The IEEE 754 Standard for Floating-Point Arithmetic has been for decades imple mented in the vast majority of modern computer systems to manipulate and com pute real numbers. Recently, John L. Gustafson introduced a new data type called positTM to represent real numbers on computers. This emerging format was designed with the aim of replacing IEEE 754 floating-point numbers by providing certain ad vantages over them, such as a larger dynamic range, higher accuracy, bitwise iden tical results across systems, or simpler hardware, among others. The interesting properties of the posit format seem to be really useful under the scenario of deep neural networks. In this Master’s thesis, the properties of posit arithmetic are studied with the aim...
Due to limited size, cost and power, embedded devices do not offer the same computational throughput...
International audienceThe most compute-intensive stage of deep neural network (DNN) training is matr...
Nowadays, real-time applications are exploiting DNNs more and more for computer vision and image rec...
Posit™ arithmetic is a recent alternative format to the IEEE 754 standard for floating-point numbers...
With increasing real-time constraints being put on the use of Deep Neural Networks (DNNs) by real-ti...
The recent advances in machine learning, in general, and Artificial Neural Networks (ANN), in partic...
Trabajo de fin de Grado en doble Grado de Ingeniería Informática y Matemáticas, Facultad de Informát...
Modern computational tasks are often required to not only guarantee predefined accuracy, but get the...
Real-time processing of images and videos is becoming considerably crucial in modern applications of...
The Posit Number System was introduced in 2017 as a replacement for floating-point numbers. Since th...
The high computational complexity, memory footprints, and energy requirements of machine learning mo...
Mixed-precision (MP) arithmetic combining both single- and half-precision operands has been successf...
Nowadays, two groundbreaking factors are emerging in neural networks. Firstly, there is the RISC-V o...
This paper discusses the introduction of an integrated Posit Processing Unit (PPU) as an alternative...
The demand for higher precision arithmetic is increasing due to the rapid development of new computi...
Due to limited size, cost and power, embedded devices do not offer the same computational throughput...
International audienceThe most compute-intensive stage of deep neural network (DNN) training is matr...
Nowadays, real-time applications are exploiting DNNs more and more for computer vision and image rec...
Posit™ arithmetic is a recent alternative format to the IEEE 754 standard for floating-point numbers...
With increasing real-time constraints being put on the use of Deep Neural Networks (DNNs) by real-ti...
The recent advances in machine learning, in general, and Artificial Neural Networks (ANN), in partic...
Trabajo de fin de Grado en doble Grado de Ingeniería Informática y Matemáticas, Facultad de Informát...
Modern computational tasks are often required to not only guarantee predefined accuracy, but get the...
Real-time processing of images and videos is becoming considerably crucial in modern applications of...
The Posit Number System was introduced in 2017 as a replacement for floating-point numbers. Since th...
The high computational complexity, memory footprints, and energy requirements of machine learning mo...
Mixed-precision (MP) arithmetic combining both single- and half-precision operands has been successf...
Nowadays, two groundbreaking factors are emerging in neural networks. Firstly, there is the RISC-V o...
This paper discusses the introduction of an integrated Posit Processing Unit (PPU) as an alternative...
The demand for higher precision arithmetic is increasing due to the rapid development of new computi...
Due to limited size, cost and power, embedded devices do not offer the same computational throughput...
International audienceThe most compute-intensive stage of deep neural network (DNN) training is matr...
Nowadays, real-time applications are exploiting DNNs more and more for computer vision and image rec...