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This page was generated on 2022-10-19 13:20:03 -0400 (Wed, 19 Oct 2022).

HostnameOSArch (*)R versionInstalled pkgs
nebbiolo1Linux (Ubuntu 20.04.5 LTS)x86_644.2.1 (2022-06-23) -- "Funny-Looking Kid" 4386
palomino3Windows Server 2022 Datacenterx644.2.1 (2022-06-23 ucrt) -- "Funny-Looking Kid" 4138
merida1macOS 10.14.6 Mojavex86_644.2.1 (2022-06-23) -- "Funny-Looking Kid" 4205
Click on any hostname to see more info about the system (e.g. compilers)      (*) as reported by 'uname -p', except on Windows and Mac OS X

CHECK results for BufferedMatrix on nebbiolo1


To the developers/maintainers of the BufferedMatrix package:
- Please allow up to 24 hours (and sometimes 48 hours) for your latest push to git@git.bioconductor.org:packages/BufferedMatrix.git to
reflect on this report. See How and When does the builder pull? When will my changes propagate? for more information.
- Make sure to use the following settings in order to reproduce any error or warning you see on this page.

raw results

Package 229/2140HostnameOS / ArchINSTALLBUILDCHECKBUILD BIN
BufferedMatrix 1.60.0  (landing page)
Ben Bolstad
Snapshot Date: 2022-10-18 13:55:19 -0400 (Tue, 18 Oct 2022)
git_url: https://git.bioconductor.org/packages/BufferedMatrix
git_branch: RELEASE_3_15
git_last_commit: 3bff61b
git_last_commit_date: 2022-04-26 10:59:13 -0400 (Tue, 26 Apr 2022)
nebbiolo1Linux (Ubuntu 20.04.5 LTS) / x86_64  OK    OK    OK  UNNEEDED, same version is already published
palomino3Windows Server 2022 Datacenter / x64  OK    OK    OK    OK  UNNEEDED, same version is already published
merida1macOS 10.14.6 Mojave / x86_64  OK    OK    WARNINGS    OK  UNNEEDED, same version is already published

Summary

Package: BufferedMatrix
Version: 1.60.0
Command: /home/biocbuild/bbs-3.15-bioc/R/bin/R CMD check --install=check:BufferedMatrix.install-out.txt --library=/home/biocbuild/bbs-3.15-bioc/R/library --no-vignettes --timings BufferedMatrix_1.60.0.tar.gz
StartedAt: 2022-10-18 18:51:24 -0400 (Tue, 18 Oct 2022)
EndedAt: 2022-10-18 18:51:47 -0400 (Tue, 18 Oct 2022)
EllapsedTime: 23.0 seconds
RetCode: 0
Status:   OK  
CheckDir: BufferedMatrix.Rcheck
Warnings: 0

Command output

##############################################################################
##############################################################################
###
### Running command:
###
###   /home/biocbuild/bbs-3.15-bioc/R/bin/R CMD check --install=check:BufferedMatrix.install-out.txt --library=/home/biocbuild/bbs-3.15-bioc/R/library --no-vignettes --timings BufferedMatrix_1.60.0.tar.gz
###
##############################################################################
##############################################################################


* using log directory ‘/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck’
* using R version 4.2.1 (2022-06-23)
* using platform: x86_64-pc-linux-gnu (64-bit)
* using session charset: UTF-8
* using option ‘--no-vignettes’
* checking for file ‘BufferedMatrix/DESCRIPTION’ ... OK
* this is package ‘BufferedMatrix’ version ‘1.60.0’
* checking package namespace information ... OK
* checking package dependencies ... OK
* checking if this is a source package ... OK
* checking if there is a namespace ... OK
* checking for hidden files and directories ... OK
* checking for portable file names ... OK
* checking for sufficient/correct file permissions ... OK
* checking whether package ‘BufferedMatrix’ can be installed ... OK
* checking installed package size ... OK
* checking package directory ... OK
* checking ‘build’ directory ... OK
* checking DESCRIPTION meta-information ... OK
* checking top-level files ... OK
* checking for left-over files ... OK
* checking index information ... OK
* checking package subdirectories ... OK
* checking R files for non-ASCII characters ... OK
* checking R files for syntax errors ... OK
* checking whether the package can be loaded ... OK
* checking whether the package can be loaded with stated dependencies ... OK
* checking whether the package can be unloaded cleanly ... OK
* checking whether the namespace can be loaded with stated dependencies ... OK
* checking whether the namespace can be unloaded cleanly ... OK
* checking dependencies in R code ... OK
* checking S3 generic/method consistency ... OK
* checking replacement functions ... OK
* checking foreign function calls ... OK
* checking R code for possible problems ... OK
* checking Rd files ... NOTE
prepare_Rd: createBufferedMatrix.Rd:26: Dropping empty section \keyword
prepare_Rd: createBufferedMatrix.Rd:17-18: Dropping empty section \details
prepare_Rd: createBufferedMatrix.Rd:15-16: Dropping empty section \value
prepare_Rd: createBufferedMatrix.Rd:19-20: Dropping empty section \references
prepare_Rd: createBufferedMatrix.Rd:21-22: Dropping empty section \seealso
prepare_Rd: createBufferedMatrix.Rd:23-24: Dropping empty section \examples
* checking Rd metadata ... OK
* checking Rd cross-references ... OK
* checking for missing documentation entries ... OK
* checking for code/documentation mismatches ... OK
* checking Rd \usage sections ... OK
* checking Rd contents ... OK
* checking for unstated dependencies in examples ... OK
* checking line endings in C/C++/Fortran sources/headers ... OK
* checking compiled code ... NOTE
Note: information on .o files is not available
* checking files in ‘vignettes’ ... OK
* checking examples ... NONE
* checking for unstated dependencies in ‘tests’ ... OK
* checking tests ...
  Running ‘Rcodetesting.R’
  Running ‘c_code_level_tests.R’
  Running ‘objectTesting.R’
  Running ‘rawCalltesting.R’
 OK
* checking for unstated dependencies in vignettes ... OK
* checking package vignettes in ‘inst/doc’ ... OK
* checking running R code from vignettes ... SKIPPED
* checking re-building of vignette outputs ... SKIPPED
* checking PDF version of manual ... OK
* DONE

Status: 2 NOTEs
See
  ‘/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/00check.log’
for details.



Installation output

BufferedMatrix.Rcheck/00install.out

##############################################################################
##############################################################################
###
### Running command:
###
###   /home/biocbuild/bbs-3.15-bioc/R/bin/R CMD INSTALL BufferedMatrix
###
##############################################################################
##############################################################################


* installing to library ‘/home/biocbuild/bbs-3.15-bioc/R/library’
* installing *source* package ‘BufferedMatrix’ ...
** using staged installation
** libs
gcc -I"/home/biocbuild/bbs-3.15-bioc/R/include" -DNDEBUG   -I/usr/local/include   -fpic  -g -O2  -Wall -c RBufferedMatrix.c -o RBufferedMatrix.o
gcc -I"/home/biocbuild/bbs-3.15-bioc/R/include" -DNDEBUG   -I/usr/local/include   -fpic  -g -O2  -Wall -c doubleBufferedMatrix.c -o doubleBufferedMatrix.o
doubleBufferedMatrix.c: In function ‘dbm_ReadOnlyMode’:
doubleBufferedMatrix.c:1580:7: warning: suggest parentheses around operand of ‘!’ or change ‘&’ to ‘&&’ or ‘!’ to ‘~’ [-Wparentheses]
 1580 |   if (!(Matrix->readonly) & setting){
      |       ^~~~~~~~~~~~~~~~~~~
At top level:
doubleBufferedMatrix.c:3327:12: warning: ‘sort_double’ defined but not used [-Wunused-function]
 3327 | static int sort_double(const double *a1,const double *a2){
      |            ^~~~~~~~~~~
gcc -I"/home/biocbuild/bbs-3.15-bioc/R/include" -DNDEBUG   -I/usr/local/include   -fpic  -g -O2  -Wall -c doubleBufferedMatrix_C_tests.c -o doubleBufferedMatrix_C_tests.o
gcc -I"/home/biocbuild/bbs-3.15-bioc/R/include" -DNDEBUG   -I/usr/local/include   -fpic  -g -O2  -Wall -c init_package.c -o init_package.o
gcc -shared -L/home/biocbuild/bbs-3.15-bioc/R/lib -L/usr/local/lib -o BufferedMatrix.so RBufferedMatrix.o doubleBufferedMatrix.o doubleBufferedMatrix_C_tests.o init_package.o -L/home/biocbuild/bbs-3.15-bioc/R/lib -lR
installing to /home/biocbuild/bbs-3.15-bioc/R/library/00LOCK-BufferedMatrix/00new/BufferedMatrix/libs
** R
** inst
** byte-compile and prepare package for lazy loading
Creating a new generic function for ‘rowMeans’ in package ‘BufferedMatrix’
Creating a new generic function for ‘rowSums’ in package ‘BufferedMatrix’
Creating a new generic function for ‘colMeans’ in package ‘BufferedMatrix’
Creating a new generic function for ‘colSums’ in package ‘BufferedMatrix’
Creating a generic function for ‘ncol’ from package ‘base’ in package ‘BufferedMatrix’
Creating a generic function for ‘nrow’ from package ‘base’ in package ‘BufferedMatrix’
** help
*** installing help indices
** building package indices
** installing vignettes
** testing if installed package can be loaded from temporary location
** checking absolute paths in shared objects and dynamic libraries
** testing if installed package can be loaded from final location
** testing if installed package keeps a record of temporary installation path
* DONE (BufferedMatrix)

Tests output

BufferedMatrix.Rcheck/tests/c_code_level_tests.Rout


R version 4.2.1 (2022-06-23) -- "Funny-Looking Kid"
Copyright (C) 2022 The R Foundation for Statistical Computing
Platform: x86_64-pc-linux-gnu (64-bit)

R is free software and comes with ABSOLUTELY NO WARRANTY.
You are welcome to redistribute it under certain conditions.
Type 'license()' or 'licence()' for distribution details.

R is a collaborative project with many contributors.
Type 'contributors()' for more information and
'citation()' on how to cite R or R packages in publications.

Type 'demo()' for some demos, 'help()' for on-line help, or
'help.start()' for an HTML browser interface to help.
Type 'q()' to quit R.

> library(BufferedMatrix);library.dynam("BufferedMatrix", "BufferedMatrix", .libPaths());.C("dbm_c_tester",integer(1))

Attaching package: 'BufferedMatrix'

The following objects are masked from 'package:base':

    colMeans, colSums, rowMeans, rowSums

Checking dimensions
Rows: 5
Cols: 5
Buffer Rows: 1
Buffer Cols: 1

Assigning Values
0.000000 1.000000 2.000000 3.000000 4.000000 
1.000000 2.000000 3.000000 4.000000 5.000000 
2.000000 3.000000 4.000000 5.000000 6.000000 
3.000000 4.000000 5.000000 6.000000 7.000000 
4.000000 5.000000 6.000000 7.000000 8.000000 

Adding Additional Column
Checking dimensions
Rows: 5
Cols: 6
Buffer Rows: 1
Buffer Cols: 1
0.000000 1.000000 2.000000 3.000000 4.000000 0.000000 
1.000000 2.000000 3.000000 4.000000 5.000000 0.000000 
2.000000 3.000000 4.000000 5.000000 6.000000 0.000000 
3.000000 4.000000 5.000000 6.000000 7.000000 0.000000 
4.000000 5.000000 6.000000 7.000000 8.000000 0.000000 

Reassigning values
1.000000 6.000000 11.000000 16.000000 21.000000 26.000000 
2.000000 7.000000 12.000000 17.000000 22.000000 27.000000 
3.000000 8.000000 13.000000 18.000000 23.000000 28.000000 
4.000000 9.000000 14.000000 19.000000 24.000000 29.000000 
5.000000 10.000000 15.000000 20.000000 25.000000 30.000000 

Resizing Buffers
Checking dimensions
Rows: 5
Cols: 6
Buffer Rows: 3
Buffer Cols: 3
1.000000 6.000000 11.000000 16.000000 21.000000 26.000000 
2.000000 7.000000 12.000000 17.000000 22.000000 27.000000 
3.000000 8.000000 13.000000 18.000000 23.000000 28.000000 
4.000000 9.000000 14.000000 19.000000 24.000000 29.000000 
5.000000 10.000000 15.000000 20.000000 25.000000 30.000000 

Activating Row Buffer
In row mode: 1
1.000000 6.000000 11.000000 16.000000 21.000000 26.000000 
2.000000 7.000000 12.000000 17.000000 22.000000 27.000000 
3.000000 8.000000 13.000000 18.000000 23.000000 28.000000 
4.000000 9.000000 14.000000 19.000000 24.000000 29.000000 
5.000000 10.000000 15.000000 20.000000 25.000000 30.000000 

Squaring Last Column
1.000000 6.000000 11.000000 16.000000 21.000000 676.000000 
2.000000 7.000000 12.000000 17.000000 22.000000 729.000000 
3.000000 8.000000 13.000000 18.000000 23.000000 784.000000 
4.000000 9.000000 14.000000 19.000000 24.000000 841.000000 
5.000000 10.000000 15.000000 20.000000 25.000000 900.000000 

Square rooting Last Row, then turing off Row Buffer
In row mode: 0
Checking on value that should be not be in column buffer2.236068 
1.000000 6.000000 11.000000 16.000000 21.000000 676.000000 
2.000000 7.000000 12.000000 17.000000 22.000000 729.000000 
3.000000 8.000000 13.000000 18.000000 23.000000 784.000000 
4.000000 9.000000 14.000000 19.000000 24.000000 841.000000 
2.236068 3.162278 3.872983 4.472136 5.000000 30.000000 

Single Indexing. Assign each value its square
1.000000 36.000000 121.000000 256.000000 441.000000 676.000000 
4.000000 49.000000 144.000000 289.000000 484.000000 729.000000 
9.000000 64.000000 169.000000 324.000000 529.000000 784.000000 
16.000000 81.000000 196.000000 361.000000 576.000000 841.000000 
25.000000 100.000000 225.000000 400.000000 625.000000 900.000000 

Resizing Buffers Smaller
Checking dimensions
Rows: 5
Cols: 6
Buffer Rows: 1
Buffer Cols: 1
1.000000 36.000000 121.000000 256.000000 441.000000 676.000000 
4.000000 49.000000 144.000000 289.000000 484.000000 729.000000 
9.000000 64.000000 169.000000 324.000000 529.000000 784.000000 
16.000000 81.000000 196.000000 361.000000 576.000000 841.000000 
25.000000 100.000000 225.000000 400.000000 625.000000 900.000000 

Activating Row Mode.
Resizing Buffers
Checking dimensions
Rows: 5
Cols: 6
Buffer Rows: 1
Buffer Cols: 1
Activating ReadOnly Mode.
The results of assignment is: 0
Printing matrix reversed.
900.000000 625.000000 400.000000 225.000000 100.000000 25.000000 
841.000000 576.000000 361.000000 196.000000 81.000000 16.000000 
784.000000 529.000000 324.000000 169.000000 64.000000 9.000000 
729.000000 484.000000 289.000000 144.000000 49.000000 -30.000000 
676.000000 441.000000 256.000000 121.000000 -20.000000 -10.000000 

[[1]]
[1] 0

> 
> proc.time()
   user  system elapsed 
  0.264   0.061   0.308 

BufferedMatrix.Rcheck/tests/objectTesting.Rout


R version 4.2.1 (2022-06-23) -- "Funny-Looking Kid"
Copyright (C) 2022 The R Foundation for Statistical Computing
Platform: x86_64-pc-linux-gnu (64-bit)

R is free software and comes with ABSOLUTELY NO WARRANTY.
You are welcome to redistribute it under certain conditions.
Type 'license()' or 'licence()' for distribution details.

