title = "Cost-Aware Multimedia Data Allocation for
Heterogeneous Memory Using Genetic Algorithm in Cloud
Computing",
year = "2020",
volume = "8",
number = "4",
pages = "1212--1222",
month = oct # "-" # dec,
keywords = "genetic algorithms, genetic programming, Cloud
computing, heterogeneous memory, data allocation,
multimedia big data",
ISSN = "2168-7161",
DOI = "doi:10.1109/TCC.2016.2594172",
abstract = "Recent expansions of Internet-of-Things (IoT) applying
cloud computing have been growing at a phenomenal rate.
As one of the developments, heterogeneous cloud
computing has enabled a variety of cloud-based
infrastructure solutions, such as multimedia big data.
Numerous prior researches have explored the
optimisations of on-premise heterogeneous memories.
However, the heterogeneous cloud memories are facing
constraints due to the performance limitations and cost
concerns caused by the hardware distributions and
manipulative mechanisms. Assigning data tasks to
distributed memories with various capacities is a
combinatorial NP-hard problem. This paper focuses on
this issue and proposes a novel approach, Cost-Aware
Heterogeneous Cloud Memory Model (CAHCM), aiming to
provision a high performance cloud-based heterogeneous
memory service offerings. The main algorithm supporting
CAHCM is Dynamic Data Allocation Advance (2DA)
Algorithm that uses genetic programming to determine
the data allocations on the cloud-based memories. In
our proposed approach, we consider a set of crucial
factors impacting the performance of the cloud
memories, such as communication costs, data move
operating costs, energy performance, and time
constraints. Finally, we implement experimental
evaluations to examine our proposed model. The
experimental results have shown that our approach is
adoptable and feasible for being a cost-aware
cloud-based solution.",
notes = "Department of Computer Science, Pace University,
NewYork, NY 10038 USA.