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之前很多人问过小编,团长每次分队太麻烦了,小编作为团长也是,每次开团为了方便统计同职业,往往先把同职业放一组,开打前又要按BUFF分组,打小克又要再按近战数量调整队伍,麻烦不说,每次还浪费时间,而且调整不好还要被埋怨。
今天!终于他来了!WA代码博大精深,愿人人都是科学家!文末是按预设调队方法,请仔细阅读。

作者Nespil:
重要的似乎要写在前面,为了避免多人同时调队导致bug,所有的功能都是当且仅当是团长的时候才生效。另外,@ct必须是团长,并自己m自己时才生效。安装后建议先检查自定义设置,可以按照职业自动进行分组。

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功能1. 奥罗死亡后克苏恩自动调队
分队逻辑与我修改的salad cthun 16近战方法一致
如果需要别的逻辑,建议自行修改

功能2. @1 - @8 自动进指定队伍
思路由 [@Sickio] 提供
当安装了wa的人是团长时(团长,有A没用)
M团长@3可以被邀请, 进了团队自动调到3队, 1-8以此类推

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功能3,自动分组
如果想自行更改逻辑, 需要有一些些lua基础

点击如图所示的"展开", 找到:

role 设定相应职业的职责归属, 可以看到我将战士盗贼设定为'melee', 萨满牧师圣骑士设定为'healer'. 这个字符串是可以自定义的,我们甚至可以设定['DRUID'] = 'deluyi', 只要接下来的代码能与现在设定一致即可.

可以看到, 无论是什么职业, 只要他具有盾标, 即 if officer and officer == "MAINTANK" , 我们就把它的职责设定为'other'

接下来看下面一段

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我定义了一个函数, 叫 setSlot(slot, role) ,效果是设定每一个小队的第n个位置(slot),为我们之前定义的职责role('melee', 'other' 等)
这样会优先把近战填在第一,第二个槽, 把治疗填在第四个, 然后法师第五个, 如果小于8个法师,还会在第五个槽填入猎人, 最后在第三个槽填入设定为'other'的职业(我目前的设定是术士和德鲁伊)
最后再把空余的槽位以setRest()函数填满.
以上

字符串只会有这一个稳定版本, 未来如果没有重大改动不会更新.
细节优化只会在wago更新.
2020-10-14 更新了字符串,现在已经与modified salad cthun 16近战 逻辑完全一致.
2020-10-14 更新了字符串,需要一个测试模式确实是合理的, 通过对自己密语 @ct 大小写无所谓, 同样可以激活流程(即使在自定义设置里面关闭了"奥罗死亡自动换队",也会执行) *注意 别人密语无效 只能自己是团长,并且自己对自己密语@ct
2020-10-15 更新了字符串,现在治疗方面优先保障萨满, 然后到牧师然后到骑士
2020-10-22 基于 [@迷你奥克] [@豆豆打天下] 的思路做出更新,
重点!自定义设置有6个样式的分团可设置, 在自己是团长的前提下,对自己密语@style1 - @style6
可以按分团表职业设置调整团队(不足: 每次分团表人名可能都会变, 还没有集成盾标为T这个设置,有空再弄)

WAGO地址:
https://wago.io/AdqokqGsQ

WA代码如下:

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WA使用方法和历史合集:


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