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import ast |
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import json |
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import keyword |
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import traceback |
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import uuid |
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from collections import deque |
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from copy import deepcopy |
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from logging import getLogger |
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from typing import Any, Dict, List, Optional, Union |
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from datamodel_code_generator import DataModelType |
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from datamodel_code_generator.format import PythonVersion |
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from datamodel_code_generator.model import get_data_model_types |
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from datamodel_code_generator.parser.jsonschema import JsonSchemaParser |
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from jsonschema import Draft202012Validator, exceptions, validate |
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from transformers import LlamaTokenizerFast |
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from transformers.tokenization_utils_base import BatchEncoding |
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from transformers.utils import TensorType |
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logger = getLogger(__name__) |
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class MiniCPMTokenizer(LlamaTokenizerFast): |
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def apply_chat_template( |
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self, |
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conversation: Union[List[Dict[str, str]], List[List[Dict[str, str]]]], |
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tools: Optional[List[Dict]] = None, |
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documents: Optional[List[Dict[str, str]]] = None, |
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chat_template: Optional[str] = None, |
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add_generation_prompt: bool = False, |
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tokenize: bool = True, |
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padding: bool = False, |
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truncation: bool = False, |
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max_length: Optional[int] = None, |
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return_tensors: Optional[Union[str, TensorType]] = None, |
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return_dict: bool = False, |
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return_assistant_tokens_mask: bool = False, |
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tokenizer_kwargs: Optional[Dict[str, Any]] = None, |
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**kwargs, |
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) -> Union[str, List[int], List[str], List[List[int]], BatchEncoding]: |
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if tools is None: |
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tools = [] |
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check_messages(conversation, tools) |
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functions = [tool["function"] for tool in tools] |
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conversation = self.reorder_tool_response(conversation) |
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input_messages = input_format(conversation, functions, add_to_system=True) |
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return super().apply_chat_template( |
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input_messages, |
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tools=None, |
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documents=documents, |
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chat_template=chat_template, |
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add_generation_prompt=add_generation_prompt, |
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tokenize=tokenize, |
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padding=padding, |
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truncation=truncation, |
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max_length=max_length, |
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return_tensors=return_tensors, |
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return_dict=return_dict, |
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return_assistant_tokens_mask=return_assistant_tokens_mask, |
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tokenizer_kwargs=tokenizer_kwargs, |
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**kwargs, |
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) |
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def reorder_tool_response(self, conversation: List[Dict[str, str]]): |
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tool_call_ids = deque() |
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tool_responses = deque() |
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new_conversation = [] |
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for message in conversation: |
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if ( |
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message["role"] == "assistant" |
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and "tool_calls" in message |
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and message["tool_calls"] is not None |
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and len(message["tool_calls"]) > 0 |
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): |
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for tool_call in message["tool_calls"]: |
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tool_call_ids.append(tool_call["id"]) |
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new_conversation.append(message) |
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elif message["role"] == "tool": |
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tool_call_id = message.get("tool_call_id", None) |
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if tool_call_id == tool_call_ids[0]: |
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new_conversation.append(message) |
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tool_call_ids.popleft() |
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while ( |
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len(tool_call_ids) > 0 |
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and len(tool_responses) > 0 |
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and tool_call_ids[0] == tool_responses[0]["tool_call_id"] |
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): |
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new_conversation.append(tool_responses.popleft()) |
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tool_call_ids.popleft() |
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else: |
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tool_responses.append(message) |
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else: |
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new_conversation.append(message) |
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if len(tool_call_ids) != 0: |
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raise ValueError(f"Message error, not all tool calls have responses: {tool_call_ids}") |
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if len(tool_responses) != 0: |
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raise ValueError(f"Message error, too many tool responses: {tool_responses}") |
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return new_conversation |
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def decode_function_call( |
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self, |
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sequence: str, |
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tool_call_start="<|tool_call_start|>", |
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tool_call_end="<|tool_call_end|>", |
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thought_start="<|thought_start|>", |
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thought_end="<|thought_end|>", |
