DevOps Trends and Predictions for 2017

We have reached the end of 2016. As 2017 comes into focus, let’s look back and try to analyze the world of DevOps during this past year. What were the challenges, trends, and what will be the future roadmap for this technology?

DevOps undoubtedly was successful in changing the mindset of how organizations function. It was more of a culture than just another technology. 2016 also witnessed a fair adoption rate of DevOps technologies. Enterprises have moved from very few people knowing about DevOps to having a platform team. I can say 2016 was the year when DevOps moved from a grassroots movement to a management-led transformation. So far, we have observed that by and large development teams have adopted this technology rather than operations teams, but the good news is that this gap is reducing.

At Calsoft, we work very closely with our customers’ development teams and have observed some key trends in this technology.

Calsoft Whitepaper: High Availability And Fault Tolerance in the Server World

This paper illustrates numerous aspects of high availability and helps in understanding the necessary components of a high available and fault tolerance system.

Download

Modular Approach

Product companies, with the help of DevOps technologies, have started dividing activities into bite-sized chunks. This helps them in reducing chaos and driving future growth.

Infrastructure as a Code (IaC)

Companies have pushed agile, software-based methods for infrastructure operations. Through DevOps and open-source software, companies have started programming their infrastructure, so that teams can develop products and operate their environment simultaneously.

Reduced Deployment Time

Companies have started visualizing the success of DevOps adoption as the time to production has reduced to minutes than days or weeks.

Reduced Role of Operations

We have witnessed some pronounced changes in how a company perceives investing in their legacy systems. With the use of DevOps the turnaround time has reduced drastically and as a result, the role of operations will be eliminated entirely in the coming years.

DevOps has enabled organizations to aggressively increase their digital agility while reducing costs and risks. In 2017, we will observe people talking about testing, security, and metrics in the DevOps environment.

Continuous testing will be the top priority

With the help of DevOps, companies will not only get speed but also quality, and we know testing plays a crucial role when it comes to speed with quality at scale. So we can expect continuous testing to be a top priority for companies adopting DevOps in 2017.

Security concerns will increase

Looking at the increased intensity and sophistication of attackers, we cannot say that our code is not vulnerable to cyber-malice. Hence DevOps is not only about ensuring quality, speed, and testing, companies will also have to look into security concerns right from the beginning of adoption.

Increased focus on metrics

I was not surprised to see that until recently; very few companies have paid attention to DevOps metrics. It’s true that for a number of organizations it was difficult to put just the basic DevOps process, tools and culture in place. But in 2017, we will definitely see some focus on improving DevOps itself.

 
Share:

Related Posts

Fine-Tuning GenAI - From Cool Demo to Reliable Enterprise Asset

Fine-Tuning GenAI: From Cool Demo to Reliable Enterprise Asset

Generative AI (GenAI) is quickly moving from experimentation to enterprise adoption. It can generate text, visuals, even code, but the real value emerges when these models are…

Share:
VMware to AWS Migration - 3 Technical Approaches

VMware to AWS Migration: 3 Technical Approaches That Work

Picture this: your IT team is staring at a renewal notice from VMware. Costs are higher than expected, bundles force you into features you don’t use, and…

Share:
Gen AI in Digital Product Engineering

How Gen AI is Transforming Digital Product Engineering Companies

Explore how Generative AI is reshaping digital product engineering companies by driving innovation, accelerating development, and improving customer experiences. Learn its role in modernizing workflows and building competitive advantage.

Share:
From Bottlenecks to Breakthroughs - Building Synthetic Data Pipelines with LLM Agents - Blog banner

From Bottlenecks to Breakthroughs: Building Synthetic Data Pipelines with LLM Agents

Recently, we collaborated with a team preparing to fine-tune a domain-specific Large Language Model (LLM) for their product. While the base model architecture was in place, they…

Share:
From Reactive to Proactive AI Predictive Testing in Software Development - Blog Banner

From Reactive to Proactive: AI Predictive Testing in Software Development

The old rhythm of software testing—write code, run tests, fix bugs—doesn’t hold up anymore. Continuous releases, sprawling microservices, and unpredictable user behavior are stretching QA teams beyond…

Share:
Applications of Large Language Models in Business - Blog Banner

Applications of Large Language Models in Business 

Enterprises today are buried under unstructured data, repetitive workflows, and rising pressure to move faster with fewer resources. Large Language Models (LLMs) are emerging as a practical…

Share: