Background Likelihood (ML)-based phylogenetic inference has become a popular method for estimating the evolutionary relationships among species based on genomic sequence data. This method is used in applications such as RAxML, GARLI, MrBayes, PAML, and PAUP. The Phylogenetic Likelihood Function (PLF) is an important kernel computation for this method. The PLF consists of a loop with no conditional behavior or dependencies between iterations. As such it contains a high potential for exploiting parallelism using micro-architectural techniques. In this paper, we describe a technique for mapping the PLF and supporting logic onto a Field Programmable Gate Array (FPGA)-based co-processor. By leveraging the FPGA\u27s on-chip DSP modules and the hi...
Phylogenetic inference refers to the reconstruction of evolutionary relationships among various spec...
This paper describes the implementation and performance of PBPI, a parallel implementation of Bayesi...
Abstract Motivation Bayesian inference is widely used nowadays and relies largely on Markov chain Mo...
Background Likelihood (ML)-based phylogenetic inference has become a popular method for estimating t...
Abstract Background Likelihood (ML)-based phylogenetic inference has become a popular method for est...
Summarization: Driven by novel biological wet lab techniques such as pyrosequencing there has been a...
The field of evolutionary biology has become reliant on the ability to quickly and accurately infer ...
Abstract—Phylogenetic inference is the process of recon-structing the evolutionary history of specie...
The Phylogenetic Likelihood Function (PLF) is one of the cornerstone functions in most phylogenetic ...
Summarization: The Phylogenetic Likelihood Function (PLF) is one of the cornerstone functions in mos...
Summarization: As FPGA devices become larger, more coarse-grain modules coupled with large scale rec...
Estimating the evolutionary history of organisms, phylogenetic inference, is a critical step in man...
In this paper we present our work toward FPGA acceleration of phylogenetic reconstruction, a type of...
In Bayesian phylogenetic inference, marginal likelihoods can be estimated using several different me...
Bayesian inference is widely used nowadays and relies largely on Markov chain Monte Carlo (MCMC) met...
Phylogenetic inference refers to the reconstruction of evolutionary relationships among various spec...
This paper describes the implementation and performance of PBPI, a parallel implementation of Bayesi...
Abstract Motivation Bayesian inference is widely used nowadays and relies largely on Markov chain Mo...
Background Likelihood (ML)-based phylogenetic inference has become a popular method for estimating t...
Abstract Background Likelihood (ML)-based phylogenetic inference has become a popular method for est...
Summarization: Driven by novel biological wet lab techniques such as pyrosequencing there has been a...
The field of evolutionary biology has become reliant on the ability to quickly and accurately infer ...
Abstract—Phylogenetic inference is the process of recon-structing the evolutionary history of specie...
The Phylogenetic Likelihood Function (PLF) is one of the cornerstone functions in most phylogenetic ...
Summarization: The Phylogenetic Likelihood Function (PLF) is one of the cornerstone functions in mos...
Summarization: As FPGA devices become larger, more coarse-grain modules coupled with large scale rec...
Estimating the evolutionary history of organisms, phylogenetic inference, is a critical step in man...
In this paper we present our work toward FPGA acceleration of phylogenetic reconstruction, a type of...
In Bayesian phylogenetic inference, marginal likelihoods can be estimated using several different me...
Bayesian inference is widely used nowadays and relies largely on Markov chain Monte Carlo (MCMC) met...
Phylogenetic inference refers to the reconstruction of evolutionary relationships among various spec...
This paper describes the implementation and performance of PBPI, a parallel implementation of Bayesi...
Abstract Motivation Bayesian inference is widely used nowadays and relies largely on Markov chain Mo...