mirror of
https://github.com/temporal-community/temporal-ai-agent.git
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317 lines
13 KiB
Python
317 lines
13 KiB
Python
from collections import deque
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from datetime import timedelta
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from typing import Dict, Any, Union, List, Optional, Deque, TypedDict
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from temporalio.common import RetryPolicy
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from temporalio import workflow
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from temporalio.exceptions import ActivityError
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from models.data_types import ConversationHistory, NextStep, ValidationInput
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with workflow.unsafe.imports_passed_through():
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from activities.tool_activities import ToolActivities
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from prompts.agent_prompt_generators import generate_genai_prompt
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from models.data_types import CombinedInput, ToolWorkflowParams, ToolPromptInput
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# Constants
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MAX_TURNS_BEFORE_CONTINUE = 250
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TOOL_ACTIVITY_START_TO_CLOSE_TIMEOUT = timedelta(seconds=10)
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TOOL_ACTIVITY_SCHEDULE_TO_CLOSE_TIMEOUT = timedelta(minutes=30)
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LLM_ACTIVITY_START_TO_CLOSE_TIMEOUT = timedelta(seconds=5)
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LLM_ACTIVITY_SCHEDULE_TO_CLOSE_TIMEOUT = timedelta(minutes=30)
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class ToolData(TypedDict, total=False):
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next: NextStep
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tool: str
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args: Dict[str, Any]
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response: str
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@workflow.defn
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class ToolWorkflow:
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"""Workflow that manages tool execution with user confirmation and conversation history."""
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def __init__(self) -> None:
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self.conversation_history: ConversationHistory = {"messages": []}
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self.prompt_queue: Deque[str] = deque()
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self.conversation_summary: Optional[str] = None
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self.chat_ended: bool = False
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self.tool_data: Optional[ToolData] = None
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self.confirm: bool = False
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self.tool_results: List[Dict[str, Any]] = []
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async def _handle_tool_execution(
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self, current_tool: str, tool_data: ToolData
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) -> None:
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"""Execute a tool after confirmation and handle its result."""
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workflow.logger.info(f"Confirmed. Proceeding with tool: {current_tool}")
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try:
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dynamic_result = await workflow.execute_activity(
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current_tool,
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tool_data["args"],
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schedule_to_close_timeout=TOOL_ACTIVITY_SCHEDULE_TO_CLOSE_TIMEOUT,
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start_to_close_timeout=TOOL_ACTIVITY_START_TO_CLOSE_TIMEOUT,
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retry_policy=RetryPolicy(
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initial_interval=timedelta(seconds=5), backoff_coefficient=1
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),
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)
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dynamic_result["tool"] = current_tool
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self.tool_results.append(dynamic_result)
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except ActivityError as e:
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workflow.logger.error(f"Tool execution failed: {str(e)}")
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dynamic_result = {"error": str(e), "tool": current_tool}
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self.add_message("tool_result", dynamic_result)
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self.prompt_queue.append(
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f"### The '{current_tool}' tool completed successfully with {dynamic_result}. "
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"INSTRUCTIONS: Parse this tool result as plain text, and use the system prompt containing the list of tools in sequence and the conversation history (and previous tool_results) to figure out next steps, if any. "
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"You will need to use the tool_results to auto-fill arguments for subsequent tools and also to figure out if all tools have been run."
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'{"next": "<question|confirm|done>", "tool": "<tool_name or null>", "args": {"<arg1>": "<value1 or null>", "<arg2>": "<value2 or null>}, "response": "<plain text>"}'
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"ONLY return those json keys (next, tool, args, response), nothing else."
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'Next should only be "done" if all tools have been run (use the system prompt to figure that out).'
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'Next should be "question" if the tool is not the last one in the sequence.'
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'Next should NOT be "confirm" at this point.'
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)
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async def _handle_missing_args(
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self, current_tool: str, args: Dict[str, Any], tool_data: ToolData
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) -> bool:
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"""Check for missing arguments and handle them if found."""
