--- license: mit --- ### Usage First, install [Sentence-Transformers](https://www.sbert.net/) Then, ```python from sentence_transformers import CrossEncoder model_name="ragarwal/deberta-v3-base-nli-mixer" model = CrossEncoder(model_name, max_length=256) sentence = "During its monthly call, the National Oceanic and Atmospheric Administration warned of \ increased temperatures and low precipitation" labels = ["Computer", "Climate Change", "Tablet", "Football", "Artificial Intelligence", "Global Warming"] scores = model.predict([[sentence, l] for l in labels]) print(scores) #array([0.04118565, 0.2435827 , 0.03941465, 0.00203637, 0.00501176, 0.1423797], dtype=float32) ```