R is a collaborative project with many contributors.
Type 'contributors()' for more information and
'citation()' on how to cite R or R packages in publications.

Type 'demo()' for some demos, 'help()' for on-line help, or
'help.start()' for an HTML browser interface to help.
Type 'q()' to quit R.

> library(BufferedMatrix);library.dynam("BufferedMatrix","BufferedMatrix", .libPaths());

Attaching package: 'BufferedMatrix'

The following objects are masked from 'package:base':

    colMeans, colSums, rowMeans, rowSums

> 
> 
> ### this is used to control how many repetitions in something below
> ### higher values result in more checks.
> nreps <-100 ##20000
> 
> 
> ## test creation and some simple assignments and subsetting operations
> 
> ## first on single elements
> tmp <- createBufferedMatrix(1000,10)
> 
> tmp[10,5]
[1] 0
> tmp[10,5] <- 10
> tmp[10,5]
[1] 10
> tmp[10,5] <- 12.445
> tmp[10,5]
[1] 12.445
> 
> 
> 
> ## now testing accessing multiple elements
> tmp2 <- createBufferedMatrix(10,20)
> 
> 
> tmp2[3,1] <- 51.34
> tmp2[9,2] <- 9.87654
> tmp2[,1:2]
       [,1]    [,2]
 [1,]  0.00 0.00000
 [2,]  0.00 0.00000
 [3,] 51.34 0.00000
 [4,]  0.00 0.00000
 [5,]  0.00 0.00000
 [6,]  0.00 0.00000
 [7,]  0.00 0.00000
 [8,]  0.00 0.00000
 [9,]  0.00 9.87654
[10,]  0.00 0.00000
> tmp2[,-(3:20)]
       [,1]    [,2]
 [1,]  0.00 0.00000
 [2,]  0.00 0.00000
 [3,] 51.34 0.00000
 [4,]  0.00 0.00000
 [5,]  0.00 0.00000
 [6,]  0.00 0.00000
 [7,]  0.00 0.00000
 [8,]  0.00 0.00000
 [9,]  0.00 9.87654
[10,]  0.00 0.00000
> tmp2[3,]
      [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10] [,11] [,12] [,13]
[1,] 51.34    0    0    0    0    0    0    0    0     0     0     0     0
     [,14] [,15] [,16] [,17] [,18] [,19] [,20]
[1,]     0     0     0     0     0     0     0
> tmp2[-3,]
      [,1]    [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10] [,11] [,12] [,13]
 [1,]    0 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [2,]    0 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [3,]    0 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [4,]    0 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [5,]    0 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [6,]    0 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [7,]    0 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [8,]    0 9.87654    0    0    0    0    0    0    0     0     0     0     0
 [9,]    0 0.00000    0    0    0    0    0    0    0     0     0     0     0
      [,14] [,15] [,16] [,17] [,18] [,19] [,20]
 [1,]     0     0     0     0     0     0     0
 [2,]     0     0     0     0     0     0     0
 [3,]     0     0     0     0     0     0     0
 [4,]     0     0     0     0     0     0     0
 [5,]     0     0     0     0     0     0     0
 [6,]     0     0     0     0     0     0     0
 [7,]     0     0     0     0     0     0     0
 [8,]     0     0     0     0     0     0     0
 [9,]     0     0     0     0     0     0     0
> tmp2[2,1:3]
     [,1] [,2] [,3]
[1,]    0    0    0
> tmp2[3:9,1:3]
      [,1]    [,2] [,3]
[1,] 51.34 0.00000    0
[2,]  0.00 0.00000    0
[3,]  0.00 0.00000    0
[4,]  0.00 0.00000    0
[5,]  0.00 0.00000    0
[6,]  0.00 0.00000    0
[7,]  0.00 9.87654    0
> tmp2[-4,-4]
       [,1]    [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10] [,11] [,12] [,13]
 [1,]  0.00 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [2,]  0.00 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [3,] 51.34 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [4,]  0.00 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [5,]  0.00 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [6,]  0.00 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [7,]  0.00 0.00000    0    0    0    0    0    0    0     0     0     0     0
 [8,]  0.00 9.87654    0    0    0    0    0    0    0     0     0     0     0
 [9,]  0.00 0.00000    0    0    0    0    0    0    0     0     0     0     0
      [,14] [,15] [,16] [,17] [,18] [,19]
 [1,]     0     0     0     0     0     0
 [2,]     0     0     0     0     0     0
 [3,]     0     0     0     0     0     0
 [4,]     0     0     0     0     0     0
 [5,]     0     0     0     0     0     0
 [6,]     0     0     0     0     0     0
 [7,]     0     0     0     0     0     0
 [8,]     0     0     0     0     0     0
 [9,]     0     0     0     0     0     0
> 
> ## now testing accessing/assigning multiple elements
> tmp3 <- createBufferedMatrix(10,10)
> 
> for (i in 1:10){
+   for (j in 1:10){
+     tmp3[i,j] <- (j-1)*10 + i
+   }
+ }
> 
> tmp3[2:4,2:4]
     [,1] [,2] [,3]
[1,]   12   22   32
[2,]   13   23   33
[3,]   14   24   34
> tmp3[c(-10),c(2:4,2:4,10,1,2,1:10,10:1)]
      [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10] [,11] [,12] [,13]
 [1,]   11   21   31   11   21   31   91    1   11     1    11    21    31
 [2,]   12   22   32   12   22   32   92    2   12     2    12    22    32
 [3,]   13   23   33   13   23   33   93    3   13     3    13    23    33
 [4,]   14   24   34   14   24   34   94    4   14     4    14    24    34
 [5,]   15   25   35   15   25   35   95    5   15     5    15    25    35
 [6,]   16   26   36   16   26   36   96    6   16     6    16    26    36
 [7,]   17   27   37   17   27   37   97    7   17     7    17    27    37
 [8,]   18   28   38   18   28   38   98    8   18     8    18    28    38
 [9,]   19   29   39   19   29   39   99    9   19     9    19    29    39
      [,14] [,15] [,16] [,17] [,18] [,19] [,20] [,21] [,22] [,23] [,24] [,25]
 [1,]    41    51    61    71    81    91    91    81    71    61    51    41
 [2,]    42    52    62    72    82    92    92    82    72    62    52    42
 [3,]    43    53    63    73    83    93    93    83    73    63    53    43
 [4,]    44    54    64    74    84    94    94    84    74    64    54    44
 [5,]    45    55    65    75    85    95    95    85    75    65    55    45
 [6,]    46    56    66    76    86    96    96    86    76    66    56    46
 [7,]    47    57    67    77    87    97    97    87    77    67    57    47
 [8,]    48    58    68    78    88    98    98    88    78    68    58    48
 [9,]    49    59    69    79    89    99    99    89    79    69    59    49
      [,26] [,27] [,28] [,29]
 [1,]    31    21    11     1
 [2,]    32    22    12     2
 [3,]    33    23    13     3
 [4,]    34    24    14     4
 [5,]    35    25    15     5
 [6,]    36    26    16     6
 [7,]    37    27    17     7
 [8,]    38    28    18     8
 [9,]    39    29    19     9
> tmp3[-c(1:5),-c(6:10)]
     [,1] [,2] [,3] [,4] [,5]
[1,]    6   16   26   36   46
[2,]    7   17   27   37   47
[3,]    8   18   28   38   48
[4,]    9   19   29   39   49
[5,]   10   20   30   40   50
> 
> ## assignment of whole columns
> tmp3[,1] <- c(1:10*100.0)
> tmp3[,1:2] <- tmp3[,1:2]*100
> tmp3[,1:2] <- tmp3[,2:1]
> tmp3[,1:2]
      [,1]  [,2]
 [1,] 1100 1e+04
 [2,] 1200 2e+04
 [3,] 1300 3e+04
 [4,] 1400 4e+04
 [5,] 1500 5e+04
 [6,] 1600 6e+04
 [7,] 1700 7e+04
 [8,] 1800 8e+04
 [9,] 1900 9e+04
[10,] 2000 1e+05
> 
> 
> tmp3[,-1] <- tmp3[,1:9]
> tmp3[,1:10]
      [,1] [,2]  [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10]
 [1,] 1100 1100 1e+04   21   31   41   51   61   71    81
 [2,] 1200 1200 2e+04   22   32   42   52   62   72    82
 [3,] 1300 1300 3e+04   23   33   43   53   63   73    83
 [4,] 1400 1400 4e+04   24   34   44   54   64   74    84
 [5,] 1500 1500 5e+04   25   35   45   55   65   75    85
 [6,] 1600 1600 6e+04   26   36   46   56   66   76    86
 [7,] 1700 1700 7e+04   27   37   47   57   67   77    87
 [8,] 1800 1800 8e+04   28   38   48   58   68   78    88
 [9,] 1900 1900 9e+04   29   39   49   59   69   79    89
[10,] 2000 2000 1e+05   30   40   50   60   70   80    90
> 
> tmp3[,1:2] <- rep(1,10)
> tmp3[,1:2] <- rep(1,20)
> tmp3[,1:2] <- matrix(c(1:5),1,5)
> 
> tmp3[,-c(1:8)] <- matrix(c(1:5),1,5)
> 
> tmp3[1,] <- 1:10
> tmp3[1,]
     [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10]
[1,]    1    2    3    4    5    6    7    8    9    10
> tmp3[-1,] <- c(1,2)
> tmp3[1:10,]
      [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10]
 [1,]    1    2    3    4    5    6    7    8    9    10
 [2,]    1    2    1    2    1    2    1    2    1     2
 [3,]    2    1    2    1    2    1    2    1    2     1
 [4,]    1    2    1    2    1    2    1    2    1     2
 [5,]    2    1    2    1    2    1    2    1    2     1
 [6,]    1    2    1    2    1    2    1    2    1     2
 [7,]    2    1    2    1    2    1    2    1    2     1
 [8,]    1    2    1    2    1    2    1    2    1     2
 [9,]    2    1    2    1    2    1    2    1    2     1
[10,]    1    2    1    2    1    2    1    2    1     2
> tmp3[-c(1:8),] <- matrix(c(1:5),1,5)
> tmp3[1:10,]
      [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10]
 [1,]    1    2    3    4    5    6    7    8    9    10
 [2,]    1    2    1    2    1    2    1    2    1     2
 [3,]    2    1    2    1    2    1    2    1    2     1
 [4,]    1    2    1    2    1    2    1    2    1     2
 [5,]    2    1    2    1    2    1    2    1    2     1
 [6,]    1    2    1    2    1    2    1    2    1     2
 [7,]    2    1    2    1    2    1    2    1    2     1
 [8,]    1    2    1    2    1    2    1    2    1     2
 [9,]    1    3    5    2    4    1    3    5    2     4
[10,]    2    4    1    3    5    2    4    1    3     5
> 
> 
> tmp3[1:2,1:2] <- 5555.04
> tmp3[-(1:2),1:2] <- 1234.56789
> 
> 
> 
> ## testing accessors for the directory and prefix
> directory(tmp3)
[1] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests"
> prefix(tmp3)
[1] "BM"
> 
> ## testing if we can remove these objects
> rm(tmp, tmp2, tmp3)
> gc()
         used (Mb) gc trigger (Mb) max used (Mb)
Ncells 444030 23.8     953765   51   629782 33.7
Vcells 800613  6.2    8388608   64  1915681 14.7
> 
> 
> 
> 
> ##
> ## checking reads
> ##
> 
> tmp2 <- createBufferedMatrix(10,20)
> 
> test.sample <- rnorm(10*20)
> 
> tmp2[1:10,1:20] <- test.sample
> 
> test.matrix <- matrix(test.sample,10,20)
> 
> ## testing reads
> for (rep in 1:nreps){
+   which.row <- sample(1:10,1)
+   which.col <- sample(1:20,1)
+   if (tmp2[which.row,which.col] != test.matrix[which.row,which.col]){
+     cat("incorrect agreement")
+     break;
+   }
+ }
> 
> 
> for (rep in 1:nreps){
+   which.row <- sample(1:10,1)
+   if (!all(tmp2[which.row,] == test.matrix[which.row,])){
+     cat("incorrect agreement")
+     break;
+   }
+ }
> 
> 
> for (rep in 1:nreps){
+   which.col <- sample(1:20,1)
+   if (!all(tmp2[,which.col] == test.matrix[,which.col])){
+     cat("incorrect agreement")
+     break;
+   }
+ }
> 
> 
> 
> for (rep in 1:nreps){
+   which.col <- sample(1:10,5,replace=TRUE)
+   if (!all(tmp2[,which.col] == test.matrix[,which.col])){
+     cat("incorrect agreement")
+     break;
+   }
+ }
> 
> 
> date()
[1] "Tue Oct 18 18:51:41 2022"
> for (rep in 1:nreps){
+   which.row <- sample(1:10,5,replace=TRUE)
+   if (!all(tmp2[which.row,] == test.matrix[which.row,])){
+     cat("incorrect agreement")
+     break;
+   }
+ }
> date()
[1] "Tue Oct 18 18:51:42 2022"
> 
> 
> for (rep in 1:nreps){
+   which.row <- sample(1:10,5,replace=TRUE)
+   which.col <- sample(1:10,5,replace=TRUE)
+   if (!all(tmp2[which.row,which.col] == test.matrix[which.row,which.col])){
+     cat("incorrect agreement")
+     break;
+   }
+ }
> 
> 
> 
> 
> 
> RowMode(tmp2)
<pointer: 0x563b385b43c0>
> 
> 
> 
> for (rep in 1:nreps){
+   which.row <- sample(1:10,1)
+   which.col <- sample(1:20,1)
+   if (tmp2[which.row,which.col] != test.matrix[which.row,which.col]){
+     cat("incorrect agreement")
+     break;
+   }
+ }
> 
> 
> for (rep in 1:nreps){
+   which.row <- sample(1:10,1)
+   if (!all(tmp2[which.row,] == test.matrix[which.row,])){
+     cat("incorrect agreement")
+     break;
+   }
+ }
> 
> 
> for (rep in 1:nreps){
+   which.col <- sample(1:20,1)
+   if (!all(tmp2[,which.col] == test.matrix[,which.col])){
+     cat("incorrect agreement")
+     break;
+   }
+ }
> 
> 
> 
> for (rep in 1:nreps){
+   which.col <- sample(1:20,5,replace=TRUE)
+   if (!all(tmp2[,which.col] == test.matrix[,which.col])){
+     cat("incorrect agreement")
+     break;
+   }
+ }
> 
> 
> 
> for (rep in 1:nreps){
+   which.row <- sample(1:10,5,replace=TRUE)
