1,570 research outputs found
An IoT Endpoint System-on-Chip for Secure and Energy-Efficient Near-Sensor Analytics
Near-sensor data analytics is a promising direction for IoT endpoints, as it
minimizes energy spent on communication and reduces network load - but it also
poses security concerns, as valuable data is stored or sent over the network at
various stages of the analytics pipeline. Using encryption to protect sensitive
data at the boundary of the on-chip analytics engine is a way to address data
security issues. To cope with the combined workload of analytics and encryption
in a tight power envelope, we propose Fulmine, a System-on-Chip based on a
tightly-coupled multi-core cluster augmented with specialized blocks for
compute-intensive data processing and encryption functions, supporting software
programmability for regular computing tasks. The Fulmine SoC, fabricated in
65nm technology, consumes less than 20mW on average at 0.8V achieving an
efficiency of up to 70pJ/B in encryption, 50pJ/px in convolution, or up to
25MIPS/mW in software. As a strong argument for real-life flexible application
of our platform, we show experimental results for three secure analytics use
cases: secure autonomous aerial surveillance with a state-of-the-art deep CNN
consuming 3.16pJ per equivalent RISC op; local CNN-based face detection with
secured remote recognition in 5.74pJ/op; and seizure detection with encrypted
data collection from EEG within 12.7pJ/op.Comment: 15 pages, 12 figures, accepted for publication to the IEEE
Transactions on Circuits and Systems - I: Regular Paper
Hyperdrive: A Multi-Chip Systolically Scalable Binary-Weight CNN Inference Engine
Deep neural networks have achieved impressive results in computer vision and
machine learning. Unfortunately, state-of-the-art networks are extremely
compute and memory intensive which makes them unsuitable for mW-devices such as
IoT end-nodes. Aggressive quantization of these networks dramatically reduces
the computation and memory footprint. Binary-weight neural networks (BWNs)
follow this trend, pushing weight quantization to the limit. Hardware
accelerators for BWNs presented up to now have focused on core efficiency,
disregarding I/O bandwidth and system-level efficiency that are crucial for
deployment of accelerators in ultra-low power devices. We present Hyperdrive: a
BWN accelerator dramatically reducing the I/O bandwidth exploiting a novel
binary-weight streaming approach, which can be used for arbitrarily sized
convolutional neural network architecture and input resolution by exploiting
the natural scalability of the compute units both at chip-level and
system-level by arranging Hyperdrive chips systolically in a 2D mesh while
processing the entire feature map together in parallel. Hyperdrive achieves 4.3
TOp/s/W system-level efficiency (i.e., including I/Os)---3.1x higher than
state-of-the-art BWN accelerators, even if its core uses resource-intensive
FP16 arithmetic for increased robustness
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