猜奥运领空投:如何让手里的Bitlayer积分和宝石翻5倍?

币界网2024-08-06 tarihinde yayınlandı2024-08-06 tarihinde güncellendi

币界网报道:

作者:Yumi Kong

最近,高FDV/低流通量项目、积分失效和撸毛时代结束等都是最近非常热门的话题。

虽然有些人被贴上了PUA用户的标签,但在行业里还没有出现更有效的激励方式的情况下,积分激励还是项目方的首选。一方面,项目方需要用积分吸引用户参与生态,完成冷启动和留存,同时也保持更高的灵活性;但另一方面,积分通胀、无法捉摸的分配规则和无法预知的空投收益等问题,尤其是积分缩水和偷积分等乱象,使得用户对积分机制越来越不信任。

不过,作为一种介于消息面与代币间相对中庸的激励模式,积分机制还是有一定的生存空间。尤其对用户来说,在市场低迷的时候,如果能找到一些有潜力和价值的项目,参与进去,低成本积累积分,有机会获得未来的代币空投,这还是有利可图的。

对项目方来说,如果能在积分模式上发挥优势,避免短处,甚至为被锁定的积分设计一些有趣的玩法,激活社区的参与度,也能减少一些社区对积分分配的过高期望和批评。

8月2日,比特币原生二层项目Bitlayer上线了一个2024年奥运会的限时竞猜活动,就是一个把积分玩起来的方法。用户可以用Bitlayer的积分和宝石参与奥运会相关话题竞猜,有机会赢取高达5倍的积分或宝石奖励。这种结合奥运会热点和预测市场的积分玩法,有机会让用户短时间将手中的积分和宝石奖励倍增,值得大家参与。

累积积分,获得未来Bitlayer空投

最近,Bitlayer宣布上线用户系统,支持用户链接个人钱包后可查看已获得的Bitlayer宝石空投数量、获取过往交互累计的积分奖励,以及领取过往Bitlayer活动的荣誉勋章。最值得注意的是,团队推出了竞速器升级体系,正式将积分引入生态,并给社区构建了代币空投的预期。

简单来说,用户可以在用户中心完成相应的新手任务、高级任务和每日任务,并获得相应的积分奖励,并用于竞速器升级,对应未来的代币空投。

目前,累积Bitlayer积分的方法具体来说如下:

  • 新手任务主要为熟悉Bitlayer积分面板、推特交互、BTC 跨链以及转账任务,全部完成可获得8,100积分;

  • 高级任务需要完成一定数量的阶梯型任务,达到特定里程碑,例如完成资产跨链、达到一定交易数量后将会获得最多25万积分奖励。

  • 每日任务每日刷新,每天完成该板块所有任务即可获得2,000积分奖励。

在官网的公告里,团队已经说明将来会根据大家手里的积分和竞速器的等级来分配$BTR代币的空投。这听起来挺让人兴奋的,毕竟空投可是白给的福利。

现在,Bitlayer的积分还没有在Whales Market这样的场外积分交易平台上线,也就是说,大家还不能把这些积分换成u。不过别担心,除了在TGE之前尽量积累更多的积分,Bitlayer开始尝试给用户们提供更多的积分使用和获取途径。

让Bitlayer积分和宝石流动起来!

8月2号,Bitlayer宣布上线了一个奥运会竞猜的限时活动(具体活动入口为 https://www.bitlayer.org/guess-to-earn/olympics-2024 )。这个活动挺有意思的,用户可以用自己的Bitlayer积分或者宝石来参与奥运会的赛事竞猜,要是猜对了,还有机会拿到额外的积分或者宝石奖励。

官方也公布了这次活动的规则,我给大家简单梳理一下:

  • 竞猜只有两种奖池,一个是宝石奖池,一个是积分奖池,没有混合奖池。

  • 如果是用积分来竞猜,每次得投入500积分,同一个赛事最多可以竞猜10次,猜赢了的话有额外的积分奖励;如果是用宝石来竞猜,每次需要200宝石,也是最多10次,猜赢了有宝石奖励。

  • 每场竞猜只有一个获胜选项,赢了的人会根据参与的比例来分奖池里的奖励。如果猜错了,那投入的积分或宝石就没了。

  • 每场竞猜都有时间限制,要在截止时间前参与,结果会在赛事结果出来后的12小时内更新并完成结算。

  • 参与竞猜的时候,需要在链上确认,所以提前在钱包里留点Gas fee,经过尝试,每次竞猜需0.12u手续费。

具体的参与教程如下:

1.首先,你需要点击这个链接 Guess to earn | Olympics Paris 2024 来访问Bitlayer的官方活动页面。

2.在活动页面上,你需要连接你的数字钱包并登录到你的账户。

3.登录后,浏览页面上列出的竞猜活动,选择你感兴趣的竞猜题目,比如“哪国会在巴黎奥运会上赢得最多的奖牌?”等。

4.对于你选择的竞猜活动,你需要决定你的竞猜结果,并确定你想要竞猜的次数。

5.点击确认后,你的竞猜将提交到区块链上,这需要你进行签名确认。

6.提交竞猜后,你只需耐心等待结果揭晓。

7.同时,你还可以访问用户中心 Racer Center 来完成日常任务,积累更多积分,这样你就能参与更多的竞猜活动。

以下述竞猜为例,“哪国会在巴黎奥运会上赢得最多的奖牌?”如果你选择中国,目前赔率是1:5.34,意味着投200个宝石,有可能获得1068枚宝石奖励,整整5倍多。

需要注意的是,所有的操作都应该在官方提供的平台上进行,确保安全性和有效性。

空投积分这事儿,其实就像一场积分猎人的竞赛游戏,看谁攒得多,谁就可能在空投固定比例的空投竞赛里赢得更多。

以前,积分在能上Whales Market这样的市场买卖之前,用户辛辛苦苦攒的积分就只能躺在钱包里睡大觉,既不能流动,也没啥增值的途径。但Bitlayer这回搞了个创新,让积分活了起来,有了用得上的地方。只要你参与活动,就有很大机会赚积分或者宝石奖励。这样一来,大家的积分数量明显增加,将来如果有空投,也能拿到更多的份额。

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