Why Do You Need E2E Cloud to Ensure IoT Success?

April 7, 2021

The world is getting more connected today—thanks to the Internet of Things (IoT). IoT is an ecosystem of connected devices that allows gathering and transferring data. By analysing this data, you can get actionable insights that can take your business to new heights. But it’s easier said than done. Despite the numerous benefits of IoT, many organisations fear adopting it. That’s because IoT solutions present multiple challenges that are hard to tackle. That’s where E2E’s cloud computing comes into the picture.

The combination of IoT and cloud computing is like a match made in heaven. The latter technology is adept at complementing the former, helping you address all the challenges you might face deploying and using your IoT solutions.

How Cloud Computing Complements IoT and Ensure Success

Cloud Computing offers multiple benefits which can help ensure your IoT success. Below mentioned are some of the primary challenges of IoT and how cloud computing can solve them.

  • Managing big data

IoT devices can gather a massive amount of data, but they cannot store or process it. It is a known fact that raw data without analytics is useless. This means that you will need a way to store and process all the data collected by your IoT solutions. Cloud computing offers a cost-efficient means to keep unlimited data and analyse it to get insights.

  • Reducing operations costs with scalability

You never know how much resources you will need to store data gathered by IoT solutions. Hence, having a defined on-premise infrastructure will limit their usage and increase costs. With cloud computing, you get the benefit of scaling up and down according to the needs. It provides you with an IT infrastructure you can expand on the go. This provides you with the flexibility to cope with the ever-increasing data and reduces operations costs. With benefits such as reduced infrastructure costs, operational expenses, and better efficiency, you can use cloud computing to reduce operations cost significantly.

  • Accessing computing power

While some IoT solutions can store a small amount of data locally, none can provide instant access to computing power. Cloud computing allows you and even your end consumers to remotely access computing power in no time. This seamless access can help your developers to integrate the IoT solutions with other enterprise systems hassle-free. On top of it, instant computing power also provides the opportunity to process and analyse data as soon as received to provide real-time insights.

  • Easing data integration

IoT solutions can transfer data to other connected devices, and cloud computing can facilitate it. Usually, the data collected from IoT solutions is siloed to various individual servers. You can use numerous cloud-based APIs that can help integrate large-scale data coming from multiple IoT devices. The ease of data integration you get with cloud computing gives you the power to efficiently manage everything from a single virtual server and analyse everything in tandem.

Seamless data integration also helps to get real-time insights. For instance, suppose you are using IoT devices to collect information about your manufacturing machines. With real-time data integration, you will determine the efficiency and potential downtime of the machines. Thus, it will help you take predictive and preventive measures to boost productivity.

  • Enhancing data security

Cyberthreats are on the rise. According to a recent report, there is a cyberattack every 39 seconds. The numbers hint that there is a growing need to secure the enormous amount of data collected by IoT solutions. Cloud computing provides several methodologies to help secure the overall ecosystem. It gives you complete visibility, allowing you to monitor how data is collected, stored, and transferred over the network. You also get the ability of automated threat detection and prevention measures to increase security.

You can use cloud computing’s multi-factor authentication, auto-up-gradation, encryption, and transfer protocol features to seal the loopholes used by hackers to steal data.

  • Choosing the right cloud computing partner

While cloud computing can ensure IoT success, selecting the right cloud computing partner for your business remains a challenge. If you are thinking about why you need them, well, that’s because they have the expertise you need. Cloud computing is a vast landscape, and only profound knowledge of all the tools and methodologies can help you tap the technology’s true potential.

There are numerous factors to consider while selecting a cloud computing provider. For instance, proven experience, cost-efficiency, security, and certifications are some of the factors you can consider. But if you don’t want to go through all the hectic process, connect with E2E. E2E’s cloud services are among the best in India. With us, you get the best cloud computing at a low cost. Whatever your cloud computing needs are, we have got you covered. With the right tools and resources at our disposal, we are adept at catering to your requirements.

Final Verdict

Cloud computing can become the trampoline to help you jump across all the IoT challenges. With E2E’s cloud computing services, you get the roadway to ensure your IoT solution success. Select the right partner and take your business to new heights with your IoT solutions.

Best Cloud Provider at a low Cost- Signup here to know more

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How is GAUDI applied to the content?

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Reference Links

https://www.researchgate.net/publication/362323995_GAUDI_A_Neural_Architect_for_Immersive_3D_Scene_Generation

https://www.technology.org/2022/07/31/gaudi-a-neural-architect-for-immersive-3d-scene-generation/ 

https://www.patentlyapple.com/2022/08/apple-has-unveiled-gaudi-a-neural-architect-for-immersive-3d-scene-generation.html

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