Enable javascript in your browser for better experience. Need to know to enable it? Go here.

AIOps

AIOps is the application of artificial intelligence (AI) and machine learning (ML) to IT operations. It's about automating and optimizing IT processes to improve efficiency and reduce downtime.

 

By analyzing vast amounts of data from IT systems, AIOps tools can predict potential issues, automate routine tasks and provide actionable insights. This allows IT teams to focus on strategic initiatives rather than firefighting. Ultimately, AIOps helps businesses achieve higher levels of IT service availability, performance and cost-efficiency.

 

It’s worth noting that AIOps is different to MLOps — MLOps is a methodology that seeks to improve the lifecycle of machine learning models and is more allied with data science and data engineering, whereas AIOps is an approach to IT operations and maintenance.

What is it?

AIOps is a discipline that uses AI to make IT operations more efficient and effective.

What’s in it for you?

 It can reduce IT costs while also improving system resilience and security.

What are the trade-offs?

AIOps requires specialist skills that can be hard to acquire, not to mention expensive. You also need to have high quality data at the foundations.

How is it being used?

It’s helping organizations become more resilient, secure and efficient in how they leverage technology.

What is AIOps?

 

AIOps is the use of artificial intelligence in IT operations. Its emergence coincides with two things: on the one hand the increased availability of AI capabilities in platforms and tools and, on the other, the increasing complexity and size of organizational IT systems. In other words, introducing AI into operations means it becomes possible for teams to tackle IT challenges that would be almost impossible to handle manually.

 

As pressure increases on organizations to unlock greater efficiency and reduce costs in uncertain economic times, AIOps is a powerful way to take control of your operations and optimize system performance.

What’s in it for you?

 

AIOps benefits businesses by:

 

  • Improving efficiency. AIOps automates routine tasks, freeing IT teams to focus on strategic initiatives.

  • Reducing downtime. It can help IT teams better predict and prevent IT issues, minimizing service disruptions.

  • Optimizing costs. It helps teams identify inefficiencies and opportunities for cost reduction.

  • Accelerating innovation. It helps focus IT efforts on value-adding activities, driving business growth.

  • Mitigating risks. It helps IT teams proactively identify and address potential security threats.

 

Ultimately, AIOps offers increased business agility which, in turn, can drive bottom-line results.

What are the trade-offs of AIOps?

 

Although AIOps offers businesses significant benefits, there are some important trade-offs that need to be considered:

 

  • Initial investment. Implementing AIOps requires significant upfront costs for technology, data infrastructure and skilled personnel.

  • Data quality. The effectiveness of AIOps hinges on high-quality data. Ensuring data accuracy, consistency and completeness can be difficult.

  • Skill requirements. Organizations need data scientists and IT professionals with AI expertise to build, maintain and optimize AIOps models.

  • Change management. Adopting AIOps requires cultural shifts within the IT organization if it is to fully embrace automation and data-driven decision making.

How is AIOps being used?

 

AIOps is being used across a number of different industries:

 

  • In financial services, for instance, it’s being used to help detect fraud and ensure compliance.

  • Telecom providers leverage AIOps to optimize network performance.

  • Some retailers employ AIOps to manage supply chains, optimize inventory and better personalize customer interactions.

  • Some hospitals and healthcare organizations use AIOps for patient data management, and predictive maintenance of medical equipment.

  • Streaming platforms and media companies use AIOps to manage large-scale IT infrastructures, deliver high-quality content, and analyze viewer behavior.

 

At Thoughtworks, we use AIOps as part of our managed services offering. It allows us to adopt a more proactive approach to IT maintenance, addressing problems as early as possible rather than constantly fighting fires. As we’ve noted elsewhere, “by operationalizing AI in managed services… we’ve seen the speed of incident management — from problem to remediation — improve by more than 30%.”

Find out how we help organizations leverage AI