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191 lines
6.8 KiB
Python
191 lines
6.8 KiB
Python
"""Shared headless agent runner used by webhooks and scheduled runs."""
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from __future__ import annotations
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import logging
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from typing import Any, Dict, Iterable, List, Optional
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from application.agents.agent_creator import AgentCreator
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from application.agents.tool_executor import ToolExecutor
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from application.api.answer.services.prompt_renderer import (
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PromptRenderer,
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format_docs_for_prompt,
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)
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from application.api.answer.services.stream_processor import get_prompt
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from application.core.settings import settings
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from application.retriever.retriever_creator import RetrieverCreator
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from application.storage.db.repositories.sources import SourcesRepository
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from application.storage.db.session import db_readonly
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logger = logging.getLogger(__name__)
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def _resolve_owner(agent_config: Dict[str, Any]) -> Optional[str]:
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return agent_config.get("user_id") or agent_config.get("user")
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def _resolve_agent_id(agent_config: Dict[str, Any]) -> Optional[str]:
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raw = agent_config.get("id") or agent_config.get("_id")
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return str(raw) if raw else None
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def run_agent_headless(
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agent_config: Dict[str, Any],
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query: str,
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*,
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tool_allowlist: Optional[Iterable[str]] = None,
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model_id_override: Optional[str] = None,
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endpoint: str = "headless",
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chat_history: Optional[List[Dict[str, Any]]] = None,
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conversation_id: Optional[str] = None,
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) -> Dict[str, Any]:
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"""Run an agent with no live client; returns a structured outcome dict."""
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from application.core.model_utils import (
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get_api_key_for_provider,
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get_default_model_id,
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get_provider_from_model_id,
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validate_model_id,
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)
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from application.utils import calculate_doc_token_budget
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owner = _resolve_owner(agent_config)
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if not owner:
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raise ValueError("Agent config is missing user_id; cannot run headless.")
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decoded_token = {"sub": owner}
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retriever_kind = agent_config.get("retriever", "classic")
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source_id = agent_config.get("source_id") or agent_config.get("source")
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source_active: Any = {}
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if source_id:
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with db_readonly() as conn:
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src_row = SourcesRepository(conn).get(str(source_id), owner)
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if src_row:
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source_active = str(src_row["id"])
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retriever_kind = src_row.get("retriever", retriever_kind)
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source = {"active_docs": source_active}
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chunks = int(agent_config.get("chunks", 2) or 2)
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prompt_id = agent_config.get("prompt_id", "default")
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user_api_key = agent_config.get("key")
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agent_id = _resolve_agent_id(agent_config)
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agent_type = agent_config.get("agent_type", "classic")
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json_schema = agent_config.get("json_schema")
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prompt = get_prompt(prompt_id)
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candidate_model = model_id_override or agent_config.get("default_model_id") or ""
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if candidate_model and validate_model_id(candidate_model, user_id=owner):
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model_id = candidate_model
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else:
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model_id = get_default_model_id()
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if candidate_model:
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logger.warning(
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"Agent %s references unknown model_id %r; falling back to %r",
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agent_id, candidate_model, model_id,
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)
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provider = (
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get_provider_from_model_id(model_id, user_id=owner)
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if model_id
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else settings.LLM_PROVIDER
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)
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system_api_key = get_api_key_for_provider(provider or settings.LLM_PROVIDER)
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doc_token_limit = calculate_doc_token_budget(model_id=model_id, user_id=owner)
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retriever = RetrieverCreator.create_retriever(
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retriever_kind,
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source=source,
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chat_history=chat_history or [],
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prompt=prompt,
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chunks=chunks,
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doc_token_limit=doc_token_limit,
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model_id=model_id,
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user_api_key=user_api_key,
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agent_id=agent_id,
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decoded_token=decoded_token,
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)
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retrieved_docs: List[Dict[str, Any]] = []
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try:
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docs = retriever.search(query)
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if docs:
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retrieved_docs = docs
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except Exception as exc:
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logger.warning("Headless retrieve failed: %s", exc)
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# Render the prompt (Jinja namespaces / legacy {summaries}) so retrieved
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# docs actually reach the model — mirroring StreamProcessor.create_agent.
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try:
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prompt = PromptRenderer().render_prompt(
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prompt_content=prompt,
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user_id=owner,
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docs=retrieved_docs or None,
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docs_together=format_docs_for_prompt(retrieved_docs),
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artifact_parent={"conversation_id": conversation_id},
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)
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except Exception as exc:
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logger.warning("Headless prompt rendering failed; using raw prompt: %s", exc)
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tool_executor = ToolExecutor(
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user_api_key=user_api_key,
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user=owner,
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decoded_token=decoded_token,
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agent_id=agent_id,
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headless=True,
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tool_allowlist=list(tool_allowlist or []),
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)
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if conversation_id:
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tool_executor.conversation_id = str(conversation_id)
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agent = AgentCreator.create_agent(
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agent_type,
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endpoint=endpoint,
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llm_name=provider or settings.LLM_PROVIDER,
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model_id=model_id,
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api_key=system_api_key,
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agent_id=agent_id,
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user_api_key=user_api_key,
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prompt=prompt,
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chat_history=chat_history or [],
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retrieved_docs=retrieved_docs,
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decoded_token=decoded_token,
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attachments=[],
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json_schema=json_schema,
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tool_executor=tool_executor,
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)
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if conversation_id:
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agent.conversation_id = str(conversation_id)
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answer_full = ""
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thought = ""
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sources_log: List[Dict[str, Any]] = []
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tool_calls: List[Dict[str, Any]] = []
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for event in agent.gen(query=query):
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if not isinstance(event, dict):
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continue
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if "answer" in event:
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answer_full += str(event["answer"])
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elif "sources" in event:
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sources_log.extend(event["sources"])
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elif "tool_calls" in event:
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tool_calls.extend(event["tool_calls"])
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elif "thought" in event:
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thought += str(event["thought"])
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denied = list(getattr(tool_executor, "headless_denials", []))
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error_type = "tool_not_allowed" if denied and not answer_full.strip() else None
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# Use the LLM accumulator (gen_token_usage / stream_token_usage decorators);
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# current_token_count is a context-size sentinel, not a usage tally.
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llm_usage = getattr(getattr(agent, "llm", None), "token_usage", None) or {}
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prompt_tokens = int(llm_usage.get("prompt_tokens", 0) or 0)
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generated_tokens = int(llm_usage.get("generated_tokens", 0) or 0)
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return {
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"answer": answer_full,
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"thought": thought,
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"sources": sources_log,
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"tool_calls": tool_calls,
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"prompt_tokens": prompt_tokens,
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"generated_tokens": generated_tokens,
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"denied": denied,
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"error_type": error_type,
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"model_id": model_id,
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}
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