Hot Interaction Collection | xStocks Launches Points Program; Noise Waitlist Application (March 13)

Odaily星球日报Publicado em 2026-03-13Última atualização em 2026-03-13

Resumo

Odaily Planet Daily presents a collection of trending interactive opportunities in crypto. xStocks, a tokenized stock platform by Backed Finance (acquired by Kraken), has launched its xPoints loyalty program. Users can connect their wallets and lock in a 20% early bird boost. The platform offers over 70 tokenized assets with $215M in AUM. Noise, an attention market platform for trading trends, is opening its waitlist. The Paradigm-backed project allows users to take long or short positions on internet trends. Users can join by submitting their email on the website. Linera, a Move-language L1 blockchain, is running its second campaign. Users can complete quests, join its Discord, and experience its prediction market by claiming free GMIC game tokens to bet on assets like BTC and ETH.

Original | Odaily Planet Daily (@OdailyChina)

Author | Asher (@Asher_ 0210)

xStocks: Tokenized U.S. Stock Platform

Project Introduction

Backed Finance is an infrastructure provider responsible for issuing on-chain representations of traditional financial assets, including stocks, ETFs, and bonds. The company was acquired by Kraken in December 2025 and launched xStocks in June of the same year, offering tokenized stock products backed by real stocks held by Swiss custody partners.

Currently, xStocks is integrated into multiple centralized platforms, including Kraken, Gate, Bybit, and Bitget, and supports Ethereum, Solana, and Tron. Over 70 assets have been tokenized through xStocks, with total assets under management reaching $215 million and nearly 60,000 holders. This accounts for about 23% of the entire tokenized stock market.

This week, xStocks announced on platform X the launch of the xPoints points program. Users can now connect their wallets to lock in a 20% early bird bonus.

Interaction Tutorial

STEP 1. Go to the official website (link: https://defi.xstocks.fi/points), click "Connect Wallet" to log in.

STEP 2. Click "Secure Your Boost" to lock in the 20% early bird bonus.

Additionally, the official announcement stated that the detailed rules for the points program are in the final confirmation stage and will be announced soon. Once announced, Odaily Planet Daily will be the first to analyze the points rules and interaction strategies for everyone.

Noise: Attention Market Tool for Building Prediction Market-Related Information Platforms

Project Introduction

Noise is an attention-based trend trading platform (attention market) where users can trade long and short contracts on internet trends, brands, people, or ideas, similar to stock trading. Real-time "cultural relevance" price indicators are formed through social data (such as platform X热度) and market behavior. On January 14, Noise announced the completion of a $7.1 million seed funding round led by Paradigm. Previously, the company also received investment support from Figment Capital and Anagram, as well as GSR, JPEG Trading, and KaitoAI.

On March 12, Noise posted on platform X that the platform is about to launch, and early waitlist applications are now open.

Interaction Tutorial

Go to the official website (link: https://www.noise.xyz/), fill in your personal email, click "Join Waitlist", and complete the email verification to finish the early waitlist application.

Linera: L1 Public Chain Built with MOVE Language

Project Introduction

Linera is an L1 public chain built with the MOVE language, aiming to provide a secure, highly scalable, low-latency blockchain to give Web3 applications faster response times. Linera aims to support the most demanding Web3 applications with internet-scale predictable performance, security, and responsiveness. To achieve this, Linera addresses the block space scarcity issue by introducing a new integrated multi-chain paradigm based on elastic validators. The founding team of Linera consists mostly of former Zcash and former Meta/Novi engineers and researchers. Linera founder Mathieu Baudet previously worked as an engineer at Meta.

According to ROOTDATA data, Linera has completed two rounds of funding, totaling $12 million, with investment institutions including a16z, Borderless Capital, Laser Digital, etc.

Interaction Tutorial

STEP 1. Go to the official website (link: https://portal.linera.net/), click "Sign in" to log in, and enter the Season 2 event homepage.

STEP 2. Click "Quests". First, you need to join the official Discord to claim the role and unlock more tasks.

STEP 3. Go to the Linera prediction market section (link: https://linera.market/?market=BTC), freely领取 GMIC game coins, and experience the BTC, SOL, and ETH prediction markets.

Perguntas relacionadas

QWhat is xStocks and what recent program did they launch?

AxStocks is a tokenized stock platform that provides on-chain representations of traditional financial assets like stocks, ETFs, and bonds, backed by real stocks held by Swiss custodians. They recently launched the xPoints points program, offering an early bird bonus of 20%.

QWhich major exchange acquired Backed Finance, the company behind xStocks, and when?

AKraken acquired Backed Finance in December 2025.

QWhat is Noise and what type of platform is it?

ANoise is an attention market platform where users can trade long and short contracts on internet trends, brands, people, or ideas, using social data and market behavior to form real-time 'cultural relevance' price indicators.

QHow much funding did Noise raise in its seed round and which firm led it?

ANoise raised $7.1 million in its seed round, which was led by Paradigm.

QWhat is Linera and what programming language is it built with?

ALinera is a Layer 1 blockchain built using the MOVE programming language, aiming to provide a secure, highly scalable, and low-latency blockchain for Web3 applications.

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