CRAN Package Check Results for Package assignPOP

Last updated on 2025-09-12 12:51:23 CEST.

Flavor Version Tinstall Tcheck Ttotal Status Flags
r-devel-linux-x86_64-debian-clang 1.3.0 23.56 145.94 169.50 ERROR
r-devel-linux-x86_64-debian-gcc 1.3.0 15.87 99.04 114.91 ERROR
r-devel-linux-x86_64-fedora-clang 1.3.0 258.38 ERROR
r-devel-linux-x86_64-fedora-gcc 1.3.0 238.55 ERROR
r-devel-windows-x86_64 1.3.0 21.00 124.00 145.00 OK
r-patched-linux-x86_64 1.3.0 21.08 128.95 150.03 OK
r-release-linux-x86_64 1.3.0 21.47 129.29 150.76 OK
r-release-macos-arm64 1.3.0 65.00 OK
r-release-macos-x86_64 1.3.0 139.00 OK
r-release-windows-x86_64 1.3.0 19.00 123.00 142.00 OK
r-oldrel-macos-arm64 1.3.0 59.00 OK
r-oldrel-macos-x86_64 1.3.0 99.00 OK
r-oldrel-windows-x86_64 1.3.0 29.00 165.00 194.00 OK

Check Details

Version: 1.3.0
Check: CRAN incoming feasibility
Result: NOTE Maintainer: ‘Kuan-Yu (Alex) Chen <alexkychen@gmail.com>’ No Authors@R field in DESCRIPTION. Please add one, modifying Authors@R: c(person(given = "Kuan-Yu", family = "Chen", role = c("aut", "cre"), comment = "Alex"), person(given = c("Elizabeth", "A."), family = "Marschall", role = "aut"), person(given = c("Michael", "G."), family = "Sovic", role = "aut"), person(given = c("Anthony", "C."), family = "Fries", role = "aut"), person(given = c("H.", "Lisle"), family = "Gibbs", role = "aut"), person(given = c("Stuart", "A."), family = "Ludsin", role = "aut"), person(given = "Kuan-Yu", family = "Chen", role = "cre", email = "alexkychen@gmail.com", comment = "Alex")) as necessary. Flavors: r-devel-linux-x86_64-debian-clang, r-devel-linux-x86_64-debian-gcc

Version: 1.3.0
Check: tests
Result: ERROR Running ‘testthat.R’ [8s/10s] Running the tests in ‘tests/testthat.R’ failed. Complete output: > library(testthat) > library(assignPOP) > > test_check("assignPOP") Correct assignment rates were estimated!! A total of 3 assignment tests for 3 pops. Results were also saved in a 'Rate_of_3_tests_3_pops.txt' file in the directory. Correct assignment rates were estimated!! A total of 3 assignment tests for 3 pops. Results were also saved in a 'Rate_of_3_tests_3_pops.txt' file in the directory. Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 3 Number of inds (pop.1): 8 Number of inds (pop.2): 10 Number of inds (pop.3): 6 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 3 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 3 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 6 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 12 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 12 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 3 assignment tests completed!! Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 3 Number of inds (pop.1): 8 Number of inds (pop.2): 10 Number of inds (pop.3): 6 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 1 Number of inds (pop.1): 24 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Known and unknown datasets have identical features. Performing PCA on genetic data for dimensionality reduction... Assignment test is done! See results in your designated folder. Predicted populations and probabilities are saved in [AssignmentResult.txt] Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 3 Number of inds (pop.1): 8 Number of inds (pop.2): 10 Number of inds (pop.3): 6 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Parallele computing is off. Analyzing data using 1 CPU core... K-fold cross-validation done!! 3 assignment tests completed!! Import a .CSV file. 4 additional variables detected. Checking variable data type... ng1(integer) ng2(integer) ng3(integer) ng4(integer) New data set created!! It has 24 observations by 24 variables including 4 loci(19 alleles) plus 4 additional variables(4 columns) Parallele computing is off. Analyzing data using 1 CPU core... K-fold cross-validation done!! 3 assignment tests completed!! Convert population label to factor. ng1(integer) ng2(integer) ng3(integer) ng4(integer) Parallele computing is off. Analyzing data using 1 CPU core... K-fold cross-validation done!! 3 assignment tests completed!! Results were saved in a 'High_Fst_Locus_Freq.txt' file in the directory.[ FAIL 3 | WARN 0 | SKIP 0 | PASS 39 ] ══ Failed tests ════════════════════════════════════════════════════════════════ ── Failure ('test_accuracy.R:8:3'): Calculate assignment accuracy for Monte-Carlo results ── `plot` has type 'object', not 'list'. ── Failure ('test_accuracy.R:18:3'): Calculate assignment accuracy for K-fold results ── `plot` has type 'object', not 'list'. ── Failure ('test_membership.R:5:3'): Plot membership probability ────────────── `plot` has type 'object', not 'list'. [ FAIL 3 | WARN 0 | SKIP 0 | PASS 39 ] Error: Test failures Execution halted Flavor: r-devel-linux-x86_64-debian-clang

