import spacy from spacy import displacy import gradio as gr # nlp = spacy.load("en_core_web_sm") nlp =spacy.load("en_pipeline") def text_analysis(text): doc = nlp(text) html = displacy.render(doc, style="ent", page=True) html = ( "" + html + "" ) pos_count = { "char_count": len(text), "token_count": 0, } pos_tokens = [] # for token in doc: # pos_tokens.extend([(token.text, token.pos_), (" ", None)]) return html demo = gr.Interface( text_analysis, gr.Textbox(placeholder="Enter sentence here..."), ["html"], examples=[ ["There is a challenge of food in Uganda. Gloria goes to Kyambogo University."], [" She knows programming in HTML and CSS. Prof. Twinomujuni sent the team in Isingiro some 100 USD."], ["Students will bbe leaving the University on Friday September 20.They will graduate in 2023." ], ["Uganda has many parts that is the north, east, west and south."] ], ) demo.launch()