nonebot2/none/natural_language.py

121 lines
3.8 KiB
Python
Raw Normal View History

2018-07-01 09:51:01 +00:00
import asyncio
2018-07-02 08:54:29 +00:00
import re
2018-07-01 03:01:24 +00:00
from collections import namedtuple
2018-07-01 09:51:01 +00:00
from typing import Dict, Any, Iterable, Optional, Callable, Union
2018-07-01 03:01:24 +00:00
2018-07-01 09:51:01 +00:00
from aiocqhttp.message import Message
2018-07-04 01:28:31 +00:00
from . import NoneBot, permission as perm
2018-07-01 09:51:01 +00:00
from .command import call_command
from .log import logger
2018-07-02 08:54:29 +00:00
from .session import BaseSession
2018-07-01 03:01:24 +00:00
_nl_processors = set()
class NLProcessor:
2018-07-01 09:51:01 +00:00
__slots__ = ('func', 'keywords', 'permission', 'only_to_me')
def __init__(self, *, func: Callable, keywords: Optional[Iterable],
permission: int, only_to_me: bool):
self.func = func
self.keywords = keywords
self.permission = permission
self.only_to_me = only_to_me
2018-07-03 02:36:05 +00:00
def on_natural_language(keywords: Union[Optional[Iterable], Callable] = None,
*, permission: int = perm.EVERYBODY,
2018-07-01 09:51:01 +00:00
only_to_me: bool = True) -> Callable:
2018-07-01 12:01:05 +00:00
"""
Decorator to register a function as a natural language processor.
:param keywords: keywords to respond, if None, respond to all messages
:param permission: permission required by the processor
:param only_to_me: only handle messages to me
"""
2018-07-01 09:51:01 +00:00
def deco(func: Callable) -> Callable:
nl_processor = NLProcessor(func=func, keywords=keywords,
2018-07-03 02:36:05 +00:00
permission=permission,
only_to_me=only_to_me)
2018-07-01 09:51:01 +00:00
_nl_processors.add(nl_processor)
return func
if isinstance(keywords, Callable):
# here "keywords" is the function to be decorated
return on_natural_language()(keywords)
else:
return deco
class NLPSession(BaseSession):
__slots__ = ('msg', 'msg_text', 'msg_images')
2018-07-04 01:28:31 +00:00
def __init__(self, bot: NoneBot, ctx: Dict[str, Any], msg: str):
2018-07-01 09:51:01 +00:00
super().__init__(bot, ctx)
self.msg = msg
tmp_msg = Message(msg)
self.msg_text = tmp_msg.extract_plain_text()
self.msg_images = [s.data['url'] for s in tmp_msg
if s.type == 'image' and 'url' in s.data]
2018-07-01 03:01:24 +00:00
NLPResult = namedtuple('NLPResult', (
'confidence',
'cmd_name',
'cmd_args',
))
2018-07-04 01:28:31 +00:00
async def handle_natural_language(bot: NoneBot, ctx: Dict[str, Any]) -> bool:
2018-07-01 12:01:05 +00:00
"""
Handle a message as natural language.
This function is typically called by "handle_message".
2018-07-04 01:28:31 +00:00
:param bot: NoneBot instance
2018-07-01 12:01:05 +00:00
:param ctx: message context
:return: the message is handled as natural language
"""
2018-07-01 09:51:01 +00:00
msg = str(ctx['message'])
if bot.config.NICKNAME:
2018-07-04 01:39:50 +00:00
# check if the user is calling me with my nickname
if not isinstance(bot.config.NICKNAME, Iterable):
nicknames = (bot.config.NICKNAME,)
else:
nicknames = filter(lambda n: n, bot.config.NICKNAME)
m = re.search(rf'^({"|".join(nicknames)})[\s,]+', msg)
2018-07-01 09:51:01 +00:00
if m:
ctx['to_me'] = True
msg = msg[m.end():]
2018-07-01 12:01:05 +00:00
2018-07-01 09:51:01 +00:00
session = NLPSession(bot, ctx, msg)
coros = []
for p in _nl_processors:
should_run = await perm.check_permission(bot, ctx, p.permission)
if should_run and p.keywords:
for kw in p.keywords:
if kw in session.msg_text:
break
else:
# no keyword matches
should_run = False
if should_run and p.only_to_me and not ctx['to_me']:
should_run = False
if should_run:
coros.append(p.func(session))
if coros:
2018-07-01 12:01:05 +00:00
# wait for possible results, and sort them by confidence
2018-07-01 09:51:01 +00:00
results = sorted(filter(lambda r: r, await asyncio.gather(*coros)),
key=lambda r: r.confidence, reverse=True)
logger.debug(results)
if results and results[0].confidence >= 60.0:
2018-07-01 12:01:05 +00:00
# choose the result with highest confidence
2018-07-01 09:51:01 +00:00
return await call_command(bot, ctx,
results[0].cmd_name, results[0].cmd_args)
return False