Skip to content

Efficient algebraic functions for statistical analysis of genomic data

License

Notifications You must be signed in to change notification settings

alexfreudenberg/miraculix

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

49 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

miraculix

Efficient algebraic functions for statistical analysis of genomic data

Alexander Freudenberg, Martin Schlather, Jeremie Vandenplas

June 2023

Description

miraculix is a C/CUDA library for mathematical operations on compressed genotype data. It provides highly efficient routines that can be used in statistical analyses of genomic information, e.g. genome-wide association studies, genomic breeding value estimation and population summary statistics. As such, it offers interfaces to allow integration into existing C utilities as well as interoperability with higher-level programming languages such as R, Julia or Fortran.

Through its CUDA implementation, miraculix aims to open the high-performance computing capabilities of modern Nvidia GPUs to researchers and practitioners in the field of statistical genomics. To this end, miraculix uses and extends Nvidia's CUTLASS (2.10) library to enable efficient data movement on the GPU. Experiments suggest that, for instance, genomic breeding value estimation benefits greatly from offloading bottlenecks to GPUs.

Previous versions of miraculix have been released as an R package on CRAN. However, CRAN's strict portability requirements have been shown to be too restrictive to maintain the code base while simultaneously assuring efficiency across instruction set architectures. Yet, many of the interfaces required for a smooth R integration are still present and can be compiled to a full R package.

While we migrate the existing functionality to this repository, please expect further changes to its structure.

Requirements

For compilation, the following software is required:

  • Make
  • Intel's oneAPI toolkit
  • Plink 1.9 for simulation purposes

Additionally, to compile the CUDA code, you need

  • a CUDA installation (11.3 or newer)

Compilation

To compile the CUDA version of miraculix, you first need to initialize the CUTLASS submodule:

git submodule init
git submodule update

Then, all libraries are compiled by the command

cd src
make

Alternatively, you can compile the core miraculix library separately by running

make libmiraculix

Similarly, the GPU implementation is compiled by

make libmiraculixGPU

Available Interfaces

If you wish to integrate the genotype matrix multiplication functionality into your genomic analysis pipeline, please use the dedicated interfaces. You can find an overview of them here.

Interfaces to the other routines will be added gradually.

Examples

Exemplary usage of the routines can be found in the examples folder and in the benchmarking files.

As an exemplary use case, we illustrate how to call the genotype-matrix multiplications below. Options Set the options used later on. Most of the options can't be changed after they have been set initially.

call c_setOptions_compressed(usegpu, 0, 0, 0, 1, c_not_center, 0, 0, c_variant, c_lverbose)

Through the usegpu parameter, we can control if the GPU implementation or the 5codes algorithm on the CPU is used. The c_not_center parameter turns centering of the genotype matrix off, if it is set to 1. The c_variant parameter chooses which internal implementation is used - this can be experimented with to find the optimal performance. Through c_lverbose we control how many internal information is printed to stdout. Initialization Preprocess SNP data and store it in a separate object.

call c_plink2compressed(c_plinkbed, c_plinkbed_transposed, c_snps, c_indiv, c_f, c_ncol, c_compressed)

The c_plinkbed and c_plinkbed_transposed hold the SNP data in PLINK bed format truncated by the header bytes. The number of SNPs and individuals in the dataset is supplied through c_snps and c_indiv. Allele frequencies can be supplied through the c_f pointer - this can be useful when using frequencies that differ from the SNP data. The c_ncol parameter is used for the GPU implementation: It indicates the maximum number of columns with which the dgemm_compressed routine will be called. The c_compressed parameter holds a pointer to a pointer, in which the preprocessed data storage object will be stored.

Computation Calculate the genotype matrix multiplication.

call c_dgemm_compressed('n', c_compressed, c_ncol, c_B, c_snps, c_C, c_indiv)

In this example, we calculate the untransposed (hence 'n') genotype matrix times a real-valued matrix in double precision stored in c_B.

Destroy Free allocated memory.

call c_free_compressed(c_compressed)

Citation

If you decide to use this repository for your scientific work, please consider citing it.

Publications using miraculix

  • The Modular Breeding Program Simulator (MoBPS) allows efficient simulation of complex breeding programs. Pook, T., Reimer, C., Freudenberg, A., Büttgen, L., Geibel, J., Ganesan, A., Ha, T., Schlather, M., Mikkelsen, L., Simianer, H., Animal Production Science, 61, 1982-1989, 2021.

About

Efficient algebraic functions for statistical analysis of genomic data

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published