An important aspect of modern automation is machine learning. Specifically, neural networks are used for environment analysis and decision making based on available data. This article covers the most frequently performed operations on floating-point numbers in artificial neural networks. Also, a selection of the optimum value of the bit to 14-bit floating-point numbers for implementation on FPGAs was submitted based on the modern architecture of integrated circuits. The description of the floating-point multiplication (multiplier) algorithm was presented. In addition, features of the addition (adder) and subtraction (subtractor) operations were described in the article. Furthermore, operations for such variety of neural networks as a convol...
Abstract: The study implemented an FPGA-based face detector using Neural Networks and a scalable Flo...
Due to their potential to reduce silicon area or boost throughput, low-precision computations were w...
Approximate computing has emerged as a promising approach to energy-efficient design of digital syst...
This paper documents the research towards the analysis of different solutions to implement a Neural ...
The first successful implementation of Artificial Neural Networks (ANNs) was published a little over...
Specialized hardware implementations of Artificial Neural Networks (ANNs) can offer faster execution...
Applying machine learning to various applications has gained significant momentum in recent years. H...
This paper documents the research towards the analysis of different solutions to implement a Neural ...
Three fundamental representation schemes for numbers in a digital neural network are explored: the f...
The present paper documents the research towards the development of an efficient algorithm to comput...
Binary neural networks (BNNs) are variations of artificial/deep neural network (ANN/DNN) architectur...
Several hardware companies are proposing native Brain Float 16-bit (BF16) support for neural network...
Modern computational tasks are often required to not only guarantee predefined accuracy, but get the...
The field programmable gate array (FPGA) is used to build an artificial neural network in hardware. ...
In this paper, low end Digital Signal Processors (DSPs) are applied to accelerate integer neural net...
Abstract: The study implemented an FPGA-based face detector using Neural Networks and a scalable Flo...
Due to their potential to reduce silicon area or boost throughput, low-precision computations were w...
Approximate computing has emerged as a promising approach to energy-efficient design of digital syst...
This paper documents the research towards the analysis of different solutions to implement a Neural ...
The first successful implementation of Artificial Neural Networks (ANNs) was published a little over...
Specialized hardware implementations of Artificial Neural Networks (ANNs) can offer faster execution...
Applying machine learning to various applications has gained significant momentum in recent years. H...
This paper documents the research towards the analysis of different solutions to implement a Neural ...
Three fundamental representation schemes for numbers in a digital neural network are explored: the f...
The present paper documents the research towards the development of an efficient algorithm to comput...
Binary neural networks (BNNs) are variations of artificial/deep neural network (ANN/DNN) architectur...
Several hardware companies are proposing native Brain Float 16-bit (BF16) support for neural network...
Modern computational tasks are often required to not only guarantee predefined accuracy, but get the...
The field programmable gate array (FPGA) is used to build an artificial neural network in hardware. ...
In this paper, low end Digital Signal Processors (DSPs) are applied to accelerate integer neural net...
Abstract: The study implemented an FPGA-based face detector using Neural Networks and a scalable Flo...
Due to their potential to reduce silicon area or boost throughput, low-precision computations were w...
Approximate computing has emerged as a promising approach to energy-efficient design of digital syst...