# SPDX-License-Identifier: Apache-2.0 # SPDX-FileCopyrightText: Copyright contributors to the vLLM project import json from collections.abc import Sequence import partial_json_parser import regex as re from partial_json_parser.core.options import Allow from transformers import PreTrainedTokenizerBase import vllm.envs as envs from vllm.entrypoints.chat_utils import make_tool_call_id from vllm.entrypoints.openai.protocol import ( ChatCompletionRequest, DeltaFunctionCall, DeltaMessage, DeltaToolCall, ExtractedToolCallInformation, FunctionCall, ToolCall, ) from vllm.logger import init_logger from vllm.tool_parsers.abstract_tool_parser import ( ToolParser, ) from vllm.tool_parsers.utils import ( find_common_prefix, is_complete_json, partial_json_loads, ) logger = init_logger(__name__) class Llama3JsonToolParser(ToolParser): """ Tool call parser for Llama 3.x and 4 models intended for use with the examples/tool_chat_template_llama.jinja template. Used when --enable-auto-tool-choice --tool-call-parser llama3_json or llama4_json are set. """ def __init__(self, tokenizer: PreTrainedTokenizerBase): super().__init__(tokenizer) # initialize properties used for state when parsing tool calls in # streaming mode self.prev_tool_call_arr: list[dict] = [] self.current_tool_id: int = -1 self.current_tool_name_sent: bool = False self.streamed_args_for_tool: list[ str ] = [] # map what has been streamed for each tool so far to a list self.bot_token = "<|python_tag|>" self.bot_token_id = tokenizer.encode(self.bot_token, add_special_tokens=False)[ 0 ] # Simple regex to find opening braces - we'll use JSON decoder for parsing # This handles arbitrary nesting depth correctly self.tool_call_start_regex = re.compile(r"\{") self.json_decoder = json.JSONDecoder() def extract_tool_calls( self, model_output: str, request: ChatCompletionRequest ) -> ExtractedToolCallInformation: """ Extract the tool calls from a complete model response. Only extracts JSON content and ignores any surrounding plain text. Supports both single JSON and multiple JSONs separated by semicolons. """ # Quick check before running regex if not (self.bot_token in model_output or "{" in model_output): return ExtractedToolCallInformation( tools_called=False, tool_calls=[], content=model_output ) # Keep track of the end index of the last parsed JSON object # so we don't parse inner brackets end_index = -1 tool_calls: list[ToolCall] = [] try: for match in self.tool_call_start_regex.finditer( model_output, timeout=envs.VLLM_TOOL_PARSE_REGEX_TIMEOUT_SECONDS ): start_index = match.start() # Skip if this brace is inside a previously parsed JSON object if start_index <= end_index: continue try: obj, json_end_index = self.json_decoder.raw_decode( model_output[start_index:] ) end_index = start_index + json_end_index # raise KeyError if missing name = obj["name"] arguments_or_params = ( obj["arguments"] if "arguments" in obj else obj["parameters"] ) tool_calls.append( ToolCall( type="function", function=FunctionCall( name=name, # function call args are JSON but as a string arguments=json.dumps( arguments_or_params, ensure_ascii=False ), ), ) ) except KeyError as e: # Missing required key missing_key = str(e).strip("'\"") logger.exception( "Couldn't extract tool call from JSON response. " "Required key '%s' not present. " "Returning output in content with empty tool calls.", missing_key, ) return ExtractedToolCallInformation( tools_called=False, tool_calls=[], content=model_output ) except Exception: # Any other error during parsing logger.exception( "Error in extracting tool call from response. " "Returning output in content with empty tool calls" ) return ExtractedToolCallInformation( tools_called=False, tool_calls=[], content=model_output ) except TimeoutError: logger.warning("Regex timeout occurred when matching tool call pattern.") logger.debug( "Regex timeout occurred when matching user input: %s", model_output ) return ExtractedToolCallInformation( tools_called=False, tool_calls=[], content=model_output ) # If we have valid tool calls, return them normally if tool_calls: return ExtractedToolCallInformation( tools_called=True, tool_calls=tool_calls, content=None ) # No valid tool calls found return ExtractedToolCallInformation( tools_called=False, tool_calls=[], content=model_output ) def extract_tool_calls_streaming( self, previous_text: str, current_text: str, delta_text: str, previous_token_ids: Sequence[int], current_token_ids: Sequence[int], delta_token_ids: