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A Crew Launcher Plugin for AWS Batch
In computationally demanding analysis projects,
statisticians and data scientists asynchronously
deploy long-running tasks to distributed systems,
ranging from traditional clusters to cloud services.
The 'crew.aws.batch' package extends the 'mirai'-powered
'crew' package with a worker launcher plugin for AWS Batch.
Inspiration also comes from packages 'mirai' by Gao (2023)
< https://github.com/shikokuchuo/mirai>,
'future' by Bengtsson (2021)
Asymptotic Classification Theory for Cognitive Diagnosis
Cluster analysis for cognitive diagnosis based on the Asymptotic Classification Theory (Chiu, Douglas & Li, 2009;
Transformation Models
Formula-based user-interfaces to specific transformation models
implemented in package 'mlt' (
Linear and Nonlinear Mixed Effects Models
Fit and compare Gaussian linear and nonlinear mixed-effects models.
Higher Order Inference for Nonlinear Heteroscedastic Models
Likelihood inference based on higher order approximations for nonlinear models with possibly non constant variance.
Crew Launcher Plugins for Traditional High-Performance Computing Clusters
In computationally demanding analysis projects,
statisticians and data scientists asynchronously
deploy long-running tasks to distributed systems,
ranging from traditional clusters to cloud services.
The 'crew.cluster' package extends the 'mirai'-powered
'crew' package with worker launcher plugins for traditional
high-performance computing systems.
Inspiration also comes from packages 'mirai' by Gao (2023)
< https://github.com/shikokuchuo/mirai>,
'future' by Bengtsson (2021)
A Distributed Worker Launcher Framework
In computationally demanding analysis projects,
statisticians and data scientists asynchronously
deploy long-running tasks to distributed systems,
ranging from traditional clusters to cloud services.
The 'NNG'-powered 'mirai' R package by Gao (2023)
'FASTA' ML and ‘altall’ Sequences from IQ-TREE .state Files
Takes a .state file generated by IQ-TREE as an input and, for each ancestral node present in the file, generates a FASTA-formatted maximum likelihood (ML) sequence as well as an ‘AltAll’ sequence in which uncertain sites, determined by the two parameters thres_1 and thres_2, have the maximum likelihood state swapped with the next most likely state as described in Geeta N. Eick, Jamie T. Bridgham, Douglas P. Anderson, Michael J. Harms, and Joseph W. Thornton (2017), "Robustness of Reconstructed Ancestral Protein Functions to Statistical Uncertainty"
Data sets from Devore's "Prob and Stat for Eng (7th ed)"
Data sets and sample analyses from Jay L. Devore (2008), "Probability and Statistics for Engineering and the Sciences (7th ed)", Thomson.
Efficient Determination of Sample Size in Balanced Design of Experiments
For a balanced design of experiments, this package calculates the sample size required to detect a certain standardized effect size, under a significance level. This package also provides three graphs; detectable standardized effect size vs power, sample size vs detectable standardized effect size, and sample size vs power, which show the mutual relationship between the sample size, power and the detectable standardized effect size. The detailed procedure is described in R. V. Lenth (2006-9) < https://homepage.divms.uiowa.edu/~rlenth/Power/>, Y. B. Lim (1998), M. A. Kastenbaum, D. G. Hoel and K. O. Bowman (1970)