Tendermint

by Interchain Foundation

(0)
View Profile

Swarm

by Swarm

(0)
View Profile

Zilliqa

by Zilliqa

(0)
View Profile

Tendermint

by Interchain Foundation

(0)
View Profile

Swarm

by Swarm

(0)
View Profile

Zilliqa

by Zilliqa

(0)
View Profile

What problem does this service solve?

The Tendermint consensus algorithm secures transactions in the Cosmos ecosystem.Swarm's tokenization platform allows users to create tokens that represent ownership of part of an asset, secure rights to any revenue streams from that asset, and trade these tokens in a compliant manner.Zilliqa is building a scalable development platform based on sharding.

Token Stats

Not Relevant

Company Description

Tendermint is a consensus algorithm that was created by a company called All in Bits. The open source algorithm is Byzantine Fault-Tolerant and uses an authenticated encryption system to secure transactions. The Tendermint consensus mechanism was developed in 2014 for the Cosmos Network. The Interchain Foundation, which is developing the Cosmos Network, continues to employ All in Bits to support Cosmos.

Swarm is building a tokenization platform designed to leverage the benefits of blockchain to make it easier to fund and govern a variety of large real world projects. They hope to make it easier to tokenize real world assets, and make them available as investment opportunities. Swarm is also developing the SRC-20 protocol, which will define a common set of rules that a security token must follow, and will give users the ability to create DApps that follow these accepted properties. Swarm is powered by the SWM token.

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.

Ratings

(0)

(0)

(0)