๐Ÿ“„ Clapnqยถ

Note

ID: cards.rag.response_generation.clapnq | Type: TaskCard

{
    "loader": {
        "path": "PrimeQA/clapnq",
        "type": "load_hf"
    },
    "preprocess_steps": [
        {
            "mix": {
                "test": "validation",
                "train": "train"
            },
            "type": "split_random_mix"
        },
        {
            "field_to_field": {
                "input": "question",
                "output/*/answer": "reference_answers",
                "passages/*/text": "contexts"
            },
            "type": "copy_fields"
        },
        {
            "fields": {
                "contexts_ids": []
            },
            "type": "add_fields"
        }
    ],
    "task": "tasks.rag.response_generation",
    "templates": {
        "default": "templates.rag.response_generation.simple"
    },
    "type": "task_card"
}

Explanation about TaskCardยถ

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 CopyFieldsยถ

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 {โ€œaโ€: 2, โ€œbโ€: 3}, when processed by CopyField(field_to_field={โ€œaโ€: โ€œbโ€} would yield {โ€œaโ€: 2, โ€œbโ€: 2}, and when processed by CopyField(field_to_field={โ€œaโ€: โ€œcโ€} would yield {โ€œaโ€: 2, โ€œbโ€: 3, โ€œcโ€: 2}

with field names containing / , we can also copy inside the field: CopyFields(field_to_field={โ€œa/0โ€: โ€œaโ€}) would process instance {โ€œaโ€: [1, 3]} into {โ€œaโ€: 1}

Explanation about AddFieldsยถ

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 โ€˜/โ€™ to access inner fields

use_deepcopy (bool) : Deep copy the input value to avoid later modifications

Examples:

# Add a โ€˜classesโ€™ field with a value of a list โ€œpositiveโ€ and โ€œnegativeโ€ to all streams AddFields(fields={โ€œclassesโ€: [โ€œpositiveโ€,โ€negativesโ€]})

# Add a โ€˜startโ€™ field under the โ€˜spanโ€™ field with a value of 0 to all streams AddFields(fields={โ€œspan/startโ€: 0}

# Add a โ€˜classesโ€™ field with a value of a list โ€œpositiveโ€ and โ€œnegativeโ€ to โ€˜trainโ€™ stream AddFields(fields={โ€œclassesโ€: [โ€œpositiveโ€,โ€negativesโ€], apply_to_stream=[โ€œtrainโ€]})

# Add a โ€˜classesโ€™ field on a given list, prevent modification of original list # from changing the instance. AddFields(fields={โ€œclassesโ€: alist}), use_deepcopy=True) # if now alist is modified, still the instances remain intact.

Explanation about SplitRandomMixยถ

Splits a multistream into new streams (splits), whose names, source input stream, and amount of instances, are specified by arg โ€˜mixโ€™.

The keys of arg โ€˜mixโ€™, are the names of the new streams, the values are of the form: โ€˜name-of-source-stream[percentage-of-source-stream]โ€™ Each input instance, of any input stream, is selected exactly once for inclusion in any of the output streams.

Examples: When processing a multistream made of two streams whose names are โ€˜trainโ€™ and โ€˜testโ€™, by SplitRandomMix(mix = { โ€œtrainโ€: โ€œtrain[99%]โ€, โ€œvalidationโ€: โ€œtrain[1%]โ€, โ€œtestโ€: โ€œtestโ€ }) the output is a multistream, whose three streams are named โ€˜trainโ€™, โ€˜validationโ€™, and โ€˜testโ€™. Output stream โ€˜trainโ€™ is made of randomly selected 99% of the instances of input stream โ€˜trainโ€™, output stream โ€˜validationโ€™ is made of the remaining 1% instances of input โ€˜trainโ€™, and output stream โ€˜testโ€™ is made of the whole of input stream โ€˜testโ€™.

When processing the above input multistream by SplitRandomMix(mix = { โ€œtrainโ€: โ€œtrain[50%]+test[0.1]โ€, โ€œvalidationโ€: โ€œtrain[50%]+test[0.2]โ€, โ€œtestโ€: โ€œtest[0.7]โ€ }) the output is a multistream, whose three streams are named โ€˜trainโ€™, โ€˜validationโ€™, and โ€˜testโ€™. Output stream โ€˜trainโ€™ is made of randomly selected 50% of the instances of input stream โ€˜trainโ€™ + randomly selected 0.1 (i.e., 10%) of the instances of input stream โ€˜testโ€™. Output stream โ€˜validationโ€™ is made of the remaining 50% instances of input โ€˜trainโ€™+ randomly selected 0.2 (i.e., 20%) of the original instances of input โ€˜testโ€™, that were not selected for output โ€˜trainโ€™, and output stream โ€˜testโ€™ is made of the remaining instances of input โ€˜testโ€™.

References: tasks.rag.response_generation, templates.rag.response_generation.simple

Read more about catalog usage here.