A Hybrid Encryption Model for Secure Data Storage and Transmission in Cloud Computing
Abstract
Ensuring secure data storage and transmission is critical in cloud computing due to the increased risk of data breaches and unauthorized access. This paper presents a hybrid encryption model that combines symmetric and asymmetric encryption techniques to secure cloud-based data exchange. The proposed model uses AES (Advanced Encryption Standard) for fast encryption of large datasets and RSA (Rivest–Shamir–Adleman) for secure key exchange. Additionally, the model integrates a blockchain-based auditing mechanism to ensure data integrity and prevent tampering. Performance evaluations show that the hybrid encryption model achieves high throughput and low latency while maintaining strong cryptographic security. The study highlights the advantages of combining encryption techniques to achieve a balanced trade-off between security and performance in cloud environments.
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