refactor: extract main agent

This commit is contained in:
Soulter
2026-02-01 00:43:41 +08:00
parent 4ea865f017
commit 0c5308a132
9 changed files with 781 additions and 636 deletions
+32
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@@ -0,0 +1,32 @@
.PHONY: worktree worktree-add worktree-rm
WORKTREE_DIR ?= ../astrbot_worktree
BRANCH ?= $(word 2,$(MAKECMDGOALS))
BASE ?= $(word 3,$(MAKECMDGOALS))
BASE ?= master
worktree:
@echo "Usage:"
@echo " make worktree-add <branch> [base-branch]"
@echo " make worktree-rm <branch>"
worktree-add:
ifeq ($(strip $(BRANCH)),)
$(error Branch name required. Usage: make worktree-add <branch> [base-branch])
endif
@mkdir -p $(WORKTREE_DIR)
git worktree add $(WORKTREE_DIR)/$(BRANCH) -b $(BRANCH) $(BASE)
worktree-rm:
ifeq ($(strip $(BRANCH)),)
$(error Branch name required. Usage: make worktree-rm <branch>)
endif
@if [ -d "$(WORKTREE_DIR)/$(BRANCH)" ]; then \
git worktree remove $(WORKTREE_DIR)/$(BRANCH); \
else \
echo "Worktree $(WORKTREE_DIR)/$(BRANCH) not found."; \
fi
# Swallow extra args (branch/base) so make doesn't treat them as targets
%:
@true
@@ -9,7 +9,7 @@ from astrbot.api.message_components import Image, Reply
from astrbot.api.provider import Provider, ProviderRequest
from astrbot.core.agent.handoff import HandoffTool
from astrbot.core.agent.message import TextPart
from astrbot.core.pipeline.process_stage.utils import (
from astrbot.core.astr_main_agent_resources import (
CHATUI_SPECIAL_DEFAULT_PERSONA_PROMPT,
LOCAL_EXECUTE_SHELL_TOOL,
LOCAL_PYTHON_TOOL,
+45 -1
View File
@@ -22,6 +22,7 @@ from astrbot.core.message.message_event_result import (
)
from astrbot.core.platform.message_session import MessageSession
from astrbot.core.provider.register import llm_tools
from astrbot.core.message.components import Plain
class FunctionToolExecutor(BaseFunctionToolExecutor[AstrAgentContext]):
@@ -147,6 +148,8 @@ class FunctionToolExecutor(BaseFunctionToolExecutor[AstrAgentContext]):
task_id: str,
**tool_args,
):
from astrbot.core.astr_main_agent import build_main_agent, MainAgentBuildConfig
# run the tool
result_text = ""
try:
@@ -187,7 +190,48 @@ class FunctionToolExecutor(BaseFunctionToolExecutor[AstrAgentContext]):
extras=extras,
message_type=session.message_type,
)
ctx.get_event_queue().put_nowait(cron_event)
config = MainAgentBuildConfig(tool_call_timeout=3600)
result = await build_main_agent(
event=cron_event, plugin_context=ctx, config=config
)
if not result:
logger.error("Failed to build main agent for cron job.")
return
runner = result.agent_runner
req = result.provider_request
bg = extras["background_task_result"]
result_text = bg["result"] or "Empty Response"
if req.contexts:
context_dump = req._print_friendly_context()
req.system_prompt += (
"\n\nBellow is you and user previous conversation history:\n"
f"{context_dump}"
)
req.system_prompt += (
"You now have a new background task result:\n"
f"- Task ID: {bg['task_id']}\n"
f"- Executed Tool: {tool.name}\n"
f"- Tool Args: {tool_args}\n"
f"- Result: {result_text}\n"
f"- Note: {note}\n"
"Please tell the user the result of the background task in your next response."
)
req.prompt = (
"You have a new background task result to report to the user."
" Please include the result in your next response."
" Using same language as previous conversation."
)
async for _ in runner.step_until_done(30):
pass
llm_resp = runner.get_final_llm_resp()
if not llm_resp:
logger.warning("Cron job agent got no response")
return
message_chain = MessageChain(chain=[Plain(text=llm_resp.completion_text)])
await ctx.send_message(session=session, message_chain=message_chain)
@classmethod
async def _execute_local(
+545
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@@ -0,0 +1,545 @@
from __future__ import annotations
import asyncio
import json
import os
from dataclasses import dataclass, field
from astrbot.core import logger
from astrbot.core.agent.message import TextPart
from astrbot.core.agent.tool import ToolSet
from astrbot.core.astr_agent_context import AgentContextWrapper, AstrAgentContext
from astrbot.core.astr_agent_hooks import MAIN_AGENT_HOOKS
from astrbot.core.astr_agent_run_util import AgentRunner
from astrbot.core.astr_agent_tool_exec import FunctionToolExecutor
from astrbot.core.conversation_mgr import Conversation
from astrbot.core.message.components import File, Image, Reply
from astrbot.core.platform.astr_message_event import AstrMessageEvent
from astrbot.core.provider import Provider
from astrbot.core.provider.entities import ProviderRequest
from astrbot.core.star.context import Context
from astrbot.core.star.star_handler import star_map
from astrbot.core.tools.cron_tools import (
CREATE_CRON_JOB_TOOL,
DELETE_CRON_JOB_TOOL,
LIST_CRON_JOBS_TOOL,
)
from astrbot.core.utils.file_extract import extract_file_moonshotai
from astrbot.core.utils.llm_metadata import LLM_METADATAS
from .astr_main_agent_resources import (
CHATUI_EXTRA_PROMPT,
EXECUTE_SHELL_TOOL,
FILE_DOWNLOAD_TOOL,
FILE_UPLOAD_TOOL,
KNOWLEDGE_BASE_QUERY_TOOL,
LIVE_MODE_SYSTEM_PROMPT,
LLM_SAFETY_MODE_SYSTEM_PROMPT,
PYTHON_TOOL,
SANDBOX_MODE_PROMPT,
TOOL_CALL_PROMPT,
TOOL_CALL_PROMPT_SKILLS_LIKE_MODE,
retrieve_knowledge_base,
)
@dataclass(slots=True)
class MainAgentBuildConfig:
tool_call_timeout: int
tool_schema_mode: str = "full"
provider_wake_prefix: str = ""
streaming_response: bool = True
sanitize_context_by_modalities: bool = False
kb_agentic_mode: bool = False
file_extract_enabled: bool = False
file_extract_prov: str = "moonshotai"
file_extract_msh_api_key: str = ""
context_limit_reached_strategy: str = "truncate_by_turns"
llm_compress_instruction: str = ""
llm_compress_keep_recent: int = 4
llm_compress_provider_id: str = ""
max_context_length: int = 0
dequeue_context_length: int = 1
llm_safety_mode: bool = True
safety_mode_strategy: str = "system_prompt"
sandbox_cfg: dict = field(default_factory=dict)
@dataclass(slots=True)
class MainAgentBuildResult:
agent_runner: AgentRunner
provider_request: ProviderRequest
provider: Provider
def _select_provider(
event: AstrMessageEvent, plugin_context: Context
) -> Provider | None:
"""Select chat provider for the event."""
