import gradio as gr import pandas as pd import pickle from sentence_transformers import SentenceTransformer, util import re mdl_name = 'sentence-transformers/all-distilroberta-v1' model = SentenceTransformer(mdl_name) embedding_cache_path = "scotch_embd_distilroberta.pkl" with open(embedding_cache_path, "rb") as fIn: cache_data = pickle.load(fIn) embedding_table = cache_data["embeddings"] reviews = cache_data["data"] reviews['price'] = reviews.price.apply(lambda x: re.findall("\d+", x.replace(",","").replace(".00","").replace("$",""))[0]).astype('int') def user_query_recommend(query, price_rng): # Embed user query embedding = model.encode(query) # Calculate similarity with all reviews sim_scores = util.cos_sim(embedding, embedding_table) #print(sim_scores.shape) # Recommend recommendations = reviews.copy() recommendations['sim'] = sim_scores.T recommendations = recommendations.sort_values('sim', ascending=False) if price_rng == "$0-$50": min_p, max_p = 0, 50 if price_rng == "$50-$100": min_p, max_p = 50, 100 if price_rng == "$100+": min_p, max_p = 100, 10000 recommendations = recommendations.loc[(recommendations.price >= min_p) & (recommendations.price <= max_p), ['name', 'price', 'description']].head(5) return recommendations.reset_index(drop=True) interface = gr.Interface( user_query_recommend, inputs=[gr.inputs.Textbox(lines=5, label = "enter flavour profile"), gr.inputs.Radio(choices = ["$0-$50", "$50-$100", "$100+"], default="$0-$50", type="value", label='Price range')], outputs=gr.outputs.Dataframe(max_rows=1, overflow_row_behaviour="paginate", type="pandas", label="Scotch recommendations"), title = "Scotch Recommendation", description = "Looking for scotch recommendations and have some flavours in mind? \nGet recommendations at a preferred price range using semantic search :) ", examples=[["very sweet with lemons and oranges and marmalades", "$0-$50"], ["smoky peaty earthy and spicy","$50-$100"], ["salty and spicy with exotic fruits", "$100+"], ["fragrant nose with chocolate, toffee, pudding and caramel", "$50-$100"], ], theme="grass", ) interface.launch( enable_queue=True, #cache_examples=True, )