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Runtime error
Runtime error
add 'layers' to interface
Browse files
app.py
CHANGED
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@@ -7,13 +7,15 @@ pipeline = QASemEndToEndPipeline()
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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."""
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title="QASem Parsing Demo"
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input_sent_box_label = "Insert sentence here, or select from the examples below"
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@@ -22,7 +24,7 @@ links = """<p style='text-align: center'>
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</p>"""
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def call(sentence, detection_threshold):
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outputs = pipeline([sentence], nominalization_detection_threshold=detection_threshold)[0]
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def pretty_qadisc_qas(qa_infos) -> List[str]:
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@@ -33,6 +35,10 @@ def call(sentence, detection_threshold):
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if not pred_info or not pred_info['QAs']: return []
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return ["- " + f"{qa['question']} --- {';'.join(qa['answers'])}".lstrip()
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for qa in pred_info['QAs'] if qa is not None]
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qasrl_qas = [qa for pred_info in outputs['qasrl'] for qa in pretty_qasrl_qas(pred_info)]
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qanom_qas = [qa for pred_info in outputs['qanom'] for qa in pretty_qasrl_qas(pred_info)]
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qadisc_qas= pretty_qadisc_qas(outputs['qadiscourse'])
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@@ -55,6 +61,7 @@ def call(sentence, detection_threshold):
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iface = gr.Interface(fn=call,
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inputs=[gr.inputs.Textbox(placeholder=input_sent_box_label, label="Sentence", lines=4),
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gr.inputs.Slider(minimum=0., maximum=1., step=0.01, default=0.75, label="Nominalization Detection Threshold")],
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outputs=[gr.outputs.HTML(label="Detected Predicates"),
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gr.outputs.Textbox(label="Generated QAs"),
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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."""
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title="QASem Parsing Demo"
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all_layers = ["qasrl", "qanom", "qadiscourse"]
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examples = [["Both were shot in the confrontation with police and have been recovering in hospital since the attack .", all_layers, 0.75],
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["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, 0.75],
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["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, 0.75],
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["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, 0.75],
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["The doctor asked about the progress in Luke 's treatment .", all_layers, 0.75],
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["The Veterinary student was interested in Luke 's treatment of sea animals .", all_layers, 0.7],
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["Some reviewers agreed that the criticism raised by the AC is mostly justified .", all_layers, 0.6]]
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input_sent_box_label = "Insert sentence here, or select from the examples below"
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</p>"""
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def call(sentence, layers, detection_threshold):
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outputs = pipeline([sentence], nominalization_detection_threshold=detection_threshold)[0]
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def pretty_qadisc_qas(qa_infos) -> List[str]:
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if not pred_info or not pred_info['QAs']: return []
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return ["- " + f"{qa['question']} --- {';'.join(qa['answers'])}".lstrip()
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for qa in pred_info['QAs'] if qa is not None]
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# filter outputs by requested `layers`
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outputs = {layer: qas if layer in layers else []
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for layer, qas in outputs.items()}
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# Prettify outputs
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qasrl_qas = [qa for pred_info in outputs['qasrl'] for qa in pretty_qasrl_qas(pred_info)]
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qanom_qas = [qa for pred_info in outputs['qanom'] for qa in pretty_qasrl_qas(pred_info)]
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qadisc_qas= pretty_qadisc_qas(outputs['qadiscourse'])
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iface = gr.Interface(fn=call,
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inputs=[gr.inputs.Textbox(placeholder=input_sent_box_label, label="Sentence", lines=4),
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gr.inputs.CheckboxGroup(all_layers, value=all_layers, label="Annotation Layers"),
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gr.inputs.Slider(minimum=0., maximum=1., step=0.01, default=0.75, label="Nominalization Detection Threshold")],
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outputs=[gr.outputs.HTML(label="Detected Predicates"),
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gr.outputs.Textbox(label="Generated QAs"),
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