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import re
import functools
import requests
import pandas as pd
import plotly.express as px
import torch
import gradio as gr
from transformers import pipeline, Wav2Vec2ProcessorWithLM
from pyannote.audio import Pipeline
from librosa import load, resample
import whisperx
import re
alphabets= "([A-Za-z])"
prefixes = "(Mr|St|Mrs|Ms|Dr)[.]"
suffixes = "(Inc|Ltd|Jr|Sr|Co)"
starters = "(Mr|Mrs|Ms|Dr|He\s|She\s|It\s|They\s|Their\s|Our\s|We\s|But\s|However\s|That\s|This\s|Wherever)"
acronyms = "([A-Z][.][A-Z][.](?:[A-Z][.])?)"
websites = "[.](com|net|org|io|gov)"
def split_into_sentences(text):
text = " " + text + " "
text = text.replace("\n"," ")
text = re.sub(prefixes,"\\1<prd>",text)
text = re.sub(websites,"<prd>\\1",text)
if "Ph.D" in text: text = text.replace("Ph.D.","Ph<prd>D<prd>")
text = re.sub("\s" + alphabets + "[.] "," \\1<prd> ",text)
text = re.sub(acronyms+" "+starters,"\\1<stop> \\2",text)
text = re.sub(alphabets + "[.]" + alphabets + "[.]" + alphabets + "[.]","\\1<prd>\\2<prd>\\3<prd>",text)
text = re.sub(alphabets + "[.]" + alphabets + "[.]","\\1<prd>\\2<prd>",text)
text = re.sub(" "+suffixes+"[.] "+starters," \\1<stop> \\2",text)
text = re.sub(" "+suffixes+"[.]"," \\1<prd>",text)
text = re.sub(" " + alphabets + "[.]"," \\1<prd>",text)
if "”" in text: text = text.replace(".”","”.")
if "\"" in text: text = text.replace(".\"","\".")
if "!" in text: text = text.replace("!\"","\"!")
if "?" in text: text = text.replace("?\"","\"?")
text = text.replace(".",".<stop>")
text = text.replace("?","?<stop>")
text = text.replace("!","!<stop>")
text = text.replace("<prd>",".")
sentences = text.split("<stop>")
sentences = sentences[:-1]
sentences = [s.strip() for s in sentences]
return sentences
# display if the sentiment value is above these thresholds
thresholds = {"joy": 0.99,"anger": 0.95,"surprise": 0.95,"sadness": 0.98,"fear": 0.95,"love": 0.99,}
color_map = {"joy": "green","anger": "red","surprise": "yellow","sadness": "blue","fear": "orange","love": "purple",}
def create_fig(x_min, x_max, plot_sentences):
x, y = list(zip(*to_plot))
plot_df = pd.DataFrame(
data={
"x": x,
"y": y,
"sentence": plot_sentences,
}
)
fig = px.line(
plot_df,
x="x",
y="y",
hover_data={
"sentence": True,
"x": True,
"y": False,
},
labels={"x": "time (seconds)", "y": "sentiment"},
title=f"Customer sentiment over time",
markers=True,
)
fig = fig.update_yaxes(categoryorder="category ascending")
fig = fig.update_layout(
font=dict(
size=18,
),
xaxis_range=[x_min, x_max],
)
return fig
def sentiment(diarized, emotion_pipeline):
"""
diarized: a list of tuples. Each tuple has a string to be displayed and a label for highlighting.
The start/end times are not highlighted [(speaker text, speaker id), (start time/end time, None)]
This function gets the customer's sentiment and returns a list for highlighted text as well
as a plot of sentiment over time.
"""
customer_sentiments = []
to_plot = []
plot_sentences = []
# used to set the x range of ticks on the plot
x_min = 100
x_max = 0
for i in range(0, len(diarized), 2):
speaker_speech, speaker_id = diarized[i]
times, _ = diarized[i + 1]
sentences = split_into_sentences(speaker_speech)
start_time, end_time = times[5:].split("-")
start_time, end_time = float(start_time), float(end_time)
interval_size = (end_time - start_time) / len(sentences)
if "Customer" in speaker_id:
outputs = emotion_pipeline(sentences)
for idx, (o, t) in enumerate(zip(outputs, sentences)):
sent = "neutral"
if o["score"] > thresholds[o["label"]]:
customer_sentiments.append(
(t + f"({round(idx*interval_size+start_time,1)} s)", o["label"])
)
if o["label"] in {"joy", "love", "surprise"}:
sent = "positive"
elif o["label"] in {"sadness", "anger", "fear"}:
sent = "negative"
if sent != "neutral":
to_plot.append((start_time + idx * interval_size, sent))
plot_sentences.append(t)
if start_time < x_min:
x_min = start_time
if end_time > x_max:
x_max = end_time
x_min -= 5
x_max += 5
fig = create_fig(x_min, x_max, plot_sentences)
return customer_sentiments, fig
def speech_to_text(speech_file, speaker_segmentation, whisper, alignment_model, metadata, whisper_device):
speaker_output = speaker_segmentation(speech_file)
result = whisper.transcribe(speech_file)
chunks = whisperx.align(result["segments"], alignment_model, metadata, speech_file, whisper_device)["word_segments"]
diarized_output = []
i = 0
speaker_counter = 0
# New iteration every time the speaker changes
for turn, _, _ in speaker_output.itertracks(yield_label=True):
speaker = "Customer" if speaker_counter % 2 == 0 else "Support"
diarized = ""
while i < len(chunks) and chunks[i]["end"] <= turn.end:
diarized += chunks[i]["text"] + " "
i += 1
if diarized != "":
# diarized = rpunct.punctuate(re.sub(eng_pattern, "", diarized), lang="en")
diarized_output.extend(
[
(diarized, speaker),
("from {:.2f}-{:.2f}".format(turn.start, turn.end), None),
]
)
speaker_counter += 1
return diarized_output