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Google Cloud Services for Collecting, Processing, Analyzing, and Visualizing the Types of COVID-19 Vaccines

Received: 16 June 2022    Accepted: 11 July 2022    Published: 28 July 2022
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Abstract

This study analyzes the types of COVID-19 vaccines used in different countries in Google Cloud native services. Big Query, a Google Cloud data analytics product, is used for data analytics. The python application is developed for data visualization of types of COVID-19 vaccines, and the application deployed in Google Cloud handles the data collection methodology. Google Cloud composer establishes the connection to the World Health Organization portal. Apache Airflow directed acyclic graph (DAG) runs in a Cloud Composer environment and Google Data Studio for data visualization. Google Guild members fully support the Google cloud Nature Labs projects. The motivation behind this project is our recent work on creating the ecosystem in Google Cloud for customers. The discovery, identification of Google service, the workload migration is designed for Google Cloud. The python application parses the types of vaccines of COVID-19 data in JSON format. The big query, a serverless data analytics of Google cloud, performs the classes of vaccines used in different countries. The python application parses the JSON file format and generates the report of the types the COVID-19 vaccines. Python application performs the data visualization in Google cloud, and Google data studio completes the functional requirement of reporting layer. The approach to studying the types of vaccines used in different countries is unique. As always, the data clenching task is a tedious task. Thanks to the research sponsor, SerpAPI provides the Google search results of variance of COVID-19 vaccines and chemical composition of vaccines of companies. The developed solution and the work products are highly reusable, and customers benefit from the outcome of this research assignment in the Google cloud innovation project of Nature Labs. The Google cloud native offers the dynamics for the scientific community on the study of types of vaccines for vaccine manufacturing companies. We conclude that out of thirty vaccine manufacturing companies, the World Health Organization (WHO) disapproves of Wuhan CNBG.

Published in International Journal of Data Science and Analysis (Volume 8, Issue 4)
DOI 10.11648/j.ijdsa.20220804.11
Page(s) 94-118
Creative Commons

This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited.

Copyright

Copyright © The Author(s), 2024. Published by Science Publishing Group

Keywords

COVID-19 Vaccine Types, Python Data Analytics, Google Compute Engine, Google SerpAPI, Google Cloud SQL, COVID-19 Vaccines Dataset, Analytics COVID-19 Vaccines, Google Cloud Big Query

References
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Cite This Article
  • APA Style

    Ramamurthy Valavandan, Subhendu Ghosh, Kumaraswamy Reddy, Prasanth Parayatham, Ubaiyadulla Sherif, et al. (2022). Google Cloud Services for Collecting, Processing, Analyzing, and Visualizing the Types of COVID-19 Vaccines. International Journal of Data Science and Analysis, 8(4), 94-118. https://doi.org/10.11648/j.ijdsa.20220804.11

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    ACS Style

    Ramamurthy Valavandan; Subhendu Ghosh; Kumaraswamy Reddy; Prasanth Parayatham; Ubaiyadulla Sherif, et al. Google Cloud Services for Collecting, Processing, Analyzing, and Visualizing the Types of COVID-19 Vaccines. Int. J. Data Sci. Anal. 2022, 8(4), 94-118. doi: 10.11648/j.ijdsa.20220804.11

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    AMA Style

    Ramamurthy Valavandan, Subhendu Ghosh, Kumaraswamy Reddy, Prasanth Parayatham, Ubaiyadulla Sherif, et al. Google Cloud Services for Collecting, Processing, Analyzing, and Visualizing the Types of COVID-19 Vaccines. Int J Data Sci Anal. 2022;8(4):94-118. doi: 10.11648/j.ijdsa.20220804.11

