mirror of
https://github.com/MODSetter/SurfSense.git
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435 lines
17 KiB
Python
435 lines
17 KiB
Python
"""
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SurfSense deep agent implementation.
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This module provides the factory function for creating SurfSense deep agents
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with configurable tools via the tools registry and configurable prompts
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via NewLLMConfig.
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We use ``create_agent`` (from langchain) rather than ``create_deep_agent``
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(from deepagents) so that the middleware stack is fully under our control.
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This lets us swap in ``SurfSenseFilesystemMiddleware`` — a customisable
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subclass of the default ``FilesystemMiddleware`` — while preserving every
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other behaviour that ``create_deep_agent`` provides (todo-list, subagents,
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summarisation, prompt-caching, etc.).
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"""
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import asyncio
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import logging
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import time
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from collections.abc import Sequence
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from typing import Any
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from deepagents import SubAgent, SubAgentMiddleware, __version__ as deepagents_version
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from deepagents.backends import StateBackend
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from deepagents.graph import BASE_AGENT_PROMPT
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from deepagents.middleware.patch_tool_calls import PatchToolCallsMiddleware
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from deepagents.middleware.subagents import GENERAL_PURPOSE_SUBAGENT
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from langchain.agents import create_agent
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from langchain.agents.middleware import TodoListMiddleware
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from langchain_anthropic.middleware import AnthropicPromptCachingMiddleware
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from langchain_core.language_models import BaseChatModel
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from langchain_core.tools import BaseTool
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from langgraph.types import Checkpointer
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from sqlalchemy.ext.asyncio import AsyncSession
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from app.agents.new_chat.context import SurfSenseContextSchema
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from app.agents.new_chat.llm_config import AgentConfig
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from app.agents.new_chat.middleware import (
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DedupHITLToolCallsMiddleware,
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KnowledgeBaseSearchMiddleware,
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MemoryInjectionMiddleware,
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SurfSenseFilesystemMiddleware,
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)
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from app.agents.new_chat.middleware.safe_summarization import (
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create_safe_summarization_middleware,
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)
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from app.agents.new_chat.system_prompt import (
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build_configurable_system_prompt,
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build_surfsense_system_prompt,
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)
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from app.agents.new_chat.tools.registry import build_tools_async, get_connector_gated_tools
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from app.db import ChatVisibility
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from app.services.connector_service import ConnectorService
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from app.utils.perf import get_perf_logger
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_perf_log = get_perf_logger()
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# =============================================================================
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# Connector Type Mapping
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# =============================================================================
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# Maps SearchSourceConnectorType enum values to the searchable document/connector types
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# used by pre-search middleware and web_search.
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# Live search connectors (TAVILY_API, LINKUP_API, BAIDU_SEARCH_API) are routed to
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# the web_search tool; all others are considered local/indexed data.
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_CONNECTOR_TYPE_TO_SEARCHABLE: dict[str, str] = {
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# Live search connectors (handled by web_search tool)
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"TAVILY_API": "TAVILY_API",
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"LINKUP_API": "LINKUP_API",
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"BAIDU_SEARCH_API": "BAIDU_SEARCH_API",
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# Local/indexed connectors (handled by KB pre-search middleware)
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"SLACK_CONNECTOR": "SLACK_CONNECTOR",
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"TEAMS_CONNECTOR": "TEAMS_CONNECTOR",
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"NOTION_CONNECTOR": "NOTION_CONNECTOR",
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"GITHUB_CONNECTOR": "GITHUB_CONNECTOR",
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"LINEAR_CONNECTOR": "LINEAR_CONNECTOR",
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"DISCORD_CONNECTOR": "DISCORD_CONNECTOR",
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"JIRA_CONNECTOR": "JIRA_CONNECTOR",
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"CONFLUENCE_CONNECTOR": "CONFLUENCE_CONNECTOR",
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"CLICKUP_CONNECTOR": "CLICKUP_CONNECTOR",
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"GOOGLE_CALENDAR_CONNECTOR": "GOOGLE_CALENDAR_CONNECTOR",
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"GOOGLE_GMAIL_CONNECTOR": "GOOGLE_GMAIL_CONNECTOR",
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"GOOGLE_DRIVE_CONNECTOR": "GOOGLE_DRIVE_FILE", # Connector type differs from document type
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"AIRTABLE_CONNECTOR": "AIRTABLE_CONNECTOR",
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"LUMA_CONNECTOR": "LUMA_CONNECTOR",
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"ELASTICSEARCH_CONNECTOR": "ELASTICSEARCH_CONNECTOR",
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"WEBCRAWLER_CONNECTOR": "CRAWLED_URL", # Maps to document type
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"BOOKSTACK_CONNECTOR": "BOOKSTACK_CONNECTOR",
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"CIRCLEBACK_CONNECTOR": "CIRCLEBACK", # Connector type differs from document type
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"OBSIDIAN_CONNECTOR": "OBSIDIAN_CONNECTOR",
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"DROPBOX_CONNECTOR": "DROPBOX_FILE", # Connector type differs from document type
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"ONEDRIVE_CONNECTOR": "ONEDRIVE_FILE", # Connector type differs from document type
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# Composio connectors (unified to native document types).
