LocalMate / app /agent /react_agent.py
Cuong2004's picture
fix syntax error: missing closing parenthesis
3e3139d
raw
history blame
12.6 kB
"""ReAct Agent - Multi-step reasoning and tool execution.
Implements the ReAct (Reasoning + Acting) pattern:
1. Reason about what to do next
2. Execute a tool
3. Observe the result
4. Repeat until done or max steps reached
"""
import time
import json
from typing import Any
from sqlalchemy.ext.asyncio import AsyncSession
from app.agent.state import AgentState, ReActStep
from app.agent.reasoning import (
REACT_SYSTEM_PROMPT,
parse_reasoning_response,
build_reasoning_prompt,
get_tool_purpose,
)
from app.mcp.tools import mcp_tools
from app.shared.integrations.gemini_client import GeminiClient
from app.shared.integrations.megallm_client import MegaLLMClient
from app.shared.logger import agent_logger, AgentWorkflow, WorkflowStep
# Default coordinates for Da Nang
DANANG_CENTER = (16.0544, 108.2022)
class ReActAgent:
"""
ReAct Agent with multi-step tool chaining.
Allows LLM to reason about each step and decide which tool to call next,
using previous results to inform subsequent actions.
"""
def __init__(self, provider: str = "MegaLLM", model: str | None = None, max_steps: int = 5):
"""
Initialize ReAct agent.
Args:
provider: "Google" or "MegaLLM"
model: Model name
max_steps: Maximum reasoning steps (default 5)
"""
self.provider = provider
self.model = model
self.max_steps = max_steps
self.tools = mcp_tools
# Initialize LLM client
if provider == "Google":
self.llm_client = GeminiClient(model=model)
else:
self.llm_client = MegaLLMClient(model=model)
agent_logger.workflow_step(
"ReAct Agent initialized",
f"Provider: {provider}, Model: {model}, MaxSteps: {max_steps}"
)
async def run(
self,
query: str,
db: AsyncSession,
image_url: str | None = None,
history: str | None = None,
) -> tuple[str, AgentState]:
"""
Run the ReAct loop.
Args:
query: User's query
db: Database session
image_url: Optional image for visual search
history: Conversation history
Returns:
Tuple of (final_response, agent_state)
"""
start_time = time.time()
# Initialize state
state = AgentState(query=query, max_steps=self.max_steps)
agent_logger.api_request(
endpoint="/chat (ReAct)",
method="POST",
body={"query": query[:100], "max_steps": self.max_steps}
)
# ReAct loop
while state.can_continue():
step_start = time.time()
step_number = state.current_step + 1
agent_logger.workflow_step(f"ReAct Step {step_number}", "Reasoning...")
try:
# Step 1: Reason about what to do next
reasoning = await self._reason(state, image_url)
agent_logger.workflow_step(
f"Step {step_number} Thought",
reasoning.thought[:100]
)
agent_logger.workflow_step(
f"Step {step_number} Action",
f"{reasoning.action}{json.dumps(reasoning.action_input, ensure_ascii=False)[:80]}"
)
# Step 2: Check if done
if reasoning.action == "finish":
state.is_complete = True
state.steps.append(ReActStep(
step_number=step_number,
thought=reasoning.thought,
action="finish",
action_input={},
duration_ms=(time.time() - step_start) * 1000,
))
break
# Step 3: Execute tool
observation = await self._execute_tool(
reasoning.action,
reasoning.action_input,
db,
image_url,
)
result_count = len(observation) if isinstance(observation, list) else 1
agent_logger.tool_result(reasoning.action, result_count)
# Step 4: Add step to state
step = ReActStep(
step_number=step_number,
thought=reasoning.thought,
action=reasoning.action,
action_input=reasoning.action_input,
observation=observation,
duration_ms=(time.time() - step_start) * 1000,
)
state.add_step(step)
except Exception as e:
agent_logger.error(f"ReAct step {step_number} failed", e)
state.error = str(e)
break
# Final synthesis
state.total_duration_ms = (time.time() - start_time) * 1000
if state.error:
final_response = f"Xin lỗi, đã xảy ra lỗi: {state.error}"
else:
final_response = await self._synthesize(state, history)
state.final_answer = final_response
agent_logger.api_response(
"/chat (ReAct)",
200,
{"steps": len(state.steps), "tools": list(state.context.keys())},
state.total_duration_ms,
)
return final_response, state
async def _reason(self, state: AgentState, image_url: str | None = None) -> Any:
"""Get LLM reasoning for next step."""
prompt = build_reasoning_prompt(
query=state.query,
context_summary=state.get_context_summary(),
previous_steps=[s.to_dict() for s in state.steps],
image_url=image_url,
)
agent_logger.llm_call(self.provider, self.model or "default", prompt[:100])
response = await self.llm_client.generate(
prompt=prompt,
temperature=0.3, # Lower temp for more deterministic reasoning
system_instruction=REACT_SYSTEM_PROMPT,
)
return parse_reasoning_response(response)
async def _execute_tool(
self,
action: str,
action_input: dict,
db: AsyncSession,
image_url: str | None = None,
) -> Any:
"""Execute a tool and return observation."""
agent_logger.tool_call(action, action_input)
if action == "get_location_coordinates":
location_name = action_input.get("location_name", "")
coords = await self.tools.get_location_coordinates(location_name)
if coords:
return {"lat": coords[0], "lng": coords[1], "location": location_name}
return {"error": f"Location not found: {location_name}"}
elif action == "find_nearby_places":
lat = action_input.get("lat", DANANG_CENTER[0])
lng = action_input.get("lng", DANANG_CENTER[1])
# If lat/lng are from previous step context
if isinstance(lat, str) or isinstance(lng, str):
lat, lng = DANANG_CENTER
results = await self.tools.find_nearby_places(
lat=lat,
lng=lng,
max_distance_km=action_input.get("max_distance_km", 3.0),
category=action_input.get("category"),
limit=action_input.get("limit", 5),
)
return [
{
"place_id": r.place_id,
"name": r.name,
"category": r.category,
"distance_km": r.distance_km,
"rating": r.rating,
}
for r in results
]
elif action == "retrieve_context_text":
results = await self.tools.retrieve_context_text(
db=db,
query=action_input.get("query", ""),
limit=action_input.get("limit", 5),
)
return [
{
"place_id": r.place_id,
"name": r.name,
"category": r.category,
"rating": r.rating,
"source_text": r.source_text[:100] if r.source_text else "",
}
for r in results
]
elif action == "retrieve_similar_visuals":
url = action_input.get("image_url") or image_url
if not url:
return {"error": "No image URL provided"}
results = await self.tools.retrieve_similar_visuals(
db=db,
image_url=url,
limit=action_input.get("limit", 5),
)
return [
{
"place_id": r.place_id,
"name": r.name,
"category": r.category,
"similarity": r.similarity,
}
for r in results
]
elif action == "search_social_media":
results = await self.tools.search_social_media(
query=action_input.get("query", ""),
limit=action_input.get("limit", 5),
freshness=action_input.get("freshness", "pw"),
platforms=action_input.get("platforms"),
)
return [
{
"title": r.title,
"url": r.url,
"age": r.age,
"platform": r.platform,
}
for r in results
]
else:
return {"error": f"Unknown tool: {action}"}
async def _synthesize(self, state: AgentState, history: str | None = None) -> str:
"""Synthesize final response from all collected information."""
# Build context from all steps
context_parts = []
for step in state.steps:
if step.observation and step.action != "finish":
context_parts.append(
f"Kết quả từ {step.action}:\n{json.dumps(step.observation, ensure_ascii=False, indent=2)}"
)
context = "\n\n".join(context_parts) if context_parts else "Không có kết quả."
# Build history section
history_section = ""
if history:
history_section = f"Lịch sử hội thoại:\n{history}\n\n---\n"
# Build steps summary
steps_summary = "\n".join([
f"- Bước {s.step_number}: {s.thought[:60]}... → {get_tool_purpose(s.action)}"
for s in state.steps
])
prompt = f"""{history_section}Dựa trên các bước suy luận và tìm kiếm sau:
{steps_summary}
Và kết quả thu thập được:
{context}
Hãy trả lời câu hỏi của user một cách tự nhiên và hữu ích:
"{state.query}"
Trả lời tiếng Việt, thân thiện. Giới thiệu top 2-3 địa điểm phù hợp nhất với thông tin cụ thể."""
response = await self.llm_client.generate(
prompt=prompt,
temperature=0.7,
system_instruction="Bạn là trợ lý du lịch thông minh cho Đà Nẵng. Trả lời ngắn gọn, hữu ích.",
)
return response
def to_workflow(self, state: AgentState) -> AgentWorkflow:
"""Convert AgentState to AgentWorkflow for response."""
workflow = AgentWorkflow(query=state.query)
workflow.intent_detected = "react_multi_step"
workflow.total_duration_ms = state.total_duration_ms
workflow.tools_used = list(state.context.keys())
for step in state.steps:
workflow.add_step(WorkflowStep(
step_name=f"Step {step.step_number}: {step.thought[:50]}...",
tool_name=step.action if step.action != "finish" else None,
purpose=get_tool_purpose(step.action),
result_count=len(step.observation) if isinstance(step.observation, list) else 0,
duration_ms=step.duration_ms,
))
return workflow