sel_provider = event.get_extra("selected_provider")
if sel_provider and isinstance(sel_provider, str):
provider = plugin_context.get_provider_by_id(sel_provider)
if not provider:
logger.error("未找到指定的提供商: %s", sel_provider)
if not isinstance(provider, Provider):
logger.error(
"选择的提供商类型无效(%s),跳过 LLM 请求处理。", type(provider)
)
return None
return provider
try:
return plugin_context.get_using_provider(umo=event.unified_msg_origin)
except ValueError as exc:
logger.error("Error occurred while selecting provider: %s", exc)
return None
async def _get_session_conv(
event: AstrMessageEvent, plugin_context: Context
) -> Conversation:
conv_mgr = plugin_context.conversation_manager
umo = event.unified_msg_origin
cid = await conv_mgr.get_curr_conversation_id(umo)
if not cid:
cid = await conv_mgr.new_conversation(umo, event.get_platform_id())
conversation = await conv_mgr.get_conversation(umo, cid)
if not conversation:
cid = await conv_mgr.new_conversation(umo, event.get_platform_id())
conversation = await conv_mgr.get_conversation(umo, cid)
if not conversation:
raise RuntimeError("无法创建新的对话。")
return conversation
async def _apply_kb(
event: AstrMessageEvent,
req: ProviderRequest,
plugin_context: Context,
config: MainAgentBuildConfig,
) -> None:
if not config.kb_agentic_mode:
if req.prompt is None:
return
try:
kb_result = await retrieve_knowledge_base(
query=req.prompt,
umo=event.unified_msg_origin,
context=plugin_context,
)
if not kb_result:
return
if req.system_prompt is not None:
req.system_prompt += (
f"\n\n[Related Knowledge Base Results]:\n{kb_result}"
)
except Exception as exc: # noqa: BLE001
logger.error("Error occurred while retrieving knowledge base: %s", exc)
else:
if req.func_tool is None:
req.func_tool = ToolSet()
req.func_tool.add_tool(KNOWLEDGE_BASE_QUERY_TOOL)
async def _apply_file_extract(
event: AstrMessageEvent,
req: ProviderRequest,
config: MainAgentBuildConfig,
) -> None:
file_paths = []
file_names = []
for comp in event.message_obj.message:
if isinstance(comp, File):
file_paths.append(await comp.get_file())
file_names.append(comp.name)
elif isinstance(comp, Reply) and comp.chain:
for reply_comp in comp.chain:
if isinstance(reply_comp, File):
file_paths.append(await reply_comp.get_file())
file_names.append(reply_comp.name)
if not file_paths:
return
if not req.prompt:
req.prompt = "总结一下文件里面讲了什么?"
if config.file_extract_prov == "moonshotai":
if not config.file_extract_msh_api_key:
logger.error("Moonshot AI API key for file extract is not set")
return
file_contents = await asyncio.gather(
*[
extract_file_moonshotai(
file_path,
config.file_extract_msh_api_key,
)
for file_path in file_paths
]
)
else:
logger.error("Unsupported file extract provider: %s", config.file_extract_prov)
return
for file_content, file_name in zip(file_contents, file_names):
req.contexts.append(
{
"role": "system",
"content": (
"File Extract Results of user uploaded files:\n"
f"{file_content}\nFile Name: {file_name or 'Unknown'}"
),
},
)
def _modalities_fix(provider: Provider, req: ProviderRequest) -> None:
if req.image_urls:
provider_cfg = provider.provider_config.get("modalities", ["image"])
if "image" not in provider_cfg:
logger.debug(
"Provider %s does not support image, using placeholder.", provider
)
image_count = len(req.image_urls)
placeholder = " ".join(["[图片]"] * image_count)
if req.prompt:
req.prompt = f"{placeholder} {req.prompt}"
else:
req.prompt = placeholder
req.image_urls = []
if req.func_tool:
provider_cfg = provider.provider_config.get("modalities", ["tool_use"])
if "tool_use" not in provider_cfg:
logger.debug(
"Provider %s does not support tool_use, clearing tools.", provider
)
req.func_tool = None
def _sanitize_context_by_modalities(
config: MainAgentBuildConfig,
provider: Provider,
req: ProviderRequest,
) -> None:
if not config.sanitize_context_by_modalities:
return
if not isinstance(req.contexts, list) or not req.contexts:
return
modalities = provider.provider_config.get("modalities", None)
if not modalities or not isinstance(modalities, list):
return
supports_image = bool("image" in modalities)
supports_tool_use = bool("tool_use" in modalities)
if supports_image and supports_tool_use:
return
sanitized_contexts: list[dict] = []
removed_image_blocks = 0
removed_tool_messages = 0
removed_tool_calls = 0
for msg in req.contexts:
if not isinstance(msg, dict):
continue
role = msg.get("role")
if not role:
continue
new_msg = msg
if not supports_tool_use:
if role == "tool":
removed_tool_messages += 1
continue
if role == "assistant" and "tool_calls" in new_msg:
if "tool_calls" in new_msg:
removed_tool_calls += 1
new_msg.pop("tool_calls", None)
new_msg.pop("tool_call_id", None)
if not supports_image:
content = new_msg.get("content")
if isinstance(content, list):
filtered_parts: list = []
removed_any_image = False
for part in content:
if isinstance(part, dict):
part_type = str(part.get("type", "")).lower()
if part_type in {"image_url", "image"}:
removed_any_image = True
removed_image_blocks += 1
continue
filtered_parts.append(part)
if removed_any_image:
new_msg["content"] = filtered_parts
if role == "assistant":
content = new_msg.get("content")
has_tool_calls = bool(new_msg.get("tool_calls"))
if not has_tool_calls:
if not content:
continue
if isinstance(content, str) and not content.strip():
continue
sanitized_contexts.append(new_msg)
if removed_image_blocks or removed_tool_messages or removed_tool_calls:
logger.debug(
"sanitize_context_by_modalities applied: "
"removed_image_blocks=%s, removed_tool_messages=%s, removed_tool_calls=%s",
removed_image_blocks,
removed_tool_messages,
removed_tool_calls,
)
req.contexts = sanitized_contexts
def _plugin_tool_fix(event: AstrMessageEvent, req: ProviderRequest) -> None:
if event.plugins_name is not None and req.func_tool:
new_tool_set = ToolSet()
for tool in req.func_tool.tools:
mp = tool.handler_module_path
if not mp:
continue
plugin = star_map.get(mp)
if not plugin:
continue
if plugin.name in event.plugins_name or plugin.reserved:
new_tool_set.add_tool(tool)
req.func_tool = new_tool_set
async def _handle_webchat(
event: AstrMessageEvent, req: ProviderRequest, prov: Provider
) -> None:
from astrbot.core import db_helper
chatui_session_id = event.session_id.split("!")[-1]
user_prompt = req.prompt
session = await db_helper.get_platform_session_by_id(chatui_session_id)
if not user_prompt or not chatui_session_id or not session or session.display_name:
return
llm_resp = await prov.text_chat(
system_prompt=(
"You are a conversation title generator. "
"Generate a concise title in the same language as the users input, "
"no more than 10 words, capturing only the core topic."
