Spaces:
Runtime error
Runtime error
import gradio as gr | |
from transformers import pipeline | |
# Emotion Text Classification | |
title_emotion = "Classify text according to emotion" | |
description_emotion = "Emotion text classification by Vishal Tiwari " | |
examples_emotion = [ | |
["Remember before Twitter when you took a photo of food, got the film developed, then drove around showing everyone the pic? No? Me neither."], | |
['''"We are all here because we're committed to the biggest question of all: What's out there?" Take your first steps toward answering that question by watching our Gameplay Reveal from the #XboxBethesda Showcase. '''], | |
["A STUNNER IN KNOXVILLE! 😱 Notre Dame takes down No. 1 Tennessee for its first trip to Omaha in 20 years‼️"], | |
["you and I best moment is yet to come 💜 #BTS9thAnniversary"] | |
] | |
interface_emotion = gr.Interface.load( | |
"huggingface/bhadresh-savani/bert-base-go-emotion", | |
title=title_emotion, | |
description=description_emotion, | |
examples=examples_emotion | |
) | |
# Text to Speech Translation | |
title_tts = "Text to Speech Translation" | |
examples_tts = [ | |
"I love learning machine learning", | |
"How do you do?", | |
] | |
interface_tts = gr.Interface.load( | |
"huggingface/facebook/fastspeech2-en-ljspeech", | |
title=title_tts, | |
examples=examples_tts, | |
description="Give me something to say!", | |
) | |
# Launching both interfaces with tabs | |
demo = gr.TabbedInterface([interface_emotion, interface_tts], ["Emotion Classification", "Text to Speech"]) | |
if __name__ == "__main__": | |
demo.launch() | |