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Design of Blockchain-Envisioned Document Verification System

2024 6th International Conference on Computational Intelligence and Networks (CINE)(2024)

Department of Computer Science and Engineering

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Abstract
In every organization, it is very important to check the authenticity of the documents submitted by its employees to verify the background of them. The traditional methods for document verification consist of number of steps. These methods are time-consuming and even not properly secure. Therefore, in this paper we address these challenges and proposed a blockchain-based document verification system, which is reliable and efficient to use. It serves as a common platform for all the stakeholders who are involved in the document verification process, like a graduate who seeks job in an organization, his employer and his educational institution. This paper explores the technical foundation of blockchain technology which includes the transaction processing, fee structures, digital signature techniques, hashing algorithms and block creation processes. The transactions serve as the fundamental units for data-exchange within the blockchain ecosystem. Moreover, digital signatures and hashing techniques ensures data authenticity and security. The practical implementation of the proposed system is also provided to check its usability in the real-time.
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Key words
Blockchain,Network Efficiency,Data Integrity,Digital Signatures,Security
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