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): |
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if thought_end in sequence and thought_start in sequence: |
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thought_string, sequence = sequence.rsplit(thought_end, 1) |
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thought_string = thought_string.split(thought_start, 1)[1] |
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else: |
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thought_string = "" |
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if tool_call_start in sequence and tool_call_end in sequence: |
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tool_call_string, content = sequence.rsplit(tool_call_end, 1) |
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tool_call_string = tool_call_string.split(tool_call_start, 1)[1] |
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try: |
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tool_calls = [] |
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tool_call_string = tool_call_string.strip() |
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if tool_call_string.startswith("```"): |
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tool_call_string = tool_call_string.lstrip("```").strip() |
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if tool_call_string.startswith("python"): |
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tool_call_string = tool_call_string.lstrip("python").strip() |
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if tool_call_string.endswith("```"): |
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tool_call_string = tool_call_string.rstrip("```").strip() |
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for kw in keyword.kwlist: |
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tool_call_string = tool_call_string.replace("," + kw + "=", "," + kw + "_=") |
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tool_call_string = tool_call_string.replace(" " + kw + "=", " " + kw + "_=") |
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tool_call_string = tool_call_string.replace("(" + kw + "=", "(" + kw + "_=") |
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parsed = ast.parse(tool_call_string) |
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for elem in parsed.body: |
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assert isinstance(elem.value, ast.Call) |
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calls = resolve_ast_call(elem.value) |
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for func_name, func_args in calls.items(): |
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new_args = {} |
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for k, v in func_args.items(): |
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for kw in keyword.kwlist: |
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if k == kw + "_": |
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k = kw |
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new_args[k] = v |
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this_one = {"name": func_name, "arguments": new_args} |
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tool_calls.append(this_one) |
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return { |
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"content": content.strip(), |
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"tool_calls": [ |
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{"type": "function", "function": tool_call, "id": "call_" + uuid.uuid4().hex} |
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for tool_call in tool_calls |
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], |
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"role": "assistant", |
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} |
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except: |
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logger.error(traceback.format_exc()) |
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return { |
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"content": content.strip(), |
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"role": "assistant", |
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"thought": thought_string, |
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} |
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else: |
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return { |
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"content": sequence.strip(), |
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"role": "assistant", |
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"thought": thought_string, |
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} |
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def check_messages(conversation: List[Dict[str, str]], tools: List[Dict]): |
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if tools is not None: |
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for tool in tools: |
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if "type" not in tool or tool["type"] != "function": |
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raise ValueError(f"Tool {tool} is not valid") |
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if "name" not in tool["function"]: |
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raise ValueError(f"Tool {tool} is not valid") |
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if "parameters" not in tool["function"] or not check_tool(tool["function"]["parameters"]["properties"]): |
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raise ValueError(f"Tool {tool} is not valid") |
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for message in conversation: |
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if message["role"] == "assistant" and "tool_calls" in message and len(message["tool_calls"]) > 0: |
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for tool_call in message["tool_calls"]: |
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if "id" not in tool_call: |
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raise ValueError(f"Tool call {tool_call} is not valid") |
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if tool_call["type"] != "function": |
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raise ValueError(f"Tool call {tool_call} is not valid") |
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if "function" not in tool_call: |
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raise ValueError(f"Tool call {tool_call} is not valid") |
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if not check_tool(tool_call["function"]): |
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raise ValueError(f"Tool call function {tool_call['function']} is not valid") |
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elif message["role"] == "tool": |
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if "tool_call_id" not in message: |
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raise ValueError(f"Tool message {message['content']} is not valid") |
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def check_tool(tool_schema): |
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try: |
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Draft202012Validator.check_schema(tool_schema) |
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return True |
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except exceptions.SchemaError as e: |
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print(f"SchemaError: {e}") |
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return False |
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def check_args(args, tool_schema): |
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try: |
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validate(instance=args, schema=tool_schema) |
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return True |
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except exceptions.ValidationError as e: |
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print(f"Data failed validation: {e}") |
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return False |
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def message_format(msg, system_suffix="", user_prefix=""): |
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if "thought" in msg and msg["thought"] is not None and len(msg["thought"]) > 0: |
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thought_prefix = f"<|thought_start|>\n{msg['thought']}\n<|thought_end|>\n" |
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else: |