"If the input is a greeting, small talk, or has no clear topic, "
"(e.g., “hi”, “hello”, “haha”), return <None>. "
"Output only the title itself or <None>, with no explanations."
),
prompt=f"Generate a concise title for the following user query:\n{user_prompt}",
)
if llm_resp and llm_resp.completion_text:
title = llm_resp.completion_text.strip()
if not title or "<None>" in title:
return
logger.info(
"Generated chatui title for session %s: %s", chatui_session_id, title
)
await db_helper.update_platform_session(
session_id=chatui_session_id,
display_name=title,
)
def _apply_llm_safety_mode(config: MainAgentBuildConfig, req: ProviderRequest) -> None:
if config.safety_mode_strategy == "system_prompt":
req.system_prompt = (
f"{LLM_SAFETY_MODE_SYSTEM_PROMPT}\n\n{req.system_prompt or ''}"
)
else:
logger.warning(
"Unsupported llm_safety_mode strategy: %s.",
config.safety_mode_strategy,
)
def _apply_sandbox_tools(
config: MainAgentBuildConfig, req: ProviderRequest, session_id: str
) -> None:
if req.func_tool is None:
req.func_tool = ToolSet()
if config.sandbox_cfg.get("booter") == "shipyard":
ep = config.sandbox_cfg.get("shipyard_endpoint", "")
at = config.sandbox_cfg.get("shipyard_access_token", "")
if not ep or not at:
logger.error("Shipyard sandbox configuration is incomplete.")
return
os.environ["SHIPYARD_ENDPOINT"] = ep
os.environ["SHIPYARD_ACCESS_TOKEN"] = at
req.func_tool.add_tool(EXECUTE_SHELL_TOOL)
req.func_tool.add_tool(PYTHON_TOOL)
req.func_tool.add_tool(FILE_UPLOAD_TOOL)
req.func_tool.add_tool(FILE_DOWNLOAD_TOOL)
req.system_prompt += f"\n{SANDBOX_MODE_PROMPT}\n"
def _proactive_cron_job_tools(req: ProviderRequest, event: AstrMessageEvent) -> None:
if req.func_tool is None:
req.func_tool = ToolSet()
req.func_tool.add_tool(CREATE_CRON_JOB_TOOL)
req.func_tool.add_tool(DELETE_CRON_JOB_TOOL)
req.func_tool.add_tool(LIST_CRON_JOBS_TOOL)
def _get_compress_provider(
config: MainAgentBuildConfig, plugin_context: Context
) -> Provider | None:
if not config.llm_compress_provider_id:
return None
if config.context_limit_reached_strategy != "llm_compress":
return None
provider = plugin_context.get_provider_by_id(config.llm_compress_provider_id)
if provider is None:
logger.warning(
"未找到指定的上下文压缩模型 %s,将跳过压缩。",
config.llm_compress_provider_id,
)
return None
if not isinstance(provider, Provider):
logger.warning(
"指定的上下文压缩模型 %s 不是对话模型,将跳过压缩。",
config.llm_compress_provider_id,
)
return None
return provider
async def build_main_agent(
*,
event: AstrMessageEvent,
plugin_context: Context,
config: MainAgentBuildConfig,
provider: Provider | None = None,
req: ProviderRequest | None = None,
) -> MainAgentBuildResult | None:
"""构建主对话代理(Main Agent),并且自动 reset。"""
provider = provider or _select_provider(event, plugin_context)
if provider is None:
logger.info("未找到任何对话模型(提供商),跳过 LLM 请求处理。")
return None
if req is None:
if event.get_extra("provider_request"):
req = event.get_extra("provider_request")
assert isinstance(req, ProviderRequest), (
"provider_request 必须是 ProviderRequest 类型。"
)
if req.conversation:
req.contexts = json.loads(req.conversation.history)
else:
req = ProviderRequest()
req.prompt = ""
req.image_urls = []
if sel_model := event.get_extra("selected_model"):
req.model = sel_model
if config.provider_wake_prefix and not event.message_str.startswith(
config.provider_wake_prefix
):
return None
req.prompt = event.message_str[len(config.provider_wake_prefix) :]
for comp in event.message_obj.message:
if isinstance(comp, Image):
image_path = await comp.convert_to_file_path()
req.image_urls.append(image_path)
req.extra_user_content_parts.append(
TextPart(text=f"[Image Attachment: path {image_path}]")
)
elif isinstance(comp, File):
file_path = await comp.get_file()
file_name = comp.name or os.path.basename(file_path)
req.extra_user_content_parts.append(
TextPart(
text=f"[File Attachment: name {file_name}, path {file_path}]"
)
)
conversation = await _get_session_conv(event, plugin_context)
req.conversation = conversation
req.contexts = json.loads(conversation.history)
event.set_extra("provider_request", req)
if isinstance(req.contexts, str):
req.contexts = json.loads(req.contexts)
if config.file_extract_enabled:
try:
await _apply_file_extract(event, req, config)
except Exception as exc: # noqa: BLE001
logger.error("Error occurred while applying file extract: %s", exc)
if not req.prompt and not req.image_urls:
if not event.get_group_id() and req.extra_user_content_parts:
req.prompt = "<attachment>"
else:
return None
await _apply_kb(event, req, plugin_context, config)
if not req.session_id:
req.session_id = event.unified_msg_origin
_modalities_fix(provider, req)
_plugin_tool_fix(event, req)
_sanitize_context_by_modalities(config, provider, req)
if config.llm_safety_mode:
_apply_llm_safety_mode(config, req)
if config.sandbox_cfg.get("enable", False):
_apply_sandbox_tools(config, req, req.session_id)
