nanobot/nanobot/nanobot.py
chengyongru 3202f58c41 refactor: introduce AgentLoop.from_config() to centralize loop assembly
Extract duplicated bus/provider/loop initialization from CLI commands
(serve, _run_gateway, agent) and Nanobot facade into a single
AgentLoop.from_config() classmethod.

- Remove _make_provider() from cli/commands.py and nanobot.py
- Remove inline provider creation in all three CLI entry points
- AgentLoop.from_config() creates MessageBus, calls make_provider(),
  and assembles AgentLoop with all standard config-derived parameters
- Supports **extra overrides for callers that need custom args
  (e.g. cron_service, session_manager, provider_snapshot_loader)
- Update tests to mock make_provider at nanobot.providers.factory
  and add from_config classmethod to _FakeAgentLoop fixtures

This is PR 1/4 of the model-preset feature decomposition.
2026-05-09 15:30:48 +08:00

107 lines
3.1 KiB
Python

"""High-level programmatic interface to nanobot."""
from __future__ import annotations
from dataclasses import dataclass
from pathlib import Path
from typing import Any
from nanobot.agent.hook import AgentHook, SDKCaptureHook
from nanobot.agent.loop import AgentLoop
@dataclass(slots=True)
class RunResult:
"""Result of a single agent run."""
content: str
tools_used: list[str]
messages: list[dict[str, Any]]
class Nanobot:
"""Programmatic facade for running the nanobot agent.
Usage::
bot = Nanobot.from_config()
result = await bot.run("Summarize this repo", hooks=[MyHook()])
print(result.content)
"""
def __init__(self, loop: AgentLoop) -> None:
self._loop = loop
@classmethod
def from_config(
cls,
config_path: str | Path | None = None,
*,
workspace: str | Path | None = None,
) -> Nanobot:
"""Create a Nanobot instance from a config file.
Args:
config_path: Path to ``config.json``. Defaults to
``~/.nanobot/config.json``.
workspace: Override the workspace directory from config.
"""
from nanobot.config.loader import load_config, resolve_config_env_vars
from nanobot.config.schema import Config
resolved: Path | None = None
if config_path is not None:
resolved = Path(config_path).expanduser().resolve()
if not resolved.exists():
raise FileNotFoundError(f"Config not found: {resolved}")
config: Config = resolve_config_env_vars(load_config(resolved))
if workspace is not None:
config.agents.defaults.workspace = str(
Path(workspace).expanduser().resolve()
)
loop = AgentLoop.from_config(
config,
image_generation_provider_configs={
"openrouter": config.providers.openrouter,
"aihubmix": config.providers.aihubmix,
},
)
return cls(loop)
async def run(
self,
message: str,
*,
session_key: str = "sdk:default",
hooks: list[AgentHook] | None = None,
) -> RunResult:
"""Run the agent once and return the result.
Args:
message: The user message to process.
session_key: Session identifier for conversation isolation.
Different keys get independent history.
hooks: Optional lifecycle hooks for this run.
"""
capture = SDKCaptureHook()
prev = self._loop._extra_hooks
base_hooks = list(hooks) if hooks is not None else list(prev or [])
self._loop._extra_hooks = [capture, *base_hooks]
try:
response = await self._loop.process_direct(
message, session_key=session_key,
)
finally:
self._loop._extra_hooks = prev
content = (response.content if response else None) or ""
return RunResult(
content=content,
tools_used=capture.tools_used,
messages=capture.messages,
)