+   if (!all(tmp2[which.row,] == test.matrix[which.row,])){
+     cat("incorrect agreement")
+     break;
+   }
+ }
> 
> 
> date()
[1] "Tue Oct 18 18:51:42 2022"
> for (rep in 1:nreps){
+   which.row <- sample(1:10,5,replace=TRUE)
+   which.col <- sample(1:20,5,replace=TRUE)
+   if (!all(tmp2[which.row,which.col] == test.matrix[which.row,which.col])){
+     cat("incorrect agreement")
+     break;
+   }
+ }
> date()
[1] "Tue Oct 18 18:51:42 2022"
> 
> ColMode(tmp2)
<pointer: 0x563b385b43c0>
> 
> 
> 
> ### Now testing assignments
> 
> for (rep in 1:nreps){
+   which.row <- sample(1:10,1)
+ 
+   new.data <- rnorm(20)
+   tmp2[which.row,] <- new.data
+   test.matrix[which.row,] <- new.data
+   if (rep > 1){
+     if (!all(tmp2[prev.row,] == test.matrix[prev.row,])){
+       cat("incorrect agreement")
+       break;
+     }
+   }
+   prev.row <- which.row
+   
+ }
> 
> 
> 
> 
> 
> for (rep in 1:nreps){
+   which.col <- sample(1:20,1)
+   new.data <- rnorm(10)
+   tmp2[,which.col] <- new.data
+   test.matrix[,which.col]<- new.data
+ 
+   if (rep > 1){
+     if (!all(tmp2[,prev.col] == test.matrix[,prev.col])){
+       cat("incorrect agreement")
+       break;
+     }
+   }
+   prev.col <- which.col
+ }
> 
> 
> 
> 
> 
> for (rep in 1:nreps){
+   which.col <- sample(1:20,5,replace=TRUE)
+   new.data <- matrix(rnorm(50),5,10)
+   tmp2[,which.col] <- new.data
+   test.matrix[,which.col]<- new.data
+   
+   if (rep > 1){
+     if (!all(tmp2[,prev.col] == test.matrix[,prev.col])){
+       cat("incorrect agreement")
+       break;
+     }
+   }
+   prev.col <- which.col
+ }
> 
> 
> 
> for (rep in 1:nreps){
+   which.row <- sample(1:10,5,replace=TRUE)
+   new.data <- matrix(rnorm(50),5,10)
+   tmp2[which.row,] <- new.data
+   test.matrix[which.row,]<- new.data
+   
+   if (rep > 1){
+     if (!all(tmp2[prev.row,] == test.matrix[prev.row,])){
+       cat("incorrect agreement")
+       break;
+     }
+   }
+   prev.row <- which.row
+ }
> 
> 
> 
> 
> 
> for (rep in 1:nreps){
+   which.row <- sample(1:10,5,replace=TRUE)
+   which.col  <- sample(1:20,5,replace=TRUE)
+   new.data <- matrix(rnorm(25),5,5)
+   tmp2[which.row,which.col] <- new.data
+   test.matrix[which.row,which.col]<- new.data
+   
+   if (rep > 1){
+     if (!all(tmp2[prev.row,prev.col] == test.matrix[prev.row,prev.col])){
+       cat("incorrect agreement")
+       break;
+     }
+   }
+   prev.row <- which.row
+   prev.col <- which.col
+ }
> 
> 
> 
> 
> ###
> ###
> ### testing some more functions
> ###
> 
> 
> 
> ## duplication function
> tmp5 <- duplicate(tmp2)
> 
> # making sure really did copy everything.
> tmp5[1,1] <- tmp5[1,1] +100.00
> 
> if (tmp5[1,1] == tmp2[1,1]){
+   stop("Problem with duplication")
+ }
> 
> 
> 
> 
> ### testing elementwise applying of functions
> 
> tmp5[1:4,1:4]
           [,1]       [,2]       [,3]       [,4]
[1,] 98.8355771 1.26535735  2.3081768  0.1636449
[2,]  1.1012750 0.63076438 -0.5371311 -0.1455720
[3,] -0.1993094 0.05216168 -0.4500057 -0.7297795
[4,] -1.3256431 0.94654160  1.3439945  1.0080829
> ewApply(tmp5,abs)
BufferedMatrix object
Matrix size:  10 20 
Buffer size:  1 1 
Directory:    /home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests 
Prefix:       BM 
Mode: Col mode
Read Only: FALSE
Memory usage :  2  Kilobytes.
Disk usage :  1.6  Kilobytes.
> tmp5[1:4,1:4]
           [,1]       [,2]      [,3]      [,4]
[1,] 98.8355771 1.26535735 2.3081768 0.1636449
[2,]  1.1012750 0.63076438 0.5371311 0.1455720
[3,]  0.1993094 0.05216168 0.4500057 0.7297795
[4,]  1.3256431 0.94654160 1.3439945 1.0080829
> ewApply(tmp5,sqrt)
BufferedMatrix object
Matrix size:  10 20 
Buffer size:  1 1 
Directory:    /home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests 
Prefix:       BM 
Mode: Col mode
Read Only: FALSE
Memory usage :  2  Kilobytes.
Disk usage :  1.6  Kilobytes.
> tmp5[1:4,1:4]
          [,1]      [,2]      [,3]      [,4]
[1,] 9.9416084 1.1248810 1.5192685 0.4045305
[2,] 1.0494165 0.7942068 0.7328923 0.3815390
[3,] 0.4464408 0.2283893 0.6708246 0.8542713
[4,] 1.1513657 0.9729037 1.1593077 1.0040333
> 
> my.function <- function(x,power){
+   (x+5)^power
+ }
> 
> ewApply(tmp5,my.function,power=2)
BufferedMatrix object
Matrix size:  10 20 
Buffer size:  1 1 
Directory:    /home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests 
Prefix:       BM 
Mode: Col mode
Read Only: FALSE
Memory usage :  2  Kilobytes.
Disk usage :  1.6  Kilobytes.
> tmp5[1:4,1:4]
          [,1]     [,2]     [,3]     [,4]
[1,] 223.25166 37.51417 42.50086 29.20895
[2,]  36.59544 33.57283 32.86605 28.96096
[3,]  29.66372 27.33605 32.15825 34.27249
[4,]  37.83930 35.67558 37.93707 36.04842
> 
> 
> 
> ## testing functions that elementwise transform the matrix
> sqrt(tmp5)
<pointer: 0x563b3827e4f0>
> exp(tmp5)
<pointer: 0x563b3827e4f0>
> log(tmp5,2)
<pointer: 0x563b3827e4f0>
> pow(tmp5,2)
> 
> 
> 
> 
> 
> ## testing functions that apply to entire matrix
> Max(tmp5)
[1] 464.6691
> Min(tmp5)
[1] 53.82683
> mean(tmp5)
[1] 72.47452
> Sum(tmp5)
[1] 14494.9
> Var(tmp5)
[1] 852.0718
> 
> 
> ## testing functions applied to rows or columns
> 
> rowMeans(tmp5)
 [1] 87.56994 69.73411 69.63940 73.58054 72.20892 72.29365 70.95296 69.61419
 [9] 68.29412 70.85739
> rowSums(tmp5)
 [1] 1751.399 1394.682 1392.788 1471.611 1444.178 1445.873 1419.059 1392.284
 [9] 1365.882 1417.148
> rowVars(tmp5)
 [1] 7958.35652  103.22928   42.04338   39.06481   62.28098   53.26756
 [7]  108.39127   89.02540   86.13533   92.71151
> rowSd(tmp5)
 [1] 89.209621 10.160181  6.484087  6.250184  7.891830  7.298463 10.411113
 [8]  9.435327  9.280912  9.628682
> rowMax(tmp5)
 [1] 464.66908  87.70950  78.98614  86.37519  86.08188  83.22689  98.46282
 [8]  93.04345  83.99161  92.81172
> rowMin(tmp5)
 [1] 54.25878 53.94929 56.89642 63.70767 58.02645 57.65725 54.89577 53.82683
 [9] 54.04959 55.76377
> 
> colMeans(tmp5)
 [1] 110.63868  69.82594  68.68387  69.58278  69.83733  71.64619  72.80030
 [8]  66.72079  67.34538  71.67901  76.96558  67.25148  73.67405  70.70801
[15]  70.53033  66.91964  68.70907  69.37546  76.98393  69.61262
> colSums(tmp5)
 [1] 1106.3868  698.2594  686.8387  695.8278  698.3733  716.4619  728.0030
 [8]  667.2079  673.4538  716.7901  769.6558  672.5148  736.7405  707.0801
[15]  705.3033  669.1964  687.0907  693.7546  769.8393  696.1262
> colVars(tmp5)
 [1] 15507.47641    80.03230    92.58396    51.56021   124.05010    44.54149
 [7]    20.98650    42.39997    77.91334    38.54620    88.11573    74.48970
[13]    99.11136   119.58596   114.71259    51.90450    95.08731   101.08609
[19]    44.64182    90.32156
> colSd(tmp5)
 [1] 124.529018   8.946077   9.622056   7.180544  11.137778   6.673941
 [7]   4.581103   6.511526   8.826853   6.208559   9.386998   8.630742
[13]   9.955469  10.935537  10.710397   7.204478   9.751272  10.054158
[19]   6.681454   9.503765
> colMax(tmp5)
 [1] 464.66908  80.25834  88.45998  77.94681  89.49669  83.22689  79.22217
 [8]  77.87207  79.03817  84.36995  98.46282  86.08188  93.04345  92.81172
[15]  85.27433  76.98978  81.73210  83.07145  86.37519  87.70950
> colMin(tmp5)
 [1] 61.74114 56.77169 54.89577 60.27845 53.94929 62.68165 66.22622 55.93253
 [9] 54.25878 65.17553 64.99443 54.04959 54.78623 53.82683 56.01310 56.36420
[17] 55.68658 55.76377 68.73406 57.12838
> 
> 
> ### setting a random element to NA and then testing with na.rm=TRUE or na.rm=FALSE (The default)
> 
> 
> which.row <- sample(1:10,1,replace=TRUE)
> which.col  <- sample(1:20,1,replace=TRUE)
> 
> tmp5[which.row,which.col] <- NA
> 
> Max(tmp5)
[1] NA
> Min(tmp5)
[1] NA
> mean(tmp5)
[1] NA
> Sum(tmp5)
[1] NA
> Var(tmp5)
[1] NA
> 
> rowMeans(tmp5)
 [1] 87.56994 69.73411 69.63940 73.58054 72.20892 72.29365 70.95296 69.61419
 [9] 68.29412       NA
> rowSums(tmp5)
 [1] 1751.399 1394.682 1392.788 1471.611 1444.178 1445.873 1419.059 1392.284
 [9] 1365.882       NA
> rowVars(tmp5)
 [1] 7958.35652  103.22928   42.04338   39.06481   62.28098   53.26756
 [7]  108.39127   89.02540   86.13533   92.97409
> rowSd(tmp5)
 [1] 89.209621 10.160181  6.484087  6.250184  7.891830  7.298463 10.411113
 [8]  9.435327  9.280912  9.642308
> rowMax(tmp5)
 [1] 464.66908  87.70950  78.98614  86.37519  86.08188  83.22689  98.46282
 [8]  93.04345  83.99161        NA
> rowMin(tmp5)
 [1] 54.25878 53.94929 56.89642 63.70767 58.02645 57.65725 54.89577 53.82683
 [9] 54.04959       NA
> 
> colMeans(tmp5)
 [1] 110.63868  69.82594  68.68387        NA  69.83733  71.64619  72.80030
 [8]  66.72079  67.34538  71.67901  76.96558  67.25148  73.67405  70.70801
[15]  70.53033  66.91964  68.70907  69.37546  76.98393  69.61262
> colSums(tmp5)
 [1] 1106.3868  698.2594  686.8387        NA  698.3733  716.4619  728.0030
 [8]  667.2079  673.4538  716.7901  769.6558  672.5148  736.7405  707.0801
[15]  705.3033  669.1964  687.0907  693.7546  769.8393  696.1262
> colVars(tmp5)
 [1] 15507.47641    80.03230    92.58396          NA   124.05010    44.54149
 [7]    20.98650    42.39997    77.91334    38.54620    88.11573    74.48970
[13]    99.11136   119.58596   114.71259    51.90450    95.08731   101.08609
[19]    44.64182    90.32156
> colSd(tmp5)
 [1] 124.529018   8.946077   9.622056         NA  11.137778   6.673941
 [7]   4.581103   6.511526   8.826853   6.208559   9.386998   8.630742
[13]   9.955469  10.935537  10.710397   7.204478   9.751272  10.054158
[19]   6.681454   9.503765
> colMax(tmp5)
 [1] 464.66908  80.25834  88.45998        NA  89.49669  83.22689  79.22217
 [8]  77.87207  79.03817  84.36995  98.46282  86.08188  93.04345  92.81172
[15]  85.27433  76.98978  81.73210  83.07145  86.37519  87.70950
> colMin(tmp5)
 [1] 61.74114 56.77169 54.89577       NA 53.94929 62.68165 66.22622 55.93253
 [9] 54.25878 65.17553 64.99443 54.04959 54.78623 53.82683 56.01310 56.36420
[17] 55.68658 55.76377 68.73406 57.12838
> 
> Max(tmp5,na.rm=TRUE)
[1] 464.6691
> Min(tmp5,na.rm=TRUE)
[1] 53.82683
> mean(tmp5,na.rm=TRUE)
[1] 72.52859
> Sum(tmp5,na.rm=TRUE)
[1] 14433.19
> Var(tmp5,na.rm=TRUE)
[1] 855.7875
> 
> rowMeans(tmp5,na.rm=TRUE)
 [1] 87.56994 69.73411 69.63940 73.58054 72.20892 72.29365 70.95296 69.61419
 [9] 68.29412 71.33858
> rowSums(tmp5,na.rm=TRUE)
 [1] 1751.399 1394.682 1392.788 1471.611 1444.178 1445.873 1419.059 1392.284
 [9] 1365.882 1355.433
> rowVars(tmp5,na.rm=TRUE)
 [1] 7958.35652  103.22928   42.04338   39.06481   62.28098   53.26756
 [7]  108.39127   89.02540   86.13533   92.97409
> rowSd(tmp5,na.rm=TRUE)
 [1] 89.209621 10.160181  6.484087  6.250184  7.891830  7.298463 10.411113
 [8]  9.435327  9.280912  9.642308
> rowMax(tmp5,na.rm=TRUE)
 [1] 464.66908  87.70950  78.98614  86.37519  86.08188  83.22689  98.46282
 [8]  93.04345  83.99161  92.81172
> rowMin(tmp5,na.rm=TRUE)
 [1] 54.25878 53.94929 56.89642 63.70767 58.02645 57.65725 54.89577 53.82683
 [9] 54.04959 55.76377
> 
> colMeans(tmp5,na.rm=TRUE)
 [1] 110.63868  69.82594  68.68387  70.45700  69.83733  71.64619  72.80030
 [8]  66.72079  67.34538  71.67901  76.96558  67.25148  73.67405  70.70801
[15]  70.53033  66.91964  68.70907  69.37546  76.98393  69.61262
> colSums(tmp5,na.rm=TRUE)
 [1] 1106.3868  698.2594  686.8387  634.1130  698.3733  716.4619  728.0030
 [8]  667.2079  673.4538  716.7901  769.6558  672.5148  736.7405  707.0801
[15]  705.3033  669.1964  687.0907  693.7546  769.8393  696.1262
> colVars(tmp5,na.rm=TRUE)
 [1] 15507.47641    80.03230    92.58396    49.40744   124.05010    44.54149
 [7]    20.98650    42.39997    77.91334    38.54620    88.11573    74.48970
[13]    99.11136   119.58596   114.71259    51.90450    95.08731   101.08609
[19]    44.64182    90.32156
> colSd(tmp5,na.rm=TRUE)
 [1] 124.529018   8.946077   9.622056   7.029042  11.137778   6.673941
 [7]   4.581103   6.511526   8.826853   6.208559   9.386998   8.630742
[13]   9.955469  10.935537  10.710397   7.204478   9.751272  10.054158
[19]   6.681454   9.503765
> colMax(tmp5,na.rm=TRUE)
 [1] 464.66908  80.25834  88.45998  77.94681  89.49669  83.22689  79.22217
 [8]  77.87207  79.03817  84.36995  98.46282  86.08188  93.04345  92.81172
[15]  85.27433  76.98978  81.73210  83.07145  86.37519  87.70950
> colMin(tmp5,na.rm=TRUE)
 [1] 61.74114 56.77169 54.89577 60.27845 53.94929 62.68165 66.22622 55.93253
 [9] 54.25878 65.17553 64.99443 54.04959 54.78623 53.82683 56.01310 56.36420
[17] 55.68658 55.76377 68.73406 57.12838
