from dataclasses import dataclass, field
@dataclass
class AgentProfile:
"""
Defines a complete agent configuration.
A profile ties together a system prompt, an LLM backend, a model,
and the set of tools the agent is allowed to use.
"""
id: str
name: str
description: str
system_prompt: str
enabled_tools: list[str] # tool names; resolved by ToolRegistry at runtime
llm_backend: str = "ollama" # backend key, e.g. "ollama", "openai"
model: str = "gemma4:26b-a4b-it-q4_K_M"
max_iterations: int = 10
temperature: float = 0.7
planning_enabled: bool = False # if True, run a planning LLM call before the main loop
# Profile discoverability — used for system prompt injection and list_profiles tool.
# short_description: 1-line summary shown in every system prompt to all profiles.
# full_description: structured dict with keys: specialization, when_to_use, key_tools.
short_description: str = ""
full_description: dict = field(default_factory=dict)
# Sub-agent configuration
# subagent_tools: tool names available to sub-agents spawned from this profile.
# If empty, falls back to enabled_tools minus dangerous/irrelevant ones.
# subagent_planning_enabled: if True, sub-agents run the planning phase before their tool loop.
# subagent_system_prompt: injected as an additional system message for sub-agents,
# after the profile's main system_prompt. Loaded from subagent_system_prompt.txt if present.
subagent_tools: list[str] = field(default_factory=list)
subagent_planning_enabled: bool = False
subagent_system_prompt: str = ""