π Single Turn Gpt4 JudgementΒΆ
cards.mt_bench.response_assessment.rating.single_turn_gpt4_judgement
TaskCard(
loader=LoadFromHFSpace(
space_name="lmsys/mt-bench",
revision="a4b674c",
data_files={
"questions": "data/mt_bench/question.jsonl",
"model_answer": "data/mt_bench/model_answer/*.jsonl",
"judgment": "data/mt_bench/model_judgment/gpt-4_single.jsonl",
},
data_classification_policy=[
"public",
],
),
preprocess_steps=[
"operators.mt_bench.rating_hf_space_processing_steps",
FilterByCondition(
values={
"turn": 1,
},
condition="eq",
),
Fillna(
field="reference",
value=None,
),
FilterByCondition(
values={
"reference": None,
},
condition="eq",
),
Rename(
field_to_field={
"model_input": "question",
"score": "rating",
"category": "group",
"model_output": "answer",
},
),
Copy(
field="question/0",
to_field="question",
),
Copy(
field="answer/0",
to_field="answer",
),
],
task="tasks.response_assessment.rating.single_turn",
templates=[
"templates.response_assessment.rating.mt_bench_single_turn",
],
)
[source]from unitxt.loaders import LoadFromHFSpace
from unitxt.operators import Copy, Fillna, FilterByCondition, Rename
Explanation about TaskCardΒΆ
TaskCard delineates the phases in transforming the source dataset into model input, and specifies the metrics for evaluation of model output.
- Args:
- 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 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 LoadFromHFSpaceΒΆ
Used to load data from HuggingFace Spaces lazily.
- Args:
- space_name (str):
Name of the HuggingFace Space to be accessed.
- data_files (str | Sequence[str] | Mapping[str, str | Sequence[str]]):
Relative paths to files within a given repository. If given as a mapping, paths should be values, while keys should represent the type of respective files (training, testing etc.).
- path (str, optional):
Absolute path to a directory where data should be downloaded.
- revision (str, optional):
ID of a Git branch or commit to be used. By default, it is set to None, thus data is downloaded from the main branch of the accessed repository.
- use_token (bool, optional):
Whether a token is used for authentication when accessing the HuggingFace Space. If necessary, the token is read from the HuggingFace config folder.
- token_env (str, optional):
Key of an env variable which value will be used for authentication when accessing the HuggingFace Space - if necessary.
Explanation about RenameΒΆ
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:
Rename(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}]
Rename(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}}]
Rename(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}}]
Rename(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}}]
Explanation about CopyΒΆ
Copies values from specified fields to specified fields.
- Args (of parent class):
field_to_field (Union[List[List], Dict[str, str]]): A list of lists, where each sublist contains the source field and the destination field, or a dictionary mapping source fields to destination fields.
- Examples:
An input instance {βaβ: 2, βbβ: 3}, when processed by
Copy(field_to_field={"a": "b"})would yield {βaβ: 2, βbβ: 2}, and when processed byCopy(field_to_field={"a": "c"})would yield {βaβ: 2, βbβ: 3, βcβ: 2}with field names containing / , we can also copy inside the field:
Copy(field="a/0",to_field="a")would process instance {βaβ: [1, 3]} into {βaβ: 1}
Explanation about FilterByConditionΒΆ
Filters a stream, yielding only instances in which the values in required fields follow the required condition operator.
Raises an error if a required field name is missing from the input instance.
- Args:
values (Dict[str, Any]): Field names and respective Values that instances must match according the condition, to be included in the output.
condition: the name of the desired condition operator between the specified (sub) fieldβs value and the provided constant value. Supported conditions are (βgtβ, βgeβ, βltβ, βleβ, βneβ, βeqβ, βinβ,βnot inβ)
error_on_filtered_all (bool, optional): If True, raises an error if all instances are filtered out. Defaults to True.
- Examples:
FilterByCondition(values = {"a":4}, condition = "gt")will yield only instances where field"a"contains a value> 4FilterByCondition(values = {"a":4}, condition = "le")will yield only instances where"a"<=4FilterByCondition(values = {"a":[4,8]}, condition = "in")will yield only instances where"a"is4or8FilterByCondition(values = {"a":[4,8]}, condition = "not in")will yield only instances where"a"is different from4or8FilterByCondition(values = {"a/b":[4,8]}, condition = "not in")will yield only instances where"a"is a dict in which key"b"is mapped to a value that is neither4nor8FilterByCondition(values = {"a[2]":4}, condition = "le")will yield only instances where βaβ is a list whose 3-rd element is<= 4
References: templates.response_assessment.rating.mt_bench_single_turn, operators.mt_bench.rating_hf_space_processing_steps, tasks.response_assessment.rating.single_turn
Read more about catalog usage here.