π MnliΒΆ
Tags: annotations_creators:other, arxiv:1804.07461, flags:['coreference-nli', 'paraphrase-identification', 'qa-nli'], language:en, language_creators:other, license:other, multilinguality:monolingual, region:us, size_categories:10K<n<100K, source_datasets:original, task_categories:text-classification, task_ids:['acceptability-classification', 'natural-language-inference', 'semantic-similarity-scoring', 'sentiment-classification', 'text-scoring']
Note
ID: cards.mnli | Type: TaskCard
{
"__description__": "The Multi-Genre Natural Language Inference Corpus is a crowdsourced collection of sentence pairs with textual entailment annotations. Given a premise sentence and a hypothesis sentence, the task is to predict whether the premise entails the hypothesis (entailment), contradicts the hypothesis (contradiction), or neither (neutral). The premise sentences are gathered from ten different sources, including transcribed speech, fiction, and government reports⦠See the full description on the dataset page: https://huggingface.co/datasets/nyu-mll/glue.",
"__tags__": {
"annotations_creators": "other",
"arxiv": "1804.07461",
"flags": [
"coreference-nli",
"paraphrase-identification",
"qa-nli"
],
"language": "en",
"language_creators": "other",
"license": "other",
"multilinguality": "monolingual",
"region": "us",
"size_categories": "10K<n<100K",
"source_datasets": "original",
"task_categories": "text-classification",
"task_ids": [
"acceptability-classification",
"natural-language-inference",
"semantic-similarity-scoring",
"sentiment-classification",
"text-scoring"
]
},
"__type__": "task_card",
"loader": {
"__type__": "load_hf",
"name": "mnli",
"path": "glue"
},
"preprocess_steps": [
{
"__type__": "rename_splits",
"mapper": {
"validation_matched": "validation"
}
},
"splitters.small_no_test",
{
"__type__": "rename_fields",
"field_to_field": {
"hypothesis": "text_b",
"premise": "text_a"
}
},
{
"__type__": "map_instance_values",
"mappers": {
"label": {
"0": "entailment",
"1": "neutral",
"2": "contradiction"
}
}
},
{
"__type__": "set",
"fields": {
"classes": [
"entailment",
"neutral",
"contradiction"
],
"text_a_type": "premise",
"text_b_type": "hypothesis",
"type_of_relation": "entailment"
}
}
],
"task": "tasks.classification.multi_class.relation",
"templates": "templates.classification.multi_class.relation.all"
}
Explanation about TaskCardΒΆ
TaskCard delineates the phases in transforming the source dataset into a model-input, and specifies the metrics for evaluation of model-output.
- Attributes:
loader: specifies the source address and the loading operator that can access that source and transform it into a unitxt multistream.
preprocess_steps: list of unitxt operators to process the data source into a model-input.
task: specifies the fields (of the already (pre)processed instance) making the inputs, the fields making the outputs, and the metrics to be used for evaluating the model output.
templates: format strings to be applied on the input fields (specified by the task) and the output fields. The template also carries the instructions and the list of postprocessing steps, to be applied to the model output.
Explanation about LoadHFΒΆ
Loads datasets from the Huggingface Hub.
It supports loading with or without streaming, and can filter datasets upon loading.
- Args:
path: The path or identifier of the dataset on the Huggingface Hub. name: An optional dataset name. data_dir: Optional directory to store downloaded data. split: Optional specification of which split to load. data_files: Optional specification of particular data files to load. streaming: Bool indicating if streaming should be used. filtering_lambda: A lambda function for filtering the data after loading. num_proc: Optional integer to specify the number of processes to use for parallel dataset loading.
- Example:
Loading glueβs mrpc dataset
load_hf = LoadHF(path='glue', name='mrpc')
Explanation about MapInstanceValuesΒΆ
A class used to map instance values into other values.
This class is a type of InstanceOperator, it maps values of instances in a stream using predefined mappers.
- Attributes:
- mappers (Dict[str, Dict[str, str]]): The mappers to use for mapping instance values.
Keys are the names of the fields to be mapped, and values are dictionaries that define the mapping from old values to new values.