> 
> # now set an entire row to NA
> 
> tmp5[which.row,] <- NA
> rowMeans(tmp5,na.rm=TRUE)
 [1] 87.56994 69.73411 69.63940 73.58054 72.20892 72.29365 70.95296 69.61419
 [9] 68.29412      NaN
> rowSums(tmp5,na.rm=TRUE)
 [1] 1751.399 1394.682 1392.788 1471.611 1444.178 1445.873 1419.059 1392.284
 [9] 1365.882    0.000
> rowVars(tmp5,na.rm=TRUE)
 [1] 7958.35652  103.22928   42.04338   39.06481   62.28098   53.26756
 [7]  108.39127   89.02540   86.13533         NA
> rowSd(tmp5,na.rm=TRUE)
 [1] 89.209621 10.160181  6.484087  6.250184  7.891830  7.298463 10.411113
 [8]  9.435327  9.280912        NA
> rowMax(tmp5,na.rm=TRUE)
 [1] 464.66908  87.70950  78.98614  86.37519  86.08188  83.22689  98.46282
 [8]  93.04345  83.99161        NA
> rowMin(tmp5,na.rm=TRUE)
 [1] 54.25878 53.94929 56.89642 63.70767 58.02645 57.65725 54.89577 53.82683
 [9] 54.04959       NA
> 
> 
> # now set an entire col to NA
> 
> 
> tmp5[,which.col] <- NA
> colMeans(tmp5,na.rm=TRUE)
 [1] 115.21762  70.85809  68.64097       NaN  67.65296  71.55888  72.70781
 [8]  67.32851  66.20697  72.06948  77.15773  66.83331  73.68385  68.25204
[15]  71.32016  67.09822  69.40757  70.88787  76.21665  69.52839
> colSums(tmp5,na.rm=TRUE)
 [1] 1036.9586  637.7228  617.7687    0.0000  608.8766  644.0300  654.3703
 [8]  605.9566  595.8627  648.6253  694.4195  601.4998  663.1547  614.2684
[15]  641.8815  603.8840  624.6681  637.9908  685.9499  625.7555
> colVars(tmp5,na.rm=TRUE)
 [1] 17210.03499    78.05138   104.13625          NA    85.87715    50.02342
 [7]    23.51358    43.54505    73.07281    41.64929    98.71486    81.83370
[13]   111.49919    66.67671   122.03351    58.03381   101.48441    87.98879
[19]    43.59910   101.53194
> colSd(tmp5,na.rm=TRUE)
 [1] 131.187023   8.834669  10.204717         NA   9.266992   7.072724
 [7]   4.849080   6.598868   8.548263   6.453626   9.935535   9.046198
[13]  10.559318   8.165581  11.046878   7.617993  10.073947   9.380234
[19]   6.602961  10.076306
> colMax(tmp5,na.rm=TRUE)
 [1] 464.66908  80.25834  88.45998      -Inf  86.71615  83.22689  79.22217
 [8]  77.87207  79.03817  84.36995  98.46282  86.08188  93.04345  77.34429
[15]  85.27433  76.98978  81.73210  83.07145  86.37519  87.70950
> colMin(tmp5,na.rm=TRUE)
 [1] 61.74114 56.77169 54.89577      Inf 53.94929 62.68165 66.22622 55.93253
 [9] 54.25878 65.17553 64.99443 54.04959 54.78623 53.82683 56.01310 56.36420
[17] 55.68658 55.92119 68.73406 57.12838
> 
> 
> 
> 
> copymatrix <- matrix(rnorm(200,150,15),10,20)
> 
> tmp5[1:10,1:20] <- copymatrix
> which.row <- 3
> which.col  <- 1
> cat(which.row," ",which.col,"\n")
3   1 
> tmp5[which.row,which.col] <- NA
> copymatrix[which.row,which.col] <- NA
> 
> rowVars(tmp5,na.rm=TRUE)
 [1] 337.7105 184.9729 137.4857 276.0950 217.4083 236.3701 266.3420 252.8851
 [9] 226.7661 251.7785
> apply(copymatrix,1,var,na.rm=TRUE)
 [1] 337.7105 184.9729 137.4857 276.0950 217.4083 236.3701 266.3420 252.8851
 [9] 226.7661 251.7785
> 
> 
> 
> copymatrix <- matrix(rnorm(200,150,15),10,20)
> 
> tmp5[1:10,1:20] <- copymatrix
> which.row <- 1
> which.col  <- 3
> cat(which.row," ",which.col,"\n")
1   3 
> tmp5[which.row,which.col] <- NA
> copymatrix[which.row,which.col] <- NA
> 
> colVars(tmp5,na.rm=TRUE)-apply(copymatrix,2,var,na.rm=TRUE)
 [1]  7.105427e-15  5.684342e-14 -2.273737e-13 -2.842171e-14  5.684342e-14
 [6]  2.842171e-14 -5.684342e-14 -5.684342e-14  8.526513e-14 -8.526513e-14
[11] -8.526513e-14 -3.410605e-13  5.684342e-14  1.421085e-13  0.000000e+00
[16]  0.000000e+00 -5.684342e-14 -8.526513e-14  0.000000e+00 -1.136868e-13
> 
> 
> 
> 
> 
> 
> 
> 
> 
> 
> ## making sure these things agree
> ##
> ## first when there is no NA
> 
> 
> 
> agree.checks <- function(buff.matrix,r.matrix,err.tol=1e-10){
+ 
+   if (Max(buff.matrix,na.rm=TRUE) != max(r.matrix,na.rm=TRUE)){
+     stop("No agreement in Max")
+   }
+   
+ 
+   if (Min(buff.matrix,na.rm=TRUE) != min(r.matrix,na.rm=TRUE)){
+     stop("No agreement in Min")
+   }
+ 
+ 
+   if (abs(Sum(buff.matrix,na.rm=TRUE)- sum(r.matrix,na.rm=TRUE)) > err.tol){
+ 
+     cat(Sum(buff.matrix,na.rm=TRUE),"\n")
+     cat(sum(r.matrix,na.rm=TRUE),"\n")
+     cat(Sum(buff.matrix,na.rm=TRUE) - sum(r.matrix,na.rm=TRUE),"\n")
+     
+     stop("No agreement in Sum")
+   }
+   
+   if (abs(mean(buff.matrix,na.rm=TRUE) - mean(r.matrix,na.rm=TRUE)) > err.tol){
+     stop("No agreement in mean")
+   }
+   
+   
+   if(abs(Var(buff.matrix,na.rm=TRUE) - var(as.vector(r.matrix),na.rm=TRUE)) > err.tol){
+     stop("No agreement in Var")
+   }
+   
+   
+ 
+   if(any(abs(rowMeans(buff.matrix,na.rm=TRUE) - apply(r.matrix,1,mean,na.rm=TRUE)) > err.tol,na.rm=TRUE)){
+     stop("No agreement in rowMeans")
+   }
+   
+   
+   if(any(abs(colMeans(buff.matrix,na.rm=TRUE) - apply(r.matrix,2,mean,na.rm=TRUE))> err.tol,na.rm=TRUE)){
+     stop("No agreement in colMeans")
+   }
+   
+   
+   if(any(abs(rowSums(buff.matrix,na.rm=TRUE)  -  apply(r.matrix,1,sum,na.rm=TRUE))> err.tol,na.rm=TRUE)){
+     stop("No agreement in rowSums")
+   }
+   
+   
+   if(any(abs(colSums(buff.matrix,na.rm=TRUE) - apply(r.matrix,2,sum,na.rm=TRUE))> err.tol,na.rm=TRUE)){
+     stop("No agreement in colSums")
+   }
+   
+   ### this is to get around the fact that R doesn't like to compute NA on an entire vector of NA when 
+   ### computing variance
+   my.Var <- function(x,na.rm=FALSE){
+    if (all(is.na(x))){
+      return(NA)
+    } else {
+      var(x,na.rm=na.rm)
+    }
+ 
+   }
+   
+   if(any(abs(rowVars(buff.matrix,na.rm=TRUE) - apply(r.matrix,1,my.Var,na.rm=TRUE))  > err.tol,na.rm=TRUE)){
+     stop("No agreement in rowVars")
+   }
+   
+   
+   if(any(abs(colVars(buff.matrix,na.rm=TRUE) - apply(r.matrix,2,my.Var,na.rm=TRUE))  > err.tol,na.rm=TRUE)){
+     stop("No agreement in rowVars")
+   }
+ 
+ 
+   if(any(abs(rowMax(buff.matrix,na.rm=TRUE) - apply(r.matrix,1,max,na.rm=TRUE))  > err.tol,na.rm=TRUE)){
+     stop("No agreement in colMax")
+   }
+   
+ 
+   if(any(abs(colMax(buff.matrix,na.rm=TRUE) - apply(r.matrix,2,max,na.rm=TRUE))  > err.tol,na.rm=TRUE)){
+     stop("No agreement in colMax")
+   }
+   
+   
+   
+   if(any(abs(rowMin(buff.matrix,na.rm=TRUE) - apply(r.matrix,1,min,na.rm=TRUE))  > err.tol,na.rm=TRUE)){
+     stop("No agreement in colMin")
+   }
+   
+ 
+   if(any(abs(colMin(buff.matrix,na.rm=TRUE) - apply(r.matrix,2,min,na.rm=TRUE))  > err.tol,na.rm=TRUE)){
+     stop("No agreement in colMin")
+   }
+ 
+   if(any(abs(colMedians(buff.matrix,na.rm=TRUE) - apply(r.matrix,2,median,na.rm=TRUE)) > err.tol,na.rm=TRUE)){
+     stop("No agreement in colMedian")
+   }
+ 
+   if(any(abs(colRanges(buff.matrix,na.rm=TRUE) - apply(r.matrix,2,range,na.rm=TRUE)) > err.tol,na.rm=TRUE)){
+     stop("No agreement in colRanges")
+   }
+ 
+ 
+   
+ }
> 
> 
> 
> 
> 
> 
> 
> 
> 
> for (rep in 1:20){
+   copymatrix <- matrix(rnorm(200,150,15),10,20)
+   
+   tmp5[1:10,1:20] <- copymatrix
+ 
+ 
+   agree.checks(tmp5,copymatrix)
+   
+   ## now lets assign some NA values and check agreement
+ 
+   which.row <- sample(1:10,1,replace=TRUE)
+   which.col  <- sample(1:20,1,replace=TRUE)
+   
+   cat(which.row," ",which.col,"\n")
+   
+   tmp5[which.row,which.col] <- NA
+   copymatrix[which.row,which.col] <- NA
+   
+   agree.checks(tmp5,copymatrix)
+ 
+   ## make an entire row NA
+   tmp5[which.row,] <- NA
+   copymatrix[which.row,] <- NA
+ 
+ 
+   agree.checks(tmp5,copymatrix)
+   
+   ### also make an entire col NA
+   tmp5[,which.col] <- NA
+   copymatrix[,which.col] <- NA
+ 
+   agree.checks(tmp5,copymatrix)
+ 
+   ### now make 1 element non NA with NA in the rest of row and column
+ 
+   tmp5[which.row,which.col] <- rnorm(1,150,15)
+   copymatrix[which.row,which.col] <- tmp5[which.row,which.col]
+ 
+   agree.checks(tmp5,copymatrix)
+ }
8   4 
1   5 
10   3 
1   18 
7   15 
3   2 
6   18 
2   3 
7   6 
3   18 
7   9 
10   9 
9   5 
1   13 
1   20 
6   3 
6   8 
7   15 
5   19 
4   11 
There were 50 or more warnings (use warnings() to see the first 50)
> 
> 
> ### now test 1 by n and n by 1 matrix
> 
> 
> err.tol <- 1e-12
> 
> rm(tmp5)
> 
> dataset1 <- rnorm(100)
> dataset2 <- rnorm(100)
> 
> tmp <- createBufferedMatrix(1,100)
> tmp[1,] <- dataset1
> 
> tmp2 <- createBufferedMatrix(100,1)
> tmp2[,1] <- dataset2
> 
> 
> 
> 
> 
> Max(tmp)
[1] 2.850036
> Min(tmp)
[1] -2.45875
> mean(tmp)
[1] 0.05184266
> Sum(tmp)
[1] 5.184266
> Var(tmp)
[1] 1.024033
> 
> rowMeans(tmp)
[1] 0.05184266
> rowSums(tmp)
[1] 5.184266
> rowVars(tmp)
[1] 1.024033
> rowSd(tmp)
[1] 1.011945
> rowMax(tmp)
[1] 2.850036
> rowMin(tmp)
[1] -2.45875
> 
> colMeans(tmp)
  [1] -1.15424139 -0.73257001  0.71777602  1.22010302 -1.29173344  1.70741460
  [7] -0.39737100 -1.03596394  1.87165563  0.41609298  1.35890229  0.41929692
 [13] -0.40818829 -2.03946822 -0.89330875 -1.03284643  0.39727310 -1.48284088
 [19] -0.32475862  0.39958452  0.68126563  0.53109189 -1.33990707  0.88531194
 [25]  0.13884831  0.48501309  0.06701940 -1.15307692 -0.35924759  0.75695083
 [31]  2.85003574  0.51603642  1.09403481  0.38640997 -0.86715244  0.69412021
 [37] -2.45875050 -0.73916465  1.62104100 -0.33798227  1.24442283 -0.71342282
 [43] -0.34749073 -0.33196973  0.71277589 -0.61293086 -1.35113697  0.58136990
 [49]  0.89957419  0.05842413  0.19549622 -0.20425646  0.38529297  1.05869000
 [55]  1.51629191 -0.33267630 -0.49491139  1.16383743 -0.59908947  0.38162243
 [61] -1.19875692 -0.75459229  0.07978532 -0.75045893 -1.78353554  1.77271488
 [67] -0.77165615  0.45886029 -0.48489283 -0.04035188  1.61747922 -0.22154426
 [73] -0.81075982  0.39874622 -0.99386936  0.43777368  0.03229677 -0.32372557
 [79] -0.06247992  0.75052644  0.06414672 -1.77587721  1.05846729  0.89108379
 [85]  0.38742055 -0.51784434 -0.42003308  2.57694476  1.85281438 -0.65542915
 [91]  0.51532812 -1.05827620 -0.27662984  2.14315572 -0.68077204  0.46652042
 [97] -0.96649371 -0.41208611  0.44602131 -0.18237358
> colSums(tmp)
  [1] -1.15424139 -0.73257001  0.71777602  1.22010302 -1.29173344  1.70741460
  [7] -0.39737100 -1.03596394  1.87165563  0.41609298  1.35890229  0.41929692
 [13] -0.40818829 -2.03946822 -0.89330875 -1.03284643  0.39727310 -1.48284088
 [19] -0.32475862  0.39958452  0.68126563  0.53109189 -1.33990707  0.88531194
 [25]  0.13884831  0.48501309  0.06701940 -1.15307692 -0.35924759  0.75695083
 [31]  2.85003574  0.51603642  1.09403481  0.38640997 -0.86715244  0.69412021
 [37] -2.45875050 -0.73916465  1.62104100 -0.33798227  1.24442283 -0.71342282
 [43] -0.34749073 -0.33196973  0.71277589 -0.61293086 -1.35113697  0.58136990
 [49]  0.89957419  0.05842413  0.19549622 -0.20425646  0.38529297  1.05869000
 [55]  1.51629191 -0.33267630 -0.49491139  1.16383743 -0.59908947  0.38162243
 [61] -1.19875692 -0.75459229  0.07978532 -0.75045893 -1.78353554  1.77271488
 [67] -0.77165615  0.45886029 -0.48489283 -0.04035188  1.61747922 -0.22154426
 [73] -0.81075982  0.39874622 -0.99386936  0.43777368  0.03229677 -0.32372557
 [79] -0.06247992  0.75052644  0.06414672 -1.77587721  1.05846729  0.89108379
 [85]  0.38742055 -0.51784434 -0.42003308  2.57694476  1.85281438 -0.65542915
 [91]  0.51532812 -1.05827620 -0.27662984  2.14315572 -0.68077204  0.46652042
 [97] -0.96649371 -0.41208611  0.44602131 -0.18237358
> colVars(tmp)
  [1] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
 [26] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
 [51] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
 [76] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
> colSd(tmp)
  [1] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
 [26] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
 [51] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
 [76] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
> colMax(tmp)
  [1] -1.15424139 -0.73257001  0.71777602  1.22010302 -1.29173344  1.70741460
  [7] -0.39737100 -1.03596394  1.87165563  0.41609298  1.35890229  0.41929692
 [13] -0.40818829 -2.03946822 -0.89330875 -1.03284643  0.39727310 -1.48284088
 [19] -0.32475862  0.39958452  0.68126563  0.53109189 -1.33990707  0.88531194
 [25]  0.13884831  0.48501309  0.06701940 -1.15307692 -0.35924759  0.75695083
 [31]  2.85003574  0.51603642  1.09403481  0.38640997 -0.86715244  0.69412021
 [37] -2.45875050 -0.73916465  1.62104100 -0.33798227  1.24442283 -0.71342282