Version: 1.3.0
Check: tests
Result: ERROR Running ‘testthat.R’ [6s/7s] Running the tests in ‘tests/testthat.R’ failed. Complete output: > library(testthat) > library(assignPOP) > > test_check("assignPOP") Correct assignment rates were estimated!! A total of 3 assignment tests for 3 pops. Results were also saved in a 'Rate_of_3_tests_3_pops.txt' file in the directory. Correct assignment rates were estimated!! A total of 3 assignment tests for 3 pops. Results were also saved in a 'Rate_of_3_tests_3_pops.txt' file in the directory. Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 3 Number of inds (pop.1): 8 Number of inds (pop.2): 10 Number of inds (pop.3): 6 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 3 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 3 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 6 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 12 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 12 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 3 assignment tests completed!! Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 3 Number of inds (pop.1): 8 Number of inds (pop.2): 10 Number of inds (pop.3): 6 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 1 Number of inds (pop.1): 24 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Known and unknown datasets have identical features. Performing PCA on genetic data for dimensionality reduction... Assignment test is done! See results in your designated folder. Predicted populations and probabilities are saved in [AssignmentResult.txt] Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 3 Number of inds (pop.1): 8 Number of inds (pop.2): 10 Number of inds (pop.3): 6 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Parallele computing is off. Analyzing data using 1 CPU core... K-fold cross-validation done!! 3 assignment tests completed!! Import a .CSV file. 4 additional variables detected. Checking variable data type... ng1(integer) ng2(integer) ng3(integer) ng4(integer) New data set created!! It has 24 observations by 24 variables including 4 loci(19 alleles) plus 4 additional variables(4 columns) Parallele computing is off. Analyzing data using 1 CPU core... K-fold cross-validation done!! 3 assignment tests completed!! Convert population label to factor. ng1(integer) ng2(integer) ng3(integer) ng4(integer) Parallele computing is off. Analyzing data using 1 CPU core... K-fold cross-validation done!! 3 assignment tests completed!! Results were saved in a 'High_Fst_Locus_Freq.txt' file in the directory.[ FAIL 3 | WARN 0 | SKIP 0 | PASS 39 ] ══ Failed tests ════════════════════════════════════════════════════════════════ ── Failure ('test_accuracy.R:8:3'): Calculate assignment accuracy for Monte-Carlo results ── `plot` has type 'object', not 'list'. ── Failure ('test_accuracy.R:18:3'): Calculate assignment accuracy for K-fold results ── `plot` has type 'object', not 'list'. ── Failure ('test_membership.R:5:3'): Plot membership probability ────────────── `plot` has type 'object', not 'list'. [ FAIL 3 | WARN 0 | SKIP 0 | PASS 39 ] Error: Test failures Execution halted Flavor: r-devel-linux-x86_64-debian-gcc

Version: 1.3.0
Check: tests
Result: ERROR Running ‘testthat.R’ [12s/14s] Running the tests in ‘tests/testthat.R’ failed. Complete output: > library(testthat) > library(assignPOP) > > test_check("assignPOP") Correct assignment rates were estimated!! A total of 3 assignment tests for 3 pops. Results were also saved in a 'Rate_of_3_tests_3_pops.txt' file in the directory. Correct assignment rates were estimated!! A total of 3 assignment tests for 3 pops. Results were also saved in a 'Rate_of_3_tests_3_pops.txt' file in the directory. Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 3 Number of inds (pop.1): 8 Number of inds (pop.2): 10 Number of inds (pop.3): 6 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 3 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 3 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 6 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 12 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 12 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 3 assignment tests completed!! Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 3 Number of inds (pop.1): 8 Number of inds (pop.2): 10 Number of inds (pop.3): 6 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 1 Number of inds (pop.1): 24 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Known and unknown datasets have identical features. Performing PCA on genetic data for dimensionality reduction... Assignment test is done! See results in your designated folder. Predicted populations and probabilities are saved in [AssignmentResult.txt] Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 3 Number of inds (pop.1): 8 Number of inds (pop.2): 10 Number of inds (pop.3): 6 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Parallele computing is off. Analyzing data using 1 CPU core... K-fold cross-validation done!! 3 assignment tests completed!! Import a .CSV file. 4 additional variables detected. Checking variable data type... ng1(integer) ng2(integer) ng3(integer) ng4(integer) New data set created!! It has 24 observations by 24 variables including 4 loci(19 alleles) plus 4 additional variables(4 columns) Parallele computing is off. Analyzing data using 1 CPU core... K-fold cross-validation done!! 3 assignment tests completed!! Convert population label to factor. ng1(integer) ng2(integer) ng3(integer) ng4(integer) Parallele computing is off. Analyzing data using 1 CPU core... K-fold cross-validation done!! 3 assignment tests completed!! Results were saved in a 'High_Fst_Locus_Freq.txt' file in the directory.[ FAIL 3 | WARN 0 | SKIP 0 | PASS 39 ] ══ Failed tests ════════════════════════════════════════════════════════════════ ── Failure ('test_accuracy.R:8:3'): Calculate assignment accuracy for Monte-Carlo results ── `plot` has type 'object', not 'list'. ── Failure ('test_accuracy.R:18:3'): Calculate assignment accuracy for K-fold results ── `plot` has type 'object', not 'list'. ── Failure ('test_membership.R:5:3'): Plot membership probability ────────────── `plot` has type 'object', not 'list'. [ FAIL 3 | WARN 0 | SKIP 0 | PASS 39 ] Error: Test failures Execution halted Flavor: r-devel-linux-x86_64-fedora-clang

