CanonChain

by CANONCHAIN.COM Inc.

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Stakenet

by Stakenet

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Zilliqa

by Zilliqa

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CanonChain

by CANONCHAIN.COM Inc.

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Stakenet

by Stakenet

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Zilliqa

by Zilliqa

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What problem does this service solve?

CannonChain's consensus mechanism encourages contributing network resources on smaller scales.Stakenet allows users to participate in the staking process and validate new transactions, without removing their coins from their wallets.Zilliqa is building a scalable development platform based on sharding.

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Company Description

CanonChain is developing an underlying blockchain protocol based on Fog networking and a Proof-of-Participation (PoP) consensus mechanism. Their network is designed to provide incentives for contributing computing resources on fragmented networks, and is powered by the Ethereum-based CZR token, known as Xuanchi.

Stakenet is a blockchain with a unique Trustless Proof of Stake (TPoS) consensus mechanism that allows users to participate in the staking process without having to freeze their coins in the wallet. It's powered by the native coin XSN and is managed by its own masternodes. Stakenet (XSN) was created to build an ecosystem that allows easy and secure offline staking and cross chain communication. It has characteristics of Bitcoin, Dash and Peercoin, that were modified for their own purposes. XSN uses the Bitcoin Core, an improved Dash masternode architecture, and Peercoin's validation mechanism for creating new blocks.

Zilliqa is an innovative blockchain platform that is designed to be more scalable as the network grows. Zilliqa's platform is based on the concept of sharding; which involves breaking a large network of computers into smaller decentralized networks.
Zilliqa's goal is to increase transaction rates as its network expands. The platform is tailored towards enabling secure data-driven decentralized apps that are designed to meet the scaling requirements of machine learning and financial algorithms.

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