- strict (bool): If True, the mapping is applied strictly. That means if a value
does not exist in the mapper, it will raise a KeyError. If False, values that are not present in the mapper are kept as they are.
- process_every_value (bool): If True, all fields to be mapped should be lists, and the mapping
is to be applied to their individual elements. If False, mapping is only applied to a field containing a single value.
- Examples:
MapInstanceValues(mappers={βaβ: {β1β: βhiβ, β2β: βbyeβ}}) replaces β1β with βhiβ and β2β with βbyeβ in field βaβ in all instances of all streams: instance {βaβ:β1β, βbβ: 2} becomes {βaβ:βhiβ, βbβ: 2}.
MapInstanceValues(mappers={βaβ: {β1β: βhiβ, β2β: βbyeβ}}, process_every_value=True) Assuming field βaβ is a list of values, potentially including β1β-s and β2β-s, this replaces each such β1β with βhiβ and β2β β with βbyeβ in all instances of all streams: instance {βaβ: [β1β, β2β], βbβ: 2} becomes {βaβ: [βhiβ, βbyeβ], βbβ: 2}.
MapInstanceValues(mappers={βaβ: {β1β: βhiβ, β2β: βbyeβ}}, strict=True) To ensure that all values of field βaβ are mapped in every instance, use strict=True. Input instance {βaβ:β3β, βbβ: 2} will raise an exception per the above call, because β3β is not a key in the mapper of βaβ.
MapInstanceValues(mappers={βaβ: {str([1,2,3,4]): βAllβ, str([]): βNoneβ}}, strict=True) replaces a list [1,2,3,4] with the string βAllβ and an empty list by string βNoneβ. Note that mapped values are defined by their string representation, so mapped values must be converted to strings.
Explanation about SetΒΆ
Adds specified fields to each instance in a given stream or all streams (default) If fields exist, updates them.
- Args:
- fields (Dict[str, object]): The fields to add to each instance.
Use β/β to access inner fields
use_deepcopy (bool) : Deep copy the input value to avoid later modifications
- Examples:
# Add a βclassesβ field with a value of a list βpositiveβ and βnegativeβ to all streams Set(fields={βclassesβ: [βpositiveβ,βnegativesβ]})
# Add a βstartβ field under the βspanβ field with a value of 0 to all streams Set(fields={βspan/startβ: 0}
# Add a βclassesβ field with a value of a list βpositiveβ and βnegativeβ to βtrainβ stream Set(fields={βclassesβ: [βpositiveβ,βnegativesβ], apply_to_stream=[βtrainβ]})
# Add a βclassesβ field on a given list, prevent modification of original list # from changing the instance. Set(fields={βclassesβ: alist}), use_deepcopy=True) # if now alist is modified, still the instances remain intact.
Explanation about RenameFieldsΒΆ
Renames fields.
Move value from one field to another, potentially, if field name contains a /, from one branch into another. Remove the from field, potentially part of it in case of / in from_field.
- Examples:
RenameFields(field_to_field={βbβ: βcβ}) will change inputs [{βaβ: 1, βbβ: 2}, {βaβ: 2, βbβ: 3}] to [{βaβ: 1, βcβ: 2}, {βaβ: 2, βcβ: 3}]
RenameFields(field_to_field={βbβ: βc/dβ}) will change inputs [{βaβ: 1, βbβ: 2}, {βaβ: 2, βbβ: 3}] to [{βaβ: 1, βcβ: {βdβ: 2}}, {βaβ: 2, βcβ: {βdβ: 3}}]
RenameFields(field_to_field={βbβ: βb/dβ}) will change inputs [{βaβ: 1, βbβ: 2}, {βaβ: 2, βbβ: 3}] to [{βaβ: 1, βbβ: {βdβ: 2}}, {βaβ: 2, βbβ: {βdβ: 3}}]
RenameFields(field_to_field={βb/c/eβ: βb/dβ}) will change inputs [{βaβ: 1, βbβ: {βcβ: {βeβ: 2, βfβ: 20}}}] to [{βaβ: 1, βbβ: {βcβ: {βfβ: 20}, βdβ: 2}}]
References: splitters.small_no_test, templates.classification.multi_class.relation.all, tasks.classification.multi_class.relation
Read more about catalog usage here.