import gradio as gr import nltk nltk.download('omw-1.4') from qanom.nominalization_detector import NominalizationDetector detector = NominalizationDetector() title = "Nominalization Detection Demo" description = f"""This is a demo of QANom's nominalization detection algorithm, comprised of candidate nominalization extraction followed by a contextualized binary classification model.""" links = """

QANom repo | Model Repo at Huggingface Hub | QANom Paper

""" examples = [["The doctor was interested in Luke 's treatment .", True, 0.5], ["The description of the horse 's jump provided a surprise to the owner and a show of the skill of the trainer .", True, 0.5], ["The construction of the officer 's building finished right after the beginning of the destruction of the previous construction .", True, 0.75]] def call(sentence: str, return_all_candidates: bool, threshold: float): ret = detector([sentence], return_all_candidates, True, threshold)[0] if return_all_candidates: positives = [d["predicate_idx"] for d in ret if d['predicate_detector_prediction']] negatives = [d["predicate_idx"] for d in ret if not d['predicate_detector_prediction']] else: positives = [d["predicate_idx"] for d in ret] negatives = [] def color(idx): if idx in positives: return "lightgreen" if idx in negatives: return "pink" idx2verb = {d["predicate_idx"] : d["verb_form"] for d in ret} idx2prob = {d["predicate_idx"] : d["predicate_detector_probability"] for d in ret} def word_span(word, idx): tooltip = f'title=" probability={idx2prob[idx]:.2} verb={idx2verb[idx]}"' if idx in idx2verb else '' return f'{word}' html = '' + ' '.join(word_span(word, idx) for idx, word in enumerate(sentence.split(" "))) + '' return html, ret iface = gr.Interface(call, inputs=[gr.inputs.Textbox(label="Sentence", lines=3), gr.inputs.Checkbox(default=True, label="Return all candidates?"), gr.inputs.Slider(minimum=0., maximum=1., step=0.01, default=0.5, label="Threshold")], outputs=[gr.outputs.HTML(label="Detected Nominalizations"), gr.outputs.JSON(label="Raw Model Output")], title=title, description=description, article=links, examples=examples ) iface.launch()