agent_runner = AgentRunner()
astr_agent_ctx = AstrAgentContext(
context=plugin_context,
event=event,
)
_proactive_cron_job_tools(req, event)
if provider.provider_config.get("max_context_tokens", 0) <= 0:
model = provider.get_model()
if model_info := LLM_METADATAS.get(model):
provider.provider_config["max_context_tokens"] = model_info["limit"][
"context"
]
if event.get_platform_name() == "webchat":
asyncio.create_task(_handle_webchat(event, req, provider))
req.system_prompt += f"\n{CHATUI_EXTRA_PROMPT}\n"
if req.func_tool and req.func_tool.tools:
tool_prompt = (
TOOL_CALL_PROMPT
if config.tool_schema_mode == "full"
else TOOL_CALL_PROMPT_SKILLS_LIKE_MODE
)
req.system_prompt += f"\n{tool_prompt}\n"
action_type = event.get_extra("action_type")
if action_type == "live":
req.system_prompt += f"\n{LIVE_MODE_SYSTEM_PROMPT}\n"
await agent_runner.reset(
provider=provider,
request=req,
run_context=AgentContextWrapper(
context=astr_agent_ctx,
tool_call_timeout=config.tool_call_timeout,
),
tool_executor=FunctionToolExecutor(),
agent_hooks=MAIN_AGENT_HOOKS,
streaming=config.streaming_response,
llm_compress_instruction=config.llm_compress_instruction,
llm_compress_keep_recent=config.llm_compress_keep_recent,
llm_compress_provider=_get_compress_provider(config, plugin_context),
truncate_turns=config.dequeue_context_length,
enforce_max_turns=config.max_context_length,
tool_schema_mode=config.tool_schema_mode,
)
return MainAgentBuildResult(
agent_runner=agent_runner,
provider_request=req,
provider=provider,
)
@@ -165,7 +165,9 @@ class SendMessageToUserTool(FunctionTool[AstrAgentContext]):
try:
target_session = (
MessageSession.from_str(session) if isinstance(session, str) else session
MessageSession.from_str(session)
if isinstance(session, str)
else session
)
except Exception as e:
return f"error: invalid session: {e}"
+2 -2
View File
@@ -163,7 +163,7 @@ class AstrBotCoreLifecycle:
self.kb_manager = KnowledgeBaseManager(self.provider_manager)
# 初始化 CronJob 管理器
self.cron_manager = CronJobManager(self.star_context, self.db)
self.cron_manager = CronJobManager(self.db)
# 初始化提供给插件的上下文
self.star_context = Context(
@@ -231,7 +231,7 @@ class AstrBotCoreLifecycle:
cron_task = None
if self.cron_manager:
cron_task = asyncio.create_task(
self.cron_manager.start(),
self.cron_manager.start(self.star_context),
name="cron_manager",
)
+52 -7
View File
@@ -11,20 +11,27 @@ from astrbot.core.cron.events import CronMessageEvent
from astrbot.core.db import BaseDatabase
from astrbot.core.db.po import CronJob
from astrbot.core.platform.message_session import MessageSession
from astrbot.core.message.message_event_result import MessageChain
from astrbot.core.message.components import Plain
from typing import TYPE_CHECKING
if TYPE_CHECKING:
from astrbot.core.star.context import Context
class CronJobManager:
"""Central scheduler for BasicCronJob and ActiveAgentCronJob."""
def __init__(self, ctx, db: BaseDatabase):
self.ctx = ctx
def __init__(self, db: BaseDatabase):
self.db = db
self.scheduler = AsyncIOScheduler()
self._basic_handlers: dict[str, Callable[..., Any]] = {}
self._lock = asyncio.Lock()
self._started = False
async def start(self):
async def start(self, ctx: "Context"):
self.ctx: Context = ctx # star context
async with self._lock:
if self._started:
return
@@ -219,19 +226,21 @@ class CronJobManager:
"cron_payload": payload,
}
await self._dispatch_agent_event(
await self._woke_main_agent(
message=note,
session_str=session_str,
extras=extras,
)
async def _dispatch_agent_event(
async def _woke_main_agent(
self,
*,
message: str,
session_str: str,
extras: dict | None = None,
extras: dict,
):
from astrbot.core.astr_main_agent import build_main_agent, MainAgentBuildConfig
try:
session = (
session_str
@@ -250,7 +259,43 @@ class CronJobManager:
message_type=session.message_type,
)
await self.ctx.get_event_queue().put(cron_event)
config = MainAgentBuildConfig(tool_call_timeout=3600)
result = await build_main_agent(
event=cron_event, plugin_context=self.ctx, config=config
)
if not result:
logger.error("Failed to build main agent for cron job.")
return
req = result.provider_request
runner = result.agent_runner
# finetine the messages
job_name = extras.get("name", "scheduled task")
note = extras.get("note") or extras.get("description") or ""
if req.contexts:
context_dump = req._print_friendly_context()
req.system_prompt += (
"\n\nBellow is you and user previous conversation history:\n"
f"{context_dump}"
)
req.system_prompt += (
"\n[Scheduler Context] This turn is triggered automatically by cron job "
f'"{job_name}" (type: {extras.get("type", "unknown")}). '
"Act proactively based on the provided note and current context. "
)
if note:
req.system_prompt += f"[Scheduler Note]: {note}\n"
req.prompt = "You are now responding to a scheduled task. Output using same language as previous conversation."
