DART-LLM_Task_Decomposer / llm_request_handler.py
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import os
import json
import asyncio
from typing import List, Optional, Dict, Any
from loguru import logger
from pydantic import BaseModel
from langchain_core.prompts import ChatPromptTemplate
from langchain_core.messages import SystemMessage, HumanMessage, AIMessage
from langchain_openai import ChatOpenAI
from langchain_anthropic import ChatAnthropic
from langchain_groq import ChatGroq
from langchain_ollama import ChatOllama
from config import MODEL_CONFIG, INITIAL_MESSAGES_CONFIG, MODE_CONFIG, NAVIGATION_FUNCTIONS, ROBOT_SPECIFIC_FUNCTIONS, ROBOT_NAMES
class LLMRequestConfig(BaseModel):
model_name: str = MODEL_CONFIG["default_model"]
max_tokens: int = MODEL_CONFIG["max_tokens"]
temperature: float = MODEL_CONFIG["temperature"]
frequency_penalty: float = MODEL_CONFIG["frequency_penalty"]
list_navigation_once: bool = True
provider: str = "openai"
# Resolve Pydantic namespace conflicts
model_config = {"protected_namespaces": ()}
def to_dict(self):
return {
"model_name": self.model_name,
"max_tokens": self.max_tokens,
"temperature": self.temperature,
"frequency_penalty": self.frequency_penalty,
"list_navigation_once": self.list_navigation_once,
"provider": self.provider
}
@classmethod
def from_dict(cls, config_dict):
return cls(**config_dict)
class LLMRequestHandler:
class Message(BaseModel):
role: str
content: str
def __init__(self,
# Support both old and new parameter names for backward compatibility
model_version: str = None,
model_name: str = None,
max_tokens: int = None,
temperature: float = None,
frequency_penalty: float = None,
list_navigation_once: bool = None,
model_type: str = None,
provider: str = None,
config: Optional[LLMRequestConfig] = None):
# Initialize with config or from individual parameters
if config:
self.config = config
else:
# Create config from individual parameters, giving priority to new names
self.config = LLMRequestConfig(
model_name=model_name or model_version or MODEL_CONFIG["default_model"],
max_tokens=max_tokens or MODEL_CONFIG["max_tokens"],
temperature=temperature or MODEL_CONFIG["temperature"],
frequency_penalty=frequency_penalty or MODEL_CONFIG["frequency_penalty"],
list_navigation_once=list_navigation_once if list_navigation_once is not None else True,
provider=provider or model_type or "openai"
)
# Store parameters for easier access
self.model_name = self.config.model_name
self.model_version = self.model_name # Alias for backward compatibility
self.max_tokens = self.config.max_tokens
self.temperature = self.config.temperature
self.frequency_penalty = self.config.frequency_penalty
self.list_navigation_once = self.config.list_navigation_once
self.provider = self.config.provider
self.model_type = self.provider # Alias for backward compatibility
# Store API keys
self.openai_api_key = os.getenv("OPENAI_API_KEY")
self.anthropic_api_key = os.getenv("ANTHROPIC_API_KEY")
self.groq_api_key = os.getenv("GROQ_API_KEY")
# Create the appropriate LangChain LLM based on provider
self._setup_llm()
def _setup_llm(self):
"""Initialize the appropriate LangChain LLM based on provider."""
if "anthropic" in self.provider or "claude" in self.model_name:
self.llm = ChatAnthropic(
api_key=self.anthropic_api_key,
model_name=self.model_name,
max_tokens=self.max_tokens,
temperature=self.temperature
)
elif "ollama" in self.provider or "ollama" in self.model_name:
self.llm = ChatOllama(
model=self.model_name,
max_tokens=self.max_tokens,
temperature=self.temperature,
base_url="http://host.docker.internal:11434"
)
elif "groq" in self.provider or "llama" in self.model_name:
self.llm = ChatGroq(
api_key=self.groq_api_key,
model_name=self.model_name,
max_tokens=self.max_tokens,
temperature=self.temperature,
frequency_penalty=self.frequency_penalty
)
else: # Default to OpenAI
self.llm = ChatOpenAI(
api_key=self.openai_api_key,
model_name=self.model_name,
max_tokens=self.max_tokens,
temperature=self.temperature,
frequency_penalty=self.frequency_penalty
)
def get_config_dict(self):
"""Get a serializable configuration dictionary"""
return self.config.to_dict()
@staticmethod
def create_from_config_dict(config_dict):
"""Create a new handler instance from a config dictionary"""
config = LLMRequestConfig.from_dict(config_dict)
return LLMRequestHandler(config=config)
def load_object_data(self) -> Dict[str, Any]:
"""Load environment information (E) from a JSON file"""
json_path = os.path.abspath(os.path.join(os.path.dirname(__file__), '..', 'ros2_ws', 'src', 'breakdown_function_handler', 'object_database', 'object_database.json'))
with open(json_path, 'r') as json_file:
data = json.load(json_file)
return self.format_env_object(data)
def format_env_object(self, data: List[Dict[str, Any]]) -> Dict[str, Any]:
