Smart Dedicated Compute - New Evolution in the Market

December 15, 2020
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Introduction

The fast, technological era demands high configuration and robust processing to meet the needs of different businesses that require heavy resources. It also becomes hard for an enterprise to find with which server or computing platform to go. The digital medium and its data are expanding exponentially, which makes it challenging to decide which computing infrastructure can meet all the requirements of the dynamic business. Businesses can resolve such complicated headaches with the use of Smart-dedicated Compute.

What is a Smart Dedicated Compute?

Smart-dedicated Compute is the most advanced variety of servers designed specifically for intense and concentrated workloads, which not only experience immense processing power but also require a large storage facility. It provides a new breed of dedicated servers in combination with the interests of the public cloud that makes it much more accessible to maintain and control your digital infrastructure. Gartner predicts that the public cloud revenue with dedicated compute can grow up to 6.3% at the end of 2020 with a total revenue of roughly 258 billion U.S. dollars. It provides an enterprise-class cloud solution with the flexibility of public and private cloud computing capabilities combined with dedicated layers of security.

Instances of Smart Dedicated Compute rely on a fully-redundant design intended to eradicate processing downtime, increase adaptability, reduce cost, and also optimize work performance in the business. The reason behind the highest performance and control is the application of single-tenant hardware nodes built on a fully isolated environment. We can consider Smart Dedicated Compute as the evolved and next generation of cloud service where you can host your business workloads. Apart from enormous storage and processing power, it also provides tight security and data privacy of an internal system with every possible advantage of cloud computing. It provides customer-controlled online service with scalable and dynamic infrastructure. It depends on virtualization technology in conjunction with cloud services.

It allows businesses to experience flexibility, optimum performance, high reliability, and scalability with the cooperation of the cloud, along with an added tier of security to protect your business from cyber threats. Its dedicated CPU's pinned cores provide business dedicated processing power, RAM, disk space, software, and no noisy neighbor through leading cloud virtualization technology. Smart-dedicated compute technology is also responsible for reducing predictable performance, noisy neighbors, and unnecessary costs. You can easily imagine it as a dedicated cloud with smart features like robust security with dedicated servers plus flexibility and scalability with the services of the cloud.

You can get complete details like benefits, features, and pricing about the Smart dedicated Compute from this link: https://e2enetworkschz3fw2mgr.cdn.e2enetworks.net/wp-content/uploads/2020/09/Smart-Dedicated-Compute-E2E.pdf.

Benefits of Smart dedicated Compute –

You can utilize the potential of smart-dedicated compute technology in areas like Machine Learning processes, Big data storage, Enterprise resource planning (ERP), CI/CD, data science, and massive data analysis. In a competitive market, the success of your business depends mostly on the reliability, flexibility, and dynamic scalability your application can offer, along with managing the excessive data generation produced every hour. These dedicated and smart servers with cloud services can easily predict your performance and make avail unique needs like CPU utilization, RAM, disk space, and software support with high resilience, and hence the name smart. Apart from all of these, it has features like:

  • Visibility and Control: Apart from all the benefits, its intuitive wizards come with a complete picture of the different servers used along with monitoring the networking infrastructure through the dashboard.
  • Smart traffic handling: Due to the extensive growth of businesses with their tremendous traffic and large request for resource requirements, a Smart Dedicated Compute environment can flexibly leverage disk storage and processing power to its customers.
  • Maximum Efficiency, Minimum Cost: Dedicated Cloud Compute can dramatically enhance the operational and computational capability by reducing the ownership cost. In this fluctuating business, enterprises should remain agile and flexible to meet the customer requirement. That is where Smart Dedicated Compute can become practical to use.
  • Security: In the case of cloud computing, 24 percent of organizations' hosting have missing high-severity patches in the cloud. Also, due to privileged credentials, 80 percent of the cloud breaches are taking place. With the massive increase in network traffic and resources, security becomes a grave concern. Smart Dedicated Compute is capable of managing public sector companies and large enterprises with an enhanced need for data and network security.

Premium Smart Dedicated Compute Plans

Please click here to signup & free trial - https://bit.ly/3k3Eet1 You will find some of the Smart Dedicated Compute plans provided by E2E Networks that customers can opt for, for their business.

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