Comparative Review of Cloud Computing Platforms for Data Science Workflows

08/30/2022
by   Mohammad Rehman, et al.
0

With the advantages that cloud computing offers in terms of platform as a service, software as a service, and infrastructure as a service, data engineers and data scientists are able to leverage cloud computing for their ETL/ELT (extract, transform and load) and ML (machine learning) requirements and deployments. The proposed framework for the comparative review of cloud computing platforms for data science workflows uses an amalgamation of the analytical hierarchy process, Saaty's fundamental scale of absolute numbers, and a selection of relevant evaluation criteria (namely: automation, error handling, fault tolerance, performance quality, unit testing, data encryption, monitoring, role based access, security, availability, ease of use, integration and interoperability). The framework enables users to evaluate criteria pertaining to cloud platforms for data science workflows, and additionally is able to recommend which cloud platform would be suitable for the user based on the relative importance of the above criteria. Evaluations of the criteria are shown to be consistent and thus the weighting of criteria against the goal of cloud service provider or cloud platform selection are sensible. The proposed framework is robust enough to accommodate for changes in criteria and alternatives, depending on user cloud platform requirements and scope of cloud platform selection.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/25/2019

SAASQUAL: A Quality Model For Evaluating SaaS on The Cloud Computing Environment

Cloud computing is a Technology that has come out in the last decade and...
research
11/16/2020

Improved hierarchical role based access control model for cloud computing

Cloud computing is considered as the one of the most dominant paradigm i...
research
12/09/2019

Nova – A rainbow cloud over the Alps

A pooled and shared on-demand Infrastructure as a Service (IaaS), based ...
research
07/14/2018

Evaluation as a Service architecture and crowdsourced problems solving implemented in Optil.io platform

Reliable and trustworthy evaluation of algorithms is a challenging proce...
research
01/25/2019

Ambitious Data Science Can Be Painless

Modern data science research can involve massive computational experimen...
research
05/12/2023

Conceptualizing A Multi-Sided Platform For Cloud Computing Resource Trading

Cost-effective and responsible use of cloud computing resources (CCR) is...
research
03/10/2022

A Framework for the Interoperability of Cloud Platforms: Towards FAIR Data in SAFE Environments

As the number of cloud platforms supporting biomedical research grows, t...

Please sign up or login with your details

Forgot password? Click here to reset