A comprehensive study and review of tuning the performance on database scalability in big data analytics
MR Sundarakumar, G Mahadevan… - Journal of Intelligent …, 2023 - content.iospress.com
In the modern era, digital data processing with a huge volume of data from the repository is
challenging due to various data formats and the extraction techniques available. The …
challenging due to various data formats and the extraction techniques available. The …
[HTML][HTML] A classification framework for straggler mitigation and management in a heterogeneous Hadoop cluster: A state-of-art survey
Hadoop is the most economical and cheap software framework that allows distributed
storage and parallel processing of more extensive data sets. Hadoop distributed file system …
storage and parallel processing of more extensive data sets. Hadoop distributed file system …
Heterogeneous architectures for big data batch processing in mapreduce paradigm
M Goudarzi - IEEE Transactions on Big Data, 2017 - ieeexplore.ieee.org
The amount of digital data produced worldwide is exponentially growing. While the source of
this data, collectively known as Big Data, varies from among mobile services to cyber …
this data, collectively known as Big Data, varies from among mobile services to cyber …
Using distributed data over HBase in big data analytics platform for clinical services
D Chrimes, H Zamani - Computational and mathematical …, 2017 - Wiley Online Library
Big data analytics (BDA) is important to reduce healthcare costs. However, there are many
challenges of data aggregation, maintenance, integration, translation, analysis, and …
challenges of data aggregation, maintenance, integration, translation, analysis, and …
{MinFlow}: High-performance and Cost-efficient Data Passing for {I/O-intensive} Stateful Serverless Analytics
Serverless computing has revolutionized application deployment, obviating traditional
infrastructure management and dynamically allocating resources on demand. A significant …
infrastructure management and dynamically allocating resources on demand. A significant …
A counter based approach for reducer placement with augmented Hadoop rackawareness
As the data-driven paradigm for intelligent systems design is gaining prominence,
performance requirements have become very stringent, leading to numerous fine-tuned …
performance requirements have become very stringent, leading to numerous fine-tuned …
A survey of big data machine learning applications optimization in cloud data centers and networks
SH Mohamed, TEH El-Gorashi… - arxiv preprint arxiv …, 2019 - arxiv.org
This survey article reviews the challenges associated with deploying and optimizing big data
applications and machine learning algorithms in cloud data centers and networks. The …
applications and machine learning algorithms in cloud data centers and networks. The …
A counter-based profiling scheme for improving locality through data and reducer placement
Hadoop has been regarded as the de-facto standard for handling data-intensive distributed
applications with its popular storage and processing engine called as the Hadoop …
applications with its popular storage and processing engine called as the Hadoop …
An Approach in Big Data Analytics to Improve the Velocity of Unstructured Data Using MapReduce
MR Sundarakumar, G Mahadevan… - International Journal of …, 2021 - igi-global.com
Abstract Big Data Analytics is an innovative approach for extracting the data from a huge
volume of data warehouse systems. It reveals the method to compress the high volume of …
volume of data warehouse systems. It reveals the method to compress the high volume of …
Faster mapreduce computation on clouds through better performance estimation
Processing Big Data in cloud is on the increase. An important issue for efficient execution of
Big Data processing jobs on a cloud platform is selecting the best fitting virtual machine (VM) …
Big Data processing jobs on a cloud platform is selecting the best fitting virtual machine (VM) …