[Retracted] The Rise of Cloud Computing: Data Protection, Privacy, and Open Research Challenges—A Systematic Literature Review (SLR)
J Hassan, D Shehzad, U Habib… - Computational …, 2022 - Wiley Online Library
Cloud computing is a long‐standing dream of computing as a utility, where users can store
their data remotely in the cloud to enjoy on‐demand services and high‐quality applications …
their data remotely in the cloud to enjoy on‐demand services and high‐quality applications …
Bts: An accelerator for bootstrappable fully homomorphic encryption
Homomorphic encryption (HE) enables the secure offloading of computations to the cloud by
providing computation on encrypted data (ciphertexts). HE is based on noisy encryption …
providing computation on encrypted data (ciphertexts). HE is based on noisy encryption …
CryptGPU: Fast privacy-preserving machine learning on the GPU
We introduce CryptGPU, a system for privacy-preserving machine learning that implements
all operations on the GPU (graphics processing unit). Just as GPUs played a pivotal role in …
all operations on the GPU (graphics processing unit). Just as GPUs played a pivotal role in …
HEAX: An architecture for computing on encrypted data
With the rapid increase in cloud computing, concerns surrounding data privacy, security, and
confidentiality also have been increased significantly. Not only cloud providers are …
confidentiality also have been increased significantly. Not only cloud providers are …
Over 100x faster bootstrap** in fully homomorphic encryption through memory-centric optimization with GPUs
Fully Homomorphic encryption (FHE) has been gaining in popularity as an emerging means
of enabling an unlimited number of operations in an encrypted message without decryption …
of enabling an unlimited number of operations in an encrypted message without decryption …
Tenseal: A library for encrypted tensor operations using homomorphic encryption
Machine learning algorithms have achieved remarkable results and are widely applied in a
variety of domains. These algorithms often rely on sensitive and private data such as …
variety of domains. These algorithms often rely on sensitive and private data such as …
Ark: Fully homomorphic encryption accelerator with runtime data generation and inter-operation key reuse
Homomorphic Encryption (HE) is one of the most promising post-quantum cryptographic
schemes that enable privacy-preserving computation on servers. However, noise …
schemes that enable privacy-preserving computation on servers. However, noise …
FAB: An FPGA-based accelerator for bootstrappable fully homomorphic encryption
Fully Homomorphic Encryption (FHE) offers protection to private data on third-party cloud
servers by allowing computations on the data in encrypted form. To support general-purpose …
servers by allowing computations on the data in encrypted form. To support general-purpose …
Cheetah: Optimizing and accelerating homomorphic encryption for private inference
As the application of deep learning continues to grow, so does the amount of data used to
make predictions. While traditionally big-data deep learning was constrained by computing …
make predictions. While traditionally big-data deep learning was constrained by computing …
Towards the alexnet moment for homomorphic encryption: Hcnn, the first homomorphic cnn on encrypted data with gpus
Deep Learning as a Service (DLaaS) stands as a promising solution for cloud-based
inference applications. In this setting, the cloud has a pre-learned model whereas the user …
inference applications. In this setting, the cloud has a pre-learned model whereas the user …