This is the class for collections (previously known as studies) served on
https://www.openml.org.
A collection can either be a task collection
or run collection.
This object can also be constructed using the sugar function ocl()
.
Run Collection
A run collection contains runs, flows, datasets and tasks.
The primary object are the runs (main_entity_type
is "run"
).
The the flows, datasets and tasks are those used in the runs.
Task Collection
A task collection (main_entity_type = "task"
) contains tasks and datasets.
The primary object are the tasks (main_entity_type
is "task"
).
The datasets are those used in the tasks.
Note: All Benchmark Suites on OpenML are also collections.
Caching
Because collections on OpenML can be modified (ids can be added), it is not possible to cache this object.
mlr3 Intergration
Obtain a list of mlr3::Tasks using mlr3::as_tasks.
Obtain a list of mlr3::Resamplings using mlr3::as_resamplings.
Obtain a list of mlr3::Learners using mlr3::as_learners (if main_entity_type is "run").
Obtain a mlr3::BenchmarkResult using mlr3::as_benchmark_result (if main_entity_type is "run").
References
Vanschoren J, van Rijn JN, Bischl B, Torgo L (2014). “OpenML.” ACM SIGKDD Explorations Newsletter, 15(2), 49--60. doi:10.1145/2641190.2641198 .
Super class
mlr3oml::OMLObject
-> OMLCollection
Active bindings
desc
(
list()
)
Colllection description (meta information), downloaded and converted from the JSON API response.parquet
(
logical(1)
)
Whether to use parquet.main_entity_type
(
character(n)
)
The main entity type, either"run"
or"task"
.flow_ids
(
integer(n)
)
An vector containing the flow ids of the collection.data_ids
(
integer(n)
)
An vector containing the data ids of the collection.run_ids
(
integer(n)
)
An vector containing the run ids of the collection.task_ids
(
integer(n)
)
An vector containing the task ids of the collection.
Methods
Inherited methods
Method new()
Creates a new instance of this R6 class.
Usage
OMLCollection$new(id, test_server = test_server_default())
Examples
# For technical reasons, examples cannot be included in this R package.
# Instead, these are some relevant resources:
#
# Large-Scale Benchmarking chapter in the mlr3book:
# https://mlr3book.mlr-org.com/chapters/chapter11/large-scale_benchmarking.html
#
# Package Article:
# https://mlr3oml.mlr-org.com/articles/tutorial.html