"""Format the environment data (E) for use in the prompt"""
formatted_env_object = {}
for obj in data:
object_name = obj['object_name']
target_position = obj['target_position']
shape = obj['shape']
formatted_env_object[object_name] = {
"position": {
"x": target_position["x"],
"y": target_position["y"]
},
"shape": shape
}
return formatted_env_object
def build_initial_messages(self, file_path: str, mode: str) -> List[Dict[str, str]]:
"""Build the initial prompt (P = (I, E, R, S))"""
with open(file_path, 'r', encoding='utf-8') as file:
user1 = file.read() # Example user instructions for few-shot learning (optional)
system = INITIAL_MESSAGES_CONFIG["system"]
# Load environment information (E)
env_objects = self.load_object_data()
# Create the user introduction with robot set (R), skills (S), and environment (E)
user_intro = INITIAL_MESSAGES_CONFIG["user_intro"]["default"] + INITIAL_MESSAGES_CONFIG["user_intro"].get(mode, "")
functions_description = MODE_CONFIG[mode].get("functions_description", "")
# Format user introduction with the instruction (I), robot set (R), skills (S), and environment (E)
user_intro = user_intro.format(
library=NAVIGATION_FUNCTIONS+ROBOT_SPECIFIC_FUNCTIONS,
env_objects=env_objects,
robot_names=ROBOT_NAMES,
fewshot_examples=user1,
functions_description=functions_description
)
assistant1 = INITIAL_MESSAGES_CONFIG["assistant"]
# Construct the messages (system, user, assistant)
messages = [
{"role": "system", "content": system},
{"role": "user", "content": user_intro},
{"role": "assistant", "content": assistant1}
]
return messages
def add_user_message(self, messages: List[Dict[str, str]], content: str) -> None:
"""Add a user message with natural language instruction (I)"""
user_message = self.Message(role="user", content=content)
messages.append(user_message.model_dump())
def _convert_to_langchain_messages(self, full_history: List[Dict[str, str]]):
"""Convert traditional message format to LangChain message objects"""
lc_messages = []
for msg in full_history:
if msg["role"] == "system":
lc_messages.append(SystemMessage(content=msg["content"]))
elif msg["role"] == "user":
lc_messages.append(HumanMessage(content=msg["content"]))
elif msg["role"] == "assistant":
lc_messages.append(AIMessage(content=msg["content"]))
return lc_messages
async def make_completion(self, full_history: List[Dict[str, str]]) -> Optional[str]:
"""Make a completion request to the selected model using LangChain"""
logger.debug(f"Using model: {self.model_name}")
try:
# Convert traditional messages to LangChain message format
lc_messages = self._convert_to_langchain_messages(full_history)
# Create a chat prompt template
chat_prompt = ChatPromptTemplate.from_messages(lc_messages)
# Get the response
chain = chat_prompt | self.llm
response = await chain.ainvoke({})
# Extract the content from the response
return response.content if hasattr(response, 'content') else str(response)
except Exception as e:
logger.error(f"Error making completion: {e}")
return None
if __name__ == "__main__":
async def main():
selected_model_index = 3 # 0 for OpenAI, 1 for Anthropic, 2 for LLaMA, 3 for Ollama
model_options = MODEL_CONFIG["model_options"]
# Choose the model based on selected_model_index
if selected_model_index == 0:
model = model_options[0]
provider = "openai"
elif selected_model_index == 1:
model = model_options[4]
provider = "anthropic"
elif selected_model_index == 2:
model = model_options[6]
provider = "groq"
elif selected_model_index == 3:
model = "llama3"
provider = "ollama"
else:
raise ValueError("Invalid selected_model_index")
logger.debug("Starting test llm_request_handler with LangChain...")
config = LLMRequestConfig(
model_name=model,
list_navigation_once=True,
provider=provider
)
handler = LLMRequestHandler(config=config)
# Build initial messages based on the selected model
if selected_model_index == 0:
messages = handler.build_initial_messages("/root/share/QA_LLM_Module/prompts/swarm/dart.txt", "dart_gpt_4o")
elif selected_model_index == 1:
messages = handler.build_initial_messages("/root/share/QA_LLM_Module/prompts/swarm/dart.txt", "dart_claude_3_sonnet")
elif selected_model_index == 2:
messages = handler.build_initial_messages("/root/share/QA_LLM_Module/prompts/swarm/dart.txt", "dart_llama_3_3_70b")
elif selected_model_index == 3:
messages = handler.build_initial_messages("/root/share/QA_LLM_Module/prompts/swarm/dart.txt", "dart_ollama_llama3_1_8b")
# Add a natural language instruction (I) to the prompt
handler.add_user_message(messages, "Excavator 1 performs excavation, then excavator 2 performs, then dump 1 performs unload.")
# Request completion from the model
response = await handler.make_completion(messages)
logger.debug(f"Response from make_completion: {response}")
asyncio.run(main())