# Using the `evaluator` with custom pipelines The evaluator is designed to work with `transformer` pipelines out-of-the-box. However, in many cases you might have a model or pipeline that's not part of the `transformer` ecosystem. You can still use `evaluator` to easily compute metrics for them. In this guide we show how to do this for a Scikit-Learn [pipeline](https://scikit-learn.org/stable/modules/generated/sklearn.pipeline.Pipeline.html#sklearn.pipeline.Pipeline) and a Spacy [pipeline](https://spacy.io). Let's start with the Scikit-Learn case. ## Scikit-Learn First we need to train a model. We'll train a simple text classifier on the [IMDb dataset](https://huggingface.co/datasets/imdb), so let's start by downloading the dataset: ```py from datasets import load_dataset ds = load_dataset("imdb") ``` Then we can build a simple TF-IDF preprocessor and Naive Bayes classifier wrapped in a `Pipeline`: ```py from sklearn.pipeline import Pipeline from sklearn.naive_bayes import MultinomialNB from sklearn.feature_extraction.text import TfidfTransformer from sklearn.feature_extraction.text import CountVectorizer text_clf = Pipeline([ ('vect', CountVectorizer()), ('tfidf', TfidfTransformer()), ('clf', MultinomialNB()), ]) text_clf.fit(ds["train"]["text"], ds["train"]["label"]) ``` Following the convention in the `TextClassificationPipeline` of `transformers` our pipeline should be callable and return a list of dictionaries. In addition we use the `task` attribute to check if the pipeline is compatible with the `evaluator`. We can write a small wrapper class for that purpose: ```py class ScikitEvalPipeline: def __init__(self, pipeline): self.pipeline = pipeline self.task = "text-classification" def __call__(self, input_texts, **kwargs): return [{"label": p} for p in self.pipeline.predict(input_texts)] pipe = ScikitEvalPipeline(text_clf) ``` We can now pass this `pipeline` to the `evaluator`: ```py from evaluate import evaluator task_evaluator = evaluator("text-classification") task_evaluator.compute(pipe, ds["test"], "accuracy") >>> {'accuracy': 0.82956} ``` Implementing that simple wrapper is all that's needed to use any model from any framework with the `evaluator`. In the `__call__` you can implement all logic necessary for efficient forward passes through your model. ## Spacy We'll use the `polarity` feature of the `spacytextblob` project to get a simple sentiment analyzer. First you'll need to install the project and download the resources: ```bash pip install spacytextblob python -m textblob.download_corpora python -m spacy download en_core_web_sm ``` Then we can simply load the `nlp` pipeline and add the `spacytextblob` pipeline: ```py import spacy nlp = spacy.load('en_core_web_sm') nlp.add_pipe('spacytextblob') ``` This snippet shows how we can use the `polarity` feature added with `spacytextblob` to get the sentiment of a text: ```py texts = ["This movie is horrible", "This movie is awesome"] results = nlp.pipe(texts) for txt, res in zip(texts, results): print(f"{text} | Polarity: {res._.blob.polarity}") ``` Now we can wrap it in a simple wrapper class like in the Scikit-Learn example before. It just has to return a list of dictionaries with the predicted lables. If the polarity is larger than 0 we'll predict positive sentiment and negative otherwise: ```py class SpacyEvalPipeline: def __init__(self, nlp): self.nlp = nlp self.task = "text-classification" def __call__(self, input_texts, **kwargs): results =[] for p in self.nlp.pipe(input_texts): if p._.blob.polarity>=0: results.append({"label": 1}) else: results.append({"label": 0}) return results pipe = SpacyEvalPipeline(nlp) ``` That class is compatible with the `evaluator` and we can use the same instance from the previous examlpe along with the IMDb test set: ```py eval.compute(pipe, ds["test"], "accuracy") >>> {'accuracy': 0.6914} ``` This will take a little longer than the Scikit-Learn example but after roughly 10-15min you will have the evaluation results!