async for _ in runner.step_until_done(30):
pass
llm_resp = runner.get_final_llm_resp()
if not llm_resp:
logger.warning("Cron job agent got no response")
return
message_chain = MessageChain(chain=[Plain(text=llm_resp.completion_text)])
await self.ctx.send_message(session=session, message_chain=message_chain)
__all__ = ["CronJobManager"]
@@ -1,61 +1,36 @@
"""本地 Agent 模式的 LLM 调用 Stage"""
import asyncio
import json
import os
import base64
from collections.abc import AsyncGenerator
from astrbot.core import logger
from astrbot.core.agent.message import Message, TextPart
from astrbot.core.agent.message import Message
from astrbot.core.agent.response import AgentStats
from astrbot.core.agent.tool import ToolSet
from astrbot.core.astr_agent_context import AstrAgentContext
from astrbot.core.conversation_mgr import Conversation
from astrbot.core.message.components import File, Image, Reply
from astrbot.core.message.components import File, Image
from astrbot.core.message.message_event_result import (
MessageChain,
MessageEventResult,
ResultContentType,
)
from astrbot.core.platform.astr_message_event import AstrMessageEvent
from astrbot.core.provider import Provider
from astrbot.core.provider.entities import (
LLMResponse,
ProviderRequest,
)
from astrbot.core.star.star_handler import EventType, star_map
from astrbot.core.utils.file_extract import extract_file_moonshotai
from astrbot.core.utils.llm_metadata import LLM_METADATAS
from astrbot.core.star.star_handler import EventType
from astrbot.core.utils.metrics import Metric
from astrbot.core.utils.session_lock import session_lock_manager
from .....astr_agent_context import AgentContextWrapper
from .....astr_agent_hooks import MAIN_AGENT_HOOKS
from .....astr_agent_run_util import AgentRunner, run_agent, run_live_agent
from .....astr_agent_tool_exec import FunctionToolExecutor
from .....astr_agent_run_util import run_agent, run_live_agent
from ....context import PipelineContext, call_event_hook
from ...stage import Stage
from ...utils import (
CHATUI_EXTRA_PROMPT,
EXECUTE_SHELL_TOOL,
FILE_DOWNLOAD_TOOL,
FILE_UPLOAD_TOOL,
KNOWLEDGE_BASE_QUERY_TOOL,
LIVE_MODE_SYSTEM_PROMPT,
LLM_SAFETY_MODE_SYSTEM_PROMPT,
PYTHON_TOOL,
SANDBOX_MODE_PROMPT,
TOOL_CALL_PROMPT,
TOOL_CALL_PROMPT_SKILLS_LIKE_MODE,
SEND_MESSAGE_TO_USER_TOOL,
decoded_blocked,
retrieve_knowledge_base,
)
from astrbot.core.tools.cron_tools import (
CREATE_CRON_JOB_TOOL,
DELETE_CRON_JOB_TOOL,
LIST_CRON_JOBS_TOOL,
from astrbot.core.astr_main_agent import (
MainAgentBuildConfig,
MainAgentBuildResult,
build_main_agent,
)
from dataclasses import replace
class InternalAgentSubStage(Stage):
@@ -121,453 +96,35 @@ class InternalAgentSubStage(Stage):
self.conv_manager = ctx.plugin_manager.context.conversation_manager
def _select_provider(self, event: AstrMessageEvent):
"""选择使用的 LLM 提供商"""
sel_provider = event.get_extra("selected_provider")
_ctx = self.ctx.plugin_manager.context
if sel_provider and isinstance(sel_provider, str):
provider = _ctx.get_provider_by_id(sel_provider)
if not provider:
logger.error(f"未找到指定的提供商: {sel_provider}")
return provider
try:
prov = _ctx.get_using_provider(umo=event.unified_msg_origin)
except ValueError as e:
logger.error(f"Error occurred while selecting provider: {e}")
return None
return prov
async def _get_session_conv(self, event: AstrMessageEvent) -> Conversation:
umo = event.unified_msg_origin
conv_mgr = self.conv_manager
# 获取对话上下文
cid = await conv_mgr.get_curr_conversation_id(umo)
if not cid:
cid = await conv_mgr.new_conversation(umo, event.get_platform_id())
conversation = await conv_mgr.get_conversation(umo, cid)
if not conversation:
cid = await conv_mgr.new_conversation(umo, event.get_platform_id())
conversation = await conv_mgr.get_conversation(umo, cid)
if not conversation:
raise RuntimeError("无法创建新的对话。")
return conversation
async def _apply_kb(
self,
event: AstrMessageEvent,
req: ProviderRequest,
):
"""Apply knowledge base context to the provider request"""
if not self.kb_agentic_mode:
if req.prompt is None:
return
try:
kb_result = await retrieve_knowledge_base(
query=req.prompt,
umo=event.unified_msg_origin,
context=self.ctx.plugin_manager.context,
)
if not kb_result:
return
if req.system_prompt is not None:
req.system_prompt += (
f"\n\n[Related Knowledge Base Results]:\n{kb_result}"
)
except Exception as e:
logger.error(f"Error occurred while retrieving knowledge base: {e}")
else:
if req.func_tool is None:
req.func_tool = ToolSet()
req.func_tool.add_tool(KNOWLEDGE_BASE_QUERY_TOOL)
async def _apply_file_extract(
self,
event: AstrMessageEvent,
req: ProviderRequest,
):
"""Apply file extract to the provider request"""
file_paths = []
file_names = []
for comp in event.message_obj.message:
if isinstance(comp, File):
file_paths.append(await comp.get_file())
file_names.append(comp.name)
elif isinstance(comp, Reply) and comp.chain:
for reply_comp in comp.chain:
if isinstance(reply_comp, File):
file_paths.append(await reply_comp.get_file())
file_names.append(reply_comp.name)
if not file_paths:
return
if not req.prompt:
req.prompt = "总结一下文件里面讲了什么?"
if self.file_extract_prov == "moonshotai":
if not self.file_extract_msh_api_key:
logger.error("Moonshot AI API key for file extract is not set")
return
file_contents = await asyncio.gather(
*[
extract_file_moonshotai(file_path, self.file_extract_msh_api_key)
for file_path in file_paths
]
)
else:
logger.error(f"Unsupported file extract provider: {self.file_extract_prov}")
return
# add file extract results to contexts
for file_content, file_name in zip(file_contents, file_names):
req.contexts.append(
{
"role": "system",
"content": f"File Extract Results of user uploaded files:\n{file_content}\nFile Name: {file_name or 'Unknown'}",
},
)
def _modalities_fix(
self,
provider: Provider,
req: ProviderRequest,
):
"""检查提供商的模态能力,清理请求中的不支持内容"""
if req.image_urls:
provider_cfg = provider.provider_config.get("modalities", ["image"])
if "image" not in provider_cfg:
logger.debug(
f"用户设置提供商 {provider} 不支持图像,将图像替换为占位符。"
)
# 为每个图片添加占位符到 prompt
image_count = len(req.image_urls)
placeholder = " ".join(["[图片]"] * image_count)
if req.prompt:
req.prompt = f"{placeholder} {req.prompt}"
else:
req.prompt = placeholder
req.image_urls = []
if req.func_tool:
provider_cfg = provider.provider_config.get("modalities", ["tool_use"])
# 如果模型不支持工具使用,但请求中包含工具列表,则清空。
if "tool_use" not in provider_cfg:
logger.debug(
f"用户设置提供商 {provider} 不支持工具使用,清空工具列表。",
)
req.func_tool = None
def _sanitize_context_by_modalities(
self,
provider: Provider,
req: ProviderRequest,
) -> None:
"""Sanitize `req.contexts` (including history) by current provider modalities."""
