Blockchain consensus method and system based on deep learning model training

A deep learning and model training technology, applied in the field of blockchain, can solve problems such as energy and computing power waste, save social resources, solve high costs, and reduce costs

Pending Publication Date: 2020-09-18
广州中科易德科技有限公司
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0005] In view of this, in order to solve the problem of energy and computing power waste in the blockchain consensus algorithm in the prior art, the present invention proposes a blockchain consensus method and system based on deep learning model training

Method used

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  • Blockchain consensus method and system based on deep learning model training

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Effect test

Embodiment 1

[0040] Such as figure 1 As shown, the present invention provides a block chain consensus method based on deep learning model training, comprising the following steps:

[0041] Step S110: The subject collects file information such as pictures, voice, video, and text, stores them in the file system, and returns the Uniform Resource Locator URI 文件 , the subject constructs a data collection transaction, according to the format {subject wallet address, collection reward amount, URI 文件} to the node, and the node broadcasts the information to its neighbors.

[0042] If the underlying blockchain is based on blockchains such as Bitcoin and Litecoin, it will expand new types of data collection. The "URI" here 文件 "It can be stored using the reserved fields in Bitcoin transactions; if it is based on blockchain platforms with smart contract mechanisms such as Ethereum and EOS, then "URI 文件 " is to use it as a parameter and call the method of the smart contract. After the data informatio...

Embodiment 2

[0055] Such as figure 2 As shown, the present invention also provides a blockchain consensus system based on deep learning model training, including a parameter and data acquirer, a consensus algorithm scheduler, a deep learning model trainer, and a consensus verifier.

[0056] Parameter and data acquirer, used for the main body to collect pictures, audio, video, text and other file information and store them in the file system and return the Uniform Resource Locator URI 文件 , the subject constructs a data collection transaction, according to the format {subject wallet address, collection reward amount, URI 文件} to the node, and the node broadcasts the information to its neighbors.

[0057] If the underlying blockchain is based on blockchains such as Bitcoin and Litecoin, it will expand new types of data collection. The "URI" here 文件 "It can be stored using the reserved fields in Bitcoin transactions; if it is based on blockchain platforms with smart contract mechanisms such ...

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Abstract

The invention discloses a blockchain consensus method and system based on deep learning model training. The system comprises a parameter and data acquirer, a consensus algorithm scheduler, a deep learning model trainer and a consensus verifier. The method can be in butt joint with an existing block chain system, and POW / POS / POA and other consensus algorithms are replaced. According to the invention, the excess computing power of the block chain is introduced into deep learning model training, and through the excitation mechanism of the block chain, the investor can use the mining machine for training the artificial intelligence model, the investment of funds, computing power and energy can be guided into more meaningful work, and the problems of insufficient computing power and high cost are solved. The POW computing power of the block chain is used for deep learning model training calculation of big data, the cost is reduced, social resources are saved, and the computing power is usedfor meaningful work.

Description

technical field [0001] The invention relates to the technical field of block chains, in particular to a block chain consensus method and system based on deep learning model training. Background technique [0002] The development of blockchain technology has been generally recognized by domestic and foreign enterprises, research institutions, universities, etc., and it is considered to be the core of the next-generation value Internet. The mainstream blockchain platforms such as Bitcoin, Ethereum, Litecoin, etc. generally use the POW consensus algorithm to determine the node that produces the block through repeated hash value calculations by the mining machine. Which node invests more computing power, there will be more There is a high probability of getting block rewards. This mechanism enables the establishment of trust and value consensus through machines and algorithms. Investors invest a lot of money to buy mining machines and electricity. As of September 2019, the comp...

Claims

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Application Information

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IPC IPC(8): G06N3/08G06N3/04G06Q20/38
CPCG06N3/08G06Q20/3825G06N3/045Y02D10/00
Inventor 李引
Owner 广州中科易德科技有限公司
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