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Create app.py
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app.py
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| 1 |
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import os
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| 2 |
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import requests
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| 3 |
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import time
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| 4 |
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import streamlit as st
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| 5 |
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# Get the Hugging Face API Token from environment variables
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| 7 |
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HF_API_TOKEN = os.getenv("HF_API_KEY")
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if not HF_API_TOKEN:
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raise ValueError("Hugging Face API Token is not set in the environment variables.")
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# Hugging Face API URLs and headers for models
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MISTRAL_API_URL = "https://api-inference.huggingface.co/models/mistralai/Mixtral-8x7B-Instruct-v0.1"
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| 13 |
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MINICHAT_API_URL = "https://api-inference.huggingface.co/models/GeneZC/MiniChat-2-3B"
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| 14 |
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DIALOGPT_API_URL = "https://api-inference.huggingface.co/models/microsoft/DialoGPT-large"
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| 15 |
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PHI3_API_URL = "https://api-inference.huggingface.co/models/microsoft/Phi-3-mini-4k-instruct"
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META_LLAMA_70B_API_URL = "https://api-inference.huggingface.co/models/meta-llama/Meta-Llama-3-70B-Instruct"
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META_LLAMA_8B_API_URL = "https://api-inference.huggingface.co/models/meta-llama/Meta-Llama-3-8B-Instruct"
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GEMMA_27B_API_URL = "https://api-inference.huggingface.co/models/google/gemma-2-27b"
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GEMMA_27B_IT_API_URL = "https://api-inference.huggingface.co/models/google/gemma-2-27b-it"
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HEADERS = {"Authorization": f"Bearer {HF_API_TOKEN}"}
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def query_mistral(payload):
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response = requests.post(MISTRAL_API_URL, headers=HEADERS, json=payload)
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st.write(f"Mistral API response: {response.json()}") # Debugging log
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return response.json()
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def query_minichat(payload):
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response = requests.post(MINICHAT_API_URL, headers=HEADERS, json=payload)
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return response.json()
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def query_dialogpt(payload):
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response = requests.post(DIALOGPT_API_URL, headers=HEADERS, json=payload)
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return response.json()
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def query_phi3(payload):
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response = requests.post(PHI3_API_URL, headers=HEADERS, json=payload)
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return response.json()
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| 39 |
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def query_meta_llama_70b(payload):
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| 40 |
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response = requests.post(META_LLAMA_70B_API_URL, headers=HEADERS, json=payload)
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return response.json()
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| 42 |
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| 43 |
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def query_meta_llama_8b(payload):
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response = requests.post(META_LLAMA_8B_API_URL, headers=HEADERS, json=payload)
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return response.json()
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def query_gemma_27b(payload):
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response = requests.post(GEMMA_27B_API_URL, headers=HEADERS, json=payload)
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return response.json()
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def query_gemma_27b_it(payload):
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response = requests.post(GEMMA_27B_IT_API_URL, headers=HEADERS, json=payload)
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return response.json()
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def count_tokens(text):
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return len(text.split())
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# Token limit handling
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MAX_TOKENS_PER_MINUTE = 1000
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token_count = 0
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| 61 |
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start_time = time.time()
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| 63 |
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def handle_token_limit(text):
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global token_count, start_time
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| 65 |
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current_time = time.time()
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| 66 |
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if current_time - start_time > 60:
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token_count = 0
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start_time = current_time
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token_count += count_tokens(text)
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| 70 |
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if token_count > MAX_TOKENS_PER_MINUTE:
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raise ValueError("Token limit exceeded. Please wait before sending more messages.")
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| 73 |
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def add_message_to_conversation(user_message, bot_message, model_name):
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st.session_state.conversation.append((user_message, bot_message, model_name))
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| 75 |
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| 76 |
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# Streamlit app
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| 77 |
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st.set_page_config(page_title="Multi-LLM Chatbot Interface", layout="wide")
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st.title("Multi-LLM Chatbot Interface")
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| 79 |
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st.write("Multi LLM-Chatbot Interface by Thariq Arian")
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| 81 |
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# Initialize session state for conversation and model history
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| 82 |
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if "conversation" not in st.session_state:
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| 83 |
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st.session_state.conversation = []
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| 84 |
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if "model_history" not in st.session_state:
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| 85 |
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st.session_state.model_history = {model: [] for model in ["Mistral-8x7B", "Meta-Llama-3-70B-Instruct", "Meta-Llama-3-8B-Instruct", "MiniChat-2-3B", "DialoGPT (GPT-2-1.5B)", "Phi-3-mini-4k-instruct", "Gemma-2-27B", "Gemma-2-27B-IT"]}
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| 86 |
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| 87 |
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# Dropdown for LLM selection
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| 88 |
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llm_selection = st.selectbox("Select Language Model", ["Mistral-8x7B", "Meta-Llama-3-70B-Instruct", "Meta-Llama-3-8B-Instruct", "MiniChat-2-3B", "DialoGPT (GPT-2-1.5B)", "Phi-3-mini-4k-instruct", "Gemma-2-27B", "Gemma-2-27B-IT"])
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| 89 |
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| 90 |
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# User input for question
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| 91 |
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question = st.text_input("Question", placeholder="Enter your question here...")