 [43] -0.34749073 -0.33196973  0.71277589 -0.61293086 -1.35113697  0.58136990
 [49]  0.89957419  0.05842413  0.19549622 -0.20425646  0.38529297  1.05869000
 [55]  1.51629191 -0.33267630 -0.49491139  1.16383743 -0.59908947  0.38162243
 [61] -1.19875692 -0.75459229  0.07978532 -0.75045893 -1.78353554  1.77271488
 [67] -0.77165615  0.45886029 -0.48489283 -0.04035188  1.61747922 -0.22154426
 [73] -0.81075982  0.39874622 -0.99386936  0.43777368  0.03229677 -0.32372557
 [79] -0.06247992  0.75052644  0.06414672 -1.77587721  1.05846729  0.89108379
 [85]  0.38742055 -0.51784434 -0.42003308  2.57694476  1.85281438 -0.65542915
 [91]  0.51532812 -1.05827620 -0.27662984  2.14315572 -0.68077204  0.46652042
 [97] -0.96649371 -0.41208611  0.44602131 -0.18237358
> colMin(tmp)
  [1] -1.15424139 -0.73257001  0.71777602  1.22010302 -1.29173344  1.70741460
  [7] -0.39737100 -1.03596394  1.87165563  0.41609298  1.35890229  0.41929692
 [13] -0.40818829 -2.03946822 -0.89330875 -1.03284643  0.39727310 -1.48284088
 [19] -0.32475862  0.39958452  0.68126563  0.53109189 -1.33990707  0.88531194
 [25]  0.13884831  0.48501309  0.06701940 -1.15307692 -0.35924759  0.75695083
 [31]  2.85003574  0.51603642  1.09403481  0.38640997 -0.86715244  0.69412021
 [37] -2.45875050 -0.73916465  1.62104100 -0.33798227  1.24442283 -0.71342282
 [43] -0.34749073 -0.33196973  0.71277589 -0.61293086 -1.35113697  0.58136990
 [49]  0.89957419  0.05842413  0.19549622 -0.20425646  0.38529297  1.05869000
 [55]  1.51629191 -0.33267630 -0.49491139  1.16383743 -0.59908947  0.38162243
 [61] -1.19875692 -0.75459229  0.07978532 -0.75045893 -1.78353554  1.77271488
 [67] -0.77165615  0.45886029 -0.48489283 -0.04035188  1.61747922 -0.22154426
 [73] -0.81075982  0.39874622 -0.99386936  0.43777368  0.03229677 -0.32372557
 [79] -0.06247992  0.75052644  0.06414672 -1.77587721  1.05846729  0.89108379
 [85]  0.38742055 -0.51784434 -0.42003308  2.57694476  1.85281438 -0.65542915
 [91]  0.51532812 -1.05827620 -0.27662984  2.14315572 -0.68077204  0.46652042
 [97] -0.96649371 -0.41208611  0.44602131 -0.18237358
> colMedians(tmp)
  [1] -1.15424139 -0.73257001  0.71777602  1.22010302 -1.29173344  1.70741460
  [7] -0.39737100 -1.03596394  1.87165563  0.41609298  1.35890229  0.41929692
 [13] -0.40818829 -2.03946822 -0.89330875 -1.03284643  0.39727310 -1.48284088
 [19] -0.32475862  0.39958452  0.68126563  0.53109189 -1.33990707  0.88531194
 [25]  0.13884831  0.48501309  0.06701940 -1.15307692 -0.35924759  0.75695083
 [31]  2.85003574  0.51603642  1.09403481  0.38640997 -0.86715244  0.69412021
 [37] -2.45875050 -0.73916465  1.62104100 -0.33798227  1.24442283 -0.71342282
 [43] -0.34749073 -0.33196973  0.71277589 -0.61293086 -1.35113697  0.58136990
 [49]  0.89957419  0.05842413  0.19549622 -0.20425646  0.38529297  1.05869000
 [55]  1.51629191 -0.33267630 -0.49491139  1.16383743 -0.59908947  0.38162243
 [61] -1.19875692 -0.75459229  0.07978532 -0.75045893 -1.78353554  1.77271488
 [67] -0.77165615  0.45886029 -0.48489283 -0.04035188  1.61747922 -0.22154426
 [73] -0.81075982  0.39874622 -0.99386936  0.43777368  0.03229677 -0.32372557
 [79] -0.06247992  0.75052644  0.06414672 -1.77587721  1.05846729  0.89108379
 [85]  0.38742055 -0.51784434 -0.42003308  2.57694476  1.85281438 -0.65542915
 [91]  0.51532812 -1.05827620 -0.27662984  2.14315572 -0.68077204  0.46652042
 [97] -0.96649371 -0.41208611  0.44602131 -0.18237358
> colRanges(tmp)
          [,1]     [,2]     [,3]     [,4]      [,5]     [,6]      [,7]
[1,] -1.154241 -0.73257 0.717776 1.220103 -1.291733 1.707415 -0.397371
[2,] -1.154241 -0.73257 0.717776 1.220103 -1.291733 1.707415 -0.397371
          [,8]     [,9]    [,10]    [,11]     [,12]      [,13]     [,14]
[1,] -1.035964 1.871656 0.416093 1.358902 0.4192969 -0.4081883 -2.039468
[2,] -1.035964 1.871656 0.416093 1.358902 0.4192969 -0.4081883 -2.039468
          [,15]     [,16]     [,17]     [,18]      [,19]     [,20]     [,21]
[1,] -0.8933088 -1.032846 0.3972731 -1.482841 -0.3247586 0.3995845 0.6812656
[2,] -0.8933088 -1.032846 0.3972731 -1.482841 -0.3247586 0.3995845 0.6812656
         [,22]     [,23]     [,24]     [,25]     [,26]     [,27]     [,28]
[1,] 0.5310919 -1.339907 0.8853119 0.1388483 0.4850131 0.0670194 -1.153077
[2,] 0.5310919 -1.339907 0.8853119 0.1388483 0.4850131 0.0670194 -1.153077
          [,29]     [,30]    [,31]     [,32]    [,33]   [,34]      [,35]
[1,] -0.3592476 0.7569508 2.850036 0.5160364 1.094035 0.38641 -0.8671524
[2,] -0.3592476 0.7569508 2.850036 0.5160364 1.094035 0.38641 -0.8671524
         [,36]    [,37]      [,38]    [,39]      [,40]    [,41]      [,42]
[1,] 0.6941202 -2.45875 -0.7391647 1.621041 -0.3379823 1.244423 -0.7134228
[2,] 0.6941202 -2.45875 -0.7391647 1.621041 -0.3379823 1.244423 -0.7134228
          [,43]      [,44]     [,45]      [,46]     [,47]     [,48]     [,49]
[1,] -0.3474907 -0.3319697 0.7127759 -0.6129309 -1.351137 0.5813699 0.8995742
[2,] -0.3474907 -0.3319697 0.7127759 -0.6129309 -1.351137 0.5813699 0.8995742
          [,50]     [,51]      [,52]    [,53]   [,54]    [,55]      [,56]
[1,] 0.05842413 0.1954962 -0.2042565 0.385293 1.05869 1.516292 -0.3326763
[2,] 0.05842413 0.1954962 -0.2042565 0.385293 1.05869 1.516292 -0.3326763
          [,57]    [,58]      [,59]     [,60]     [,61]      [,62]      [,63]
[1,] -0.4949114 1.163837 -0.5990895 0.3816224 -1.198757 -0.7545923 0.07978532
[2,] -0.4949114 1.163837 -0.5990895 0.3816224 -1.198757 -0.7545923 0.07978532
          [,64]     [,65]    [,66]      [,67]     [,68]      [,69]       [,70]
[1,] -0.7504589 -1.783536 1.772715 -0.7716561 0.4588603 -0.4848928 -0.04035188
[2,] -0.7504589 -1.783536 1.772715 -0.7716561 0.4588603 -0.4848928 -0.04035188
        [,71]      [,72]      [,73]     [,74]      [,75]     [,76]      [,77]
[1,] 1.617479 -0.2215443 -0.8107598 0.3987462 -0.9938694 0.4377737 0.03229677
[2,] 1.617479 -0.2215443 -0.8107598 0.3987462 -0.9938694 0.4377737 0.03229677
          [,78]       [,79]     [,80]      [,81]     [,82]    [,83]     [,84]
[1,] -0.3237256 -0.06247992 0.7505264 0.06414672 -1.775877 1.058467 0.8910838
[2,] -0.3237256 -0.06247992 0.7505264 0.06414672 -1.775877 1.058467 0.8910838
         [,85]      [,86]      [,87]    [,88]    [,89]      [,90]     [,91]
[1,] 0.3874205 -0.5178443 -0.4200331 2.576945 1.852814 -0.6554292 0.5153281
[2,] 0.3874205 -0.5178443 -0.4200331 2.576945 1.852814 -0.6554292 0.5153281
         [,92]      [,93]    [,94]     [,95]     [,96]      [,97]      [,98]
[1,] -1.058276 -0.2766298 2.143156 -0.680772 0.4665204 -0.9664937 -0.4120861
[2,] -1.058276 -0.2766298 2.143156 -0.680772 0.4665204 -0.9664937 -0.4120861
         [,99]     [,100]
[1,] 0.4460213 -0.1823736
[2,] 0.4460213 -0.1823736
> 
> 
> Max(tmp2)
[1] 3.094671
> Min(tmp2)
[1] -2.410316
> mean(tmp2)
[1] 0.1308056
> Sum(tmp2)
[1] 13.08056
> Var(tmp2)
[1] 1.10497
> 
> rowMeans(tmp2)
  [1] -0.29140345  0.99300520  0.75561367 -1.86177759  3.09467050  0.45674418
  [7]  0.30446585  1.16566801  0.01080590  0.17990259 -0.58698802  0.39847835
 [13] -0.62917428  0.05738627 -0.42571506  0.08866395  1.47036755  1.23878215
 [19]  0.37355849  0.26936286 -0.15324433  1.56233175  0.31114447 -1.31946783
 [25] -0.51844676  0.03277328  2.38900939  0.57492721 -2.41031585 -1.24207168
 [31] -0.15327927  1.39736554  1.20524649 -0.51017855 -0.52837943 -1.01669463
 [37] -1.30703812 -2.40891621  1.31430793  0.56697551 -1.12983501 -0.13609146
 [43]  0.82434643 -0.29972586  0.48828155 -0.47968346 -0.10797938  0.54462223
 [49]  0.67076385  0.10595418 -0.12460006 -0.41376076 -0.90669309  0.61935947
 [55]  2.62891689  0.36529744 -0.89404880  1.68366785 -0.85277233 -0.42004423
 [61] -1.83780428  0.21480942  0.51169136 -0.23984906 -0.29274343  1.29969384
 [67]  0.31118370 -0.66058136  0.78344279  1.12870106 -1.81605508  0.72740316
 [73]  0.47398923  0.31275088  0.52392729 -0.71271656 -0.79976835  1.14235855
 [79] -1.26656724  1.36113168 -0.06620864  1.73397195 -0.64159125  1.10683424
 [85] -0.30695508  0.53160268  0.90738537  0.97081190  1.09816354  0.46985933
 [91] -0.96143110 -2.32163036  0.53748637 -0.69017830 -1.09485180  1.01464817
 [97] -0.92745995  1.40846173  1.13376740  0.99843389
> rowSums(tmp2)
  [1] -0.29140345  0.99300520  0.75561367 -1.86177759  3.09467050  0.45674418
  [7]  0.30446585  1.16566801  0.01080590  0.17990259 -0.58698802  0.39847835
 [13] -0.62917428  0.05738627 -0.42571506  0.08866395  1.47036755  1.23878215
 [19]  0.37355849  0.26936286 -0.15324433  1.56233175  0.31114447 -1.31946783
 [25] -0.51844676  0.03277328  2.38900939  0.57492721 -2.41031585 -1.24207168
 [31] -0.15327927  1.39736554  1.20524649 -0.51017855 -0.52837943 -1.01669463
 [37] -1.30703812 -2.40891621  1.31430793  0.56697551 -1.12983501 -0.13609146
 [43]  0.82434643 -0.29972586  0.48828155 -0.47968346 -0.10797938  0.54462223
 [49]  0.67076385  0.10595418 -0.12460006 -0.41376076 -0.90669309  0.61935947
 [55]  2.62891689  0.36529744 -0.89404880  1.68366785 -0.85277233 -0.42004423
 [61] -1.83780428  0.21480942  0.51169136 -0.23984906 -0.29274343  1.29969384
 [67]  0.31118370 -0.66058136  0.78344279  1.12870106 -1.81605508  0.72740316
 [73]  0.47398923  0.31275088  0.52392729 -0.71271656 -0.79976835  1.14235855
 [79] -1.26656724  1.36113168 -0.06620864  1.73397195 -0.64159125  1.10683424
 [85] -0.30695508  0.53160268  0.90738537  0.97081190  1.09816354  0.46985933
 [91] -0.96143110 -2.32163036  0.53748637 -0.69017830 -1.09485180  1.01464817
 [97] -0.92745995  1.40846173  1.13376740  0.99843389
> rowVars(tmp2)
  [1] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
 [26] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
 [51] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
 [76] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
> rowSd(tmp2)
  [1] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
 [26] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
 [51] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
 [76] NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
> rowMax(tmp2)
  [1] -0.29140345  0.99300520  0.75561367 -1.86177759  3.09467050  0.45674418
  [7]  0.30446585  1.16566801  0.01080590  0.17990259 -0.58698802  0.39847835
 [13] -0.62917428  0.05738627 -0.42571506  0.08866395  1.47036755  1.23878215
 [19]  0.37355849  0.26936286 -0.15324433  1.56233175  0.31114447 -1.31946783
 [25] -0.51844676  0.03277328  2.38900939  0.57492721 -2.41031585 -1.24207168
 [31] -0.15327927  1.39736554  1.20524649 -0.51017855 -0.52837943 -1.01669463
 [37] -1.30703812 -2.40891621  1.31430793  0.56697551 -1.12983501 -0.13609146
 [43]  0.82434643 -0.29972586  0.48828155 -0.47968346 -0.10797938  0.54462223
 [49]  0.67076385  0.10595418 -0.12460006 -0.41376076 -0.90669309  0.61935947
 [55]  2.62891689  0.36529744 -0.89404880  1.68366785 -0.85277233 -0.42004423
 [61] -1.83780428  0.21480942  0.51169136 -0.23984906 -0.29274343  1.29969384
 [67]  0.31118370 -0.66058136  0.78344279  1.12870106 -1.81605508  0.72740316
 [73]  0.47398923  0.31275088  0.52392729 -0.71271656 -0.79976835  1.14235855
 [79] -1.26656724  1.36113168 -0.06620864  1.73397195 -0.64159125  1.10683424
 [85] -0.30695508  0.53160268  0.90738537  0.97081190  1.09816354  0.46985933
 [91] -0.96143110 -2.32163036  0.53748637 -0.69017830 -1.09485180  1.01464817
 [97] -0.92745995  1.40846173  1.13376740  0.99843389
> rowMin(tmp2)
  [1] -0.29140345  0.99300520  0.75561367 -1.86177759  3.09467050  0.45674418
  [7]  0.30446585  1.16566801  0.01080590  0.17990259 -0.58698802  0.39847835
 [13] -0.62917428  0.05738627 -0.42571506  0.08866395  1.47036755  1.23878215
 [19]  0.37355849  0.26936286 -0.15324433  1.56233175  0.31114447 -1.31946783
 [25] -0.51844676  0.03277328  2.38900939  0.57492721 -2.41031585 -1.24207168
 [31] -0.15327927  1.39736554  1.20524649 -0.51017855 -0.52837943 -1.01669463
 [37] -1.30703812 -2.40891621  1.31430793  0.56697551 -1.12983501 -0.13609146
 [43]  0.82434643 -0.29972586  0.48828155 -0.47968346 -0.10797938  0.54462223
 [49]  0.67076385  0.10595418 -0.12460006 -0.41376076 -0.90669309  0.61935947
 [55]  2.62891689  0.36529744 -0.89404880  1.68366785 -0.85277233 -0.42004423
 [61] -1.83780428  0.21480942  0.51169136 -0.23984906 -0.29274343  1.29969384
 [67]  0.31118370 -0.66058136  0.78344279  1.12870106 -1.81605508  0.72740316
 [73]  0.47398923  0.31275088  0.52392729 -0.71271656 -0.79976835  1.14235855
