5 Must-Have Capabilities of Alternative Cloud Provider

September 22, 2021

Recent times have shown that having an online presence is a commodity. In the scheme of workloads and workspaces, having a cloud solution helps with better prospects of scalability. The world is changing to adjust to the shift of social distancing, forcing enterprises to invest in virtual cloud infrastructures.

The current state and future of businesses completely lie around core cloud services - Easy access and computation, object storage, testing environments, backups, and low-risk options in multi-cloud or hybrid cloud deployments. The challenge facing businesses now is not to pick the right cloud, but to have the best alternative cloud provider to large-scale cloud services.

Alternative clouds are just like the major providers dominating the market. Instead, similar services are offered at a better pricing range that suits your needs. Alternative cloud providers offer services to businesses that provide better exposure, implementing different cloud services for the greater good of clients. What marks out alternative providers from the dominant ones is the affordable pricing range and core services backed by more accessible support.

We have explored the top five deciding factors that any alternative cloud provider must-have. By asking the right questions, one can determine the right cloud provider for your needs -

Automation

It goes without saying, that automation does take a few things off the plate and is an essential feature of cloud computing. Any cloud space must be able to automatically install, maintain and configure systems in an attempt to streamline processes and reduce human effort. The virtual architecture must be designed efficiently such that once trained the automation status would be achieved by deploying virtual machines and servers. Effective application automation features still require regular checks to ensure protocols are maintained.

Security

Online theft safety and security standards are quite important for any business owner. Any alternative cloud must have security mechanisms that ensure the safety of data and applications online. It is a critical, deciding aspect that can affect business operations, services offered, data compliance and regulations, partner integrations, and so on. Particular attention must be paid to legal attributes and requirements in line with GDPR. The right cloud provider must back you in any legal backlashes in case of any lapses.

On-demand customer service

As a cloud solution provider, there are bound to be scenarios where for a business, one might need technical support, and having a dedicated team helps to solve your issues quickly. It stands as a key factor that helps businesses choose a cloud provider, with solutions designed to help users and provide support with effective responsiveness at all times.

Ask relevant questions regarding the tech support and response rate according to your requirements before you make a decision.

Cost

The cost outweighs all other factors and plays the most important role when choosing the right cloud provider. It is recommended to conduct extensive research to understand the payment structure and the types of payment formats accepted.

Each business has a different target market and strategies that are aligned to those segments. The cloud services you are considering must have similar interests to make sure that you don’t exceed your finance limits for services you don’t require. Instead, you need to identify the right packages for your needs that best suit your business idea, budget, and timeline.

Scalability

Multiple agendas need to work in unison to offer scalability options -

Think about the architecture and framework that would be incorporated into your workflows. If your organization already has a cloud presence then choosing the right provider offering compatibility and ease of integration may be the right option.

Storage and data centers are subject to risk in terms of the location where the data is stored, managed, and processed. It should offer brief encryption graded passage to enable data sharing and moving within the cloud. A great alternative cloud solution would provide the ability to quickly provision resources as per the requirement; the cloud structure should allow easy structuring and scale without any need for additional resources and contracts.

Elasticity to adjust and get additional workspaces, virtual machines to provision more resources and increase the use of customer applications - the cloud must be able to cope with workloads and server requirements with cost-effective expenditures.

Having data spaces spread across a wide network helps to helm large to small requirements without impacting the performance of manufacturing applications. It helps to minimize downtime and create a network that can be accessible with proper bandwidth and latency.

No matter the business scale and need, in cloud computing there is no obligation to be associated with the big cloud providers. Select the providers based on your individual needs and interest, that help you gain control over the derivatives.

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Reference Links

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