import gradio as gr import requests import json from decouple import Config config = Config('.env') def query_vectara(question): user_message = question # Read authentication parameters from the .env file CUSTOMER_ID = config('CUSTOMER_ID') CORPUS_ID = config('CORPUS_ID') API_KEY = config('API_KEY') # Define the headers api_key_header = { "customer-id": CUSTOMER_ID, "x-api-key": API_KEY } # Define the request body in the structure provided in the example request_body = { "query": [ { "query": user_message, "queryContext": "", "start": 1, "numResults": 10, "contextConfig": { "charsBefore": 0, "charsAfter": 0, "sentencesBefore": 2, "sentencesAfter": 2, "startTag": "%START_SNIPPET%", "endTag": "%END_SNIPPET%", }, "rerankingConfig": { "rerankerId": 272725718, "mmrConfig": { "diversityBias": 0.27 } }, "corpusKey": [ { "customerId": CUSTOMER_ID, "corpusId": CORPUS_ID, "semantics": 0, "metadataFilter": "", "lexicalInterpolationConfig": { "lambda": 0 }, "dim": [] } ], "summary": [ { "maxSummarizedResults": 5, "responseLang": "eng", "summarizerPromptName": "vectara-summary-ext-v1.2.0" } ] } ] } # Make the API request using Gradio response = requests.post( "https://api.vectara.io/v1/query", json=request_body, # Use json to automatically serialize the request body verify=True, headers=api_key_header ) if response.status_code == 200: query_data = response.json() if query_data: sources_info = [] # Extract the summary. summary = query_data['responseSet'][0]['summary'][0]['text'] # Iterate over all response sets for response_set in query_data.get('responseSet', []): # Extract sources for source in response_set.get('response', [])[:5]: # Limit to top 5 sources. source_metadata = source.get('metadata', []) source_info = {} for metadata in source_metadata: metadata_name = metadata.get('name', '') metadata_value = metadata.get('value', '') if metadata_name == 'title': source_info['title'] = metadata_value elif metadata_name == 'author': source_info['author'] = metadata_value elif metadata_name == 'pageNumber': source_info['page number'] = metadata_value if source_info: sources_info.append(source_info) result = {"summary": summary, "sources": sources_info} return f"{json.dumps(result, indent=2)}" else: return "No data found in the response." else: return f"Error: {response.status_code}" def convert_to_markdown(vectara_response_json): vectara_response = json.loads(vectara_response_json) if vectara_response: summary = vectara_response.get('summary', 'No summary available') sources_info = vectara_response.get('sources', []) # Format the summary as Markdown markdown_summary = f'**Summary:** {summary}\n\n' # Format the sources as a numbered list markdown_sources = "" for i, source_info in enumerate(sources_info): author = source_info.get('author', 'Unknown author') title = source_info.get('title', 'Unknown title') page_number = source_info.get('page number', 'Unknown page number') markdown_sources += f"{i+1}. {title} by {author}, Page {page_number}\n" return f"{markdown_summary}**Sources:**\n{markdown_sources}" else: return "No data found in the response." # Welcome to Team Tonic's MultiMed iface = gr.Interface( fn=lambda text: convert_to_markdown(query_vectara(text)), inputs=[gr.Textbox(label="Input Text")], outputs=[gr.Markdown(label="Output Text")], title="👋🏻Welcome to Team Tonic MultiMed⚕️", description="This is an educational and accessible conversational tool to improve wellness and sanitation in support of public health \n You can use MultiMed on your own data & in your own way by cloning this space \n """
### How To Use MultiMed Interact with MultiMed in any language using audio or text ! ### Join us On Discord : [![Let's build the future of AI together! 🚀🤖](https://discordapp.com/api/guilds/1109943800132010065/widget.png)](https://discord.gg/GWpVpekp) On Huggingface : [TeamTonic](https://huggingface.co/TeamTonic) & [MultiTransformer](https://huggingface.co/MultiTransformer) On Github : [PolyTonic](https://github.com/tonic-ai) & contribute to [PolyGPT](https://github.com/tonic-ai/polygpt-alpha)[![Join Us](https://img.shields.io/github/followers/Tonic-AI.svg?style=social&label=Follow&maxAge=2592000)] """ ", examples=[ ["What is the proper treatment for buccal herpes?"], ["Male,40 presenting with swollen genitals and a rash"], ["How does cellular metabolism work TCA cycle"], ["What special care must be provided to children with chicken pox?"], ["When and how often should i wash my hands ?"], ["بکل ہرپس کا صحیح علاج کیا ہے؟"], ["구강 헤르페스의 적절한 치료법은 무엇입니까?"], ["Je, ni matibabu gani sahihi kwa herpes ya buccal?"] ] ) new_section_component = gr.Markdown(new_section_content) #Layout for Larkdown iface.layout[0].insert(1, new_section_component) iface.launch()