Top 5 Multi-Cloud Deployment Trends to Watch in 2021
Are you ready for the next big thing in multi-cloud deployment? As we enter 2021, there are some exciting trends emerging that are set to revolutionize the way we deploy and manage our cloud infrastructure. From the rise of hybrid cloud to the increasing importance of automation, here are the top 5 multi-cloud deployment trends to watch in 2021.
1. Hybrid Cloud Goes Mainstream
Hybrid cloud has been around for a while, but in 2021 we're going to see it become the default deployment model for many organizations. Why? Because it offers the best of both worlds: the scalability and flexibility of public cloud, combined with the security and control of private cloud.
With hybrid cloud, you can keep your sensitive data and critical applications on-premises, while still taking advantage of the cost savings and agility of public cloud for less critical workloads. This means you can scale up and down as needed, without sacrificing security or compliance.
2. Multi-Cloud Becomes the Norm
Gone are the days when organizations would choose a single cloud provider and stick with it. In 2021, we're going to see more and more organizations adopt a multi-cloud strategy, using multiple cloud providers to meet their different needs.
Why? Because no single cloud provider can offer everything. Some providers are better for certain workloads, while others are better for others. By using multiple cloud providers, organizations can take advantage of the strengths of each provider, while avoiding vendor lock-in and reducing risk.
3. Automation Takes Center Stage
As multi-cloud environments become more complex, automation is going to become increasingly important. With automation, you can streamline your deployment processes, reduce errors, and improve efficiency.
In 2021, we're going to see more organizations adopt automation tools like Ansible, Terraform, and Kubernetes to automate their multi-cloud deployments. This will help them to deploy and manage their infrastructure more quickly and efficiently, while reducing the risk of human error.
4. Security Moves to the Cloud
Security has always been a top concern for organizations deploying to the cloud. In 2021, we're going to see more organizations move their security operations to the cloud, using cloud-native security tools to protect their infrastructure.
Cloud-native security tools like AWS Security Hub, Azure Security Center, and Google Cloud Security Command Center offer a range of security features, from threat detection to compliance monitoring. By using these tools, organizations can improve their security posture and reduce the risk of data breaches.
5. Serverless Computing Goes Mainstream
Serverless computing has been around for a while, but in 2021 we're going to see it become more mainstream. With serverless computing, you can run your code without worrying about the underlying infrastructure, making it ideal for event-driven workloads.
In 2021, we're going to see more organizations adopt serverless computing for their multi-cloud deployments, using services like AWS Lambda, Azure Functions, and Google Cloud Functions. This will help them to reduce costs, improve scalability, and simplify their deployment processes.
Conclusion
So there you have it, the top 5 multi-cloud deployment trends to watch in 2021. From the rise of hybrid cloud to the increasing importance of automation, these trends are set to revolutionize the way we deploy and manage our cloud infrastructure. So if you're not already thinking about how to adopt these trends in your own organization, now is the time to start!
Editor Recommended Sites
AI and Tech NewsBest Online AI Courses
Classic Writing Analysis
Tears of the Kingdom Roleplay
ML Writing: Machine learning for copywriting, guide writing, book writing
Developer Flashcards: Learn programming languages and cloud certifications using flashcards
Low Code Place: Low code and no code best practice, tooling and recommendations
Ontology Video: Ontology and taxonomy management. Skos tutorials and best practice for enterprise taxonomy clouds
ML Assets: Machine learning assets ready to deploy. Open models, language models, API gateways for LLMs