Optical Proof of Work
Michael Dubrovsky, Marshall Ball, Bogdan Penkovsky

TL;DR
Optical Proof of Work (oPoW) introduces a novel mining algorithm that shifts the primary cost from electricity to hardware capital expenses, leveraging silicon photonics to enhance scalability, decentralization, and energy efficiency in cryptocurrencies.
Contribution
The paper proposes a new PoW scheme that reduces energy reliance by focusing on hardware costs, utilizing silicon photonics technology for secure and scalable cryptocurrency mining.
Findings
oPoW reduces energy consumption compared to traditional PoW.
Hardware costs dominate mining expenses in oPoW, increasing decentralization.
oPoW enhances scalability and democratizes mining participation.
Abstract
Most cryptocurrencies rely on Proof-of-Work (PoW) "mining" for resistance to Sybil and double-spending attacks, as well as a mechanism for currency issuance. Hashcash PoW has successfully secured the Bitcoin network since its inception, however, as the network has expanded to take on additional value storage and transaction volume, Bitcoin PoW's heavy reliance on electricity has created scalability issues, environmental concerns, and systemic risks. Mining efforts have concentrated in areas with low electricity costs, creating single points of failure. Although PoW security properties rely on imposing a trivially verifiable economic cost on miners, there is no fundamental reason for it to consist primarily of electricity cost. The authors propose a novel PoW algorithm, Optical Proof of Work (oPoW), to eliminate energy as the primary cost of mining. Proposed algorithm imposes economic…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Advancements in Semiconductor Devices and Circuit Design · Advanced Memory and Neural Computing
