A New Architectural Model Shift Beyond the Cloud in Python Using PS
Abstract
Nowadays, data science initiatives are typically generated in an unstructured manner, making replication difficult. Transitioning from an experimental to a production environment is also difficult. Data scientists may transfer a pipeline from a local environment to the cloud using operational techniques like containerization, continuous deployment, and cloud orchestration. Recognizing the difficulties associated with establishing those procedures, this study proposes a framework for easier experiment monitoring and machine learning operationalization by combining existing and wellsupported technologies. Python libraries, Python environment, and Command Line Interface are all available. (CLI) are only a few of the technologies available. The framework offers an opinionated approach for designing and running experiments in a local or remote environment. PyScript includes an automatic tracking system for the most famous Data Science libraries: beautiful soup4, NumPy, Pandas, scikit-learn, scikit-image, and matplotlib, first-class support for distributed training and hyperparameter optimization, and a Command Line Interface (CLI) for packaging and running projects inside web browser.
Full Text:
PDFReferences
D.P. Pop and A. Altar (2014) Designing an MVC model for rapid web application development.
Procedia Engineering, 69, pp 1172–1179.
M. Aniche, G. Bavota, C. Treude, M.A. Gerosa, and A. van Deursen, “Code smells for ModelView-Controller architectures,” Empir. Softw. Eng., vol. 23, no. 4, pp.2121–2157, 2018.
Yunchuan Sun, Junsheng Zhang, Yongping Xiong, Guangyu Zhu. (2014). Data Security and
Privacy in Cloud Computing, International Journal of Distributed sensor Networks pp 1–9
Ghimire, D. (2020). Comparative study on Python web frameworks: Flask and
Django. Theseus.fi. [online] available from doi:http://www.theseus.fi/handle/10024/339796.
Kuo, A.M.-H. Opportunities and Challenges of Cloud Computing to Improve Health Care
Services. Journal of Medical Internet Research, volume 13 Issue (3), (2011).
S. Khanvilkar and A. Khokhar, 2004 “Virtual Private Networks: an overview with performance
evaluation,” Communications Magazine, IEEE, vol. 42, no. 10, pp. 146–154
Scirp.org. (2015). Hayes, B. (2008) Cloud Computing. Communications of the ACM, 51, 9–11. -
References-Scientific Research Publishing. [online] Available from https://www.scirp.org/
(S(351jmbntvnsjt1aadkposzje))/reference/referencespapers.aspx?referenceid=1591282
Mell, P.M. and Grance, T. (2011). The NIST Definition of Cloud Computing. [online] NIST.
Available from: https://www.nist.gov/publications/nist-definition-cloud-computing [Accessed 4
Jun. 2022].
Anaconda. (2022). Anaconda | New from Anaconda: Python in the Browser. [online] Available
from: https://www.anaconda.com/blog/pyscript-python-in-the-browser
Pyodide.org. (2022). Change Log-Version 0.20.0. [online] Available from:
https://pyodide.org/en/stable/project/changelog.html
Python.org. (2022). What’s New In Python 3.11-Python 3.11.0b3 documentation. [online]
Available from: https://docs.python.org/3.11/whatsnew/3.11.html
Morioh.com. (2022). Social Network for Programmers and Developers. [online] Available from:
https://morioh.com/p/40d55fff82d6
Scirp.org. (2013). J. Staten, et al., ‘Is Cloud Computing Ready for the Enterprise’ Forrester
Research, 2008. - References-Scientific Research Publishing. [online] Available from:
https://www.scirp.org/(S(i43dyn45teexjx455qlt3d2q))/reference/ReferencesPapers.aspx?Referenc
eID=839333
Today, I. (2021). India Today Web Desk. [online] India Today. Available from
https://www.indiatoday.in/education-today/featurephilia/story/explained-how-will-nep-2020-chan
ge-the-education-system-in-india-1767385–2021–02–09
Refbacks
- There are currently no refbacks.