import os os.system("pip install gradio==2.8.0b2") import gradio as gr import numpy as np title = "fairseq S2S" description = "Gradio Demo for fairseq S2S: speech-to-speech translation models. To use it, simply add your audio, or click one of the examples to load them. Read more at the links below." article = "

fairseq S2T: Fast Speech-to-Text Modeling with fairseq | Github Repo

" examples = [ ["common_voice_es_en.flac","xm_transformer_600m-es_en-multi_domain"], ["common_voice_ru_18945535.flac","xm_transformer_600m-ru_en-multi_domain"], ["common_voice_fr_19731305.mp3","xm_transformer_600m-fr_en-multi_domain"], ["common_voice_en_ru.mp3","xm_transformer_600m-en_ru-multi_domain"], ["common_voice_en_es.mp3","xm_transformer_600m-en_es-multi_domain"], ["common_voice_en_ar.mp3","xm_transformer_600m-en_ar-multi_domain"], ["common_voice_en_tr.mp3","xm_transformer_600m-en_tr-multi_domain"], ["common_voice_en_fr.mp3","xm_transformer_600m-en_fr-multi_domain"], ["common_voice_en_vi.mp3","xm_transformer_600m-en_vi-multi_domain"], ] io1 = gr.Interface.load("huggingface/facebook/xm_transformer_600m-es_en-multi_domain") io2 = gr.Interface.load("huggingface/facebook/xm_transformer_600m-ru_en-multi_domain") io3 = gr.Interface.load("huggingface/facebook/xm_transformer_600m-en_ru-multi_domain") io4 = gr.Interface.load("huggingface/facebook/xm_transformer_600m-en_es-multi_domain") io5 = gr.Interface.load("huggingface/facebook/xm_transformer_600m-en_zh-multi_domain") io6 = gr.Interface.load("huggingface/facebook/xm_transformer_600m-fr_en-multi_domain") io7 = gr.Interface.load("huggingface/facebook/xm_transformer_600m-en_ar-multi_domain") io8 = gr.Interface.load("huggingface/facebook/xm_transformer_600m-en_tr-multi_domain") io9 = gr.Interface.load("huggingface/facebook/xm_transformer_600m-en_fr-multi_domain") io10 = gr.Interface.load("huggingface/facebook/xm_transformer_600m-en_vi-multi_domain") def inference(text,model): if model == "xm_transformer_600m-es_en-multi_domain": outtext = io1(text) elif model == "xm_transformer_600m-ru_en-multi_domain": outtext = io2(text) elif model == "xm_transformer_600m-en_ru-multi_domain": outtext = io3(text) elif model == "xm_transformer_600m-en_es-multi_domain": outtext = io4(text) elif model == "xm_transformer_600m-en_zh-multi_domain": outtext = io5(text) elif model == "xm_transformer_600m-fr_en-multi_domain": outtext = io6(text) elif model == "xm_transformer_600m-en_ar-multi_domain": outtext = io7(text) elif model == "xm_transformer_600m-en_tr-multi_domain": outtext = io8(text) elif model == "xm_transformer_600m-en_fr-multi_domain": outtext = io9(text) else: outtext = io10(text) return outtext gr.Interface( inference, [gr.inputs.Audio(label="Input",type="filepath"),gr.inputs.Dropdown(choices=["xm_transformer_600m-es_en-multi_domain","xm_transformer_600m-ru_en-multi_domain","xm_transformer_600m-en_ru-multi_domain","xm_transformer_600m-en_es-multi_domain","xm_transformer_600m-fr_en-multi_domain","xm_transformer_600m-en_ar-multi_domain","xm_transformer_600m-en_tr-multi_domain","xm_transformer_600m-en_fr-multi_domain","xm_transformer_600m-en_vi-multi_domain"], type="value", default="xm_transformer_600m-es_en-multi_domain", label="model") ], gr.outputs.Audio(label="Output"), article=article, title=title, examples=examples, description=description).launch(enable_queue=True,cache_examples=False)