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# Reverse of NATIVE_TO_LEGACY_DOCTYPE in app.db.
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"COMPOSIO_GOOGLE_DRIVE_CONNECTOR": "GOOGLE_DRIVE_FILE",
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"COMPOSIO_GMAIL_CONNECTOR": "GOOGLE_GMAIL_CONNECTOR",
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"COMPOSIO_GOOGLE_CALENDAR_CONNECTOR": "GOOGLE_CALENDAR_CONNECTOR",
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}
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# Document types that don't come from SearchSourceConnector but should always be searchable
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_ALWAYS_AVAILABLE_DOC_TYPES: list[str] = [
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"EXTENSION", # Browser extension data
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"FILE", # Uploaded files
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"NOTE", # User notes
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"YOUTUBE_VIDEO", # YouTube videos
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]
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def _map_connectors_to_searchable_types(
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connector_types: list[Any],
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) -> list[str]:
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"""
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Map SearchSourceConnectorType enums to searchable document/connector types.
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This function:
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1. Converts connector type enums to their searchable counterparts
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2. Includes always-available document types (EXTENSION, FILE, NOTE, YOUTUBE_VIDEO)
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3. Deduplicates while preserving order
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Args:
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connector_types: List of SearchSourceConnectorType enum values
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Returns:
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List of searchable connector/document type strings
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"""
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result_set: set[str] = set()
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result_list: list[str] = []
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# Add always-available document types first
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for doc_type in _ALWAYS_AVAILABLE_DOC_TYPES:
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if doc_type not in result_set:
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result_set.add(doc_type)
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result_list.append(doc_type)
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# Map each connector type to its searchable equivalent
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for ct in connector_types:
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# Handle both enum and string types
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ct_str = ct.value if hasattr(ct, "value") else str(ct)
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searchable = _CONNECTOR_TYPE_TO_SEARCHABLE.get(ct_str)
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if searchable and searchable not in result_set:
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result_set.add(searchable)
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result_list.append(searchable)
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return result_list
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# =============================================================================
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# Deep Agent Factory
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# =============================================================================
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async def create_surfsense_deep_agent(
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llm: BaseChatModel,
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search_space_id: int,
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db_session: AsyncSession,
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connector_service: ConnectorService,
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checkpointer: Checkpointer,
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user_id: str | None = None,
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thread_id: int | None = None,
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agent_config: AgentConfig | None = None,
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enabled_tools: list[str] | None = None,
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disabled_tools: list[str] | None = None,
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additional_tools: Sequence[BaseTool] | None = None,
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firecrawl_api_key: str | None = None,
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thread_visibility: ChatVisibility | None = None,
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mentioned_document_ids: list[int] | None = None,
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anon_session_id: str | None = None,
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):
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"""
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Create a SurfSense deep agent with configurable tools and prompts.
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The agent comes with built-in tools that can be configured:
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- generate_podcast: Generate audio podcasts from content
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- generate_image: Generate images from text descriptions using AI models
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- scrape_webpage: Extract content from webpages
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- update_memory: Update the user's personal or team memory document
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The agent also includes TodoListMiddleware by default (via create_deep_agent) which provides:
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- write_todos: Create and update planning/todo lists for complex tasks
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The system prompt can be configured via agent_config:
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- Custom system instructions (or use defaults)
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- Citation toggle (enable/disable citation requirements)
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Args:
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llm: ChatLiteLLM instance for the agent's language model
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search_space_id: The user's search space ID
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db_session: Database session for tools that need DB access
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connector_service: Initialized connector service for knowledge base search
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checkpointer: LangGraph checkpointer for conversation state persistence.