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missing_args = [key for key, value in args.items() if value is None]
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if missing_args:
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self.prompt_queue.append(
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f"### INSTRUCTIONS set next='question', combine this response response='{tool_data.get('response')}' "
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f"and following missing arguments for tool {current_tool}: {missing_args}. "
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"Only provide a valid JSON response without any comments or metadata."
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)
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workflow.logger.info(
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f"Missing arguments for tool: {current_tool}: {' '.join(missing_args)}"
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)
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return True
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return False
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async def _continue_as_new_if_needed(self, agent_goal: Any) -> None:
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"""Handle workflow continuation if message limit is reached."""
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if len(self.conversation_history["messages"]) >= MAX_TURNS_BEFORE_CONTINUE:
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summary_context, summary_prompt = self.prompt_summary_with_history()
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summary_input = ToolPromptInput(
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prompt=summary_prompt, context_instructions=summary_context
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)
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self.conversation_summary = await workflow.start_activity_method(
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ToolActivities.prompt_llm,
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summary_input,
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schedule_to_close_timeout=LLM_ACTIVITY_SCHEDULE_TO_CLOSE_TIMEOUT,
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)
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workflow.logger.info(
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f"Continuing as new after {MAX_TURNS_BEFORE_CONTINUE} turns."
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)
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workflow.continue_as_new(
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args=[
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CombinedInput(
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tool_params=ToolWorkflowParams(
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conversation_summary=self.conversation_summary,
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prompt_queue=self.prompt_queue,
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),
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agent_goal=agent_goal,
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)
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]
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)
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@workflow.run
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async def run(self, combined_input: CombinedInput) -> str:
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"""Main workflow execution method."""
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params = combined_input.tool_params
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agent_goal = combined_input.agent_goal
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if params and params.conversation_summary:
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self.add_message("conversation_summary", params.conversation_summary)
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self.conversation_summary = params.conversation_summary
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if params and params.prompt_queue:
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self.prompt_queue.extend(params.prompt_queue)
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waiting_for_confirm = False
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current_tool = None
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while True:
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await workflow.wait_condition(
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lambda: bool(self.prompt_queue) or self.chat_ended or self.confirm
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)
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if self.chat_ended:
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workflow.logger.info("Chat ended.")
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return f"{self.conversation_history}"
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if self.confirm and waiting_for_confirm and current_tool and self.tool_data:
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self.confirm = False
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waiting_for_confirm = False
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confirmed_tool_data = self.tool_data.copy()
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confirmed_tool_data["next"] = "user_confirmed_tool_run"
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self.add_message("user_confirmed_tool_run", confirmed_tool_data)
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await self._handle_tool_execution(current_tool, self.tool_data)
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continue
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if self.prompt_queue:
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prompt = self.prompt_queue.popleft()
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if not prompt.startswith("###"):
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self.add_message("user", prompt)
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# Validate the prompt before proceeding
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validation_input = ValidationInput(
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prompt=prompt,
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conversation_history=self.conversation_history,
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agent_goal=agent_goal,
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)
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validation_result = await workflow.execute_activity(
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ToolActivities.validate_llm_prompt,
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args=[validation_input],
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schedule_to_close_timeout=LLM_ACTIVITY_SCHEDULE_TO_CLOSE_TIMEOUT,
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start_to_close_timeout=LLM_ACTIVITY_START_TO_CLOSE_TIMEOUT,
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retry_policy=RetryPolicy(
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initial_interval=timedelta(seconds=5), backoff_coefficient=1
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),
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)
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if not validation_result.validationResult:
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workflow.logger.warning(
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f"Prompt validation failed: {validation_result.validationFailedReason}"
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)
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self.add_message(
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"agent", validation_result.validationFailedReason
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)
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continue
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# Proceed with generating the context and prompt
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context_instructions = generate_genai_prompt(
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agent_goal, self.conversation_history, self.tool_data
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)
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prompt_input = ToolPromptInput(
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prompt=prompt,
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context_instructions=context_instructions,
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)
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tool_data = await workflow.execute_activity(
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ToolActivities.prompt_llm,
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prompt_input,
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schedule_to_close_timeout=LLM_ACTIVITY_SCHEDULE_TO_CLOSE_TIMEOUT,
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start_to_close_timeout=LLM_ACTIVITY_START_TO_CLOSE_TIMEOUT,
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retry_policy=RetryPolicy(
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initial_interval=timedelta(seconds=5), backoff_coefficient=1
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),
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)
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self.tool_data = tool_data
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next_step = tool_data.get("next")
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current_tool = tool_data.get("tool")
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if next_step == "confirm" and current_tool:
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args = tool_data.get("args", {})
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if await self._handle_missing_args(current_tool, args, tool_data):
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continue
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waiting_for_confirm = True
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self.confirm = False
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workflow.logger.info("Waiting for user confirm signal...")
