Bookkeeping Service Providers

  • Accounting
  • Bookkeeping
  • US Taxation
  • Financial Planning
  • Accounting Software
  • Small Business Finance
You are here: Home / Uncategorized / The Cloud Doesn’t Eliminate The Need For Data Recovery Software

The Cloud Doesn’t Eliminate The Need For Data Recovery Software

March 1, 2019 by cbn Leave a Comment

Cloud computing has disrupted the digital technology sector in surprising ways. According to some estimates, the market is expected to rise to $411 billion by the end of next year. The rapid growth can largely be attributed to advances in artificial intelligence and big data. However, despite some of the fascinating advances, there are still some obstacles and limitations. Contrary to popular belief, cloud computing has not eliminated the need for traditional data recovery solutions.

What are some of the reasons that cloud technology can’t replace traditional data recovery solutions?

Many technology pundits have overstated the benefits of cloud technology. They have argued that it virtually erases the risk of data loss, because data copies can be stored on the cloud. According to these experts, copies of these files are replicated across numerous servers, so the data won’t be lost if one or two servers are affected.

Unfortunately, there are a few reasons that data loss concerns persist, despite the new advances in cloud computing. Here are some of the concerns.

Some data can’t be risked on the cloud

Some cloud storage options are considerably safer than others. However, all of them are at risk of a cybersecurity breach to some degree.

This means that highly sensitive data must be stored on local disk drives. The problem is that these files are more vulnerable to data loss. It necessitates data recovery software in the event that something happens to one of those drives.

Local data storage is necessary if cloud servers fail

We tend to get overly confident in the reliability of new technology. Cloud computing is an excellent example. Many people store data on the cloud with the belief that there is no possibility it will fail.

The unfortunate reality is that cloud servers can fail for a number of reasons. Multiple servers across the same network could be targeted by a malicious hacker or hostile state actor. They could all collectively be affected by malware or a failed update, which could have a drastically negative effect across all copies of a file. InfoWorld wrote a post on 10 of the biggest cloud failures of all time. These failures will persist for years to come.

This means that organizations need to be able to store copies of their data locally as well. Of course, they need to consider the possibility that the data could be compromised on the local storage unit and the cloud server. In this case, the last resort will need to be using a data recovery tool to restore the local copy.

Big Data Drives Need for Data Restoration Technology

Data loss will continue to be a problem for years to come, despite the impressive advances in cloud technology. This illustrates the importance of multifaceted approaches to big data applications. There are two types of applications for using big data to prevent a data loss:

  • Hardware developers must address design flaws and vulnerabilities that increase the risks of data loss.
  • Big data is helping developers create more reliable top data recovery software

Data recovery tools are becoming more effective, primarily due to new artificial intelligence capabilities and data driven development processes. Here are some ways that data has improve the quality of data recovery technology and continues to be relevant in the age of cloud computing:

  • New data recovery technology uses predictive analytics to understand the factors that can lead to data loss. This helps them tweak their algorithms to recover data from a variety of different scenarios. According to NewGenApps, predictive analytics is the most important technology driving advances in data recovery software.
  • Artificial intelligence has helped these tools become better at understanding the sections of the disc that were affected. This helps them get a better understanding of disc fragmentation and properly restore data accordingly.
  • Machine learning algorithms are getting better at pursing together different bits of code to make sure that it is properly restructured and restored.

Artificial intelligence and big data will continue to play a very important role in the development of new data restoration technology.

AI-based Data recovery solutions are essential when cloud storage fails

As promising as developments in cloud computing have become, they have not eliminated the need for traditional data recovery technology. Artificial intelligence has created superior data recovery tools for instances when cloud technology is not reliable.

Share on FacebookShare on TwitterShare on Google+Share on LinkedinShare on Pinterest

Filed Under: Uncategorized

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Archives

  • May 2025
  • April 2025
  • March 2025
  • February 2025
  • January 2025
  • December 2024
  • November 2024
  • October 2024
  • July 2024
  • June 2024
  • May 2024
  • April 2024
  • March 2024
  • February 2024
  • January 2024
  • December 2023
  • October 2023
  • September 2023
  • August 2023
  • July 2023
  • June 2023
  • May 2023
  • April 2023
  • March 2023
  • February 2023
  • January 2023
  • December 2022
  • November 2022
  • October 2022
  • September 2022
  • August 2022
  • July 2022
  • June 2022
  • May 2022
  • April 2022
  • March 2022
  • February 2022
  • January 2022
  • December 2021
  • November 2021
  • October 2021
  • September 2021
  • August 2021
  • May 2021
  • April 2021
  • September 2020
  • August 2020
  • July 2020
  • June 2020
  • May 2020
  • April 2020
  • March 2020
  • February 2020
  • January 2020
  • December 2019
  • November 2019
  • October 2019
  • September 2019
  • August 2019
  • July 2019
  • June 2019
  • May 2019
  • April 2019
  • March 2019
  • February 2019
  • January 2019
  • December 2018
  • November 2018
  • October 2018
  • September 2018
  • August 2018
  • July 2018
  • June 2018
  • May 2018
  • April 2018
  • March 2018
  • February 2018
  • January 2018
  • December 2017
  • November 2017
  • October 2017
  • September 2017
  • August 2017
  • July 2017
  • May 2017
  • April 2017
  • March 2017
  • February 2017
  • January 2017
  • March 2016

Recent Posts

  • Key network security takeaways from RSAC 2025
  • One year of Phi: Small language models making big leaps in AI
  • Adaptability by design: Unifying cloud and edge infrastructure trends 
  • Azure AI Foundry: Your GPS for the changing AI landscape
  • Accelerate AI innovation and business transformation: Scaling AI transformation with strategic cloud partnership

Recent Comments

    Categories

    • Accounting
    • Accounting Software
    • BlockChain
    • Bookkeeping
    • CLOUD
    • Data Center
    • Financial Planning
    • IOT
    • Machine Learning & AI
    • SECURITY
    • Uncategorized
    • US Taxation

    Categories

    • Accounting (145)
    • Accounting Software (27)
    • BlockChain (18)
    • Bookkeeping (205)
    • CLOUD (1,306)
    • Data Center (214)
    • Financial Planning (345)
    • IOT (260)
    • Machine Learning & AI (41)
    • SECURITY (611)
    • Uncategorized (1,284)
    • US Taxation (17)

    Subscribe Our Newsletter

     Subscribing I accept the privacy rules of this site

    Copyright © 2025 · News Pro Theme on Genesis Framework · WordPress · Log in