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Use AsyncPostgresSaver for production or MemorySaver for testing.
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user_id: The current user's UUID string (required for memory tools)
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agent_config: Optional AgentConfig from NewLLMConfig for prompt configuration.
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If None, uses default system prompt with citations enabled.
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enabled_tools: Explicit list of tool names to enable. If None, all default tools
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are enabled. Use this to limit which tools are available.
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disabled_tools: List of tool names to disable. Applied after enabled_tools.
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Use this to exclude specific tools from the defaults.
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additional_tools: Extra custom tools to add beyond the built-in ones.
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These are always added regardless of enabled/disabled settings.
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firecrawl_api_key: Optional Firecrawl API key for premium web scraping.
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Falls back to Chromium/Trafilatura if not provided.
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Returns:
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CompiledStateGraph: The configured deep agent
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Examples:
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# Create agent with all default tools and default prompt
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agent = create_surfsense_deep_agent(llm, search_space_id, db_session, ...)
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# Create agent with custom prompt configuration
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agent = create_surfsense_deep_agent(
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llm, search_space_id, db_session, ...,
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agent_config=AgentConfig(
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provider="OPENAI",
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model_name="gpt-4",
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api_key="...",
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system_instructions="Custom instructions...",
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citations_enabled=False,
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)
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)
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# Create agent with only specific tools
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agent = create_surfsense_deep_agent(
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llm, search_space_id, db_session, ...,
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enabled_tools=["scrape_webpage"]
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)
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# Create agent without podcast generation
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agent = create_surfsense_deep_agent(
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llm, search_space_id, db_session, ...,
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disabled_tools=["generate_podcast"]
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)
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# Add custom tools
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agent = create_surfsense_deep_agent(
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llm, search_space_id, db_session, ...,
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additional_tools=[my_custom_tool]
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)
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"""
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_t_agent_total = time.perf_counter()
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# Discover available connectors and document types for this search space
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available_connectors: list[str] | None = None
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available_document_types: list[str] | None = None
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_t0 = time.perf_counter()
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try:
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connector_types = await connector_service.get_available_connectors(
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search_space_id
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)
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if connector_types:
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available_connectors = _map_connectors_to_searchable_types(connector_types)
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available_document_types = await connector_service.get_available_document_types(
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search_space_id
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)
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except Exception as e:
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logging.warning(f"Failed to discover available connectors/document types: {e}")
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_perf_log.info(
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"[create_agent] Connector/doc-type discovery in %.3fs",
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time.perf_counter() - _t0,
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)
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# Build dependencies dict for the tools registry
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visibility = thread_visibility or ChatVisibility.PRIVATE
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# Extract the model's context window so tools can size their output.
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_model_profile = getattr(llm, "profile", None)
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_max_input_tokens: int | None = (
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_model_profile.get("max_input_tokens")
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if isinstance(_model_profile, dict)
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else None
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)
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dependencies = {
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"search_space_id": search_space_id,
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"db_session": db_session,
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"connector_service": connector_service,
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"firecrawl_api_key": firecrawl_api_key,
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"user_id": user_id,
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"thread_id": thread_id,
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"thread_visibility": visibility,
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"available_connectors": available_connectors,
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"available_document_types": available_document_types,
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"max_input_tokens": _max_input_tokens,
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"llm": llm,
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}
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modified_disabled_tools = list(disabled_tools) if disabled_tools else []
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modified_disabled_tools.extend(
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get_connector_gated_tools(available_connectors)
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)
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# Remove direct KB search tool; we now pre-seed a scoped filesystem via middleware.
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if "search_knowledge_base" not in modified_disabled_tools:
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modified_disabled_tools.append("search_knowledge_base")
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# Build tools using the async registry (includes MCP tools)
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_t0 = time.perf_counter()
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tools = await build_tools_async(
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dependencies=dependencies,
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enabled_tools=enabled_tools,
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disabled_tools=modified_disabled_tools,
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additional_tools=list(additional_tools) if additional_tools else None,
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)
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_perf_log.info(
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"[create_agent] build_tools_async in %.3fs (%d tools)",
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time.perf_counter() - _t0,
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len(tools),
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)
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# Build system prompt based on agent_config, scoped to the tools actually enabled
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_t0 = time.perf_counter()
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_enabled_tool_names = {t.name for t in tools}
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_user_disabled_tool_names = set(disabled_tools) if disabled_tools else set()
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# Collect generic MCP connector info so the system prompt can route queries
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# to their tools instead of falling back to "not in knowledge base".
