注册用户近2000万,手把手带你参与TON生态爆款游戏Catizen「GameFi猎手」

Odaily星球日报Publicado a 2024-06-25Actualizado a 2024-06-25

Resumen

Q2计划为早期用户进行代币空投,抓住最后的“撸毛”机会。

原创 | Odaily星球日报

作者 | Asher

注册用户近2000万,手把手带你参与TON生态爆款游戏Catizen「GameFi猎手」

昨日,由于 Mt.Gox 事件的影响,市场出现明显抛售情绪,导致 BTC 价格持续下跌,短线甚至跌破 58, 500 美元,目前价格有所反弹。然而,在此次 BTC 抛售、主流币跟跌的环境下,TON 价格保持坚挺,隐约显示出有资金加持。

TON 生态中,曾错过 Notcoin 的“撸毛党”,不能再错过目前拥有近 2000 万注册用户并计划在第二季度发币的 Catizen。下面,Odaily星球日报将手把手带大家参与 TON 生态爆款游戏 Catizen 交互,锁定潜在的代币奖励。

Catizen:猫咪爱好者的游戏天堂

项目简介

注册用户近2000万,手把手带你参与TON生态爆款游戏Catizen「GameFi猎手」

图源:官推

Catizen 是一款 TON 生态上休闲挂机养猫链游,由 Pluto Studio 团队打造,是其 GameFi 平台的首款游戏。在休闲游戏和突破性创新的交汇点上,Catizen 推出了 "PLAY-TO-AIRDROP "模式。“用户的旅程不仅仅是一场游戏,更是在浩瀚的喵星宇宙中寻找代币的寻宝之旅。”

凭借着可爱的猫猫形象和独特的玩法,Catizen 迅速吸引了大量玩家,并以惊人的速度持续增长,短短 2 个月注册量接近 2000 万。根据官方信息,截止到 6 月 23 日,Catizen 链上用户总数突破 125 万。

注册用户近2000万,手把手带你参与TON生态爆款游戏Catizen「GameFi猎手」

Catizen 链上用户总数突破 125 万

截至今日,Catizen 尚未公布其具体的融资情况和投资机构。尽管在官方信息中提到 Catizen 的投资人包括 TON Foundation、Web3 com Ventures、Mask Network 等知名机构,但尚未找到明确的出处。然而,TON 官方 X 账号与 Catizen 官方 X 账号频繁互动,显示出 TON 生态对该项目的重视。

值得一提的是,根据项目路线图,Catizen 将在 Q2 进行代币空投以奖励早期参与用户。并且,在不久前,官方表示,为了更好地激励早期用户,未来代币空投比例将从 35% 提升到 42% 。

注册用户近2000万,手把手带你参与TON生态爆款游戏Catizen「GameFi猎手」

Catizen 将空投比例从 35% 提升到 42% 

交互教程

参与游戏链接:https://t.me/catizenbot

项目官网:https://www.catizen.ai/

Catizen 的游戏背景为在一家猫咖店,玩家有 12 个格子放猫猫,每隔一段时间会空投低等级的猫猫放在格子中(空投的猫猫为格子中最低的猫猫级别),若格子满了就不会空投,其他细则有:

  • 不同等级的猫猫需要花费不同的金币(在 Generate 处显示),每个等级的猫猫能赚到的猫币也是不同;

  • 两个相同级别的猫猫能合成高一级的猫猫;

  • 客户进店随机抱猫,抱猫即可赚到猫币,所赚金币与猫猫等级有关。

关于游戏内资产,有:

  • 猫猫:目前最高可合成到 450 级;

  • 猫币(Vkitty coin):猫咪产的币,产出速率和猫咪等级及数量成正比,也可通过钓鱼获取;

  • 鱼币(Fish coin):可以在 Feed 中购买猫咪、钓鱼、获得狗鸭蛙空投最大额度、质押等。并且,可通过商店用美元付费购买或者钓鱼获取。

STEP 1. 进行游戏参与链接后点击“START”开始使用 Catizen 官方内置机器人。

注册用户近2000万,手把手带你参与TON生态爆款游戏Catizen「GameFi猎手」

STEP 2. 点击“Play for airdrop”进入应用程序。

注册用户近2000万,手把手带你参与TON生态爆款游戏Catizen「GameFi猎手」

STEP 3. 进入游戏主页面,通过点击“Generate”花费对应金币购买低等级小猫, 2 个相同的就能合成一个更高级的,也可以等空投(几十秒左右一个)也会有给小猫咪。

