class Chainer::Training::Extensions::Evaluator

Trainer extension to evaluate models on a validation set. This extension evaluates the current models by a given evaluation function.

It creates a Chainer::Reporter object to store values observed in the evaluation function on each iteration. The report for all iterations are aggregated to Chainer::DictSummary. The collected mean values are further reported to the reporter object of the trainer, where the name of each observation is prefixed by the evaluator name. See Chainer::Reporter for details in naming rules of the reports.

Evaluator has a structure to customize similar to that of Chainer::Training::StandardUpdater. The main differences are:

There are two ways to modify the evaluation behavior besides setting a custom evaluation function. One is by setting a custom evaluation loop via the `eval_func` argument. The other is by inheriting this class and overriding the `evaluate` method. In latter case, users have to create and handle a reporter object manually. Users also have to copy the iterators before using them, in order to reuse them at the next time of evaluation. In both cases, the functions are called in testing mode (i.e., `chainer.config.train` is set to `false`).

This extension is called at the end of each epoch by default.

Public Class Methods

new(iterator, target, converter: nil, device: nil, eval_hook: nil, eval_func: nil) click to toggle source

@param [Dataset::Iterator] iterator Dataset iterator for the validation dataset. It can also be a dictionary of iterators.

If this is just an iterator, the iterator is registered by the name 'main'.

@param [Chainer::Link] target Link object or a dictionary of links to evaluate.

If this is just a link object, the link is registered by the name 'main'.

@param [Dataset::Convert] converter Converter function to build input arrays.

`Chainer::Dataset.concat_examples` is used by default.

@param [Chainer::Device] device Device to which the training data is sent. @param [Function] eval_hook Function to prepare for each evaluation process.

        It is called at the beginning of the evaluation.
The evaluator extension object is passed at each call.

@param [Function] eval_func Evaluation function called at each iteration.

The target link to evaluate as a callable is used by default.
# File lib/chainer/training/extensions/evaluator.rb, line 43
def initialize(iterator, target, converter: nil, device: nil, eval_hook: nil, eval_func: nil)
  @priority = Extension::PRIORITY_WRITER
  @trigger = [1, 'epoch']

  if iterator.kind_of?(Dataset::Iterator)
    iterator = { main: iterator }
  end
  @iterators = iterator

  if target.kind_of?(Link)
    target = { main: target }
  end
  @targets = target

  @converter = converter || Dataset::Convert.method(:concat_examples)
  @device = device
  @eval_hook = eval_hook
  @eval_func = eval_func
end

Public Instance Methods

call(trainer = nil) click to toggle source

Executes the evaluator extension.

Unlike usual extensions, this extension can be executed without passing a trainer object. This extension reports the performance on validation dataset using the `Chainer.report` function. Thus, users can use this extension independently from any trainer by manually configuring a `Chainer::Reporter` object.

@param [Chainer::Training::Trainer] trainer Trainer object that invokes this extension.

It can be omitted in case of calling this extension manually.
# File lib/chainer/training/extensions/evaluator.rb, line 71
def call(trainer = nil)
  reporter = Reporter.new
  prefix = self.respond_to?(:name) ? "#{self.name}/" : ""

  @targets.each do |name, target|
    reporter.add_observer("#{prefix}#{name}", target)
    reporter.add_observers("#{prefix}#{name}", target.method(:namedlinks), skipself: true)
  end

  result = nil
  reporter.scope(reporter.observation) do
    old_train = Chainer.configuration.train
    Chainer.configuration.train = false
    result = evaluate()
    Chainer.configuration.train = old_train
  end

  Reporter.save_report(result)
  return result
end
default_name() click to toggle source
# File lib/chainer/training/extensions/evaluator.rb, line 138
def default_name
  "validation"
end
evaluate() click to toggle source

Evaluates the model and returns a result dictionary. This method runs the evaluation loop over the validation dataset. It accumulates the reported values to `DictSummary` and returns a dictionary whose values are means computed by the summary.

Users can override this method to customize the evaluation routine. @return dict Result dictionary. This dictionary is further reported via `Chainer.save_report` without specifying any observer.

# File lib/chainer/training/extensions/evaluator.rb, line 98
def evaluate
  iterator = @iterators[:main]
  eval_func = @eval_func || @targets[:main]

  @eval_hook.(self) if @eval_hook

  if iterator.respond_to?(:reset)
    iterator.reset
    it = iterator
  else
    it = iterator.dup
  end

  summary = DictSummary.new

  until it.is_new_epoch do
    batch = it.next
    observation = {}
    Reporter.report_scope(observation) do
      in_arrays = @converter.(batch, device: @device)

      old_enable_backprop = Chainer.configuration.enable_backprop
      Chainer.configuration.enable_backprop = false

      if in_arrays.kind_of?(Array)
        eval_func.(*in_arrays)
      elsif in_arrays.kind_of?(Hash)
        eval_func.(**in_arrays)
      else
        eval_func.(in_arrays)
      end

      Chainer.configuration.enable_backprop = old_enable_backprop
    end
    summary.add(observation)
  end

  summary.compute_mean()
end