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elif next_step == "done":
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workflow.logger.info("All steps completed. Exiting workflow.")
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self.add_message("agent", tool_data)
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return str(self.conversation_history)
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self.add_message("agent", tool_data)
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await self._continue_as_new_if_needed(agent_goal)
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@workflow.signal
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async def user_prompt(self, prompt: str) -> None:
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"""Signal handler for receiving user prompts."""
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if self.chat_ended:
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workflow.logger.warn(f"Message dropped due to chat closed: {prompt}")
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return
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self.prompt_queue.append(prompt)
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@workflow.signal
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async def end_chat(self) -> None:
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"""Signal handler for ending the chat session."""
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self.chat_ended = True
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@workflow.signal
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async def confirm(self) -> None:
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"""Signal handler for user confirmation of tool execution."""
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workflow.logger.info("Received user confirmation")
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self.confirm = True
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@workflow.query
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def get_conversation_history(self) -> ConversationHistory:
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"""Query handler to retrieve the full conversation history."""
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return self.conversation_history
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@workflow.query
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def get_summary_from_history(self) -> Optional[str]:
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"""Query handler to retrieve the conversation summary if available."""
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return self.conversation_summary
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@workflow.query
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def get_tool_data(self) -> Optional[ToolData]:
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"""Query handler to retrieve the current tool data if available."""
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return self.tool_data
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def format_history(self) -> str:
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"""Format the conversation history into a single string."""
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return " ".join(
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str(msg["response"]) for msg in self.conversation_history["messages"]
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)
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def prompt_with_history(self, prompt: str) -> tuple[str, str]:
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"""Generate a context-aware prompt with conversation history.
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Returns:
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tuple[str, str]: A tuple of (context_instructions, prompt)
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"""
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history_string = self.format_history()
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context_instructions = (
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f"Here is the conversation history: {history_string} "
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"Please add a few sentence response in plain text sentences. "
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"Don't editorialize or add metadata. "
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"Keep the text a plain explanation based on the history."
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)
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return (context_instructions, prompt)
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def prompt_summary_with_history(self) -> tuple[str, str]:
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"""Generate a prompt for summarizing the conversation.
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Returns:
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tuple[str, str]: A tuple of (context_instructions, prompt)
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"""
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history_string = self.format_history()
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context_instructions = f"Here is the conversation history between a user and a chatbot: {history_string}"
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actual_prompt = (
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"Please produce a two sentence summary of this conversation. "
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'Put the summary in the format { "summary": "<plain text>" }'
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)
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return (context_instructions, actual_prompt)
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def add_message(self, actor: str, response: Union[str, Dict[str, Any]]) -> None:
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"""Add a message to the conversation history.
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Args:
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actor: The entity that generated the message (e.g., "user", "agent")
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response: The message content, either as a string or structured data
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"""
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if isinstance(response, dict):
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response_str = str(response)
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workflow.logger.debug(f"Adding {actor} message: {response_str[:100]}...")
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else:
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workflow.logger.debug(f"Adding {actor} message: {response[:100]}...")
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self.conversation_history["messages"].append(
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{"actor": actor, "response": response}
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)
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