from scipy.spatial.distance import cosine import argparse import json import os import openai import pdb def read_text(input_file): arr = open(input_file).read().split("\n") return arr[:-1] class OpenAIQnAModel: def __init__(self): self.debug = False self.q_model_name = None self.d_model_name = None self.skip_key = True print("In OpenAI API constructor") def init_model(self,model_name = None): #print("OpenAI: Init model",model_name) openai.api_key = os.getenv("OPENAI_API_KEY") if (openai.api_key == None): openai.api_key = "" print("API key not set") if (len(openai.api_key) == 0 and not self.skip_key): print("Open API key not set") if (model_name is None): self.d_model_name = "text-search-ada-doc-001" else: self.d_model_name = model_name self.q_model_name = self.construct_query_model_name(self.d_model_name) print(f"OpenAI: Init model complete :query model {self.q_model_name} doc:{self.d_model_name}") def construct_query_model_name(self,d_model_name): return d_model_name.replace('-doc-','-query-') def compute_embeddings(self,input_file_name,input_data,is_file): if (len(openai.api_key) == 0 and not self.skip_key): print("Open API key not set") return [],[] #print("In compute embeddings after key check") in_file = input_file_name.split('/')[-1] in_file = self.d_model_name + '_' + '.'.join(in_file.split('.')[:-1]) + "_search.json" cached = False try: fp = open(in_file) cached = True embeddings = json.load(fp) q_embeddings = [embeddings[0]] d_embeddings = embeddings[1:] print("Using cached embeddings") except: pass texts = read_text(input_data) if is_file == True else input_data queries = [texts[0]] docs = texts[1:] if (not cached): print(f"Computing embeddings for {input_file_name} and query model {self.q_model_name}") query_embeds = openai.Embedding.create( input=queries, model=self.q_model_name ) print(f"Computing embeddings for {input_file_name} and doc model {self.q_model_name}") doc_embeds = openai.Embedding.create( input=docs, model=self.d_model_name ) q_embeddings = [] d_embeddings = [] for i in range(len(query_embeds['data'])): q_embeddings.append(query_embeds['data'][i]['embedding']) for i in range(len(doc_embeds['data'])): d_embeddings.append(doc_embeds['data'][i]['embedding']) if (not cached): embeddings = q_embeddings + d_embeddings with open(in_file,"w") as fp: json.dump(embeddings,fp) return texts,(q_embeddings,d_embeddings) def output_results(self,output_file,texts,embeddings,main_index = 0): # Calculate cosine similarities # Cosine similarities are in [-1, 1]. Higher means more similar query_embeddings = embeddings[0] doc_embeddings = embeddings[1] cosine_dict = {} queries = [texts[0]] docs = texts[1:] if (self.debug): print("Total sentences",len(texts)) for i in range(len(docs)): cosine_dict[docs[i]] = 1 - cosine(query_embeddings[0], doc_embeddings[i]) if (self.debug): print("Input sentence:",texts[main_index]) sorted_dict = dict(sorted(cosine_dict.items(), key=lambda item: item[1],reverse = True)) if (self.debug): for key in sorted_dict: print("Cosine similarity with \"%s\" is: %.3f" % (key, sorted_dict[key])) if (output_file is not None): with open(output_file,"w") as fp: fp.write(json.dumps(sorted_dict,indent=0)) return sorted_dict if __name__ == '__main__': parser = argparse.ArgumentParser(description='OpenAI model for document search embeddings ',formatter_class=argparse.ArgumentDefaultsHelpFormatter) parser.add_argument('-input', action="store", dest="input",required=True,help="Input file with sentences") parser.add_argument('-output', action="store", dest="output",default="output.txt",help="Output file with results") parser.add_argument('-model', action="store", dest="model",default="text-search-ada-doc-001",help="model name") results = parser.parse_args() obj = OpenAIQnAModel() obj.init_model(results.model) texts, embeddings = obj.compute_embeddings(results.input,results.input,is_file = True) results = obj.output_results(results.output,texts,embeddings)