ISSN 2394-5125
 

Research Article 


A COMPARATIVE STUDY ON MACHINE LEARNING SERVICES IN CLOUD AND FEASIBILITY OF IMPLEMENTATION OF SERVICES IN CLOUD

Ravula Arun Kumar, VNLN Murthy.

Abstract
Most of these companies are needless to market leaders not only for the machine learning new
segment but over other IT new departments as well. By the time we say that they must compete with each large
segment other on all fry fronts trying it to invent better, larger, faster, and more accurate affordable products.
Most on priority approach to cloud machine learning might sought differ and can be truly be unique sometimes
remember Amazon deep racer, Microsoft azure learning studio and google auto ML. we need to find the best
available all options by checking I APIs do exactly at the same ML translations, Cloud text analysis, doc
image recognition, and so on. Amazon looks pretty known by launching cloud services like Rekognition
AWS that good does have a decent image recognition screen, and polly for AWS transforming text into mini
speech with help of ML and deep learning algorithms. Moreover, we Still, the tool in their collection is
definitely AWS amazon sage maker by which designed made to simplify social process of creating, applying,
training, and deploying deep machine learning models. Auto Ml and ML Engine builds best models in terms of
ML and AI products and google offers AI hub where plug and play can be applied. The aim of article to present
the view of custom modelling and semi automated ML services like Amazon ML, Microsoft azure ML,
Google Cloud auto ML.

Key words: Amazon Rekognition, Amazon sagemaker, Azure ML services, Google cloud Auto ML, Machine Learning as service.


 
ARTICLE TOOLS
Abstract
PDF Fulltext
How to cite this articleHow to cite this article
Citation Tools
Related Records
 Articles by Ravula Arun Kumar
Articles by VNLN Murthy
on Google
on Google Scholar


How to Cite this Article
Pubmed Style

Ravula Arun Kumar, VNLN Murthy. A COMPARATIVE STUDY ON MACHINE LEARNING SERVICES IN CLOUD AND FEASIBILITY OF IMPLEMENTATION OF SERVICES IN CLOUD. JCR. 2020; 7(19): 5497-5504. doi:10.31838/jcr.07.19.638


Web Style

Ravula Arun Kumar, VNLN Murthy. A COMPARATIVE STUDY ON MACHINE LEARNING SERVICES IN CLOUD AND FEASIBILITY OF IMPLEMENTATION OF SERVICES IN CLOUD. http://www.jcreview.com/?mno=133458 [Access: September 14, 2020]. doi:10.31838/jcr.07.19.638


AMA (American Medical Association) Style

Ravula Arun Kumar, VNLN Murthy. A COMPARATIVE STUDY ON MACHINE LEARNING SERVICES IN CLOUD AND FEASIBILITY OF IMPLEMENTATION OF SERVICES IN CLOUD. JCR. 2020; 7(19): 5497-5504. doi:10.31838/jcr.07.19.638



Vancouver/ICMJE Style

Ravula Arun Kumar, VNLN Murthy. A COMPARATIVE STUDY ON MACHINE LEARNING SERVICES IN CLOUD AND FEASIBILITY OF IMPLEMENTATION OF SERVICES IN CLOUD. JCR. (2020), [cited September 14, 2020]; 7(19): 5497-5504. doi:10.31838/jcr.07.19.638



Harvard Style

Ravula Arun Kumar, VNLN Murthy (2020) A COMPARATIVE STUDY ON MACHINE LEARNING SERVICES IN CLOUD AND FEASIBILITY OF IMPLEMENTATION OF SERVICES IN CLOUD. JCR, 7 (19), 5497-5504. doi:10.31838/jcr.07.19.638



Turabian Style

Ravula Arun Kumar, VNLN Murthy. 2020. A COMPARATIVE STUDY ON MACHINE LEARNING SERVICES IN CLOUD AND FEASIBILITY OF IMPLEMENTATION OF SERVICES IN CLOUD. Journal of Critical Reviews, 7 (19), 5497-5504. doi:10.31838/jcr.07.19.638



Chicago Style

Ravula Arun Kumar, VNLN Murthy. "A COMPARATIVE STUDY ON MACHINE LEARNING SERVICES IN CLOUD AND FEASIBILITY OF IMPLEMENTATION OF SERVICES IN CLOUD." Journal of Critical Reviews 7 (2020), 5497-5504. doi:10.31838/jcr.07.19.638



MLA (The Modern Language Association) Style

Ravula Arun Kumar, VNLN Murthy. "A COMPARATIVE STUDY ON MACHINE LEARNING SERVICES IN CLOUD AND FEASIBILITY OF IMPLEMENTATION OF SERVICES IN CLOUD." Journal of Critical Reviews 7.19 (2020), 5497-5504. Print. doi:10.31838/jcr.07.19.638



APA (American Psychological Association) Style

Ravula Arun Kumar, VNLN Murthy (2020) A COMPARATIVE STUDY ON MACHINE LEARNING SERVICES IN CLOUD AND FEASIBILITY OF IMPLEMENTATION OF SERVICES IN CLOUD. Journal of Critical Reviews, 7 (19), 5497-5504. doi:10.31838/jcr.07.19.638