Sequence[int], request: ChatCompletionRequest, ) -> DeltaMessage | None: if not ( current_text.startswith(self.bot_token) or current_text.startswith("{") ): return DeltaMessage(content=delta_text) # bit mask flags for partial JSON parsing. If the name hasn't been # sent yet, don't allow sending # an incomplete string since OpenAI only ever (as far as I have # seen) allows sending the entire tool/ function name at once. flags = Allow.ALL if self.current_tool_name_sent else Allow.ALL & ~Allow.STR try: tool_call_arr = [] is_complete = [] try: # depending on the prompt format the Llama model may or may not # prefix the output with the <|python_tag|> token start_idx = ( len(self.bot_token) if current_text.startswith(self.bot_token) else 0 ) while start_idx < len(current_text): (obj, end_idx) = partial_json_loads(current_text[start_idx:], flags) is_complete.append( is_complete_json(current_text[start_idx : start_idx + end_idx]) ) start_idx += end_idx + len("; ") # depending on the prompt Llama can use # either arguments or parameters if "parameters" in obj: assert "arguments" not in obj, ( "model generated both parameters and arguments" ) obj["arguments"] = obj["parameters"] tool_call_arr.append(obj) except partial_json_parser.core.exceptions.MalformedJSON: logger.debug("not enough tokens to parse into JSON yet") return None # select as the current tool call the one we're on the state at current_tool_call: dict = ( tool_call_arr[self.current_tool_id] if len(tool_call_arr) > 0 else {} ) # case -- if no tokens have been streamed for the tool, e.g. # only the array brackets, stream nothing if len(tool_call_arr) == 0: return None # case: we are starting a new tool in the array # -> array has > 0 length AND length has moved past cursor elif ( len(tool_call_arr) > 0 and len(tool_call_arr) > self.current_tool_id + 1 ): # if we're moving on to a new call, first make sure we # haven't missed anything in the previous one that was # auto-generated due to JSON completions, but wasn't # streamed to the client yet. if self.current_tool_id >= 0: cur_arguments = current_tool_call.get("arguments") if cur_arguments: cur_args_json = json.dumps(cur_arguments, ensure_ascii=False) sent = len(self.streamed_args_for_tool[self.current_tool_id]) argument_diff = cur_args_json[sent:] logger.debug("got arguments diff: %s", argument_diff) delta = DeltaMessage( tool_calls=[ DeltaToolCall( index=self.current_tool_id, function=DeltaFunctionCall( arguments=argument_diff ).model_dump(exclude_none=True), ) ] ) self.streamed_args_for_tool[self.current_tool_id] += ( argument_diff ) else: delta = None else: delta = None # re-set stuff pertaining to progress in the current tool self.current_tool_id = len(tool_call_arr) - 1 self.current_tool_name_sent = False self.streamed_args_for_tool.append("") logger.debug("starting on new tool %d", self.current_tool_id) return delta # if the current tool name hasn't been sent, send if available # - otherwise send nothing elif not self.current_tool_name_sent: function_name = current_tool_call.get("name") if function_name: delta = DeltaMessage( tool_calls=[ DeltaToolCall( index=self.current_tool_id, type="function", id=make_tool_call_id(), function=DeltaFunctionCall( name=function_name ).model_dump(exclude_none=True), ) ] ) self.current_tool_name_sent = True else: delta = None # now we know we're on the same tool call and we're streaming # arguments else: cur_arguments = current_tool_call.get("arguments") delta = None if cur_arguments: sent = len(self.streamed_args_for_tool[self.current_tool_id]) cur_args_json = json.dumps(cur_arguments, ensure_ascii=False) prev_arguments = self.prev_tool_call_arr[self.current_tool_id].get( "arguments" ) argument_diff = None if is_complete[self.current_tool_id]: argument_diff = cur_args_json[sent:] elif prev_arguments: prev_args_json = json.dumps(prev_arguments, ensure_ascii=False) if cur_args_json != prev_args_json: prefix = find_common_prefix(prev_args_json, cur_args_json) argument_diff = prefix[sent:] if argument_diff is not None: delta = DeltaMessage( tool_calls=[ DeltaToolCall( index=self.current_tool_id, function=DeltaFunctionCall( arguments=argument_diff ).model_dump(exclude_none=True), ) ] ) self.streamed_args_for_tool[self.current_tool_id] += ( argument_diff ) self.prev_tool_call_arr = tool_call_arr return delta except Exception: logger.exception("Error trying to handle streaming tool call.") logger.debug( "Skipping chunk as a result of tool streaming extraction error" ) return None