注册用户近2000万,手把手带你参与TON生态爆款游戏Catizen「GameFi猎手」

注册用户近2000万,手把手带你参与TON生态爆款游戏Catizen「GameFi猎手」

注:当拥有三级猫猫的时候,下面操作界面会从一个变成五个,包括 Shop、Earn、Generate、Feed、Invite。

注册用户近2000万,手把手带你参与TON生态爆款游戏Catizen「GameFi猎手」

STEP 4. 点击下方的“Earn”,完成各类社交任务等获得鱼币。

注册用户近2000万,手把手带你参与TON生态爆款游戏Catizen「GameFi猎手」

STEP 5. 点击下方的“Feed”,根据对金额直接购买猫猫。

注册用户近2000万,手把手带你参与TON生态爆款游戏Catizen「GameFi猎手」

小结

对于链游 Catizen,其核心玩法是不断通过两只同等级猫猫合成高一等级猫猫,并通过高等级的猫猫参与质押挖矿及后续玩法。因此,对于大部分“撸毛党”来说,无需充值,每天点一点,通过 0 撸尽可能升级猫猫等级,获得更多猫币,完成每日任务获得更多鱼币,或许是一种不错的策略。

注:「GameFi 猎手」是Odaily星球日报推出的专注于 Web3 游戏的全新版块,定期更新热门项目动态、拆解经济模型以及分享交互教程。寻求报道,请联系微信:zhidong_0210。

Lecturas Relacionadas

Jensen Huang: Prompts are Becoming Obsolete, Loops are the New Paradigm

Jensen Huang, alongside AI leaders like Peter Norvig, Boris Cherny, and Andrew Ng, is advocating for a shift from "prompt engineering" to "loop engineering" as the new paradigm for AI development. Instead of manually crafting individual prompts, the focus is now on designing autonomous loops—systems where AI agents execute tasks, self-validate results, and iterate until completion without constant human oversight. A loop is a management framework that enables agents to operate independently. Key implementations are seen in Claude Code (with features like /loop, /goal, and /schedule) and OpenAI Codex, which employ multiple agents working in parallel within isolated environments. A core principle is the separation of roles: one agent (or model) performs the task, while an independent agent (or a smaller, separate model) validates the output to ensure objectivity. The article outlines a practical roadmap for implementing loops, starting with a "four-condition test" to assess suitability, building a minimal viable loop, and emphasizing critical pitfalls to avoid, such as lacking hard stop conditions or allowing loops to handle tasks requiring human judgment. This evolution is framed as the fourth major shift in AI interaction: from Prompt Engineering (crafting instructions) to Context Engineering (providing background information), then to Harness Engineering (building tool-enabled environments), and finally to Loop Engineering (creating self-sustaining systems). This progression reflects a consistent trend of increasing abstraction, moving human involvement from direct instruction to system design and rule-setting. The concept has academic roots in frameworks like ReAct, which formalized the "reason-act-observe" cycle. While loop engineering promises greater automation, experts caution about managing token costs and warn against outsourcing understanding—AI can assist, but deep problem comprehension remains essential.

marsbitHace 1 hora(s)

Jensen Huang: Prompts are Becoming Obsolete, Loops are the New Paradigm

marsbitHace 1 hora(s)

GPT Designs GPT

OpenAI has unveiled its first custom AI chip, Jalapeño, a move signaling a strategic shift beyond being a mere model company. While many see it as a challenge to NVIDIA, its core aim is to control the entire intelligent production pipeline—from models and chips to data centers and energy. The key driver is the evolving competitive landscape: model advantages are shrinking, while the computational gap in areas like cost-per-token, system throughput, and energy efficiency is becoming the true long-term barrier. Jalapeño is primarily an inference chip, targeting the massive and growing "inference tax"—the daily operational cost of generating tokens for services like ChatGPT and APIs. By designing its own hardware optimized for its specific workloads and future product roadmaps (even using AI to aid the chip design process), OpenAI aims to drastically reduce token generation costs and improve system efficiency. This creates a potential flywheel: better models help design better chips, which lower costs for running next-generation models, supporting more users and products, which in turn provides more data to refine future chips. The strategy mirrors Apple’s integrated approach, building a closed loop where hardware, software, and applications are co-optimized. In the long term, OpenAI is not trying to become the next NVIDIA (a supplier of "shovels" to all AI companies) but to own and operate the entire "mine"—selling the end product of intelligence itself. This move marks OpenAI's ambition to evolve from creating the smartest models to controlling the foundational infrastructure of AI production.

marsbitHace 1 hora(s)

GPT Designs GPT

marsbitHace 1 hora(s)

Trading

Spot
Futuros
活动图片