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| 92 |
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| 93 |
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# Handle user input and LLM response
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| 94 |
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if st.button("Send") and question:
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| 95 |
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try:
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| 96 |
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handle_token_limit(question)
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| 97 |
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with st.spinner("Waiting for the model to respond..."):
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| 98 |
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chat_history = " ".join(st.session_state.model_history[llm_selection]) + f"User: {question}\n"
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| 99 |
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if llm_selection == "Mistral-8x7B":
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| 100 |
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mistral_response = query_mistral({"inputs": chat_history})
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| 101 |
+
if isinstance(mistral_response, list) and len(mistral_response) > 0:
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| 102 |
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mistral_answer = mistral_response[0].get("generated_text", "No response")
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| 103 |
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else:
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| 104 |
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mistral_answer = "No response"
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| 105 |
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add_message_to_conversation(question, mistral_answer, llm_selection)
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| 106 |
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st.session_state.model_history[llm_selection].append(f"User: {question}\nMistral-8x7B: {mistral_answer}\n")
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| 107 |
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elif llm_selection == "Meta-Llama-3-70B-Instruct":
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| 108 |
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meta_llama_70b_response = query_meta_llama_70b({"inputs": chat_history})
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| 109 |
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if isinstance(meta_llama_70b_response, dict) and "generated_text" in meta_llama_70b_response:
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| 110 |
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meta_llama_70b_answer = meta_llama_70b_response["generated_text"]
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| 111 |
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elif isinstance(meta_llama_70b_response, list) and len(meta_llama_70b_response) > 0:
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| 112 |
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meta_llama_70b_answer = meta_llama_70b_response[0].get("generated_text", "No response")
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| 113 |
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else:
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| 114 |
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meta_llama_70b_answer = "No response"
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| 115 |
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add_message_to_conversation(question, meta_llama_70b_answer, llm_selection)
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| 116 |
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st.session_state.model_history[llm_selection].append(f"User: {question}\nMeta-Llama-3-70B-Instruct: {meta_llama_70b_answer}\n")
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| 117 |
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elif llm_selection == "Meta-Llama-3-8B-Instruct":
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| 118 |
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meta_llama_8b_response = query_meta_llama_8b({"inputs": chat_history})
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| 119 |
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if isinstance(meta_llama_8b_response, dict) and "generated_text" in meta_llama_8b_response:
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| 120 |
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meta_llama_8b_answer = meta_llama_8b_response["generated_text"]
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| 121 |
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elif isinstance(meta_llama_8b_response, list) and len(meta_llama_8b_response) > 0:
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| 122 |
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meta_llama_8b_answer = meta_llama_8b_response[0].get("generated_text", "No response")
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| 123 |
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else:
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| 124 |
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meta_llama_8b_answer = "No response"
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| 125 |
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add_message_to_conversation(question, meta_llama_8b_answer, llm_selection)
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| 126 |
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st.session_state.model_history[llm_selection].append(f"User: {question}\nMeta-Llama-3-8B-Instruct: {meta_llama_8b_answer}\n")
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| 127 |
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elif llm_selection == "MiniChat-2-3B":
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| 128 |
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minichat_response = query_minichat({"inputs": chat_history})
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| 129 |
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if "error" in minichat_response and "is currently loading" in minichat_response["error"]:
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| 130 |
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minichat_answer = f"Model is loading, please wait {minichat_response['estimated_time']} seconds."
