Edit model card

DistilBert Dummy Sentiment Model

Purpose

This is a dummy model that can be used for testing the transformers pipeline with the task sentiment-analysis. It should always give random results (i.e. {"label": "negative", "score": 0.5}).

How to use

classifier = pipeline("sentiment-analysis", "dhpollack/distilbert-dummy-sentiment")
results  = classifier(["this is a test", "another test"])

Notes

This was created as follows:

  1. Create a vocab.txt file (in /tmp/vocab.txt in this example).
[UNK]
[SEP]
[PAD]
[CLS]
[MASK]
  1. Open a python shell:
import transformers
config = transformers.DistilBertConfig(vocab_size=5, n_layers=1, n_heads=1, dim=1, hidden_dim=4 * 1, num_labels=2, id2label={0: "negative", 1: "positive"}, label2id={"negative": 0, "positive": 1})
model = transformers.DistilBertForSequenceClassification(config)
tokenizer = transformers.DistilBertTokenizer("/tmp/vocab.txt", model_max_length=512)
config.save_pretrained(".")
model.save_pretrained(".")
tokenizer.save_pretrained(".")
Downloads last month
2,208
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.