 [79] -1.26656724  1.36113168 -0.06620864  1.73397195 -0.64159125  1.10683424
 [85] -0.30695508  0.53160268  0.90738537  0.97081190  1.09816354  0.46985933
 [91] -0.96143110 -2.32163036  0.53748637 -0.69017830 -1.09485180  1.01464817
 [97] -0.92745995  1.40846173  1.13376740  0.99843389
> 
> colMeans(tmp2)
[1] 0.1308056
> colSums(tmp2)
[1] 13.08056
> colVars(tmp2)
[1] 1.10497
> colSd(tmp2)
[1] 1.051175
> colMax(tmp2)
[1] 3.094671
> colMin(tmp2)
[1] -2.410316
> colMedians(tmp2)
[1] 0.2420861
> colRanges(tmp2)
          [,1]
[1,] -2.410316
[2,]  3.094671
> 
> dataset1 <- matrix(dataset1,1,100)
> 
> agree.checks(tmp,dataset1)
> 
> dataset2 <- matrix(dataset2,100,1)
> agree.checks(tmp2,dataset2)
>   
> 
> tmp <- createBufferedMatrix(10,10)
> 
> tmp[1:10,1:10] <- rnorm(100)
> colApply(tmp,sum)
 [1]  0.9762230  3.3619373  3.4611249  0.5676063 -2.0365699 -1.3624144
 [7]  3.3514142  2.0924422 -1.5365039  4.7833721
> colApply(tmp,quantile)[,1]
            [,1]
[1,] -2.17948356
[2,] -0.06692944
[3,]  0.07263621
[4,]  0.74653064
[5,]  1.04430510
> 
> rowApply(tmp,sum)
 [1] -0.4011665  2.5062314 -2.2056044  1.7826060 -2.0060387  1.6007959
 [7]  1.3871869  1.0309262  4.6155975  5.3480975
> rowApply(tmp,rank)[1:10,]
      [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10]
 [1,]    5    5   10    7    7    8    5    1    7     3
 [2,]    9    3    8    9    4   10    6    4    4     1
 [3,]    7    9    9    3    5    6    8    5    6     7
 [4,]    6    7    3    8    2    5    2    6    5     8
 [5,]    1   10    1    1    8    7    3    3    1     6
 [6,]    4    1    2    2    1    9    9    7    3    10
 [7,]   10    2    4   10    6    4    1    9   10     2
 [8,]    2    6    6    5    9    2    7    8    8     5
 [9,]    3    8    5    4    3    1    4    2    9     9
[10,]    8    4    7    6   10    3   10   10    2     4
> 
> tmp <- createBufferedMatrix(5,20)
> 
> tmp[1:5,1:20] <- rnorm(100)
> colApply(tmp,sum)
 [1]  1.4121047 -0.3155708  2.8793924  0.4791992 -1.5759390 -1.9708721
 [7] -3.7925968  0.3603725 -2.7193665  1.2704815  0.2801871  2.3004453
[13] -0.3004884 -4.2813058  6.8785848  2.1205869  5.0513979  0.1632138
[19]  2.9258944 -2.7186280
> colApply(tmp,quantile)[,1]
           [,1]
[1,] -0.7740621
[2,] -0.2486177
[3,] -0.2222099
[4,]  0.6447297
[5,]  2.0122646
> 
> rowApply(tmp,sum)
[1]  1.5533273 -0.4903491 -0.9770612 -0.6641636  9.0253396
> rowApply(tmp,rank)[1:5,]
     [,1] [,2] [,3] [,4] [,5]
[1,]    3    9   11   19   13
[2,]   16    2    4   10   16
[3,]   15   16    6   15   17
[4,]   11   20    1    2   19
[5,]   10    6    2   18    1
> 
> 
> as.matrix(tmp)
           [,1]       [,2]       [,3]       [,4]       [,5]       [,6]
[1,] -0.7740621  0.7189906  0.5001383 -0.1714561 -0.2145999 -0.3333891
[2,] -0.2486177 -1.1534573  0.6292093  2.2363505 -0.4404171 -0.7283496
[3,] -0.2222099 -0.8003918 -0.4740328 -1.9305815 -1.2675097 -0.5172764
[4,]  2.0122646 -0.3409831  0.8183361 -1.4601692  1.4083020 -0.2608913
[5,]  0.6447297  1.2602707  1.4057415  1.8050555 -1.0617142 -0.1309657
           [,7]         [,8]       [,9]      [,10]       [,11]        [,12]
[1,] -0.9844515 -0.319482291 -2.2830693  0.9755966  0.26268498 -0.004873589
[2,] -0.8266380 -0.003521091 -0.2068134 -0.6445398  0.07470778 -0.212360140
[3,] -0.8864672 -0.297873897 -0.2788362 -0.3073257  1.55282410  0.752304513
[4,] -0.5347534  0.017053406 -0.4551999  0.9284036 -2.03529442  2.465983082
[5,] -0.5602868  0.964196379  0.5045523  0.3183468  0.42526467 -0.700608590
           [,13]      [,14]       [,15]      [,16]      [,17]      [,18]
[1,] -0.28648157 -0.6428472  3.66730613  1.5410611 -0.1640734 -0.5673144
[2,]  0.07574617 -1.9187464  1.18097886 -0.2053969  1.0539242 -0.2667325
[3,] -0.29845964  0.1317198  1.27021378  0.1749480  1.0846546  0.6681743
[4,] -0.37137611 -1.0461606  0.82278741 -1.0736715  0.4013361 -0.9061189
[5,]  0.58008277 -0.8052713 -0.06270137  1.6836462  2.6755564  1.2352053
           [,19]      [,20]
[1,]  1.10655357 -0.4729035
[2,]  1.39650044 -0.2821765
[3,]  0.79873173 -0.1296673
[4,] -0.04297868 -1.0110328
[5,] -0.33291266 -0.8228478
> 
> 
> is.BufferedMatrix(tmp)
[1] TRUE
> 
> as.BufferedMatrix(as.matrix(tmp))
BufferedMatrix object
Matrix size:  5 20 
Buffer size:  1 1 
Directory:    /home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests 
Prefix:       BM 
Mode: Col mode
Read Only: FALSE
Memory usage :  1.9  Kilobytes.
Disk usage :  800  bytes.
> 
> 
> 
> subBufferedMatrix(tmp,1:5,1:5)
BufferedMatrix object
Matrix size:  5 5 
Buffer size:  1 1 
Directory:    /home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests 
Prefix:       BM 
Mode: Col mode
Read Only: FALSE
Memory usage :  654  bytes.
Disk usage :  200  bytes.
> subBufferedMatrix(tmp,,5:8)
BufferedMatrix object
Matrix size:  5 4 
Buffer size:  1 1 
Directory:    /home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests 
Prefix:       BM 
Mode: Col mode
Read Only: FALSE
Memory usage :  566  bytes.
Disk usage :  160  bytes.
> subBufferedMatrix(tmp,1:3,)
BufferedMatrix object
Matrix size:  3 20 
Buffer size:  1 1 
Directory:    /home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests 
Prefix:       BM 
Mode: Col mode
Read Only: FALSE
Memory usage :  1.9  Kilobytes.
Disk usage :  480  bytes.
> 
> 
> rm(tmp)
> 
> 
> ###
> ### Testing colnames and rownames
> ###
> 
> tmp <- createBufferedMatrix(5,20)
> tmp[1:5,1:20] <- rnorm(100)
> 
> 
> colnames(tmp)
NULL
> rownames(tmp)
NULL
> 
> 
> colnames(tmp) <- colnames(tmp,do.NULL=FALSE)
> rownames(tmp) <- rownames(tmp,do.NULL=FALSE)
> 
> colnames(tmp)
 [1] "col1"  "col2"  "col3"  "col4"  "col5"  "col6"  "col7"  "col8"  "col9" 
[10] "col10" "col11" "col12" "col13" "col14" "col15" "col16" "col17" "col18"
[19] "col19" "col20"
> rownames(tmp)
[1] "row1" "row2" "row3" "row4" "row5"
> 
> 
> tmp["row1",]
         col1    col2     col3      col4       col5     col6        col7
row1 1.875949 1.68235 0.520484 0.4174956 -0.6511139 1.372351 -0.07441164
           col8      col9     col10      col11      col12    col13     col14
row1 -0.1811514 0.6892934 0.2961343 -0.1339954 -0.5560317 1.446067 0.4339148
          col15     col16     col17      col18     col19     col20
row1 0.04665734 0.8643822 0.9125775 -0.1853578 -1.014949 0.6489417
> tmp[,"col10"]
          col10
row1  0.2961343
row2  1.8690875
row3 -1.4064055
row4  0.6935820
row5 -0.6213903
> tmp[c("row1","row5"),]
          col1      col2      col3       col4       col5       col6        col7
row1  1.875949 1.6823495  0.520484  0.4174956 -0.6511139 1.37235085 -0.07441164
row5 -1.022786 0.6789585 -1.930330 -0.1723492 -0.1302204 0.08739491  1.51094888
           col8      col9      col10      col11      col12     col13      col14
row1 -0.1811514 0.6892934  0.2961343 -0.1339954 -0.5560317 1.4460674  0.4339148
row5  0.3427135 2.3428879 -0.6213903 -0.9577858 -0.1874226 0.8041303 -0.5416181
          col15      col16     col17      col18     col19     col20
row1 0.04665734  0.8643822 0.9125775 -0.1853578 -1.014949 0.6489417
row5 0.49727196 -1.0334877 2.1875328  0.2698927  1.919069 0.8565480
> tmp[,c("col6","col20")]
            col6      col20
row1  1.37235085  0.6489417
row2  0.26915039  0.4047363
row3 -0.56799515  0.4857231
row4 -0.78034898 -1.0129701
row5  0.08739491  0.8565480
> tmp[c("row1","row5"),c("col6","col20")]
           col6     col20
row1 1.37235085 0.6489417
row5 0.08739491 0.8565480
> 
> 
> 
> 
> tmp["row1",] <- rnorm(20,mean=10)
> tmp[,"col10"] <- rnorm(5,mean=30)
> tmp[c("row1","row5"),] <- rnorm(40,mean=50)
> tmp[,c("col6","col20")] <- rnorm(10,mean=75)
> tmp[c("row1","row5"),c("col6","col20")]  <- rnorm(4,mean=105)
> 
> tmp["row1",]
         col1     col2     col3    col4     col5     col6     col7     col8
row1 49.64003 50.11032 49.80643 48.4756 49.39656 104.6114 49.13181 50.87435
         col9    col10    col11   col12    col13    col14   col15    col16
row1 51.09907 51.04837 50.20251 50.5126 50.12465 48.72674 50.0401 51.95904
        col17    col18    col19    col20
row1 50.69415 50.88321 49.54699 107.5897
> tmp[,"col10"]
        col10
row1 51.04837
row2 28.89474
row3 30.96044
row4 32.21535
row5 49.46239
> tmp[c("row1","row5"),]
         col1     col2     col3     col4     col5     col6     col7     col8
row1 49.64003 50.11032 49.80643 48.47560 49.39656 104.6114 49.13181 50.87435
row5 49.16622 51.27750 49.88229 50.06941 50.59910 106.4146 51.12938 50.83044
         col9    col10    col11   col12    col13    col14    col15    col16
row1 51.09907 51.04837 50.20251 50.5126 50.12465 48.72674 50.04010 51.95904
row5 50.57100 49.46239 50.53401 49.2922 50.75664 47.94991 49.86296 51.27666
        col17    col18    col19    col20
row1 50.69415 50.88321 49.54699 107.5897
row5 51.92891 50.20738 49.43711 104.6979
> tmp[,c("col6","col20")]
          col6     col20
row1 104.61144 107.58972
row2  75.00948  76.76358
row3  73.34222  73.52648
row4  75.84942  74.39105
row5 106.41464 104.69792
> tmp[c("row1","row5"),c("col6","col20")]
         col6    col20
row1 104.6114 107.5897
row5 106.4146 104.6979
> 
> 
> subBufferedMatrix(tmp,c("row1","row5"),c("col6","col20"))[1:2,1:2]
         col6    col20
row1 104.6114 107.5897
row5 106.4146 104.6979
> 
> 
> 
> 
> 
> tmp <- createBufferedMatrix(5,20)
> tmp[1:5,1:20] <- rnorm(100)
> colnames(tmp) <- colnames(tmp,do.NULL=FALSE)
> 
> tmp[,"col13"]
           col13
[1,] -0.41693383
[2,] -0.25091689
[3,]  0.01175658
[4,]  0.13215247
[5,] -0.18114414
> tmp[,c("col17","col7")]
          col17       col7
[1,] -0.3741067  0.8775458
[2,]  1.2500980  0.8228320
[3,]  0.1950582 -0.8249990
[4,]  0.9664720 -1.7031578
[5,] -0.3904367 -0.6270317
> 
> subBufferedMatrix(tmp,,c("col6","col20"))[,1:2]
           col6       col20
[1,] -1.0305587 -1.22725194
[2,] -0.7314495 -0.97137841
[3,] -0.7366024  0.83693096
[4,]  0.5648947  0.01140244
[5,]  1.1538019  0.38636682
> subBufferedMatrix(tmp,1,c("col6"))[,1]
          col1
[1,] -1.030559
> subBufferedMatrix(tmp,1:2,c("col6"))[,1]
           col6
[1,] -1.0305587
[2,] -0.7314495
> 
> 
> 
> tmp <- createBufferedMatrix(5,20)
> tmp[1:5,1:20] <- rnorm(100)
> rownames(tmp) <- rownames(tmp,do.NULL=FALSE)
> 
> 
> 
> 
> subBufferedMatrix(tmp,c("row3","row1"),)[,1:20]
          [,1]       [,2]        [,3]       [,4]      [,5]      [,6]
row3 0.5260277  1.0581333 -0.06789368 -0.2262485 0.5884893 0.6754309
row1 0.3032061 -0.1705183  1.68468792 -1.1292347 1.5231843 1.4583111
            [,7]        [,8]        [,9]       [,10]      [,11]     [,12]
row3 -0.66422943 -0.03894196 -0.03867734 -0.08311846 -2.3196664 0.2068409
row1 -0.04246849 -0.87472071 -0.91895691 -0.78243395  0.1674936 0.4927362
          [,13]     [,14]      [,15]      [,16]    [,17]      [,18]     [,19]
row3  0.6180236 -1.409540 -0.9088615  1.5014630 2.274256 -0.3148497 1.0234003
row1 -1.3408917 -3.363516 -0.5811261 -0.1034402 1.355180 -1.0831879 0.4457029
          [,20]
row3  0.5175306
row1 -0.8095716
> subBufferedMatrix(tmp,c("row2"),1:10)[,1:10]
          [,1]     [,2]     [,3]       [,4]     [,5]      [,6]       [,7]
row2 0.9216968 1.943594 1.815717 -0.6565069 1.671123 -1.979046 -0.4129547
            [,8]      [,9]     [,10]
row2 0.008700329 0.2307878 0.6753654
> subBufferedMatrix(tmp,c("row5"),1:20)[,1:20]
           [,1]       [,2]       [,3]      [,4]     [,5]       [,6]       [,7]
row5 -0.3737675 -0.2942484 -0.6914163 -2.441354 0.518726 -0.7525782 -0.2829332
         [,8]      [,9]     [,10]      [,11]     [,12]   [,13]    [,14]
row5 0.488639 0.5329592 0.1912514 -0.3151434 0.5571566 1.16207 -2.25079
        [,15]      [,16]      [,17]    [,18]       [,19]     [,20]
row5 1.852574 -0.1428163 -0.0236173 1.106066 -0.09105662 0.1501343
> 
> 
> colnames(tmp) <- colnames(tmp,do.NULL=FALSE)
> rownames(tmp) <- rownames(tmp,do.NULL=FALSE)
> 
> colnames(tmp)
 [1] "col1"  "col2"  "col3"  "col4"  "col5"  "col6"  "col7"  "col8"  "col9" 
[10] "col10" "col11" "col12" "col13" "col14" "col15" "col16" "col17" "col18"
[19] "col19" "col20"
> rownames(tmp)
[1] "row1" "row2" "row3" "row4" "row5"
> 
> 
> colnames(tmp) <- NULL
> rownames(tmp) <- NULL
> 
> colnames(tmp)
NULL
> rownames(tmp)
NULL
> 
> 
> colnames(tmp) <- colnames(tmp,do.NULL=FALSE)
> rownames(tmp) <- rownames(tmp,do.NULL=FALSE)
> 
> dimnames(tmp)
[[1]]
[1] "row1" "row2" "row3" "row4" "row5"

