Separating the Myths and Facts About Cloud Computing

April 12, 2021

The cloud computing market has crossed boundaries and is set to reach a figure of more than $411 billion in this space, where the early-stage valuation in 2010 was a mere $68 billion. This shows impeccable growth statistics in such a short time frame. 

With the new technologies and products in picture, there have always been misconceptions about its functionality. And it is understandable, given the rise of cloud solutions revamping an entire business in a digital space is a tedious task. It is good to be aware, and there is no question now that the digital era is here to stay. Cloud solutions and their benefits are well placed throughout the internet; still, some concerning thoughts prevail. This article is aimed to clear you of those confusions regarding cloud technologies.

Cloud computing is all about delivering solutions as a service that includes storage, databases, software, intelligence, and analytics. Let us clear some myths that will help you understand cloud computing on a better level.

Myth – Cloud spaces are not secure

Fact – With the increase in internet usage and widespread use of mobile devices, people have triggered the paradigm shift of digital solutions. Cloud spaces offer an excellent secure network due to an extensive amount of resources, knowledge and investments provided with secure checkpoints to avoid any unauthorized usage. Company protocols are regularly reinstated with updated versions to maintain security.

There have been security breaches, but with time, cloud providers have heavily invested in combating such situations and increased the level of sophistication. A cloud management provider should ensure a defined set of security standards set on encrypting the data and creating secure encryption keys.

Myth – Cloud solutions are not cost-effective

Fact – Cost is usually calculated based on the overall business strategy and the direction of the company. If one understands the consumption model and makes a few tweaks to moderate usage, it can achieve great cost benefits. In the long run, it can shape up to be a cost-effective solution.

The major reason to migrate to the cloud is often related to agility, but still, costing is a major concern. The cost is based on the case/model of the business. 

Myth – The cloud space is not suitable for any business

Fact Every business has a direction and methodology it needs to follow for its functioning. The major chunk of businesses rely on the public cloud, others require a combination of public and private, and the rest require a dedicated private cloud infrastructure.

After all, other reasons are factoring into the process that involves the cloud integration process. All things considered, these aspects involve new models, different storage plans, and applications with complicated software. Being connected to private and secure line servers instead of the local network increases performance and improves cloud security.

Cloud is beneficial for businesses that rely on real-time analysis, have remote staff or presence at multiple locations.

Myth – Migration is not quick and easy in the cloud

Fact – That is the case only when companies are operating on outdated and rigid devices. This increases layers of work to restructure the architecture of the company online. There are different strategies to establish a successful migration. Here is a cloud implementation plan, cloud migration plan, and cloud adoption plan.

In a better context, you must have the right plan sought out for your needs and put the right foundation in place. This will smoothen the cloud migration operations and work effectively. Whether a company has an online presence or plans to venture into it, it needs to think about creating a long-lasting online foundation.

Myth – Cloud computing is only beneficial for storage and instant access

Fact – Although data storage and agility are required, it doesn’t mean that it’s the only use of this technology. It can be a game-changer for any company or organisation as it offers its application in sectors of marketing, sales, business analytics, manufacturing, and human resource management. The seamless flow of data sharing and up-to-date information across all devices helps to increase productivity on a large scale.

Myth – After enrolling for cloud storage, there would be a wide scope for downtime

Fact – There are speculations regarding the downtime offered by different cloud providers. But instead, the most trusted and well-known cloud providers ensure that there is no chance of failure and offer negligible downtime with seamless network connectivity.

Myth – The cloud is here to eat jobs

Fact – When a company ventures into the digital space to create its presence, it does not mean that the IT section would lose its jobs. In most cases, where there is scope for transformation, the IT administrator’s role is modified with context to the company’s new architecture. The cloud is responsible for its network and data management resources, but the IT section in a company takes care of logical access.

Conclusion

Cloud computing is a stepping stone to digital transformation; with cloud computing services, businesses can enhance their resources, improve security, reduce delay, and improve overall working performance. We hope this article has helped you shed your disbeliefs about cloud computing.

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Reference Links

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Volumetric representations and surface representations can do the reconstruction. Powerful computer systems need to be used for reconstruction.

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Reference Links

https://tongtianta.site/paper/68922

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Reference Links

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