from dotenv import load_dotenv import gradio as gr from gradio import ChatMessage import json from openai import OpenAI from datetime import datetime import os import re import logging logging.basicConfig(level=logging.INFO, format='[%(asctime)s][%(levelname)s] - %(message)s') # logging.getLogger().setLevel(logging.INFO) load_dotenv(".env", override=True) HF_TOKEN = os.environ.get("HF_TOKEN") BASE_URL = os.environ.get("BASE_URL") EMBEDDINGS = os.environ.get("EMBEDDINGS_MODEL") """ --- ### 🌍 Language Handling Rules: - Detect the user’s language automatically and respond fully in that language by default. - If the user explicitly requests a different language, switch and respond entirely in the **requested language**. - Never mix languages in a single reply. - Never ask or suggest that the user switch languages — always follow their lead. ⚠️ Tool input requirement: All queries sent to the `retrieve_wiki_data` tool must be in **Catalan**. If the user’s input is in another language, you must first translate the query into Catalan **before calling the tool**. However, your **response to the user must remain in their original language**. --- You are an AI assistant. Your job is to answer user questions using only information retrieved from external sources via the `retrieve_wiki_data` tool. The assistant must detect the user's language and respond in that language. However, all retrieved content is available **only in Catalan**. ### 🛠 Tool Use Guidelines: - **query**: You may rephrase the user’s query to improve clarity, but never alter or remove key names or terms. - **missing_info**: If the required information is not already available in the conversation or tool output, you **must call** `retrieve_wiki_data`. - **redundant_search**: Do not call the tool again if the relevant information has already been retrieved. - **wikipedia_entities**: If the query is about a known person, place, or concept likely found in Wikipedia, and no previous tool call has been made, you **must** use `retrieve_wiki_data`. - **external_info_only**: You must base all answers only on content retrieved via the tool. Do not rely on internal knowledge. - **no_info_found**: If no relevant information is found, clearly inform the user that nothing was available. --- Today’s date is **{date}** (for reference only — do not include it in responses unless the user explicitly asks). """ from tools import tools, oitools SYSTEM_PROMPT_TEMPLATE = """You are an AI assistant designed to answer user questions using externally retrieved information. You must detect the user's language, **translate the query into Catalan**, and **respond to the user in their original language**. However, all retrieved content is available **only in Catalan**. Today’s date is **{date}**.""" client = OpenAI( base_url=f"{BASE_URL}/v1", api_key=HF_TOKEN ) logging.info(f"Client initialized: {client}") def today_date(): return datetime.today().strftime('%A, %B %d, %Y, %I:%M %p') def clean_json_string(json_str): return re.sub(r'[ ,}\s]+$', '', json_str) + '}' def get_summary(model, text): messages = [{"role": "system", "content": """You are an AI assistant that generates **detailed and complete summaries** of user-provided text. Your task is to produce a **faithful resumen** that preserves **all key information**, facts, and relevant points from the original content. ### Summary Guidelines: - **No Detail Skipping**: Do **not** omit or simplify important content. Every critical fact, event, name, number, and nuance must be included. - **Structured Clarity**: Organize the summary clearly and logically. If the original has sections or topics, reflect that structure. - **No Personal Input**: Do **not** add opinions, interpretations, or external knowledge. Stay 100% faithful to the source text. - **Conciseness with Completeness**: Be as concise as possible **without losing any important detail**. Only produce the summary after fully reading and understanding the input text. """}] messages.append({"role": "user", "content": f"**TEXT**:\n\n{text}"}) request_params = { "model": model, "messages": messages, "stream": False, "max_tokens": 1000, "temperature": 0.1, #"presence_penalty": 0.3, #"frequency_penalty": 0.3, #"extra_body": {"repetition_penalty": 0.5}, } return client.chat.completions.create(**request_params) def completion(history, model, system_prompt: str, tools=None): messages = [{"role": "system", "content": system_prompt.format(date=today_date())}] for msg in history: if isinstance(msg, dict): msg = ChatMessage(**msg) if msg.role == "assistant" and hasattr(msg, "metadata") and msg.metadata: tools_calls = json.loads(msg.metadata.get("title", "[]")) # for tool_calls in tools_calls: # tool_calls["function"]["arguments"] = json.loads(tool_calls["function"]["arguments"]) messages.append({"role": "assistant", "tool_calls": tools_calls, "content": ""}) messages.append({"role": "tool", "content": msg.content}) else: messages.append({"role": msg.role, "content": msg.content}) request_params = { "model": model, "messages": messages, "stream": True, "max_tokens": 1000, "temperature": 0.1, #"frequency_penalty": 0.1, "extra_body": {}, #"repetition_penalty": 0.9 } if tools: request_params.update({"tool_choice": "auto", "tools": tools}) return client.chat.completions.create(**request_params) def llm_in_loop(history, system_prompt, recursive): try: models = client.models.list() model = models.data[0].id except Exception as err: gr.Warning("The model is initializing. Please wait; this may take 5 to 10 minutes ⏳.", duration=20) raise err arguments = "" name = "" chat_completion = completion(history=history, tools=oitools, model=model, system_prompt=system_prompt) appended = False # if chat_completion.choices and chat_completion.choices[0].message.tool_calls: # call = chat_completion.choices[0].message.tool_calls[0] # if hasattr(call.function, "name") and call.function.name: # name = call.function.name # if hasattr(call.function, "arguments") and call.function.arguments: # arguments += call.function.arguments # elif chat_completion.choices[0].message.content: # if not appended: # history.append(ChatMessage(role="assistant", content="")) # appended = True # history[-1].content += chat_completion.choices[0].message.content # yield history[recursive:] for chunk in chat_completion: if chunk.choices and chunk.choices[0].delta.tool_calls: call = chunk.choices[0].delta.tool_calls[0] if hasattr(call.function, "name") and call.function.name: name = call.function.name if hasattr(call.function, "arguments") and call.function.arguments: arguments += call.function.arguments elif chunk.choices[0].delta.content: if not appended: history.append(ChatMessage(role="assistant", content="")) appended = True history[-1].content += chunk.choices[0].delta.content yield history[recursive:] arguments = clean_json_string(arguments) if arguments else "{}" print(name, arguments) arguments = json.loads(arguments) print(name, arguments) print("====================") if appended: recursive -= 1 if name: try: result = str(tools[name].invoke(input=arguments)) #result = get_summary(model=model, text=result).choices[0].message.content except Exception as err: result = f"💥 Error: {err}" # msg = ChatMessage( # role="assistant", # content="", # metadata= {"title": f"🛠️ Using tool '{name}', arguments: {json.dumps(json_arguments, ensure_ascii=False)}"}, # options=[{"label":"tool_calls", "value": json.dumps([{"id": "call_FthC9qRpsL5kBpwwyw6c7j4k","function": {"arguments": arguments,"name": name},"type": "function"}])}] # ) history.append(ChatMessage(role="assistant", content=result, metadata={"title": json.dumps([{"id": "call_id", "function": {"arguments": json.dumps(arguments, ensure_ascii=False), "name": name}, "type": "function"}], ensure_ascii=False)})) yield history[recursive:] yield from llm_in_loop(history, system_prompt, recursive - 1) def respond(message, history, additional_inputs): history.append(ChatMessage(role="user", content=message)) yield from llm_in_loop(history, additional_inputs, -1) if __name__ == "__main__": system_prompt = gr.Textbox(label="System prompt", value=SYSTEM_PROMPT_TEMPLATE, lines=3) demo = gr.ChatInterface(respond, type="messages", additional_inputs=[system_prompt]) demo.launch()