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thought_prefix = "" |
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if msg["role"] == "assistant": |
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content = msg.get("content", "") |
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if content is None: |
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content = "" |
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if "tool_calls" in msg and msg["tool_calls"] is not None and len(msg["tool_calls"]) > 0: |
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def add_quotes(variable): |
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if isinstance(variable, str): |
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return repr(variable) |
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else: |
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return str(variable) |
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tool_calls = [] |
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for _tool_call in msg["tool_calls"]: |
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if _tool_call is None: |
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continue |
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tool_call = _tool_call["function"] |
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tool_name = tool_call["name"] |
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if "arguments" not in tool_call or tool_call["arguments"] is None: |
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continue |
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if isinstance(tool_call["arguments"], str): |
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try: |
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tool_call["arguments"] = json.loads(tool_call["arguments"]) |
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except: |
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continue |
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args = ",".join([k + "=" + add_quotes(v) for k, v in tool_call["arguments"].items()]) |
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tool_calls.append(f"{tool_name}({args})") |
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content = ( |
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thought_prefix |
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+ "<|tool_call_start|>\n```python\n" |
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+ "\n".join(tool_calls).strip() |
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+ "\n```\n<|tool_call_end|>\n" |
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+ content |
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) |
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msg["content"] = content |
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else: |
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content = thought_prefix + content |
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msg["content"] = content |
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elif msg["role"] == "user": |
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msg["content"] = user_prefix + "\n" + msg["content"] |
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elif msg["role"] == "system": |
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msg["content"] = msg["content"] + "\n" + system_suffix |
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msg["content"] = msg["content"].strip() |
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return msg |
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def jsonschema_to_code(jsonschema: dict) -> str: |
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input_text = json.dumps(jsonschema) |
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data_model_types = get_data_model_types( |
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DataModelType.PydanticBaseModel, |
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PythonVersion.PY_310, |
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) |
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parser = JsonSchemaParser( |
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source=input_text, |
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data_model_type=data_model_types.data_model, |
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data_model_root_type=data_model_types.root_model, |
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data_model_field_type=data_model_types.field_model, |
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data_type_manager_type=data_model_types.data_type_manager, |
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target_python_version=PythonVersion.PY_310, |
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dump_resolve_reference_action=data_model_types.dump_resolve_reference_action, |
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field_constraints=True, |
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) |
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results = parser.parse() |
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return results |
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def transform_function(function: dict): |
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"""turn json format of function into signature""" |
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params, default_params = [], [] |
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for prop_name, prop in function["parameters"]["properties"].items(): |
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if "default" in prop: |
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default_params.append(f'{prop_name}={repr(prop["default"])}') |
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elif prop_name not in function["parameters"].get("required", []): |
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default_params.append(f"{prop_name}={repr(None)}") |
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else: |
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params.append(prop_name) |
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ps = ", ".join(params + default_params) |
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res = "def {f_name}({ps}):\n".format(f_name=function["name"], ps=ps) |
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f_des = function.get("description", "") |
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content = jsonschema_to_code(function["parameters"]) |
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if "class" in content: |
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i = content.index("class") |
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content = content[i:] |
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classes, args = content.split("class Model(BaseModel):", 1) |
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lint_msg = f' """\n {f_des}\n Args:\n{args}\n """\n' |
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res += lint_msg |
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if len(classes) > 0: |
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res = classes + res |
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return res |
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def input_format(messages: List[Dict], tools: List[Dict], add_to_system=True): |
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""" |
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Process the input messages, global_arguments, tools, tool_choice, |
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and convert it into a input string. |
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The global arguments and tools can not be both empty. |
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parameters: |
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messages: List[Dict] |
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the input messages |
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For example: |
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tools: List[Dict] |
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the tools list you can use |
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For example: |
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""" |
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messages = deepcopy(messages) |
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tools = deepcopy(tools) |
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if tools is not None and len(tools) > 0: |
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header = ( |
