This thesis investigates the possibility of porting a neural network model trained and modeled in TensorFlow to a low-power AI inference accelerator for IoT edge computing. A slightly modified LeNet-5 neural network model is presented and implemented such that an input frequency of 10 frames per second is possible while consuming 4mW of power. The system is simulated in software and synthesized using the FreePDK45 technology library. The simulation result shows no loss of accuracy, but the synthesis results do not show the same positive results for the area and power. The default version of the accelerator uses single-precision floating-point format, float32, while a modified accelerator using the bfloat16 number representation shows signif...
To support various edge applications, a neural network accelerator needs to achieve high flexibility...
The use of Neural Network (NN) inference on edge devices necessitates the development of customized ...
The recent advancements towards Artificial Intelligence (AI) at the edge resonate with an impression...
This thesis investigates the possibility of porting a neural network model trained and modeled in Te...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
With the surging popularity of edge computing, the need to efficiently perform neural network infere...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
In recent years, the continuous development of artificial intelligence has largely been driven by al...
This paper investigates the energy savings that near-subthreshold processors can obtain in edge AI a...
Edge AI accelerators have been emerging as a solution for near customers’ applications in areas such...
The growing number of low-power smart devices in the Internet of Things is coupled with the concept ...
Although research on the inference phase of edge artificial intelligence (AI) has made considerable ...
Computer science and engineering have evolved rapidly over the last decade offering innovative Machi...
Edge analytics refers to the application of data analytics and Machine Learning (ML) algorithms on I...
We introduce Neuro.ZERO-a co-processor architecture consisting of a main microcontroller (MCU) that ...
To support various edge applications, a neural network accelerator needs to achieve high flexibility...
The use of Neural Network (NN) inference on edge devices necessitates the development of customized ...
The recent advancements towards Artificial Intelligence (AI) at the edge resonate with an impression...
This thesis investigates the possibility of porting a neural network model trained and modeled in Te...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
With the surging popularity of edge computing, the need to efficiently perform neural network infere...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
In recent years, the continuous development of artificial intelligence has largely been driven by al...
This paper investigates the energy savings that near-subthreshold processors can obtain in edge AI a...
Edge AI accelerators have been emerging as a solution for near customers’ applications in areas such...
The growing number of low-power smart devices in the Internet of Things is coupled with the concept ...
Although research on the inference phase of edge artificial intelligence (AI) has made considerable ...
Computer science and engineering have evolved rapidly over the last decade offering innovative Machi...
Edge analytics refers to the application of data analytics and Machine Learning (ML) algorithms on I...
We introduce Neuro.ZERO-a co-processor architecture consisting of a main microcontroller (MCU) that ...
To support various edge applications, a neural network accelerator needs to achieve high flexibility...
The use of Neural Network (NN) inference on edge devices necessitates the development of customized ...
The recent advancements towards Artificial Intelligence (AI) at the edge resonate with an impression...