if not self.sanitize_context_by_modalities:
return
if not isinstance(req.contexts, list) or not req.contexts:
return
modalities = provider.provider_config.get("modalities", None)
# if modalities is not configured, do not sanitize.
if not modalities or not isinstance(modalities, list):
return
supports_image = bool("image" in modalities)
supports_tool_use = bool("tool_use" in modalities)
if supports_image and supports_tool_use:
return
sanitized_contexts: list[dict] = []
removed_image_blocks = 0
removed_tool_messages = 0
removed_tool_calls = 0
for msg in req.contexts:
if not isinstance(msg, dict):
continue
role = msg.get("role")
if not role:
continue
new_msg: dict = msg
# tool_use sanitize
if not supports_tool_use:
if role == "tool":
# tool response block
removed_tool_messages += 1
continue
if role == "assistant" and "tool_calls" in new_msg:
# assistant message with tool calls
if "tool_calls" in new_msg:
removed_tool_calls += 1
new_msg.pop("tool_calls", None)
new_msg.pop("tool_call_id", None)
# image sanitize
if not supports_image:
content = new_msg.get("content")
if isinstance(content, list):
filtered_parts: list = []
removed_any_image = False
for part in content:
if isinstance(part, dict):
part_type = str(part.get("type", "")).lower()
if part_type in {"image_url", "image"}:
removed_any_image = True
removed_image_blocks += 1
continue
filtered_parts.append(part)
if removed_any_image:
new_msg["content"] = filtered_parts
# drop empty assistant messages (e.g. only tool_calls without content)
if role == "assistant":
content = new_msg.get("content")
has_tool_calls = bool(new_msg.get("tool_calls"))
if not has_tool_calls:
if not content:
continue
if isinstance(content, str) and not content.strip():
continue
sanitized_contexts.append(new_msg)
if removed_image_blocks or removed_tool_messages or removed_tool_calls:
logger.debug(
"sanitize_context_by_modalities applied: "
f"removed_image_blocks={removed_image_blocks}, "
f"removed_tool_messages={removed_tool_messages}, "
f"removed_tool_calls={removed_tool_calls}"
)
req.contexts = sanitized_contexts
def _plugin_tool_fix(
self,
event: AstrMessageEvent,
req: ProviderRequest,
):
"""根据事件中的插件设置,过滤请求中的工具列表"""
if event.plugins_name is not None and req.func_tool:
new_tool_set = ToolSet()
for tool in req.func_tool.tools:
mp = tool.handler_module_path
if not mp:
continue
plugin = star_map.get(mp)
if not plugin:
continue
if plugin.name in event.plugins_name or plugin.reserved:
new_tool_set.add_tool(tool)
req.func_tool = new_tool_set
async def _handle_webchat(
self,
event: AstrMessageEvent,
req: ProviderRequest,
prov: Provider,
):
"""处理 WebChat 平台的特殊情况,包括第一次 LLM 对话时总结对话内容生成 title"""
from astrbot.core import db_helper
chatui_session_id = event.session_id.split("!")[-1]
user_prompt = req.prompt
session = await db_helper.get_platform_session_by_id(chatui_session_id)
if (
not user_prompt
or not chatui_session_id
or not session
or session.display_name
):
return
llm_resp = await prov.text_chat(
system_prompt=(
"You are a conversation title generator. "
"Generate a concise title in the same language as the users input, "
"no more than 10 words, capturing only the core topic."
"If the input is a greeting, small talk, or has no clear topic, "
"(e.g., “hi”, “hello”, “haha”), return <None>. "
"Output only the title itself or <None>, with no explanations."
),
prompt=(
f"Generate a concise title for the following user query:\n{user_prompt}"
),
self.main_agent_cfg = MainAgentBuildConfig(
tool_call_timeout=self.tool_call_timeout,
tool_schema_mode=self.tool_schema_mode,
sanitize_context_by_modalities=self.sanitize_context_by_modalities,
kb_agentic_mode=self.kb_agentic_mode,
file_extract_enabled=self.file_extract_enabled,
file_extract_prov=self.file_extract_prov,
file_extract_msh_api_key=self.file_extract_msh_api_key,
context_limit_reached_strategy=self.context_limit_reached_strategy,
llm_compress_instruction=self.llm_compress_instruction,
llm_compress_keep_recent=self.llm_compress_keep_recent,
llm_compress_provider_id=self.llm_compress_provider_id,
max_context_length=self.max_context_length,
dequeue_context_length=self.dequeue_context_length,
llm_safety_mode=self.llm_safety_mode,
safety_mode_strategy=self.safety_mode_strategy,
sandbox_cfg=self.sandbox_cfg,
)
if llm_resp and llm_resp.completion_text:
title = llm_resp.completion_text.strip()
if not title or "<None>" in title:
return
logger.info(
f"Generated chatui title for session {chatui_session_id}: {title}"
)
await db_helper.update_platform_session(
session_id=chatui_session_id,
display_name=title,
)
async def _save_to_history(
self,
event: AstrMessageEvent,
req: ProviderRequest,
llm_response: LLMResponse | None,
all_messages: list[Message],
runner_stats: AgentStats | None,
):
if (
not req
or not req.conversation
or not llm_response
or llm_response.role != "assistant"
):
return
if not llm_response.completion_text and not req.tool_calls_result:
logger.debug("LLM 响应为空,不保存记录。")
return
# using agent context messages to save to history
message_to_save = []
skipped_initial_system = False
for message in all_messages:
if message.role == "system" and not skipped_initial_system:
skipped_initial_system = True
continue # skip first system message
if message.role in ["assistant", "user"] and getattr(
message, "_no_save", None
):
# we do not save user and assistant messages that are marked as _no_save
continue
message_to_save.append(message.model_dump())
# get token usage from agent runner stats
token_usage = None
if runner_stats:
token_usage = runner_stats.token_usage.total
await self.conv_manager.update_conversation(
event.unified_msg_origin,
req.conversation.cid,
history=message_to_save,
token_usage=token_usage,
)
def _get_compress_provider(self) -> Provider | None:
if not self.llm_compress_provider_id:
return None
if self.context_limit_reached_strategy != "llm_compress":
return None
provider = self.ctx.plugin_manager.context.get_provider_by_id(
self.llm_compress_provider_id,
)
if provider is None:
logger.warning(
f"未找到指定的上下文压缩模型 {self.llm_compress_provider_id},将跳过压缩。",
)
return None
if not isinstance(provider, Provider):
logger.warning(
f"指定的上下文压缩模型 {self.llm_compress_provider_id} 不是对话模型,将跳过压缩。"
)
return None
return provider
def _apply_llm_safety_mode(self, req: ProviderRequest) -> None:
"""Apply LLM safety mode to the provider request."""
