VERBOSITY <- as.integer( Sys.getenv("LIGHTGBM_TEST_VERBOSITY", "-1") ) context("lgb.unloader") test_that("lgb.unloader works as expected", { data(agaricus.train, package = "lightgbm") train <- agaricus.train dtrain <- lgb.Dataset(train$data, label = train$label) bst <- lgb.train( params = list( objective = "regression" , metric = "l2" , min_data = 1L , learning_rate = 1.0 , verbosity = VERBOSITY ) , data = dtrain , nrounds = 1L ) expect_true(exists("bst")) result <- lgb.unloader(restore = TRUE, wipe = TRUE, envir = environment()) expect_false(exists("bst")) expect_null(result) }) test_that("lgb.unloader finds all boosters and removes them", { data(agaricus.train, package = "lightgbm") train <- agaricus.train dtrain <- lgb.Dataset(train$data, label = train$label) bst1 <- lgb.train( params = list( objective = "regression" , metric = "l2" , min_data = 1L , learning_rate = 1.0 , verbosity = VERBOSITY ) , data = dtrain , nrounds = 1L ) bst2 <- lgb.train( params = list( objective = "regression" , metric = "l2" , min_data = 1L , learning_rate = 1.0 , verbosity = VERBOSITY ) , data = dtrain , nrounds = 1L ) expect_true(exists("bst1")) expect_true(exists("bst2")) lgb.unloader(restore = TRUE, wipe = TRUE, envir = environment()) expect_false(exists("bst1")) expect_false(exists("bst2")) })