import gradio as gr from typing import List from qasem.end_to_end_pipeline import QASemEndToEndPipeline pipeline = QASemEndToEndPipeline(spacy_model="en_core_web_lg") description = f"""This is a demo of the QASem Parsing pipeline. It wraps models of three QA-based semantic tasks, composing a comprehensive semi-structured representation of sentence meaning - covering verbal and nominal semantic role labeling together with discourse relations.""" title="QASem Parsing Demo" all_layers = ["qasrl", "qanom", "qadiscourse"] examples = [["Both were shot in the confrontation with police and have been recovering in hospital since the attack .", all_layers, False, 0.75], ["the construction of the officer 's building was delayed by the lockdown and is expected to continue for at least 10 more months.", all_layers, False, 0.75], ["While President Obama expressed condolences regarding the death of Margaret Thatcher upon her death earlier this year , he did not issue an executive order that flags be lowered in her honor .", all_layers, False, 0.75], ["We made a very clear commitment : if there is any proposal in the next parliament for a transfer of powers to Brussels ( the EU ) we will have an in/out referendum .", all_layers, False, 0.75], ["The doctor asked about the progress in Luke 's treatment .", all_layers, False, 0.75], ["The Veterinary student was interested in Luke 's treatment of sea animals .", all_layers, False, 0.7], ["Some reviewers agreed that the criticism raised by the AC is mostly justified .", all_layers, False, 0.6]] input_sent_box_label = "Insert sentence here, or select from the examples below" links = """

Github Repo | Paper

""" def call(sentence, layers, show_openie: bool, detection_threshold: float): outputs = pipeline([sentence], nominalization_detection_threshold=detection_threshold, output_openie=show_openie) if show_openie: openie_outputs = outputs["openie"][0] # list of OpenIE tuples outputs = outputs["qasem"] outputs = outputs[0] # only one sentence in input batch def pretty_qadisc_qas(qa_infos) -> List[str]: if not qa_infos: return [] return ["- " + f"{qa['question']} --- {qa['answer']}".lstrip() for qa in qa_infos if qa is not None] def pretty_qasrl_qas(pred_info) -> List[str]: if not pred_info or not pred_info['QAs']: return [] return ["- " + f"{qa['question']} --- {';'.join(qa['answers'])}".lstrip() for qa in pred_info['QAs'] if qa is not None] # filter outputs by requested `layers` outputs = {layer: qas if layer in layers else [] for layer, qas in outputs.items()} # Prettify outputs qasrl_qas = [qa for pred_info in outputs['qasrl'] for qa in pretty_qasrl_qas(pred_info)] qanom_qas = [qa for pred_info in outputs['qanom'] for qa in pretty_qasrl_qas(pred_info)] qadisc_qas= pretty_qadisc_qas(outputs['qadiscourse']) all_qas = [] if "qasrl" in layers: all_qas += ['\nQASRL:'] + qasrl_qas if "qanom" in layers: all_qas += ['\nQANom:'] + qanom_qas if "qadiscourse" in layers: all_qas += ['\nQADiscourse:'] + qadisc_qas if not qasrl_qas + qanom_qas + qadisc_qas: pretty_qa_output = "NO QA GENERATED" else: pretty_qa_output = "\n".join(all_qas) # also present highlighted predicates qasrl_predicates = [pred_info['predicate_idx'] for pred_info in outputs['qasrl']] qanom_predicates = [pred_info['predicate_idx'] for pred_info in outputs['qanom']] def color(idx): if idx in qasrl_predicates : return "aquamarine" if idx in qanom_predicates : return "aqua" def word_span(word, idx): return f'{word}' html = '' + ' '.join(word_span(word, idx) for idx, word in enumerate(sentence.split(" "))) + '' # show openie_outputs if show_openie: repr_oie = lambda tup: f"({','.join(e for e in tup)})" openie_html = 'Open Information Extraction:
' + '
'.join([repr_oie(tup) for tup in openie_outputs]) + '
' else: openie_html = '' return html, pretty_qa_output, openie_html, outputs iface = gr.Interface(fn=call, inputs=[gr.components.Textbox(placeholder=input_sent_box_label, label="Sentence", lines=4), gr.components.CheckboxGroup(all_layers, value=all_layers, label="Annotation Layers"), gr.components.Checkbox(value=False, label="Show OpenIE format (converted from verbal QASRL only)"), gr.components.Slider(minimum=0., maximum=1., step=0.01, value=0.75, label="Nominalization Detection Threshold")], outputs=[gr.components.HTML(label="Detected Predicates"), gr.components.Textbox(label="Generated QAs"), gr.components.HTML(label="OpenIE Output"), gr.components.JSON(label="Raw QASemEndToEndPipeline Output")], title=title, description=description, article=links, examples=examples) iface.launch()