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  • @article{10.11648/j.ijdsa.20220804.11,
      author = {Ramamurthy Valavandan and Subhendu Ghosh and Kumaraswamy Reddy and Prasanth Parayatham and Ubaiyadulla Sherif and Vikram Sharma and Pragathi Sri and Vijayachandran Ramachandran and Surasa Mukherjee and Nitin Ambekar and Dinesh Sai Teja Neeli and Vijender Singh and Santosh Baran and Praveen Brian and Hanumantha Raj and Musheer Ahmed and Saurabh Uniyal},
      title = {Google Cloud Services for Collecting, Processing, Analyzing, and Visualizing the Types of COVID-19 Vaccines},
      journal = {International Journal of Data Science and Analysis},
      volume = {8},
      number = {4},
      pages = {94-118},
      doi = {10.11648/j.ijdsa.20220804.11},
      url = {https://doi.org/10.11648/j.ijdsa.20220804.11},
      eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ijdsa.20220804.11},
      abstract = {This study analyzes the types of COVID-19 vaccines used in different countries in Google Cloud native services. Big Query, a Google Cloud data analytics product, is used for data analytics. The python application is developed for data visualization of types of COVID-19 vaccines, and the application deployed in Google Cloud handles the data collection methodology. Google Cloud composer establishes the connection to the World Health Organization portal. Apache Airflow directed acyclic graph (DAG) runs in a Cloud Composer environment and Google Data Studio for data visualization. Google Guild members fully support the Google cloud Nature Labs projects. The motivation behind this project is our recent work on creating the ecosystem in Google Cloud for customers. The discovery, identification of Google service, the workload migration is designed for Google Cloud. The python application parses the types of vaccines of COVID-19 data in JSON format. The big query, a serverless data analytics of Google cloud, performs the classes of vaccines used in different countries. The python application parses the JSON file format and generates the report of the types the COVID-19 vaccines. Python application performs the data visualization in Google cloud, and Google data studio completes the functional requirement of reporting layer. The approach to studying the types of vaccines used in different countries is unique. As always, the data clenching task is a tedious task. Thanks to the research sponsor, SerpAPI provides the Google search results of variance of COVID-19 vaccines and chemical composition of vaccines of companies. The developed solution and the work products are highly reusable, and customers benefit from the outcome of this research assignment in the Google cloud innovation project of Nature Labs. The Google cloud native offers the dynamics for the scientific community on the study of types of vaccines for vaccine manufacturing companies. We conclude that out of thirty vaccine manufacturing companies, the World Health Organization (WHO) disapproves of Wuhan CNBG.},
     year = {2022}
    }
    

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    AU  - Pragathi Sri
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    AU  - Surasa Mukherjee
    AU  - Nitin Ambekar
    AU  - Dinesh Sai Teja Neeli
    AU  - Vijender Singh
    AU  - Santosh Baran
    AU  - Praveen Brian
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    AB  - This study analyzes the types of COVID-19 vaccines used in different countries in Google Cloud native services. Big Query, a Google Cloud data analytics product, is used for data analytics. The python application is developed for data visualization of types of COVID-19 vaccines, and the application deployed in Google Cloud handles the data collection methodology. Google Cloud composer establishes the connection to the World Health Organization portal. Apache Airflow directed acyclic graph (DAG) runs in a Cloud Composer environment and Google Data Studio for data visualization. Google Guild members fully support the Google cloud Nature Labs projects. The motivation behind this project is our recent work on creating the ecosystem in Google Cloud for customers. The discovery, identification of Google service, the workload migration is designed for Google Cloud. The python application parses the types of vaccines of COVID-19 data in JSON format. The big query, a serverless data analytics of Google cloud, performs the classes of vaccines used in different countries. The python application parses the JSON file format and generates the report of the types the COVID-19 vaccines. Python application performs the data visualization in Google cloud, and Google data studio completes the functional requirement of reporting layer. The approach to studying the types of vaccines used in different countries is unique. As always, the data clenching task is a tedious task. Thanks to the research sponsor, SerpAPI provides the Google search results of variance of COVID-19 vaccines and chemical composition of vaccines of companies. The developed solution and the work products are highly reusable, and customers benefit from the outcome of this research assignment in the Google cloud innovation project of Nature Labs. The Google cloud native offers the dynamics for the scientific community on the study of types of vaccines for vaccine manufacturing companies. We conclude that out of thirty vaccine manufacturing companies, the World Health Organization (WHO) disapproves of Wuhan CNBG.
    VL  - 8
    IS  - 4
    ER  - 

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Author Information
  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

  • Kyndryl Solutions Private Limited, Google Cloud Guild, Nature Labs Project, Bangalore, India

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