[[2]]
 [1] "col1"  "col2"  "col3"  "col4"  "col5"  "col6"  "col7"  "col8"  "col9" 
[10] "col10" "col11" "col12" "col13" "col14" "col15" "col16" "col17" "col18"
[19] "col19" "col20"

> 
> dimnames(tmp) <- NULL
> 
> colnames(tmp) <- colnames(tmp,do.NULL=FALSE)
> dimnames(tmp)
[[1]]
NULL

[[2]]
 [1] "col1"  "col2"  "col3"  "col4"  "col5"  "col6"  "col7"  "col8"  "col9" 
[10] "col10" "col11" "col12" "col13" "col14" "col15" "col16" "col17" "col18"
[19] "col19" "col20"

> 
> 
> dimnames(tmp) <- NULL
> rownames(tmp) <- rownames(tmp,do.NULL=FALSE)
> dimnames(tmp)
[[1]]
[1] "row1" "row2" "row3" "row4" "row5"

[[2]]
NULL

> 
> dimnames(tmp) <- list(NULL,c(colnames(tmp,do.NULL=FALSE)))
> dimnames(tmp)
[[1]]
NULL

[[2]]
 [1] "col1"  "col2"  "col3"  "col4"  "col5"  "col6"  "col7"  "col8"  "col9" 
[10] "col10" "col11" "col12" "col13" "col14" "col15" "col16" "col17" "col18"
[19] "col19" "col20"

> 
> 
> 
> ###
> ### Testing logical indexing
> ###
> ###
> 
> tmp <- createBufferedMatrix(230,15)
> tmp[1:230,1:15] <- rnorm(230*15)
> x <-tmp[1:230,1:15]  
> 
> for (rep in 1:10){
+   which.cols <- sample(c(TRUE,FALSE),15,replace=T)
+   which.rows <- sample(c(TRUE,FALSE),230,replace=T)
+   
+   if (!all(tmp[which.rows,which.cols] == x[which.rows,which.cols])){
+     stop("No agreement when logical indexing\n")
+   }
+   
+   if (!all(subBufferedMatrix(tmp,,which.cols)[,1:sum(which.cols)] ==  x[,which.cols])){
+     stop("No agreement when logical indexing in subBufferedMatrix cols\n")
+   }
+   if (!all(subBufferedMatrix(tmp,which.rows,)[1:sum(which.rows),] ==  x[which.rows,])){
+     stop("No agreement when logical indexing in subBufferedMatrix rows\n")
+   }
+   
+   
+   if (!all(subBufferedMatrix(tmp,which.rows,which.cols)[1:sum(which.rows),1:sum(which.cols)]==  x[which.rows,which.cols])){
+     stop("No agreement when logical indexing in subBufferedMatrix rows and columns\n")
+   }
+ }
> 
> 
> ##
> ## Test the ReadOnlyMode
> ##
> 
> ReadOnlyMode(tmp)
<pointer: 0x563b37d04360>
> is.ReadOnlyMode(tmp)
[1] TRUE
> 
> filenames(tmp)
 [1] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a5341786e"
 [2] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a2f6ab89a"
 [3] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a1fcedc50"
 [4] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a56a972fa"
 [5] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a2aeb4eea"
 [6] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a68a5f11a"
 [7] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a4735330d"
 [8] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a28e36ef3"
 [9] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a6fcc9f13"
[10] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a63e90d7a"
[11] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a4d0d96a1"
[12] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a2c838f6e"
[13] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a4d84db24"
[14] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a3e96b0e3"
[15] "/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests/BM28301a6143dee2"
> 
> 
> ### testing coercion functions
> ###
> 
> tmp <- as(tmp,"matrix")
> tmp <- as(tmp,"BufferedMatrix")
> 
> 
> 
> ### testing whether can move storage from one location to another
> 
> MoveStorageDirectory(tmp,"NewDirectory",full.path=FALSE)
<pointer: 0x563b37a0a460>
> MoveStorageDirectory(tmp,getwd(),full.path=TRUE)
<pointer: 0x563b37a0a460>
Warning message:
In dir.create(new.directory) :
  '/home/biocbuild/bbs-3.15-bioc/meat/BufferedMatrix.Rcheck/tests' already exists
> 
> 
> RowMode(tmp)
<pointer: 0x563b37a0a460>
> rowMedians(tmp)
  [1]  0.3849287439 -0.1326102799 -0.6094042899 -0.1002484959  0.4186107063
  [6] -0.3659264523  0.1792992404  0.0831878628  0.0857521139 -0.1231990855
 [11]  0.4925154013  0.0230511743 -0.0779534474 -0.3351685157  0.5289696593
 [16] -0.3656127118 -0.0194324713 -0.3128146874 -0.1235383380  0.2908633464
 [21]  0.1632021803 -0.1073078700  0.1599696718 -0.2704800535 -0.0049591970
 [26]  0.2476462823  0.0620794104 -0.3376520288  0.4796156426  0.5488653199
 [31]  0.2494400310  0.0518086683 -0.0907624629 -0.1199858561 -0.4453934108
 [36] -0.2411848701  0.3443933325  0.0759372281  0.1153663345 -0.3730222954
 [41] -0.1920864610  0.4140413378 -0.2744961531  0.1630566091  0.0356852331
 [46] -0.3357330532 -0.3892269605  0.3855070962  0.1547809268  0.2159870818
 [51] -0.1962956124  0.2874218175 -0.0051381483  0.2809756012 -0.4161137352
 [56] -0.1352831806  0.0563243591  0.4967372959  0.0030620028  0.2995394397
 [61]  0.3113615545 -0.3597962187  0.1694579156  0.8401897127  0.1650775447
 [66] -0.2006837593  0.1676825348 -0.4531198921 -0.5074790522 -0.4182805778
 [71]  0.1128374510 -0.4072355826 -0.0400890524 -0.3343479502 -0.1334722358
 [76]  0.0811716276 -0.3888488767 -0.4547450249 -0.0113827176  0.2726987870
 [81] -0.0554572395 -0.1069944781 -0.0616485566 -0.1918786141  0.4798912119
 [86] -0.0166329460  0.7876832336 -0.0579850482  0.0301886921 -0.4720924521
 [91] -0.5857076428  0.4609006296 -0.1329250296  0.4624632218 -0.1914456079
 [96] -0.4731844567  0.0203492715 -0.4215338962  0.0261208218 -0.6543212374
[101]  0.2783688833 -0.2855282652  0.2338417222 -0.2750067103 -0.0646323943
[106]  0.4298430922 -0.0755954504  0.3350438055 -0.1560573799  0.2022375448
[111]  0.0179198783 -0.3020929558 -0.5430849759  0.0842355247 -0.2752951627
[116] -0.0488612343  0.1630936421 -0.2366005235  0.5665278573  0.0607012962
[121]  0.0322791567 -0.1321144593 -0.4002278536 -0.3034908955 -0.0112646866
[126]  0.2374619278 -0.0458446024 -0.0278817813  0.0007478982 -0.4149239542
[131] -0.2809289015 -0.2465579953 -0.3753633992 -0.5035903904 -0.1066300096
[136] -0.7969042012 -0.1057253592 -0.0395085796  0.2022884489 -0.2914057053
[141]  0.0772485444  0.2055553573  0.1820108022  0.2169437327  0.1794205832
[146]  0.2677137123  0.4185411021  0.0673549002 -0.0966494255  0.2179075107
[151]  0.6630313841 -0.0706322824 -0.5280603569 -0.0199480268 -0.3707878990
[156]  0.1010220856 -0.0037432488  0.0303101312 -0.2686500212 -0.0273477295
[161]  0.4466702438  0.1039275690 -0.3736429512 -0.0157940186  0.7209172251
[166] -0.4434292572  0.1088883072  0.1982237542  0.1505842197 -0.1003083694
[171] -0.1489238616 -0.4246090301 -0.2679776005 -0.0474395802 -0.3291121887
[176] -0.4503493207 -0.0145189965 -0.3525797127 -0.2122528932 -0.0414293952
[181] -0.2396273830  0.6877169877  0.5233512721  0.5695966742 -0.4879460225
[186]  0.0528021287  0.4339146408 -0.1509094603  0.4861141121  0.2755060008
[191]  0.2016831213 -0.1457384398 -0.2007439041  0.2075310402  0.2541653344
[196]  0.1312343750 -0.1777606350  0.0912611136 -0.2875372191  0.0976166018
[201] -0.2975016162 -0.1373267412 -0.4885561145  0.1300311382 -0.4133231880
[206] -0.2000714144 -0.3547190685 -0.0414480731 -0.0909370750 -0.7776607496
[211]  0.0696630418  0.0819157526 -0.1686700893 -0.5077114401  0.0381206049
[216] -0.0675082128  0.2650518315 -0.1548578496 -0.3897742617 -0.0033232228
[221] -0.3263827818 -0.3277505758 -0.1850074016 -0.1988043682  0.4557194569
[226]  0.1638255689  0.5368287641 -0.1031743972 -0.4687464262  0.0441816579
> 
> proc.time()
   user  system elapsed 
  1.513   1.677   3.202 

