency gain from 43% to
25%.Comment: To appear at the DSN 2020 conferenc
Scrooge Attack: Undervolting ARM Processors for Profit
Latest ARM processors are approaching the computational power of x86
architectures while consuming much less energy. Consequently, supply follows
demand with Amazon EC2, Equinix Metal and Microsoft Azure offering ARM-based
instances, while Oracle Cloud Infrastructure is about to add such support. We
expect this trend to continue, with an increasing number of cloud providers
offering ARM-based cloud instances.
ARM processors are more energy-efficient leading to substantial electricity
savings for cloud providers. However, a malicious cloud provider could
intentionally reduce the CPU voltage to further lower its costs. Running
applications malfunction when the undervolting goes below critical thresholds.
By avoiding critical voltage regions, a cloud provider can run undervolted
instances in a stealthy manner.
This practical experience report describes a novel attack scenario: an attack
launched by the cloud provider against its users to aggressively reduce the
processor voltage for saving energy to the last penny. We call it the Scrooge
Attack and show how it could be executed using ARM-based computing instances.
We mimic ARM-based cloud instances by deploying our own ARM-based devices using
different generations of Raspberry Pi. Using realistic and synthetic workloads,
we demonstrate to which degree of aggressiveness the attack is relevant. The
attack is unnoticeable by our detection method up to an offset of -50mV. We
show that the attack may even remain completely stealthy for certain workloads.
Finally, we propose a set of client-based detection methods that can identify
undervolted instances. We support experimental reproducibility and provide
instructions to reproduce our results.Comment: European Commission Project: LEGaTO - Low Energy Toolset for
Heterogeneous Computing (EC-H2020-780681
Exceeding Conservative Limits: A Consolidated Analysis on Modern Hardware Margins
Modern large-scale computing systems (data centers, supercomputers, cloud and
edge setups and high-end cyber-physical systems) employ heterogeneous
architectures that consist of multicore CPUs, general-purpose many-core GPUs,
and programmable FPGAs. The effective utilization of these architectures poses
several challenges, among which a primary one is power consumption. Voltage
reduction is one of the most efficient methods to reduce power consumption of a
chip. With the galloping adoption of hardware accelerators (i.e., GPUs and
FPGAs) in large datacenters and other large-scale computing infrastructures, a
comprehensive evaluation of the safe voltage reduction levels for each
different chip can be employed for efficient reduction of the total power. We
present a survey of recent studies in voltage margins reduction at the system
level for modern CPUs, GPUs and FPGAs. The pessimistic voltage guardbands
inserted by the silicon vendors can be exploited in all devices for significant
power savings. On average, voltage reduction can reach 12% in multicore CPUs,
20% in manycore GPUs and 39% in FPGAs.Comment: Accepted for publication in IEEE Transactions on Device and Materials
Reliabilit
Intrinsically Evolvable Artificial Neural Networks
Dedicated hardware implementations of neural networks promise to provide faster, lower power operation when compared to software implementations executing on processors. Unfortunately, most custom hardware implementations do not support intrinsic training of these networks on-chip. The training is typically done using offline software simulations and the obtained network is synthesized and targeted to the hardware offline. The FPGA design presented here facilitates on-chip intrinsic training of artificial neural networks. Block-based neural networks (BbNN), the type of artificial neural networks implemented here, are grid-based networks neuron blocks. These networks are trained using genetic algorithms to simultaneously optimize the network structure and the internal synaptic parameters. The design supports online structure and parameter updates, and is an intrinsically evolvable BbNN platform supporting functional-level hardware evolution. Functional-level evolvable hardware (EHW) uses evolutionary algorithms to evolve interconnections and internal parameters of functional modules in reconfigurable computing systems such as FPGAs. Functional modules can be any hardware modules such as multipliers, adders, and trigonometric functions. In the implementation presented, the functional module is a neuron block. The designed platform is suitable for applications in dynamic environments, and can be adapted and retrained online. The online training capability has been demonstrated using a case study. A performance characterization model for RC implementations of BbNNs has also been presented
An experimental study of reduced-voltage operation in modern FPGAs for neural network acceleration
We empirically evaluate an undervolting technique, i.e., underscaling the circuit supply voltage below the nominal level, to improve the power-efficiency of Convolutional Neural Network (CNN) accelerators mapped to Field Programmable Gate Arrays (FPGAs). Undervolting below a safe voltage level can lead to timing faults due to excessive circuit latency increase. We evaluate the reliability-power trade-off for such accelerators. Specifically, we experimentally study the reduced-voltage operation of multiple components of real FPGAs, characterize the corresponding reliability behavior of CNN accelerators, propose techniques to minimize the drawbacks of reduced-voltage operation, and combine undervolting with architectural CNN optimization techniques, i.e., quantization and pruning. We investigate the effect ofenvironmental temperature on the reliability-power trade-off of such accelerators. We perform experiments on three identical samples of modern Xilinx ZCU102 FPGA platforms with five state-of-the-art image classification CNN benchmarks. This approach allows us to study the effects of our undervolting technique for both software and hardware variability. We achieve more than 3X power-efficiency (GOPs/W ) gain via undervolting. 2.6X of this gain is the result of eliminating the voltage guardband region, i.e., the safe voltage region below the nominal level that is set by FPGA vendor to ensure correct functionality in worst-case environmental and circuit conditions. 43% of the power-efficiency gain is due to further undervolting below the guardband, which comes at the cost of accuracy loss in the CNN accelerator. We evaluate an effective frequency underscaling technique that prevents this accuracy loss, and find that it reduces the power-efficiency gain from 43% to 25%.The work done for this paper was partially supported by a HiPEAC Collaboration Grant funded by the H2020 HiPEAC Project under grant agreement No. 779656. The research leading to these results has received funding from the European Union’s Horizon 2020 Programme under the LEGaTO Project (www.legato-project.eu), grant agreement No. 780681.Peer ReviewedPostprint (author's final draft
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