Speedster: A TEE-assisted State Channel System
Jinghui Liao, Fengwei Zhang, Wenhai Sun, Weisong Shi

TL;DR
Speedster introduces a TEE-assisted state channel system that significantly enhances blockchain scalability, privacy, and multi-party contract execution, outperforming existing solutions like Lightning Network in throughput and data efficiency.
Contribution
It presents a novel, fully decentralized, TEE-enabled state channel system that addresses creation costs, synchronization issues, and multi-party smart contract limitations.
Findings
Speeds up throughput by 10,000X compared to Lightning Network.
Reduces on-chain data generation by 97%.
Supports fast, multi-party smart contract execution.
Abstract
State channel network is the most popular layer-2 solution to theissues of scalability, high transaction fees, and low transaction throughput of public Blockchain networks. However, the existing works have limitations that curb the wide adoption of the technology, such as the expensive creation and closure of channels, strict synchronization between the main chain and off-chain channels, frozen deposits, and inability to execute multi-party smart contracts. In this work, we present Speedster, an account-based state-channel system that aims to address the above issues. To this end, Speedster leverages the latest development of secure hardware to create dispute-free certified channels that can be operated efficiently off the Blockchain. Speedster is fully decentralized and provides better privacy protection. It supports fast native multi-party contract execution, which is missing in prior…
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Taxonomy
TopicsPhysical Unclonable Functions (PUFs) and Hardware Security · Semiconductor materials and devices · Advanced Memory and Neural Computing
