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https://github.com/katanemo/plano.git
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422 lines
14 KiB
Python
422 lines
14 KiB
Python
import json
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import random
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import builtins
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from openai import OpenAI
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from typing import Any, Dict, List, Tuple, Union
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from overrides import override
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from app.model_handler.base_handler import (
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Message,
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ChatMessage,
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Choice,
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ChatCompletionResponse,
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ArchBaseHandler,
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)
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SUPPORT_DATA_TYPES = ["int", "float", "bool", "str", "list", "tuple", "set", "dict"]
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class ArchIntentHandler(ArchBaseHandler):
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def __init__(
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self,
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client: OpenAI,
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model_name: str,
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task_prompt: str,
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tool_prompt: str,
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format_prompt: str,
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extra_instruction: str,
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generation_params: Dict,
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):
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"""
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Initializes the intent handler.
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Args:
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client (OpenAI): An OpenAI client instance.
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model_name (str): Name of the model to use.
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task_prompt (str): The main task prompt for the system.
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tool_prompt (str): A prompt to describe tools.
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format_prompt (str): A prompt specifying the desired output format.
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extra_instruction (str): Instructions specific to intent handling.
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generation_params (Dict): Generation parameters for the model.
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"""
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super().__init__(
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client,
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model_name,
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task_prompt,
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tool_prompt,
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format_prompt,
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generation_params,
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)
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self.extra_instruction = extra_instruction
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@override
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def _convert_tools(self, tools: List[Dict[str, Any]]) -> str:
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"""
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Converts a list of tools into a JSON-like format with indexed keys.
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Args:
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tools (List[Dict[str, Any]]): A list of tools represented as dictionaries.
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Returns:
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str: A string representation of converted tools.
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"""
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converted = [
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json.dumps({"index": f"T{idx}"} | tool) for idx, tool in enumerate(tools)
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]
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return "\n".join(converted)
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@override
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async def chat_completion(self, req: ChatMessage) -> ChatCompletionResponse:
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"""
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Generates a chat completion for a given request.
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Args:
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req (ChatMessage): A chat message request object.
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Returns:
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ChatCompletionResponse: The model's response to the chat request.
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Note:
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Currently only support vllm inference
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"""
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messages = self._process_messages(
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req.messages, req.tools, self.extra_instruction
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)
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model_response = self.client.chat.completions.create(
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messages=messages,
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model=self.model_name,
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stream=False,
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extra_body=self.generation_params,
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)
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model_response = Message(content=model_response, tool_calls=[])
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chat_completion_response = ChatCompletionResponse(
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choices=[Choice(message=model_response)], model=self.model_name
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)
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return chat_completion_response
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class ArchFunctionHandler(ArchBaseHandler):
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def __init__(
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self,
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client: OpenAI,
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model_name: str,
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task_prompt: str,
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tool_prompt: str,
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format_prompt: str,
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generation_params: Dict,
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prefill_params: Dict,
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prefill_prefix: List,
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):
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"""
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Initializes the function handler.
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Args:
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client (OpenAI): An OpenAI client instance.
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model_name (str): Name of the model to use.
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task_prompt (str): The main task prompt for the system.
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tool_prompt (str): A prompt to describe tools.
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format_prompt (str): A prompt specifying the desired output format.
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generation_params (Dict): Generation parameters for the model.
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prefill_params (Dict): Additional parameters for prefilling responses.
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prefill_prefix (List[str]): List of prefixes for prefill responses.
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"""
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super().__init__(
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client,
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model_name,
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task_prompt,
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tool_prompt,
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format_prompt,
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generation_params,
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)
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self.prefill_params = prefill_params
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self.prefill_prefix = prefill_prefix
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# Predefine data types for verification. Only support Python for now.
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# [TODO] Extend the list of support data types
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self.support_data_types = {
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type_name: getattr(builtins, type_name) for type_name in SUPPORT_DATA_TYPES
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}
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@override
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def _convert_tools(self, tools: List[Dict[str, Any]]) -> str:
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"""
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Converts a list of tools into JSON format.
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Args:
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tools (List[Dict[str, Any]]): A list of tools represented as dictionaries.
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Returns:
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str: A string representation of converted tools.
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"""
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converted = [json.dumps(tool) for tool in tools]
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return "\n".join(converted)
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def _fix_json_string(self, json_str: str) -> str:
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"""
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Fixes malformed JSON strings by ensuring proper bracket matching.
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Args:
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json_str (str): A JSON string that might be malformed.
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Returns:
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str: A corrected JSON string.
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"""
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# Remove any leading or trailing whitespace or newline characters
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json_str = json_str.strip()
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# Stack to keep track of brackets
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stack = []
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# Clean string to collect valid characters
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fixed_str = ""
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# Dictionary for matching brackets
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matching_bracket = {")": "(", "}": "{", "]": "["}
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# Dictionary for the opposite of matching_bracket
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opening_bracket = {v: k for k, v in matching_bracket.items()}
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for char in json_str:
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if char in "{[(":
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stack.append(char)
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fixed_str += char
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elif char in "}])":
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if stack and stack[-1] == matching_bracket[char]:
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stack.pop()
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fixed_str += char
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else:
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# Ignore the unmatched closing brackets
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continue
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else:
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fixed_str += char
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# If there are unmatched opening brackets left in the stack, add corresponding closing brackets
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while stack:
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unmatched_opening = stack.pop()
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fixed_str += opening_bracket[unmatched_opening]
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# Attempt to parse the corrected string to ensure it’s valid JSON
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return fixed_str.replace("'", '"')
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def _extract_tool_calls(
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self, content: str
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) -> Tuple[List[Dict[str, Any]], bool, Union[str, Exception]]:
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"""
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Extracts tool call information from a given string.