if self.safety_mode_strategy == "system_prompt":
req.system_prompt = (
f"{LLM_SAFETY_MODE_SYSTEM_PROMPT}\n\n{req.system_prompt or ''}"
)
else:
logger.warning(
f"Unsupported llm_safety_mode strategy: {self.safety_mode_strategy}.",
)
def _apply_sandbox_tools(self, req: ProviderRequest, session_id: str) -> None:
"""Add sandbox tools to the provider request."""
if req.func_tool is None:
req.func_tool = ToolSet()
if self.sandbox_cfg.get("booter") == "shipyard":
ep = self.sandbox_cfg.get("shipyard_endpoint", "")
at = self.sandbox_cfg.get("shipyard_access_token", "")
if not ep or not at:
logger.error("Shipyard sandbox configuration is incomplete.")
return
os.environ["SHIPYARD_ENDPOINT"] = ep
os.environ["SHIPYARD_ACCESS_TOKEN"] = at
req.func_tool.add_tool(EXECUTE_SHELL_TOOL)
req.func_tool.add_tool(PYTHON_TOOL)
req.func_tool.add_tool(FILE_UPLOAD_TOOL)
req.func_tool.add_tool(FILE_DOWNLOAD_TOOL)
req.system_prompt += f"\n{SANDBOX_MODE_PROMPT}\n"
def _proactive_cron_job_tools(
self, req: ProviderRequest, event: AstrMessageEvent
) -> None:
"""Inject cron job context and tools into the provider request for proactive scheduling."""
if req.func_tool is None:
req.func_tool = ToolSet()
req.func_tool.add_tool(CREATE_CRON_JOB_TOOL)
req.func_tool.add_tool(DELETE_CRON_JOB_TOOL)
req.func_tool.add_tool(LIST_CRON_JOBS_TOOL)
cron_meta = event.get_extra("cron_job")
if cron_meta:
# The message event is triggered by a known cron job
if req.func_tool is None:
req.func_tool = ToolSet()
req.func_tool.add_tool(SEND_MESSAGE_TO_USER_TOOL)
job_name = cron_meta.get("name", "scheduled task")
note = cron_meta.get("note") or cron_meta.get("description") or ""
req.system_prompt += (
f"\n[Scheduler Context] This turn is triggered automatically by cron job "
f'"{job_name}" (type: {cron_meta.get("type", "unknown")}). '
"Act proactively based on the provided note and current context. "
"If you want to proactively notify the user, call `send_message_to_user` with a concise message.\n"
)
if note:
req.system_prompt += f"[Scheduler Note]: {note}\n"
if bg := event.get_extra("background_task_result"):
# The message event is triggered after a background task done
result_text = bg.get("result") or ""
if req.func_tool is None:
req.func_tool = ToolSet()
req.func_tool.add_tool(SEND_MESSAGE_TO_USER_TOOL)
if result_text:
req.system_prompt += f"\n[Background Task Result] {result_text}\n"
async def process(
self, event: AstrMessageEvent, provider_wake_prefix: str
) -> AsyncGenerator[None, None]:
req: ProviderRequest | None = None
try:
provider = self._select_provider(event)
if provider is None:
logger.info("未找到任何对话模型(提供商),跳过 LLM 请求处理。")
return
if not isinstance(provider, Provider):
logger.error(
f"选择的提供商类型无效({type(provider)}),跳过 LLM 请求处理。"
)
return
streaming_response = self.streaming_response
if (enable_streaming := event.get_extra("enable_streaming")) is not None:
streaming_response = bool(enable_streaming)
# 检查消息内容是否有效,避免空消息触发钩子
has_provider_request = event.get_extra("provider_request") is not None
has_valid_message = bool(event.message_str and event.message_str.strip())
# 检查是否有图片或其他媒体内容
has_media_content = any(
isinstance(comp, Image | File) for comp in event.message_obj.message
)
@@ -580,179 +137,50 @@ class InternalAgentSubStage(Stage):
logger.debug("skip llm request: empty message and no provider_request")
return
api_base = provider.provider_config.get("api_base", "")
for host in decoded_blocked:
if host in api_base:
logger.error(
f"Provider API base {api_base} is blocked due to security reasons. Please use another ai provider."
