Covariance matrices are used for a wide range of applications in particle physics, including Kalman filter for tracking purposes or Primary Component Analysis for dimensionality reduction. Based on a novel decomposition of the covariance matrix, a design that requires only one pass of data for calculating the covariance matrix is presented. Two computation engines are used depending on parallelizability of the necessary computation steps. The design is implemented onto a hybrid FPGA/CPU system and yields speed-up of up to 5 orders of magnitude compared to previous FPGA implementation.ISSN:2100-014XISSN:2101-627
Matrix inversion for real-time applications can be a challenge for the designers since its computati...
Original article can be found at: http://www.medjcn.com/ Copyright Softmotor LimitedHigh performance...
Optimization is listed as one of the important topics in today’s electronic system due to the presen...
Covariance matrices are used for a wide range of applications in particle physics, including Kálmán ...
Covariance matrices are used for a wide range of applications in particle ohysics, including Kalman ...
© 2019, Pleiades Publishing, Ltd. Practical applicability of many statistical algorithms is limited ...
In this paper we describe a new approach for accelerating the Conjugate Gradient (CG) method using a...
Abstract. The emergence of streaming multicore processors with multi-SIMD architectures opens unprec...
Abstract-As a useful tool for dimensionality reduction, Singular Value Decomposition (SVD) plays an ...
The aim of the thesis is to develop an efficient hardware implementation of the PCA (Principal Compo...
Parametric, model based, spectral estimation techniques can offer increased frequency resolution ove...
FPGA devices used in the HPC context promise an increased energy efficiency, enhancing the computing...
Part 4: Architecture and HardwareInternational audienceMatrix computing plays a vital role in many s...
To solve the computational complexity and time-consuming problem of large matrix multiplication, thi...
Abstract:- Vector computers are suitable for processing vectors and matrices. Nevertheless, sophisti...
Matrix inversion for real-time applications can be a challenge for the designers since its computati...
Original article can be found at: http://www.medjcn.com/ Copyright Softmotor LimitedHigh performance...
Optimization is listed as one of the important topics in today’s electronic system due to the presen...
Covariance matrices are used for a wide range of applications in particle physics, including Kálmán ...
Covariance matrices are used for a wide range of applications in particle ohysics, including Kalman ...
© 2019, Pleiades Publishing, Ltd. Practical applicability of many statistical algorithms is limited ...
In this paper we describe a new approach for accelerating the Conjugate Gradient (CG) method using a...
Abstract. The emergence of streaming multicore processors with multi-SIMD architectures opens unprec...
Abstract-As a useful tool for dimensionality reduction, Singular Value Decomposition (SVD) plays an ...
The aim of the thesis is to develop an efficient hardware implementation of the PCA (Principal Compo...
Parametric, model based, spectral estimation techniques can offer increased frequency resolution ove...
FPGA devices used in the HPC context promise an increased energy efficiency, enhancing the computing...
Part 4: Architecture and HardwareInternational audienceMatrix computing plays a vital role in many s...
To solve the computational complexity and time-consuming problem of large matrix multiplication, thi...
Abstract:- Vector computers are suitable for processing vectors and matrices. Nevertheless, sophisti...
Matrix inversion for real-time applications can be a challenge for the designers since its computati...
Original article can be found at: http://www.medjcn.com/ Copyright Softmotor LimitedHigh performance...
Optimization is listed as one of the important topics in today’s electronic system due to the presen...