Version: 1.3.0
Check: tests
Result: ERROR Running ‘testthat.R’ [11s/13s] Running the tests in ‘tests/testthat.R’ failed. Complete output: > library(testthat) > library(assignPOP) > > test_check("assignPOP") Correct assignment rates were estimated!! A total of 3 assignment tests for 3 pops. Results were also saved in a 'Rate_of_3_tests_3_pops.txt' file in the directory. Correct assignment rates were estimated!! A total of 3 assignment tests for 3 pops. Results were also saved in a 'Rate_of_3_tests_3_pops.txt' file in the directory. Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 3 Number of inds (pop.1): 8 Number of inds (pop.2): 10 Number of inds (pop.3): 6 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 3 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 3 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 6 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 12 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 12 assignment tests completed!! Parallele computing is off. Analyzing data using 1 CPU core... Monte-Carlo cross-validation done!! 3 assignment tests completed!! Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 3 Number of inds (pop.1): 8 Number of inds (pop.2): 10 Number of inds (pop.3): 6 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 1 Number of inds (pop.1): 24 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Known and unknown datasets have identical features. Performing PCA on genetic data for dimensionality reduction... Assignment test is done! See results in your designated folder. Predicted populations and probabilities are saved in [AssignmentResult.txt] Converting data format... Encoding genetic data... ################ assignPOP v1.3.0 ################ A GENEPOP format file was successfully imported! Imported Data Info: 24 obs. by 5 loci (diploid) Number of pop: 3 Number of inds (pop.1): 8 Number of inds (pop.2): 10 Number of inds (pop.3): 6 DataMatrix: 24 rows by 20 columns, with 19 allele variables Data output in a list comprising the following three elements: YOUR_LIST_NAME$DataMatrix YOUR_LIST_NAME$SampleID YOUR_LIST_NAME$LocusName Parallele computing is off. Analyzing data using 1 CPU core... K-fold cross-validation done!! 3 assignment tests completed!! Import a .CSV file. 4 additional variables detected. Checking variable data type... ng1(integer) ng2(integer) ng3(integer) ng4(integer) New data set created!! It has 24 observations by 24 variables including 4 loci(19 alleles) plus 4 additional variables(4 columns) Parallele computing is off. Analyzing data using 1 CPU core... K-fold cross-validation done!! 3 assignment tests completed!! Convert population label to factor. ng1(integer) ng2(integer) ng3(integer) ng4(integer) Parallele computing is off. Analyzing data using 1 CPU core... K-fold cross-validation done!! 3 assignment tests completed!! Results were saved in a 'High_Fst_Locus_Freq.txt' file in the directory.[ FAIL 3 | WARN 0 | SKIP 0 | PASS 39 ] ══ Failed tests ════════════════════════════════════════════════════════════════ ── Failure ('test_accuracy.R:8:3'): Calculate assignment accuracy for Monte-Carlo results ── `plot` has type 'object', not 'list'. ── Failure ('test_accuracy.R:18:3'): Calculate assignment accuracy for K-fold results ── `plot` has type 'object', not 'list'. ── Failure ('test_membership.R:5:3'): Plot membership probability ────────────── `plot` has type 'object', not 'list'. [ FAIL 3 | WARN 0 | SKIP 0 | PASS 39 ] Error: Test failures Execution halted Flavor: r-devel-linux-x86_64-fedora-gcc