Evaluate documentation
Creating an EvaluationSuite
Creating an EvaluationSuite
It can be useful to evaluate models on a variety of different tasks to understand their downstream performance. Assessing the model on several types of tasks can reveal gaps in performance along some axis. For example, when training a language model, it is often useful to measure perplexity on an in-domain corpus, but also to concurrently evaluate on tasks which test for general language capabilities like natural language entailment or question-answering, or tasks designed to probe the model along fairness and bias dimensions.
The EvaluationSuite provides a way to compose any number of (evaluator, dataset, metric) tuples as a SubTask to evaluate a model on a collection of several evaluation tasks. See the evaluator documentation for a list of currently supported tasks.
A new EvaluationSuite is made up of a list of SubTask classes, each defining an evaluation task. The Python file containing the definition can be uploaded to a Space on the Hugging Face Hub so it can be shared with the community or saved/loaded locally as a Python script.
Some datasets require additional preprocessing before passing them to an Evaluator. You can set a data_preprocessor for each SubTask which is applied via a map operation using the datasets library. Keyword arguments for the Evaluator can be passed down through the args_for_task attribute.
To create a new EvaluationSuite, create a new Space with a .py file which matches the name of the Space, add the below template to a Python file, and fill in the attributes for a new task.
The mandatory attributes for a new SubTask are task_type and data.
- task_typemaps to the tasks currently supported by the Evaluator.
- datacan be an instantiated Hugging Face dataset object or the name of a dataset.
- subsetand- splitcan be used to define which name and split of the dataset should be used for evaluation.
- args_for_taskshould be a dictionary with kwargs to be passed to the Evaluator.
import evaluate
from evaluate.evaluation_suite import SubTask
class Suite(evaluate.EvaluationSuite):
    def __init__(self, name):
        super().__init__(name)
        self.preprocessor = lambda x: {"text": x["text"].lower()}
        self.suite = [
            SubTask(
                task_type="text-classification",
                data="glue",
                subset="sst2",
                split="validation[:10]",
                args_for_task={
                    "metric": "accuracy",
                    "input_column": "sentence",
                    "label_column": "label",
                    "label_mapping": {
                        "LABEL_0": 0.0,
                        "LABEL_1": 1.0
                    }
                }
            ),
            SubTask(
                task_type="text-classification",
                data="glue",
                subset="rte",
                split="validation[:10]",
                args_for_task={
                    "metric": "accuracy",
                    "input_column": "sentence1",
                    "second_input_column": "sentence2",
                    "label_column": "label",
                    "label_mapping": {
                        "LABEL_0": 0,
                        "LABEL_1": 1
                    }
                }
            )
        ]An EvaluationSuite can be loaded by name from the Hugging Face Hub, or locally by providing a path, and run with the run(model_or_pipeline) method. The evaluation results are returned along with their task names and information about the time it took to obtain predictions through the pipeline. These can be easily displayed with a pandas.DataFrame:
>>> from evaluate import EvaluationSuite
>>> suite = EvaluationSuite.load('mathemakitten/glue-evaluation-suite')
>>> results = suite.run("gpt2")| accuracy | total_time_in_seconds | samples_per_second | latency_in_seconds | task_name | 
|---|---|---|---|---|
| 0.5 | 0.740811 | 13.4987 | 0.0740811 | glue/sst2 | 
| 0.4 | 1.67552 | 5.9683 | 0.167552 | glue/rte |