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xgboost (version 1.5.0.1)

a-compatibility-note-for-saveRDS-save: Do not use saveRDS or save for long-term archival of models. Instead, use xgb.save or xgb.save.raw.

Description

It is a common practice to use the built-in saveRDS function (or save) to persist R objects to the disk. While it is possible to persist xgb.Booster objects using saveRDS, it is not advisable to do so if the model is to be accessed in the future. If you train a model with the current version of XGBoost and persist it with saveRDS, the model is not guaranteed to be accessible in later releases of XGBoost. To ensure that your model can be accessed in future releases of XGBoost, use xgb.save or xgb.save.raw instead.

Arguments

Details

Use xgb.save to save the XGBoost model as a stand-alone file. You may opt into the JSON format by specifying the JSON extension. To read the model back, use xgb.load.

Use xgb.save.raw to save the XGBoost model as a sequence (vector) of raw bytes in a future-proof manner. Future releases of XGBoost will be able to read the raw bytes and re-construct the corresponding model. To read the model back, use xgb.load.raw. The xgb.save.raw function is useful if you'd like to persist the XGBoost model as part of another R object.

Note: Do not use xgb.serialize to store models long-term. It persists not only the model but also internal configurations and parameters, and its format is not stable across multiple XGBoost versions. Use xgb.serialize only for checkpointing.

For more details and explanation about model persistence and archival, consult the page https://xgboost.readthedocs.io/en/latest/tutorials/saving_model.html.

Examples

Run this code
# NOT RUN {
data(agaricus.train, package='xgboost')
bst <- xgboost(data = agaricus.train$data, label = agaricus.train$label, max_depth = 2,
               eta = 1, nthread = 2, nrounds = 2, objective = "binary:logistic")

# Save as a stand-alone file; load it with xgb.load()
xgb.save(bst, 'xgb.model')
bst2 <- xgb.load('xgb.model')

# Save as a stand-alone file (JSON); load it with xgb.load()
xgb.save(bst, 'xgb.model.json')
bst2 <- xgb.load('xgb.model.json')
if (file.exists('xgb.model.json')) file.remove('xgb.model.json')

# Save as a raw byte vector; load it with xgb.load.raw()
xgb_bytes <- xgb.save.raw(bst)
bst2 <- xgb.load.raw(xgb_bytes)

# Persist XGBoost model as part of another R object
obj <- list(xgb_model_bytes = xgb.save.raw(bst), description = "My first XGBoost model")
# Persist the R object. Here, saveRDS() is okay, since it doesn't persist
# xgb.Booster directly. What's being persisted is the future-proof byte representation
# as given by xgb.save.raw().
saveRDS(obj, 'my_object.rds')
# Read back the R object
obj2 <- readRDS('my_object.rds')
# Re-construct xgb.Booster object from the bytes
bst2 <- xgb.load.raw(obj2$xgb_model_bytes)
if (file.exists('my_object.rds')) file.remove('my_object.rds')

# }

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