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"from enum import Enum\nfrom typing import List, Dict, Optional\nfrom pydantic import BaseModel, Field\n\n" |
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) |
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tools_string = header |
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for tool in tools: |
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try: |
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tools_string += "\n\n" + transform_function(tool) |
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except: |
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pass |
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tools_template = """# Functions |
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Here is a list of functions that you can invoke: |
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```python |
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{tools} |
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``` |
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|
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# Function Call Rule and Output Format |
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- If the user's question can be answered without calling any function, please answer the user's question directly. In this situation, you should return your thought and answer the user's question directly. |
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- If the user cannot be answered without calling any function, and the user does not provide enough information to call functions, please ask the user for more information. In this situation, you should return your thought and ask the user for more information. |
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- If the user's question cannot be answered without calling any function, and the user has provided enough information to call functions to solve it, you should call the functions. In this situation, the assistant should return your thought and call the functions. |
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- Use default parameters unless the user has specified otherwise. |
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- You should answer in the following format: |
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|
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<|thought_start|> |
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{{explain why the user's question can be answered without calling a function or why you should ask the user for more information or why you should call one or more functions and your plan to solve the user's question.}} |
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<|thought_end|> |
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<|tool_call_start|> |
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```python |
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func1(params_name=params_value, params_name2=params_value2...) |
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func2(params) |
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``` |
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<|tool_call_end|> |
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{{answer the user's question directly or ask the user for more information}} |
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""" |
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tools_string = tools_template.format(tools=tools_string).strip() |
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else: |
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tools_string = "" |
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|
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if add_to_system: |
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return [message_format(msg, system_suffix=tools_string, user_prefix="") for msg in messages] |
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else: |
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return [message_format(msg, system_suffix="", user_prefix=tools_string) for msg in messages] |
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|
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def resolve_ast_call(elem): |
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|
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func_parts = [] |
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func_part = elem.func |
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while isinstance(func_part, ast.Attribute): |
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func_parts.append(func_part.attr) |
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func_part = func_part.value |
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if isinstance(func_part, ast.Name): |
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func_parts.append(func_part.id) |
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func_name = ".".join(reversed(func_parts)) |
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args_dict = {} |
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for arg in elem.keywords: |
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output = resolve_ast_by_type(arg.value) |
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args_dict[arg.arg] = output |
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return {func_name: args_dict} |
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|
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def resolve_ast_by_type(value): |
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if isinstance(value, ast.Constant): |
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if value.value is Ellipsis: |
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output = "..." |
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else: |
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output = value.value |
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elif isinstance(value, ast.UnaryOp): |
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output = -value.operand.value |
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elif isinstance(value, ast.List): |
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output = [resolve_ast_by_type(v) for v in value.elts] |
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elif isinstance(value, ast.Dict): |
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output = {resolve_ast_by_type(k): resolve_ast_by_type(v) for k, v in zip(value.keys, value.values)} |
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elif isinstance(value, ast.NameConstant): |
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output = value.value |
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elif isinstance(value, ast.BinOp): |
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output = eval(ast.unparse(value)) |
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elif isinstance(value, ast.Name): |
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output = value.id |
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elif isinstance(value, ast.Call): |
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if len(value.keywords) == 0: |
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output = ast.unparse(value) |
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else: |
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output = resolve_ast_call(value) |
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elif isinstance(value, ast.Tuple): |
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output = tuple(resolve_ast_by_type(v) for v in value.elts) |
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elif isinstance(value, ast.Lambda): |
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output = eval(ast.unparse(value.body[0].value)) |
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elif isinstance(value, ast.Ellipsis): |
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output = "..." |
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elif isinstance(value, ast.Subscript): |
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try: |
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output = ast.unparse(value.body[0].value) |
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except: |
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output = ast.unparse(value.value) + "[" + ast.unparse(value.slice) + "]" |
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else: |
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raise Exception(f"Unsupported AST type: {type(value)}") |
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return output |
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