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The Case for Putting AI and ML to Work in the IT Department

Phil Tee

With 2017 behind us, the news cycle is still stirring up stories on artificial intelligence (AI) and machine learning (ML), but has some of the excitement worn off? We're witnessing a surge of activity in the space, with unexpected names like Ferrari throwing their hat into the ring, or some notable failures like a smart suitcase fleeing it's handler. Can actual examples of AI in the enterprise rise among some of the noise that's inundating the market and hindering the credibility of everyone?

What Comes Up, Must Come Down

This has happened before. Emergent technology faces a gauntlet, and Gartner's famous Hype Cycle model can help illustrate this point.

First, technology makes waves with a “trigger” that garners media attention or investor buy-in. This usually creates an overly-optimistic projection of what's possible, which aligns with Gartner's “peak of inflated expectations.”

At the top of that hill is where people start to question whether the technology that was introduced is truly capable of delivering what it claims. This is where harsh criticism hits from multiple angles, and the negativity can be so strong that some companies or technologies actually fail at this point.

Yet, if the technology weathers the storm, there is now a time for level-setting and a more realistic understanding of the market. We're seeing that artificial intelligence and machine learning are two technologies at various points in the hype cycle, but both will follow a similar path.

What's unique here, however, is that, due to the nature of AI and ML, there is a second failure option. With this type of technology, results are rapid and it is generally not possible to determine why a specific result was generated. Another frustration is that the speed of execution usually creates the inability to troubleshoot failures in detail. When put into a real-world environment outside of general deployment and testing, potential problems that might not have been obvious in the lab start to appear.

We can point to some failures — like a smart fridge misreading expiration dates or smart thermostats mistaking temperature readings — but these are minor compared to what else can happen. We've seen this in racist algorithms or facial-recognition incorrectly misidentifying someone at the scene of a riot.

But There is Proof it Can Work, Just Check Out the IT Department

So, is AI and ML worth the hassle? Has it hit rock bottom on the hype cycle without anyway to pick itself back up?

AIOps has a huge potential to transform IT and help streamline enterprise operations

Despite the obstacles, AI is proving itself each day and is key for a better future. Experts in the field are taking note of what works, and we've found that, to be successful, AI systems need data. Both quantity and quality matter, as they need to be trained with the information to make accurate assessments. A challenge today is not that data isn't available, but at times it's difficult to access, analyze and organize … yet the IT department has found itself an ideal center of operation by using the technology for “AIOPs.”

IT infrastructure generates data by the second, and while formats are diverse, data is already machine readable. Thankfully, it turns out that computers are already translating information from one representation to another.

Once this data is applied to an AI or ML system, it can apply various algorithms to try to make sense of them. This means it's seeking what information is significant or what is interconnected in the vast resources — something that an IT team currently does manually at the cost of countless man hours. AI and ML systems can take these huge swaths of data and order them in near real-time, focusing IT teams on what is truly mission critical. Not only does this free up valuable man hours of the IT team, but it elevates them to expand their daily work into new activities that can enhance the overall agility of the enterprise, rather than acting as a constant ticket desk.

AIOps has a huge potential to transform IT and help streamline enterprise operations, by presenting human specialists with actionable events, helping them collaborate more effectively, and learning and improving over time.

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Overall outage frequency and the general level of reported severity continue to decline, according to the Outage Analysis 2025 from Uptime Institute. However, cyber security incidents are on the rise and often have severe, lasting impacts ...

In March, New Relic published the State of Observability for Media and Entertainment Report to share insights, data, and analysis into the adoption and business value of observability across the media and entertainment industry. Here are six key takeaways from the report ...

Regardless of their scale, business decisions often take time, effort, and a lot of back-and-forth discussion to reach any sort of actionable conclusion ... Any means of streamlining this process and getting from complex problems to optimal solutions more efficiently and reliably is key. How can organizations optimize their decision-making to save time and reduce excess effort from those involved? ...

As enterprises accelerate their cloud adoption strategies, CIOs are routinely exceeding their cloud budgets — a concern that's about to face additional pressure from an unexpected direction: uncertainty over semiconductor tariffs. The CIO Cloud Trends Survey & Report from Azul reveals the extent continued cloud investment despite cost overruns, and how organizations are attempting to bring spending under control ...

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According to Auvik's 2025 IT Trends Report, 60% of IT professionals feel at least moderately burned out on the job, with 43% stating that their workload is contributing to work stress. At the same time, many IT professionals are naming AI and machine learning as key areas they'd most like to upskill ...

Businesses that face downtime or outages risk financial and reputational damage, as well as reducing partner, shareholder, and customer trust. One of the major challenges that enterprises face is implementing a robust business continuity plan. What's the solution? The answer may lie in disaster recovery tactics such as truly immutable storage and regular disaster recovery testing ...

IT spending is expected to jump nearly 10% in 2025, and organizations are now facing pressure to manage costs without slowing down critical functions like observability. To meet the challenge, leaders are turning to smarter, more cost effective business strategies. Enter stage right: OpenTelemetry, the missing piece of the puzzle that is no longer just an option but rather a strategic advantage ...

Amidst the threat of cyberhacks and data breaches, companies install several security measures to keep their business safely afloat. These measures aim to protect businesses, employees, and crucial data. Yet, employees perceive them as burdensome. Frustrated with complex logins, slow access, and constant security checks, workers decide to completely bypass all security set-ups ...

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The Case for Putting AI and ML to Work in the IT Department

Phil Tee

With 2017 behind us, the news cycle is still stirring up stories on artificial intelligence (AI) and machine learning (ML), but has some of the excitement worn off? We're witnessing a surge of activity in the space, with unexpected names like Ferrari throwing their hat into the ring, or some notable failures like a smart suitcase fleeing it's handler. Can actual examples of AI in the enterprise rise among some of the noise that's inundating the market and hindering the credibility of everyone?