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_mcp_connector_tools: dict[str, list[str]] = {}
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for t in tools:
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meta = getattr(t, "metadata", None) or {}
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if meta.get("mcp_is_generic") and meta.get("mcp_connector_name"):
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_mcp_connector_tools.setdefault(
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meta["mcp_connector_name"], [],
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).append(t.name)
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if _mcp_connector_tools:
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_perf_log.info("MCP connector tool routing: %s", _mcp_connector_tools)
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if agent_config is not None:
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system_prompt = build_configurable_system_prompt(
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custom_system_instructions=agent_config.system_instructions,
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use_default_system_instructions=agent_config.use_default_system_instructions,
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citations_enabled=agent_config.citations_enabled,
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thread_visibility=thread_visibility,
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enabled_tool_names=_enabled_tool_names,
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disabled_tool_names=_user_disabled_tool_names,
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mcp_connector_tools=_mcp_connector_tools,
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)
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else:
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system_prompt = build_surfsense_system_prompt(
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thread_visibility=thread_visibility,
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enabled_tool_names=_enabled_tool_names,
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disabled_tool_names=_user_disabled_tool_names,
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mcp_connector_tools=_mcp_connector_tools,
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)
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_perf_log.info(
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"[create_agent] System prompt built in %.3fs", time.perf_counter() - _t0
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)
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# -- Build the middleware stack (mirrors create_deep_agent internals) ------
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_memory_middleware = MemoryInjectionMiddleware(
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user_id=user_id,
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search_space_id=search_space_id,
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thread_visibility=visibility,
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)
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# General-purpose subagent middleware
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gp_middleware = [
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TodoListMiddleware(),
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_memory_middleware,
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SurfSenseFilesystemMiddleware(
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search_space_id=search_space_id,
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created_by_id=user_id,
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thread_id=thread_id,
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),
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create_safe_summarization_middleware(llm, StateBackend),
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PatchToolCallsMiddleware(),
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AnthropicPromptCachingMiddleware(unsupported_model_behavior="ignore"),
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]
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general_purpose_spec: SubAgent = { # type: ignore[typeddict-unknown-key]
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**GENERAL_PURPOSE_SUBAGENT,
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"model": llm,
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"tools": tools,
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"middleware": gp_middleware,
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}
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# Main agent middleware
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deepagent_middleware = [
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TodoListMiddleware(),
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_memory_middleware,
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KnowledgeBaseSearchMiddleware(
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llm=llm,
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search_space_id=search_space_id,
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available_connectors=available_connectors,
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available_document_types=available_document_types,
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mentioned_document_ids=mentioned_document_ids,
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anon_session_id=anon_session_id,
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),
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SurfSenseFilesystemMiddleware(
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search_space_id=search_space_id,
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created_by_id=user_id,
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thread_id=thread_id,
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),
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SubAgentMiddleware(backend=StateBackend, subagents=[general_purpose_spec]),
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create_safe_summarization_middleware(llm, StateBackend),
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PatchToolCallsMiddleware(),
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DedupHITLToolCallsMiddleware(agent_tools=tools),
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AnthropicPromptCachingMiddleware(unsupported_model_behavior="ignore"),
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]
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# Combine system_prompt with BASE_AGENT_PROMPT (same as create_deep_agent)
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final_system_prompt = system_prompt + "\n\n" + BASE_AGENT_PROMPT
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_t0 = time.perf_counter()
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agent = await asyncio.to_thread(
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create_agent,
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llm,
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system_prompt=final_system_prompt,
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tools=tools,
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middleware=deepagent_middleware,
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context_schema=SurfSenseContextSchema,
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checkpointer=checkpointer,
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)
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agent = agent.with_config(
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{
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"recursion_limit": 10_000,
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"metadata": {
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"ls_integration": "deepagents",
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"versions": {"deepagents": deepagents_version},
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},
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}
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)
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_perf_log.info(
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"[create_agent] Graph compiled (create_agent) in %.3fs",
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time.perf_counter() - _t0,
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)
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_perf_log.info(
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"[create_agent] Total agent creation in %.3fs",
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time.perf_counter() - _t_agent_total,
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)
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return agent
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