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Args:
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content (str): The content string containing potential tool call information.
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Returns:
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Tuple[List[Dict[str, Any]], bool, Union[str, Exception]]:
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- A list of tool call dictionaries.
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- A boolean indicating if the extraction was valid.
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- An error message or exception if extraction failed.
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"""
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tool_calls, is_valid, error_message = [], True, ""
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flag = False
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for line in content.split("\n"):
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if "<tool_call>" == line:
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flag = True
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elif "</tool_call>" == line:
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flag = False
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else:
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if flag:
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try:
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tool_content = json.loads(line)
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except Exception as e:
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fixed_content = self._fix_json_string(line)
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try:
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tool_content = json.loads(fixed_content)
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except Exception:
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tool_calls, is_valid, error_message = [], False, e
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return tool_calls, is_valid, error_message
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tool_calls.append(
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{
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"id": f"call_{random.randint(1000, 10000)}",
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"type": "function",
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"function": {
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"name": tool_content["name"],
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"arguments": tool_content["arguments"],
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},
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}
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)
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flag = False
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return tool_calls, is_valid, error_message
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def _verify_tool_calls(
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self, tools: List[Dict[str, Any]], tool_calls: List[Dict[str, Any]]
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) -> Tuple[bool, Union[Dict[str, Any], None], str]:
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"""
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Verifies the validity of extracted tool calls against the provided tools.
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Args:
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tools (List[Dict[str, Any]]): A list of available tools.
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tool_calls (List[Dict[str, Any]]): A list of tool calls to verify.
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Returns:
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Tuple[bool, Union[Dict[str, Any], None], str]:
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- A boolean indicating if the tool calls are valid.
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- The invalid tool call dictionary if any.
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- An error message.
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"""
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is_valid, error_tool_call, error_message = True, None, ""
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functions = {}
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for tool in tools:
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if tool["type"] == "function":
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functions[tool["function"]["name"]] = tool["function"]["parameters"]
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for tool_call in tool_calls:
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func_name, func_args = (
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tool_call["function"]["name"],
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tool_call["function"]["arguments"],
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)
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# Check whether the function is available or not
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if func_name not in functions:
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is_valid = False
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error_message = f"{func_name} is not defined!"
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return is_valid, error_message
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else:
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# Check if all the requried parameters can be found in the tool calls
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for required_param in functions[func_name].get("required", []):
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if required_param not in func_args:
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is_valid = False
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error_tool_call = tool_call
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error_message = f"`{required_param}` is requried by the function `{func_name}` but not found in the tool call!"
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return is_valid, error_tool_call, error_message
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# Verify the data type of each parameter in the tool calls
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for param_name, param_value in func_args:
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data_type = functions[func_name]["properties"][param_name]["type"]
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if data_type in self.support_data_types:
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if not isinstance(
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param_value, self.support_data_types[data_type]
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):
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is_valid = False
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error_tool_call = tool_call
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error_message = f"Parameter `{param_name}` is expected to have the data type `{self.support_data_types[data_type]}`, but got `{type(param_value)}`."
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return is_valid, error_tool_call, error_message
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return is_valid, error_tool_call, error_message
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@override
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async def chat_completion(
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self, req: ChatMessage, enable_prefilling=True
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) -> ChatCompletionResponse:
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"""
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Generates a chat completion response for a given request.
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Args:
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req (ChatMessage): A chat message request object.
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enable_prefilling (bool, optional): Whether to enable prefill responses. Defaults to True.
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Returns:
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ChatCompletionResponse: The model's response to the chat request.
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Note:
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Currently only support vllm inference
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"""
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messages = self._process_messages(req.messages, req.tools)
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# Retrieve the first token, handling the Stream object carefully
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response = self.client.chat.completions.create(
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messages=messages,
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model=self.model_name,
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stream=enable_prefilling,
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extra_body=self.generation_params,
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)
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model_response = ""
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if enable_prefilling:
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has_tool_call = None
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model_response = ""
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for token in response:
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token_content = token.choices[0].delta.content.strip()
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if token_content:
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if has_tool_call is None and token_content != "<tool_call>":
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has_tool_call = False
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response.close()
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break
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else:
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has_tool_call = True
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if has_tool_call is True:
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model_response += token_content
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# start parameter gathering if the model is not generating a tool call
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if has_tool_call is False:
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messages.append(
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{
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"role": "assistant",
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"content": random.choice(self.prefill_prefix),
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}
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)
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prefill_response = self.client.chat.completions.create(
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messages=messages,
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model=self.model_name,
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stream=False,
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extra_body={
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**self.generation_params,
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**self.prefill_params,
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},
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)
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model_response = prefill_response.choices[0].message.content
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else:
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model_response = response.choices[0].message.content
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tool_calls, is_valid, error_message = self._extract_tool_calls(model_response)
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if tool_calls:
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is_valid, error_tool_call, error_message = self._verify_tool_calls(
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tools=req.tools, tool_calls=tool_calls
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)
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# [TODO] Review: In the case that tool calls are invalid, define the protocol to collect debugging output and the behavior to handle it appropriately
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if is_valid:
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model_response = Message(content="", tool_calls=tool_calls)
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# else:
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else:
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model_response = Message(content=model_response, tool_calls=[])
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chat_completion_response = ChatCompletionResponse(
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choices=[Choice(message=model_response)], model=self.model_name
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)
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# [TODO] Review: define the protocol to collect debugging output
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# logger.info(
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# f"model_server <= arch_function: (tool_calls): {json.dumps([tool_call['function'] for tool_call in tool_calls])}"
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# )
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# logger.info(
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# f"model_server <= arch_function: response body: {json.dumps(chat_completion_response.dict())}"
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# )
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return chat_completion_response
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