BufferedMatrix.Rcheck/tests/rawCalltesting.Rout


R version 4.2.1 (2022-06-23) -- "Funny-Looking Kid"
Copyright (C) 2022 The R Foundation for Statistical Computing
Platform: x86_64-pc-linux-gnu (64-bit)

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You are welcome to redistribute it under certain conditions.
Type 'license()' or 'licence()' for distribution details.

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Type 'contributors()' for more information and
'citation()' on how to cite R or R packages in publications.

Type 'demo()' for some demos, 'help()' for on-line help, or
'help.start()' for an HTML browser interface to help.
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> library(BufferedMatrix);library.dynam("BufferedMatrix","BufferedMatrix", .libPaths());

Attaching package: 'BufferedMatrix'

The following objects are masked from 'package:base':

    colMeans, colSums, rowMeans, rowSums

> 
> prefix <- "dbmtest"
> directory <- getwd()
> 
> 
> P <- .Call("R_bm_Create",prefix,directory,1,1)
> .Call("R_bm_Test_C",P)
RBufferedMatrix
Checking dimensions
Rows: 5
Cols: 5
Buffer Rows: 1
Buffer Cols: 1

Assigning Values
0.000000 1.000000 2.000000 3.000000 4.000000 
1.000000 2.000000 3.000000 4.000000 5.000000 
2.000000 3.000000 4.000000 5.000000 6.000000 
3.000000 4.000000 5.000000 6.000000 7.000000 
4.000000 5.000000 6.000000 7.000000 8.000000 

<pointer: 0x556373efd390>
> .Call("R_bm_Test_C2",P)
Checking dimensions
Rows: 5
Cols: 5
Buffer Rows: 1
Buffer Cols: 1

Printing Values
0.000000 1.000000 2.000000 3.000000 4.000000 
1.000000 2.000000 3.000000 4.000000 5.000000 
2.000000 3.000000 4.000000 5.000000 6.000000 
3.000000 4.000000 5.000000 6.000000 7.000000 
4.000000 5.000000 6.000000 7.000000 8.000000 

<pointer: 0x556373efd390>
> .Call("R_bm_Test_C",P)
RBufferedMatrix
Checking dimensions
Rows: 5
Cols: 10
Buffer Rows: 1
Buffer Cols: 1

Assigning Values
0.000000 1.000000 2.000000 3.000000 4.000000 
1.000000 2.000000 3.000000 4.000000 5.000000 
2.000000 3.000000 4.000000 5.000000 6.000000 
3.000000 4.000000 5.000000 6.000000 7.000000 
4.000000 5.000000 6.000000 7.000000 8.000000 

<pointer: 0x556373efd390>
> .Call("R_bm_Test_C2",P)
Checking dimensions
Rows: 5
Cols: 10
Buffer Rows: 1
Buffer Cols: 1

Printing Values
0.000000 1.000000 2.000000 3.000000 4.000000 0.000000 0.000000 0.000000 0.000000 0.000000 
1.000000 2.000000 3.000000 4.000000 5.000000 0.000000 0.000000 0.000000 0.000000 0.000000 
2.000000 3.000000 4.000000 5.000000 6.000000 0.000000 0.000000 0.000000 0.000000 0.000000 
3.000000 4.000000 5.000000 6.000000 7.000000 0.000000 0.000000 0.000000 0.000000 0.000000 
4.000000 5.000000 6.000000 7.000000 8.000000 0.000000 0.000000 0.000000 0.000000 0.000000 

<pointer: 0x556373efd390>
> rm(P)
> 
> #P <- .Call("R_bm_Destroy",P)
> #.Call("R_bm_Destroy",P)
> #.Call("R_bm_Test_C",P)
> 
> 
> P <- .Call("R_bm_Create",prefix,directory,1,1)
> .Call("R_bm_setRows",P,5)
[1] TRUE
> .Call("R_bm_Test_C2",P)
Checking dimensions
Rows: 5
Cols: 0
Buffer Rows: 1
Buffer Cols: 1

Printing Values






<pointer: 0x5563747f43a0>
> .Call("R_bm_AddColumn",P)
<pointer: 0x5563747f43a0>
> .Call("R_bm_Test_C2",P)
Checking dimensions
Rows: 5
Cols: 1
Buffer Rows: 1
Buffer Cols: 1

Printing Values
0.000000 
0.000000 
0.000000 
0.000000 
0.000000 

<pointer: 0x5563747f43a0>
> .Call("R_bm_AddColumn",P)
<pointer: 0x5563747f43a0>
> .Call("R_bm_Test_C2",P)
Checking dimensions
Rows: 5
Cols: 2
Buffer Rows: 1
Buffer Cols: 1

Printing Values
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 

<pointer: 0x5563747f43a0>
> rm(P)
> 
> 
> 
> P <- .Call("R_bm_Create",prefix,directory,1,1)
> .Call("R_bm_setRows",P,5)
[1] TRUE
> .Call("R_bm_AddColumn",P)
<pointer: 0x556373954550>
> .Call("R_bm_AddColumn",P)
<pointer: 0x556373954550>
> .Call("R_bm_Test_C2",P)
Checking dimensions
Rows: 5
Cols: 2
Buffer Rows: 1
Buffer Cols: 1

Printing Values
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 

<pointer: 0x556373954550>
> 
> .Call("R_bm_ResizeBuffer",P,5,5)
<pointer: 0x556373954550>
> .Call("R_bm_Test_C2",P)
Checking dimensions
Rows: 5
Cols: 2
Buffer Rows: 5
Buffer Cols: 5

Printing Values
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 

<pointer: 0x556373954550>
> 
> .Call("R_bm_RowMode",P)
<pointer: 0x556373954550>
> .Call("R_bm_Test_C2",P)
Checking dimensions
Rows: 5
Cols: 2
Buffer Rows: 5
Buffer Cols: 5

Printing Values
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 

<pointer: 0x556373954550>
> 
> .Call("R_bm_ColMode",P)
<pointer: 0x556373954550>
> .Call("R_bm_Test_C2",P)
Checking dimensions
Rows: 5
Cols: 2
Buffer Rows: 5
Buffer Cols: 5

Printing Values
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 
0.000000 0.000000 

<pointer: 0x556373954550>
> rm(P)
> 
> 
> P <- .Call("R_bm_Create",prefix,directory,1,1)
> .Call("R_bm_setRows",P,10)
[1] TRUE
> .Call("R_bm_AddColumn",P)
<pointer: 0x5563746eb210>
> .Call("R_bm_SetPrefix",P,"BufferedMatrixFile")
<pointer: 0x5563746eb210>
> .Call("R_bm_AddColumn",P)
<pointer: 0x5563746eb210>
> .Call("R_bm_AddColumn",P)
<pointer: 0x5563746eb210>
> dir(pattern="BufferedMatrixFile")
[1] "BufferedMatrixFile283487118baeef" "BufferedMatrixFile283487632be337"
> rm(P)
> dir(pattern="BufferedMatrixFile")
[1] "BufferedMatrixFile283487118baeef" "BufferedMatrixFile283487632be337"
> 
> 
> P <- .Call("R_bm_Create",prefix,directory,1,1)
> .Call("R_bm_setRows",P,10)
[1] TRUE
> .Call("R_bm_AddColumn",P)
<pointer: 0x55637634cbc0>
> .Call("R_bm_AddColumn",P)
<pointer: 0x55637634cbc0>
> .Call("R_bm_ReadOnlyModeToggle",P)
<pointer: 0x55637634cbc0>
> .Call("R_bm_isReadOnlyMode",P)
[1] TRUE
> .Call("R_bm_ReadOnlyModeToggle",P)
<pointer: 0x55637634cbc0>
> .Call("R_bm_isReadOnlyMode",P)
[1] FALSE
> .Call("R_bm_isRowMode",P)
[1] FALSE
> .Call("R_bm_RowMode",P)
<pointer: 0x55637634cbc0>
> .Call("R_bm_isRowMode",P)
[1] TRUE
> .Call("R_bm_ColMode",P)
<pointer: 0x55637634cbc0>
> .Call("R_bm_isRowMode",P)
[1] FALSE
> rm(P)
> 
> 
> P <- .Call("R_bm_Create",prefix,directory,1,1)
> .Call("R_bm_setRows",P,10)
[1] TRUE
> .Call("R_bm_AddColumn",P)
<pointer: 0x556374831be0>
> .Call("R_bm_AddColumn",P)
<pointer: 0x556374831be0>
> 
> .Call("R_bm_getSize",P)
[1] 10  2
> .Call("R_bm_getBufferSize",P)
[1] 1 1
> .Call("R_bm_ResizeBuffer",P,5,5)
<pointer: 0x556374831be0>
> 
> .Call("R_bm_getBufferSize",P)
[1] 5 5
> .Call("R_bm_ResizeBuffer",P,-1,5)
<pointer: 0x556374831be0>
> rm(P)
> 
> 
> P <- .Call("R_bm_Create",prefix,directory,1,1)
> .Call("R_bm_Test_C",P)
RBufferedMatrix
Checking dimensions
Rows: 5
Cols: 5
Buffer Rows: 1
Buffer Cols: 1

Assigning Values
0.000000 1.000000 2.000000 3.000000 4.000000 
1.000000 2.000000 3.000000 4.000000 5.000000 
2.000000 3.000000 4.000000 5.000000 6.000000 
3.000000 4.000000 5.000000 6.000000 7.000000 
4.000000 5.000000 6.000000 7.000000 8.000000 

<pointer: 0x5563745bcc40>
> .Call("R_bm_getValue",P,3,3)
[1] 6
> 
> .Call("R_bm_getValue",P,100000,10000)
[1] NA
> .Call("R_bm_setValue",P,3,3,12345.0)
[1] TRUE
> .Call("R_bm_Test_C2",P)
Checking dimensions
Rows: 5
Cols: 5
Buffer Rows: 1
Buffer Cols: 1

Printing Values
0.000000 1.000000 2.000000 3.000000 4.000000 
1.000000 2.000000 3.000000 4.000000 5.000000 
2.000000 3.000000 4.000000 5.000000 6.000000 
3.000000 4.000000 5.000000 12345.000000 7.000000 
4.000000 5.000000 6.000000 7.000000 8.000000 

<pointer: 0x5563745bcc40>
> rm(P)
> 
> proc.time()
   user  system elapsed 
  0.291   0.062   0.338 

BufferedMatrix.Rcheck/tests/Rcodetesting.Rout


R version 4.2.1 (2022-06-23) -- "Funny-Looking Kid"
Copyright (C) 2022 The R Foundation for Statistical Computing
Platform: x86_64-pc-linux-gnu (64-bit)

R is free software and comes with ABSOLUTELY NO WARRANTY.
You are welcome to redistribute it under certain conditions.
Type 'license()' or 'licence()' for distribution details.

R is a collaborative project with many contributors.
Type 'contributors()' for more information and
'citation()' on how to cite R or R packages in publications.

Type 'demo()' for some demos, 'help()' for on-line help, or
'help.start()' for an HTML browser interface to help.
Type 'q()' to quit R.

> library(BufferedMatrix);library.dynam("BufferedMatrix","BufferedMatrix", .libPaths());

Attaching package: 'BufferedMatrix'

The following objects are masked from 'package:base':

    colMeans, colSums, rowMeans, rowSums

> 
> Temp <- createBufferedMatrix(100)
> dim(Temp)
[1] 100   0
> buffer.dim(Temp)
[1] 1 1
> 
> 
> proc.time()
   user  system elapsed 
  0.318   0.055   0.358 

Example timings