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import streamlit as st | |
import transformers as tf | |
import pandas as pd | |
from overview import NQDOverview | |
# Function to load and cache models | |
def load_model(username, prefix, model_name): | |
p = tf.pipeline('text-classification', f'{username}/{prefix}-{model_name}', return_all_scores=True) | |
return p | |
def load_pickle(f): | |
return pd.read_pickle(f) | |
def get_results(model, c): | |
res = model(c)[0] | |
scores = [r['score'] for r in res] | |
label = max(range(len(scores)), key=lambda i: scores[i]) | |
# label = float(res['label'].split('_')[1]) | |
# scores = res['score'] | |
return {'label': label, 'scores': scores} | |
def run_models(model_names, models, c): | |
results = {} | |
for mn in model_names: | |
results[mn] = get_results(models[mn], c) | |
return results | |
st.title('Assess the *QuAL*ity of your feedback') | |
st.caption( | |
"""Medical education requires high-quality *written* feedback, | |
but evaluating these *supervisor narrative comments* is time-consuming. | |
The QuAL score has validity evidence for measuring the quality of short | |
comments in this context. We developed a NLP/ML-powered tool to | |
assess written comment quality via the QuAL score with high accuracy. | |
*Try it for yourself!* | |
""") | |
### Load models | |
# Specify which models to load | |
USERNAME = 'maxspad' | |
PREFIX = 'nlp-qual' | |
models_to_load = ['qual', 'q1', 'q2i', 'q3i'] | |
n_models = float(len(models_to_load)) | |
models = {} | |
# Show a progress bar while models are downloading, | |
# then hide it when done | |
lc_placeholder = st.empty() | |
loader_container = lc_placeholder.container() | |
loader_container.caption('Loading models... please wait...') | |
pbar = loader_container.progress(0.0) | |
for i, mn in enumerate(models_to_load): | |
pbar.progress((i+1.0) / n_models) | |
models[mn] = load_model(USERNAME, PREFIX, mn) | |
lc_placeholder.empty() | |
### Load example data | |
examples = load_pickle('test.pkl') | |
### Process input | |
ex = examples['comment'].sample(1).tolist()[0] | |
try: | |
ex = ex.strip().replace('_x000D_', '').replace('nan', 'blank') | |
except: | |
ex = 'blank' | |
if 'comment' not in st.session_state: | |
st.session_state['comment'] = ex | |
with st.form('comment_form'): | |
comment = st.text_area('Try a comment:', value=st.session_state['comment']) | |
left_col, right_col = st.columns([1,9], gap='medium') | |
submitted = left_col.form_submit_button('Submit') | |
trying_example = right_col.form_submit_button('Try an example!') | |
if submitted: | |
st.session_state['button_clicked'] = 'submit' | |
st.session_state['comment'] = comment | |
st.experimental_rerun() | |
elif trying_example: | |
st.session_state['button_clicked'] = 'example' | |
st.session_state['comment'] = ex | |
st.experimental_rerun() | |
results = run_models(models_to_load, models, st.session_state['comment']) | |
# Modify results to sum the QuAL score and to ignore Q3 if Q2 no suggestion | |
if results['q2i']['label'] == 1: | |
results['q3i']['label'] = 1 # can't have connection if no suggestion | |
results['qual']['label'] = results['q1']['label'] + (not results['q2i']['label']) + (not results['q3i']['label']) | |
overview = NQDOverview(st, results) | |
overview.draw() |