What Comes Up, Must Come Down

This has happened before. Emergent technology faces a gauntlet, and Gartner's famous Hype Cycle model can help illustrate this point.

First, technology makes waves with a “trigger” that garners media attention or investor buy-in. This usually creates an overly-optimistic projection of what's possible, which aligns with Gartner's “peak of inflated expectations.”

At the top of that hill is where people start to question whether the technology that was introduced is truly capable of delivering what it claims. This is where harsh criticism hits from multiple angles, and the negativity can be so strong that some companies or technologies actually fail at this point.

Yet, if the technology weathers the storm, there is now a time for level-setting and a more realistic understanding of the market. We're seeing that artificial intelligence and machine learning are two technologies at various points in the hype cycle, but both will follow a similar path.

What's unique here, however, is that, due to the nature of AI and ML, there is a second failure option. With this type of technology, results are rapid and it is generally not possible to determine why a specific result was generated. Another frustration is that the speed of execution usually creates the inability to troubleshoot failures in detail. When put into a real-world environment outside of general deployment and testing, potential problems that might not have been obvious in the lab start to appear.

We can point to some failures — like a smart fridge misreading expiration dates or smart thermostats mistaking temperature readings — but these are minor compared to what else can happen. We've seen this in racist algorithms or facial-recognition incorrectly misidentifying someone at the scene of a riot.

But There is Proof it Can Work, Just Check Out the IT Department

So, is AI and ML worth the hassle? Has it hit rock bottom on the hype cycle without anyway to pick itself back up?

AIOps has a huge potential to transform IT and help streamline enterprise operations

Despite the obstacles, AI is proving itself each day and is key for a better future. Experts in the field are taking note of what works, and we've found that, to be successful, AI systems need data. Both quantity and quality matter, as they need to be trained with the information to make accurate assessments. A challenge today is not that data isn't available, but at times it's difficult to access, analyze and organize … yet the IT department has found itself an ideal center of operation by using the technology for “AIOPs.”

IT infrastructure generates data by the second, and while formats are diverse, data is already machine readable. Thankfully, it turns out that computers are already translating information from one representation to another.

Once this data is applied to an AI or ML system, it can apply various algorithms to try to make sense of them. This means it's seeking what information is significant or what is interconnected in the vast resources — something that an IT team currently does manually at the cost of countless man hours. AI and ML systems can take these huge swaths of data and order them in near real-time, focusing IT teams on what is truly mission critical. Not only does this free up valuable man hours of the IT team, but it elevates them to expand their daily work into new activities that can enhance the overall agility of the enterprise, rather than acting as a constant ticket desk.

AIOps has a huge potential to transform IT and help streamline enterprise operations, by presenting human specialists with actionable events, helping them collaborate more effectively, and learning and improving over time.

Hot Topics

The Latest

An overwhelming majority of IT leaders (95%) believe the upcoming wave of AI-powered digital transformation is set to be the most impactful and intensive seen thus far, according to The Science of Productivity: AI, Adoption, And Employee Experience, a new report from Nexthink ...

Overall outage frequency and the general level of reported severity continue to decline, according to the Outage Analysis 2025 from Uptime Institute. However, cyber security incidents are on the rise and often have severe, lasting impacts ...

In March, New Relic published the State of Observability for Media and Entertainment Report to share insights, data, and analysis into the adoption and business value of observability across the media and entertainment industry. Here are six key takeaways from the report ...

Regardless of their scale, business decisions often take time, effort, and a lot of back-and-forth discussion to reach any sort of actionable conclusion ... Any means of streamlining this process and getting from complex problems to optimal solutions more efficiently and reliably is key. How can organizations optimize their decision-making to save time and reduce excess effort from those involved? ...

As enterprises accelerate their cloud adoption strategies, CIOs are routinely exceeding their cloud budgets — a concern that's about to face additional pressure from an unexpected direction: uncertainty over semiconductor tariffs. The CIO Cloud Trends Survey & Report from Azul reveals the extent continued cloud investment despite cost overruns, and how organizations are attempting to bring spending under control ...

Image
Azul

According to Auvik's 2025 IT Trends Report, 60% of IT professionals feel at least moderately burned out on the job, with 43% stating that their workload is contributing to work stress. At the same time, many IT professionals are naming AI and machine learning as key areas they'd most like to upskill ...

Businesses that face downtime or outages risk financial and reputational damage, as well as reducing partner, shareholder, and customer trust. One of the major challenges that enterprises face is implementing a robust business continuity plan. What's the solution? The answer may lie in disaster recovery tactics such as truly immutable storage and regular disaster recovery testing ...

IT spending is expected to jump nearly 10% in 2025, and organizations are now facing pressure to manage costs without slowing down critical functions like observability. To meet the challenge, leaders are turning to smarter, more cost effective business strategies. Enter stage right: OpenTelemetry, the missing piece of the puzzle that is no longer just an option but rather a strategic advantage ...

Amidst the threat of cyberhacks and data breaches, companies install several security measures to keep their business safely afloat. These measures aim to protect businesses, employees, and crucial data. Yet, employees perceive them as burdensome. Frustrated with complex logins, slow access, and constant security checks, workers decide to completely bypass all security set-ups ...

Image
Cloudbrink's Personal SASE services provide last-mile acceleration and reduction in latency

In MEAN TIME TO INSIGHT Episode 13, Shamus McGillicuddy, VP of Research, Network Infrastructure and Operations, at EMA discusses hybrid multi-cloud networking strategy ...