)
return
logger.debug("ready to request llm provider")
# 通知等待调用 LLM(在获取锁之前)
await call_event_hook(event, EventType.OnWaitingLLMRequestEvent)
async with session_lock_manager.acquire_lock(event.unified_msg_origin):
logger.debug("acquired session lock for llm request")
if event.get_extra("provider_request"):
req = event.get_extra("provider_request")
assert isinstance(req, ProviderRequest), (
"provider_request 必须是 ProviderRequest 类型。"
)
if req.conversation:
req.contexts = json.loads(req.conversation.history)
build_cfg = replace(
self.main_agent_cfg,
provider_wake_prefix=provider_wake_prefix,
streaming_response=streaming_response,
)
else:
req = ProviderRequest()
req.prompt = ""
req.image_urls = []
if sel_model := event.get_extra("selected_model"):
req.model = sel_model
if provider_wake_prefix and not event.message_str.startswith(
provider_wake_prefix
):
return
build_result: MainAgentBuildResult | None = await build_main_agent(
event=event,
plugin_context=self.ctx.plugin_manager.context,
config=build_cfg,
)
req.prompt = event.message_str[len(provider_wake_prefix) :]
# func_tool selection 现在已经转移到 astrbot/builtin_stars/astrbot 插件中进行选择。
# req.func_tool = self.ctx.plugin_manager.context.get_llm_tool_manager()
for comp in event.message_obj.message:
if isinstance(comp, Image):
image_path = await comp.convert_to_file_path()
req.image_urls.append(image_path)
req.extra_user_content_parts.append(
TextPart(text=f"[Image Attachment: path {image_path}]")
)
elif isinstance(comp, File):
file_path = await comp.get_file()
file_name = comp.name or os.path.basename(file_path)
req.extra_user_content_parts.append(
TextPart(
text=f"[File Attachment: name {file_name}, path {file_path}]"
)
)
conversation = await self._get_session_conv(event)
req.conversation = conversation
req.contexts = json.loads(conversation.history)
event.set_extra("provider_request", req)
# fix contexts json str
if isinstance(req.contexts, str):
req.contexts = json.loads(req.contexts)
# apply file extract
if self.file_extract_enabled:
try:
await self._apply_file_extract(event, req)
except Exception as e:
logger.error(f"Error occurred while applying file extract: {e}")
if not req.prompt and not req.image_urls:
if not event.get_group_id() and req.extra_user_content_parts:
req.prompt = "<attachment>"
else:
return
# call event hook
if await call_event_hook(event, EventType.OnLLMRequestEvent, req):
if build_result is None:
return
# apply knowledge base feature
await self._apply_kb(event, req)
agent_runner = build_result.agent_runner
req = build_result.provider_request
provider = build_result.provider
# truncate contexts to fit max length
# NOW moved to ContextManager inside ToolLoopAgentRunner
# if req.contexts:
# req.contexts = self._truncate_contexts(req.contexts)
# self._fix_messages(req.contexts)
# session_id
if not req.session_id:
req.session_id = event.unified_msg_origin
# check provider modalities, if provider does not support image/tool_use, clear them in request.
self._modalities_fix(provider, req)
# filter tools, only keep tools from this pipeline's selected plugins
self._plugin_tool_fix(event, req)
# sanitize contexts (including history) by provider modalities
self._sanitize_context_by_modalities(provider, req)
# apply llm safety mode
if self.llm_safety_mode:
self._apply_llm_safety_mode(req)
# apply sandbox tools
if self.sandbox_cfg.get("enable", False):
self._apply_sandbox_tools(req, req.session_id)
api_base = provider.provider_config.get("api_base", "")
for host in decoded_blocked:
if host in api_base:
logger.error(
"Provider API base %s is blocked due to security reasons. Please use another ai provider.",
api_base,
)
return
stream_to_general = (
self.unsupported_streaming_strategy == "turn_off"
and not event.platform_meta.support_streaming_message
)
# run agent
agent_runner = AgentRunner()
logger.debug(
f"handle provider[id: {provider.provider_config['id']}] request: {req}",
)
astr_agent_ctx = AstrAgentContext(
context=self.ctx.plugin_manager.context,
event=event,
)
# inject model context length limit
if provider.provider_config.get("max_context_tokens", 0) <= 0:
model = provider.get_model()
if model_info := LLM_METADATAS.get(model):
provider.provider_config["max_context_tokens"] = model_info[
"limit"
]["context"]
# ChatUI 对话的标题生成
if event.get_platform_name() == "webchat":
asyncio.create_task(self._handle_webchat(event, req, provider))
# 注入 ChatUI 额外 prompt
# 比如 follow-up questions 提示等
req.system_prompt += f"\n{CHATUI_EXTRA_PROMPT}\n"
# 注入基本 prompt
if req.func_tool and req.func_tool.tools:
tool_prompt = (
TOOL_CALL_PROMPT
if self.tool_schema_mode == "full"
else TOOL_CALL_PROMPT_SKILLS_LIKE_MODE
)
req.system_prompt += f"\n{tool_prompt}\n"
if await call_event_hook(event, EventType.OnLLMRequestEvent, req):
return
action_type = event.get_extra("action_type")
if action_type == "live":
req.system_prompt += f"\n{LIVE_MODE_SYSTEM_PROMPT}\n"
await agent_runner.reset(
provider=provider,
request=req,
run_context=AgentContextWrapper(
context=astr_agent_ctx,
tool_call_timeout=self.tool_call_timeout,
),
tool_executor=FunctionToolExecutor(),
agent_hooks=MAIN_AGENT_HOOKS,
streaming=streaming_response,
llm_compress_instruction=self.llm_compress_instruction,
llm_compress_keep_recent=self.llm_compress_keep_recent,
llm_compress_provider=self._get_compress_provider(),
truncate_turns=self.dequeue_context_length,
enforce_max_turns=self.max_context_length,
tool_schema_mode=self.tool_schema_mode,
)
# 检测 Live Mode
if action_type == "live":
@@ -865,3 +293,52 @@ class InternalAgentSubStage(Stage):
f"Error occurred while processing agent request: {e}"
)
)
async def _save_to_history(
self,
event: AstrMessageEvent,
req: ProviderRequest,
llm_response: LLMResponse | None,
all_messages: list[Message],
runner_stats: AgentStats | None,
):
if (
not req
or not req.conversation
or not llm_response
or llm_response.role != "assistant"
):
return
if not llm_response.completion_text and not req.tool_calls_result:
logger.debug("LLM 响应为空,不保存记录。")
return
message_to_save = []
skipped_initial_system = False
for message in all_messages:
if message.role == "system" and not skipped_initial_system:
skipped_initial_system = True
continue
if message.role in ["assistant", "user"] and getattr(
message, "_no_save", None
):
continue
message_to_save.append(message.model_dump())
token_usage = None
if runner_stats:
token_usage = runner_stats.token_usage.total
await self.conv_manager.update_conversation(
event.unified_msg_origin,
req.conversation.cid,
history=message_to_save,
token_usage=token_usage,
)
# we prevent astrbot from connecting to known malicious hosts
# these hosts are base64 encoded
BLOCKED = {"dGZid2h2d3IuY2xvdWQuc2VhbG9zLmlv", "a291cmljaGF0"}
decoded_blocked = [base64.b64decode(b).decode("utf-8") for b in BLOCKED]
+1 -1
View File
@@ -165,7 +165,7 @@ class ProviderRequest:
result_parts.append(f"{role}: {''.join(msg_parts)}")
return result_parts
return "\n".join(result_parts)
async def assemble_context(self) -> dict:
"""将请求(prompt 和 image_urls)包装成 OpenAI 的消息格式。"""