Samplers can be used with dataloader()
when creating batches from a torch
dataset()
.
sampler(
name = NULL,
inherit = Sampler,
...,
private = NULL,
active = NULL,
parent_env = parent.frame()
)
(optional) name of the sampler
(optional) you can inherit from other samplers to re-use some methods.
Pass any number of fields or methods. You should at least define
the initialize
and step
methods. See the examples section.
(optional) a list of private methods for the sampler
(optional) a list of active methods for the sampler.
used to capture the right environment to define the class. The default is fine for most situations.
A sampler must implement the .iter
and .lenght()
methods.
initialize
takes in a data_source
. In general this is a dataset()
.
.iter
returns a function that returns a dataset index everytime it's called.
.length
returns the maximum number of samples that can be retrieved from
that sampler.