Evaluate documentation

Creating and sharing a new evaluation

You are viewing v0.2.2 version. A newer version v0.4.0 is available.
Hugging Face's logo
Join the Hugging Face community

and get access to the augmented documentation experience

to get started

Creating and sharing a new evaluation

Setup

Before you can create a new metric make sure you have all the necessary dependencies installed:

pip install evaluate[template]

Also make sure your Hugging Face token is registered so you can connect to the Hugging Face Hub:

huggingface-cli login

Create

All evaluation modules, be it metrics, comparisons, or measurements live on the πŸ€— Hub in a Space (see for example Accuracy). In principle, you could setup a new Space and add a new module following the same structure. However, we added a CLI that makes creating a new evaluation module much easier:

evaluate-cli create "My Metric" --module_type "metric"

This will create a new Space on the πŸ€— Hub, clone it locally, and populate it with a template. Instructions on how to fill the template will be displayed in the terminal, but are also explained here in more detail.

For more information about Spaces, see the Spaces documentation.

Module script

The evaluation module script (the file with suffix *.py) is the core of the new module and includes all the code for computing the evaluation.

Attributes

Start by adding some information about your evalution module in EvaluationModule._info(). The most important attributes you should specify are:

  1. EvaluationModuleInfo.description provides a brief description about your evalution module.

  2. EvaluationModuleInfo.citation contains a BibTex citation for the evalution module.

  3. EvaluationModuleInfo.inputs_description describes the expected inputs and outputs. It may also provide an example usage of the evalution module.

  4. EvaluationModuleInfo.features defines the name and type of the predictions and references. This has to be either a single datasets.Features object or a list of datasets.Features objects if multiple input types are allowed.

Then, we can move on to prepare everything before the actual computation.

Download

Some evaluation modules require some external data such as NLTK that requires resources or the BLEURT metric that requires checkpoints. You can implement these downloads in EvaluationModule._download_and_prepare(), which downloads and caches the resources via the dlmanager. A simplified example on how BLEURT downloads and loads a checkpoint:

def _download_and_prepare(self, dl_manager):
    model_path = dl_manager.download_and_extract(CHECKPOINT_URLS[self.config_name])
    self.scorer = score.BleurtScorer(os.path.join(model_path, self.config_name))

Or if you need to download the NLTK "punkt" resources:

def _download_and_prepare(self, dl_manager):
    import nltk
    nltk.download("punkt")

Next, we need to define how the computation of the evaluation module works.

Compute

The computation is performed in the EvaluationModule._compute() method. It takes the same arguments as EvaluationModuleInfo.features and should then return the result as a dictionary. Here an example of an exact match metric:

def _compute(self, references, predictions):
    em = sum([r==p for r, p in zip(references, predictions)])/len(references)
    return {"exact_match": em}

This method is used when you call .compute() later on.

Readme

When you use the evalute-cli to setup the evaluation module the Readme structure and instructions are automatically created. It should include a general description of the metric, information about its input/output format, examples as well as information about its limiations or biases and references.

Requirements

If your evaluation modules has additional dependencies (e.g. sklearn or nltk) the requirements.txt files is the place to put them. The file follows the pip format and you can list all dependencies there.

App

The app.py is where the Spaces widget lives. In general it looks like the following and does not require any changes:

import evaluate
from evaluate.utils import launch_gradio_widget


module = evaluate.load("lvwerra/element_count")
launch_gradio_widget(module)

If you want a custom widget you could add your gradio app here.

Push to Hub

Finally, when you are done with all the above changes it is time to push your evaluation module to the hub. To do so navigate to the folder of your module and git add/commit/push the changes to the hub:

cd PATH_TO_MODULE
git add .
git commit -m "Add my new, shiny module."
git push

Tada πŸŽ‰! Your evaluation module is now on the πŸ€— Hub and ready to be used by everybody!