Proof of Deep Learning: Approaches, Challenges, and Future Directions
Mahmoud Salhab, Khaleel Mershad

TL;DR
This paper surveys Proof of Deep Learning (PoDL), a novel blockchain consensus mechanism that leverages deep learning training as proof of work, discussing various approaches, challenges, and future research directions.
Contribution
It provides a comprehensive overview of PoDL algorithms, analyzing their advantages, disadvantages, and potential applications in blockchain security.
Findings
PoDL offers an alternative to PoW with potentially lower energy consumption.
Different PoDL algorithms vary in security and efficiency.
Future research is needed to address implementation challenges.
Abstract
The rise of computational power has led to unprecedented performance gains for deep learning models. As more data becomes available and model architectures become more complex, the need for more computational power increases. On the other hand, since the introduction of Bitcoin as the first cryptocurrency and the establishment of the concept of blockchain as a distributed ledger, many variants and approaches have been proposed. However, many of them have one thing in common, which is the Proof of Work (PoW) consensus mechanism. PoW is mainly used to support the process of new block generation. While PoW has proven its robustness, its main drawback is that it requires a significant amount of processing power to maintain the security and integrity of the blockchain. This is due to applying brute force to solve a hashing puzzle. To utilize the computational power available in useful and…
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Taxonomy
TopicsBlockchain Technology Applications and Security · Big Data and Digital Economy · EEG and Brain-Computer Interfaces