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| 131 |
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elif isinstance(minichat_response, list) and len(minichat_response) > 0:
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| 132 |
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minichat_answer = minichat_response[0].get("generated_text", "No response")
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| 133 |
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else:
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| 134 |
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minichat_answer = "No response"
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| 135 |
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add_message_to_conversation(question, minichat_answer, llm_selection)
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| 136 |
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st.session_state.model_history[llm_selection].append(f"User: {question}\nMiniChat-2-3B: {minichat_answer}\n")
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| 137 |
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elif llm_selection == "DialoGPT (GPT-2-1.5B)":
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| 138 |
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dialogpt_response = query_dialogpt({"inputs": chat_history})
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| 139 |
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if isinstance(dialogpt_response, dict) and "generated_text" in dialogpt_response:
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| 140 |
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dialogpt_answer = dialogpt_response["generated_text"]
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| 141 |
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elif isinstance(dialogpt_response, list) and len(dialogpt_response) > 0:
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| 142 |
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dialogpt_answer = dialogpt_response[0].get("generated_text", "No response")
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| 143 |
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else:
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| 144 |
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dialogpt_answer = "No response"
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| 145 |
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add_message_to_conversation(question, dialogpt_answer, llm_selection)
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| 146 |
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st.session_state.model_history[llm_selection].append(f"User: {question}\nDialoGPT (GPT-2-1.5B): {dialogpt_answer}\n")
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| 147 |
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elif llm_selection == "Phi-3-mini-4k-instruct":
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| 148 |
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phi3_response = query_phi3({"inputs": chat_history})
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| 149 |
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if isinstance(phi3_response, list) and len(phi3_response) > 0:
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| 150 |
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phi3_answer = phi3_response[0].get("generated_text", "No response")
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| 151 |
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else:
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| 152 |
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phi3_answer = "No response"
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| 153 |
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add_message_to_conversation(question, phi3_answer, llm_selection)
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| 154 |
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st.session_state.model_history[llm_selection].append(f"User: {question}\nPhi-3-mini-4k-instruct: {phi3_answer}\n")
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| 155 |
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elif llm_selection == "Gemma-2-27B":
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| 156 |
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gemma_response = query_gemma_27b({"inputs": chat_history})
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| 157 |
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if isinstance(gemma_response, dict) and "generated_text" in gemma_response:
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| 158 |
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gemma_answer = gemma_response["generated_text"]
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| 159 |
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elif isinstance(gemma_response, list) and len(gemma_response) > 0:
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| 160 |
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gemma_answer = gemma_response[0].get("generated_text", "No response")
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| 161 |
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else:
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| 162 |
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gemma_answer = "No response"
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| 163 |
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add_message_to_conversation(question, gemma_answer, llm_selection)
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| 164 |
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st.session_state.model_history[llm_selection].append(f"User: {question}\nGemma-2-27B: {gemma_answer}\n")
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| 165 |
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elif llm_selection == "Gemma-2-27B-IT":
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| 166 |
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gemma_27b_it_response = query_gemma_27b_it({"inputs": chat_history})
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| 167 |
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if isinstance(gemma_27b_it_response, dict) and "generated_text" in gemma_27b_it_response:
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| 168 |
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gemma_27b_it_answer = gemma_27b_it_response["generated_text"]
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| 169 |
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elif isinstance(gemma_27b_it_response, list) and len(gemma_27b_it_response) > 0:
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| 170 |
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gemma_27b_it_answer = gemma_27b_it_response[0].get("generated_text", "No response")
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| 171 |
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else:
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| 172 |
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gemma_27b_it_answer = "No response"
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| 173 |
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add_message_to_conversation(question, gemma_27b_it_answer, llm_selection)
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| 174 |
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st.session_state.model_history[llm_selection].append(f"User: {question}\nGemma-2-27B-IT: {gemma_27b_it_answer}\n")
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| 175 |
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except ValueError as e:
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| 176 |
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st.error(str(e))
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| 177 |
+
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| 178 |
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# Custom CSS for chat bubbles
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| 179 |
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st.markdown(
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| 180 |
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"""
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| 181 |
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<style>
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| 182 |
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.chat-bubble {
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| 183 |
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padding: 10px 14px;
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| 184 |
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border-radius: 14px;
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| 185 |
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margin-bottom: 10px;
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| 186 |
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display: inline-block;
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| 187 |
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max-width: 80%;
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| 188 |
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color: black;
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| 189 |
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}
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| 190 |
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.chat-bubble.user {
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| 191 |
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background-color: #dcf8c6;
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| 192 |
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align-self: flex-end;
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| 193 |
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}
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| 194 |
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.chat-bubble.bot {
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| 195 |
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background-color: #fff;
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| 196 |
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align-self: flex-start;
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| 197 |
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}
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| 198 |
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.chat-container {
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| 199 |
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display: flex;
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| 200 |
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flex-direction: column;
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| 201 |
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gap: 10px;
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| 202 |
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margin-top: 20px;
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| 203 |
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}
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| 204 |
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</style>
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| 205 |
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""",
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| 206 |
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unsafe_allow_html=True
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| 207 |
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)
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| 208 |
+
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| 209 |
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# Display the conversation
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| 210 |
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st.write('<div class="chat-container">', unsafe_allow_html=True)
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| 211 |
+
for user_message, bot_message, model_name in st.session_state.conversation:
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| 212 |
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st.write(f'<div class="chat-bubble user">You: {user_message}</div>', unsafe_allow_html=True)
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| 213 |
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st.write(f'<div class="chat-bubble bot">{model_name}: {bot_message}</div>', unsafe_allow_html=True)
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| 214 |
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st.write('</div>', unsafe_allow_html=True)
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