International Journal of Multidisciplinary Research and Growth Evaluation  |  ISSN (Online): 2582-7138  |  Double-Blind Peer Review  |  Open Access  |  CC BY 4.0

Current Issues
     2026:7/3

International Journal of Multidisciplinary Research and Growth Evaluation

ISSN (Online): 2582-7138 | Open Access

Architecting high availability solutions with google cloud load balancing

Full Text (PDF)

Open Access - Free to Download

Download Full Article (PDF)

Alternative download link

Abstract

The following research paper has provided a vivid description of the term High Availability. It has proved to be effective for cloud-based applications for determining fluent service delivery. At the same time, it has explored the integration of Google Cloud Load Balancing that plays a vital character in transforming high availability architecture. Furthermore, this has considered the essential components that are needed for the overall enhancement of high availability such as improved performance, simplified management, enhanced security and scalability. Analysing the approaches has been rendered to control the risks leading towards a progressive road while using Google Cloud Load Balancing.

How to Cite This Article

Upesh Kumar Rapolu (2023). Architecting high availability solutions with google cloud load balancing . International Journal of Multidisciplinary Research and Growth Evaluation (IJMRGE), 4(2), 605-607. DOI: https://doi.org/10.54660/IJMRGE.2023.4.2.605-607

Export Citation:

BibTeX RIS EndNote

References

  1. 1. Javadpour A, etal. Improvingloadbalancingfordata-duplicationinbigdatacloudcomputingnetworks.2022.
  2. 2. Kruekaew B, Kimpan W. Multi-Objective Task Scheduling Optimizationfor Load Balancingin Cloud Computing Environment Using Hybrid Artificial Bee Colony Algorithm With Reinforcement Learning. IEEE.
  3. 2022. Availablefrom: https://ieeexplore. ieee. org
  4. 3. Smith C, Jindal A, Chadha M, Gerndt M, Benedict S. Fa DO: Faa SFunctionsand Data Orchestratorfor Multiple Serverless Edge-Cloud Clusters.2022.
  5. 4. Ashawa M, Douglas O, Osamor J, Jackie R. Improvingcloudefficiencythroughoptimizedresourceallocationtechniqueforloadbalancingusing LSTMmachinelearningalgorithm. Journalof Cloud Computing.2022;11(1\:1-14.
  6. 5. Kaur R, Luthra P. Load Balancingin Cloud Computing.2022.
  7. 6. Bauskar S, etal. Data Migrationinthe Cloud Database: AReviewof Vendor Solutionsand Challenges. SSRNElectronic Journal.2022 Jan. Availablefrom: https://ssrn. com/abstract=
  8. 35749277. Boddapati VN, etal. Data Migrationinthe Cloud Database: AReviewof Vendor Solutionsand Challenges. SSRNElectronic Journal.
  9. 2022. Availablefrom: https://ssrn. com/abstract=3574927

Share This Article: