Is Your Investment in TRUE AI?

Yes, AIOps the messiah of ITOps is here to stay! The Executive decision now is on the who and how, rather than when. With a plethora of products in the market offering varying shades of AIOps capabilities, choosing the right vendor is critical, to say the least.

Exclusively AI-based Ops?

Simply put, AIOps platforms leverage Big Data & AI technologies to enhance IT operations. Gartner defines Acquire, Aggregate, Analyze & Act as the four stages of AIOps. These four fall under the purview of Monitoring tools, AIOps Platforms & Action Platforms. However, there is no Industry-recognized mandatory feature list to be supported, for a Platform to be classified as AIOps. Due to this ambiguity in what an AIOps Platform needs to Deliver, huge investments made in rosy AIOps promises can lead to sub-optimal ROI, disillusionment or even derailed projects. Some Points to Ponder…

  • Quality in, Quality out. The value delivered from an AIOps investment is heavily dependent on what data goes into the system. How sure can we be that IT Asset or Device monitoring data provided by the Customer is not outdated, inaccurate or patchy? How sure can we be that we have full visibility of the entire IT landscape? With Shadow IT becoming a tacitly approved aspect of modern Enterprises, are we seeing all devices, applications and users? Doesn’t this imply that only an AIOps Platform providing Application Discovery & Topology Mapping, Monitoring features would be able to deliver accurate insights?
  • There is a very thin line between Also AI and Purely AI. Behind the scenes, most AIOps Platforms are reliant on CMDB or similar tools, which makes Insights like Event Correlation, Noise Reduction etc., rule-based. Where is the AI here?
  • In Gartner’s Market Guide, apart from support features for the different data types, Automated Pattern Discovery is the only other Capability taken into account for the Capabilities of AIOps Vendors matrix. With Gartner being one of the most trusted Technology Research and Advisory companies, it is natural for decision makers to zero-in on one of these listed vendors. What is not immediately evident is that there is so much more to AIOps than just this, and with so much at stake, companies need to do their homework and take informed decisions before finalizing their vendor.
  • Most AIOps vendors ingest, provide access to & store heterogenous data for analysis, and provide actionable Insights and RCA; at which point the IT team takes over. This is a huge leap forward, since it helps IT work through the data clutter and significantly reduces MTTR. But, due to the absence of comprehensive Predictive, Prescriptive & Remediation features, these are not end-to-end AIOps Platforms.
  • At the bleeding edge of the Capability Spectrum is Auto-Remediation based on Predictive & Prescriptive insights. A Comprehensive end-to-end AIOps Platform would need to provide a Virtual Engineer for Auto-Remediation. But, this is a grey area not fully catered to by AIOps vendors.  

The big question now is, if an AIOps Platform requires human intervention or multiple external tools to take care of different missing aspects, can it rightfully claim to be true end-to-end AIOps?

So, what do we do?

Time for you to sit back and relax! Introducing ZIF- One Solution for all your ITOps ills!

We have you completely covered with the full suite of tools that an IT infrastructure team would need. We deliver the entire AIOps Capability spectrum and beyond.

ZIF (Zero Incident Framework™) is an AIOps based TechOps platform that enables proactive Detection and Remediation of incidents helping organizations drive towards a Zero Incident Enterprise™.

The Key Differentiator is that ZIF is a Pure-play AI Platform powered by Unsupervised Pattern-based Machine Learning Algorithms. This is what sets us a Class Apart.

  • Rightly aligns with the Gartner AIOps strategy. ZIF is based on and goes beyond the AIOps framework
  • Huge Investments in developing various patented AI Machine Learning algorithms, Auto-Discovery modules, Agent & Agentless Application Monitoring tools, Network sniffers, Process Automation, Remediation & Orchestration capabilities to form Zero Incident Framework™
  • Powered entirely by Unsupervised Pattern-based Machine Learning Algorithms, ZIF needs no further human intervention and is completely Self-Reliant
  • Unsupervised ML empowers ZIF to learn autonomously, glean Predictive & Prescriptive Intelligence and even uncover Latent Insights
  • The 5 Modules can work together cohesively or as independent stand-alone components
  • Can be Integrated with existing Monitoring and ITSM tools, as required
  • Applies LEAN IT Principle and is on an ambitious journey towards FRICTIONLESS IT.

Realizing a Zero Incident EnterpriseTM

AIOps Demystified

IT Infrastructure has been on an incredibly fascinating journey from the days of mainframes housed in big rooms just a few decades ago, to mini computers, personal computers, client-servers, enterprise & mobile networks, virtual machines and the cloud! While mobile technologies have made computing omnipresent, the cloud coupled with technologies like virtual computing and containers has changed the traditional IT industry in unimaginable ways and has fuelled the rise of service-oriented architectures where everything is offered as a service and on-demand. Infrastructure as a Service (IaaS), Platform as a Service (PaaS), DBaaS, MBaaS, SaaS and so on.

As companies try to grapple with this technology explosion, it is very clear that the first step has to be optimization of the IT infrastructure & operations. Efficient ITOps has become the foundation not just to aid transformational business initiatives, but even for basic survival in this competitive world.

The term AIOps was first coined by Gartner based on their research on Algorithmic IT Operations. Now, it refers to the use of Artificial Intelligence(AI) for IT Operations(Ops), which is the use of Big Data Analytics and AI technologies to optimize, automate and supercharge all aspects of IT Operations.

Why AI in IT operations?

The promise behind bringing AI into the picture has been to do what humans have been doing, but better, faster and at a much larger scale. Let’s delve into the different aspects of IT operations and see how AI can make a difference.

Visibility

The first step to effectively managing the IT landscape is to get complete visibility into it. Why is that so difficult? The sheer variety and volume of applications, users and environments make it extremely challenging to get a full 360 degree view of the landscape. Most organizations use applications that are web-based, virtually delivered, vendor-built, custom-made, synchronous/asynchronous/batch processing, written using different programming languages and/or for different operating systems, SaaS, running in public/private/hybrid cloud environments, multi-tenant, multiple instances of the same applications, multi-tiered, legacy, running in silos! Adding to this complexity is the rampant issue of shadow IT, which is the use of applications outside the purview of IT, triggered by the easy availability of and access to applications and storage on the cloud. And, that’s not all! After all the applications have been discovered, they need to be mapped to the topology, their performances need to be baselined and tracked, all users in the system have to be found and their user experiences captured.

The enormity of this challenge is now evident. AI powers auto-discovery of all applications, topology mapping, baselining response times and tracking all users of all these applications. Machine Learning algorithms aid in self-learning, unlearning and auto-correction to provide a highly accurate view of the IT landscape.

Monitoring

When the IT landscape has been completely discovered, the next step is to monitor the infrastructure and application stacks. Monitoring tools provide real-time data on their availability and performance based on relevant metrics.

The problem is two-fold here. Typically, IT organizations need to rely on several monitoring tools that cater to the different environments/domains in the landscape. Since these tools work in silos, they give a very fractured view of the entire system, necessitating data correlation before it can be gainfully used for Root Cause Analysis(RCA) or actionable insights.

Pattern recognition-based learning from current and historical data helps correlate these seemingly independent events, and therefore to recognize & alert deviations, performance degradations or capacity utilization bottlenecks in real-time and consequently enable effective Root Cause Analysis(RCA) and reduce an important KPI, Mean Time to Identify(MTTI).

Secondly, there is colossal amounts of data in the form of logs, events, metrics pouring in at high velocity from all these monitoring tools, creating alert fatigue. This makes it almost impossible for the IT support team to check each event, correlate with the other events, tag and prioritize them and plan remedial action.

Inherently, machines handle volume with ease and when programmed with ML algorithms learn to sift through all the noise and zero-in on what is relevant. Noise nullification is achieved by the use of Deep Learning algorithms that isolate events that have the potential to become incidents and Reinforcement Learning algorithms that find and eliminate duplicates and false positives. These capabilities help organizations bring dramatic improvements to another critical ITOps metric, Mean Time to Resolution(MTTR).

Other areas of ITOps where AI brings a lot of value are in Advanced Analytics- Predictive & Prescriptive- and Remediation.

Advanced Analytics

Unplanned IT Outages result in huge financial losses for companies and even worse, a sharp dip in customer confidence. One of the biggest value-adds of AI for ITOps then, is in driving proactive operations that deliver superior user experiences with predictable uptime. Advanced Analytics on historical incident data identifies patterns, causes and situations in the entire stack(infrastructure, networks, services and applications) that lead to an outage. Multivariate predictive algorithms drive predictions of incident and service request volumes, spikes and lulls way in advance. AIOps tools forecast usage patterns and capacity requirements to enable planning, just-in-time procurement and staffing to optimize resource utilization. Reactive purchases after the fact, can be very disruptive & expensive.

Remediation

AI-powered remediation automates remedial workflows & service actions, saving a lot of manual effort and reducing errors, incidents and cost of operations. Use of chatbots provides round-the-clock customer support, guiding users to troubleshoot standard problems, and auto-assigns tickets to appropriate IT staff. Dynamic capacity orchestration based on predicted usage patterns and capacity needs induces elasticity and eliminates performance degradation caused by inefficient capacity planning.

Conclusion

The beauty of AIOps is that it gets better with age as the learning matures on exposure to more and more data. While AIOps is definitely a blessing for IT Ops teams, it is only meant to augment the human workforce and not to replace them entirely. And importantly, it is not a one-size-fits-all approach to AIOps. Understanding current pain points and future goals and finding an AIOps vendor with relevant offerings is the cornerstone of a successful implementation.

GAVS’ Zero Incident Framework TM (ZIF) is an AIOps-based TechOps Platform that enables organizations to trend towards a Zero Incident Enterprise TM. ZIF comes with an end-to-end suite of tools for ITOps needs. It is a pure-play AI Platform powered entirely by Unsupervised Pattern-based Machine Learning! You can learn more about ZIF or request a demo here.

READ ALSO OUR NEW UPDATES

AIOps Demystified

IT Infrastructure has been on an incredibly fascinating journey from the days of mainframes housed in big rooms just a few decades ago, to mini computers, personal computers, client-servers, enterprise & mobile networks, virtual machines and the cloud! While mobile technologies have made computing omnipresent, the cloud coupled with technologies like virtual computing and containers has changed the traditional IT industry in unimaginable ways and has fuelled the rise of service-oriented architectures where everything is offered as a service and on-demand. Infrastructure as a Service (IaaS), Platform as a Service (PaaS), DBaaS, MBaaS, SaaS and so on.

As companies try to grapple with this technology explosion, it is very clear that the first step has to be optimization of the IT infrastructure & operations. Efficient ITOps has become the foundation not just to aid transformational business initiatives, but even for basic survival in this competitive world.

The term AIOps was first coined by Gartner based on their research on Algorithmic IT Operations. Now, it refers to the use of Artificial Intelligence(AI) for IT Operations(Ops), which is the use of Big Data Analytics and AI technologies to optimize, automate and supercharge all aspects of IT Operations.

Why AI in IT operations?

The promise behind bringing AI into the picture has been to do what humans have been doing, but better, faster and at a much larger scale. Let’s delve into the different aspects of IT operations and see how AI can make a difference.

Visibility

The first step to effectively managing the IT landscape is to get complete visibility into it. Why is that so difficult? The sheer variety and volume of applications, users and environments make it extremely challenging to get a full 360 degree view of the landscape. Most organizations use applications that are web-based, virtually delivered, vendor-built, custom-made, synchronous/asynchronous/batch processing, written using different programming languages and/or for different operating systems, SaaS, running in public/private/hybrid cloud environments, multi-tenant, multiple instances of the same applications, multi-tiered, legacy, running in silos! Adding to this complexity is the rampant issue of shadow IT, which is the use of applications outside the purview of IT, triggered by the easy availability of and access to applications and storage on the cloud. And, that’s not all! After all the applications have been discovered, they need to be mapped to the topology, their performances need to be baselined and tracked, all users in the system have to be found and their user experiences captured.

The enormity of this challenge is now evident. AI powers auto-discovery of all applications, topology mapping, baselining response times and tracking all users of all these applications. Machine Learning algorithms aid in self-learning, unlearning and auto-correction to provide a highly accurate view of the IT landscape.

Monitoring

When the IT landscape has been completely discovered, the next step is to monitor the infrastructure and application stacks. Monitoring tools provide real-time data on their availability and performance based on relevant metrics.

The problem is two-fold here. Typically, IT organizations need to rely on several monitoring tools that cater to the different environments/domains in the landscape. Since these tools work in silos, they give a very fractured view of the entire system, necessitating data correlation before it can be gainfully used for Root Cause Analysis(RCA) or actionable insights.

Pattern recognition-based learning from current and historical data helps correlate these seemingly independent events, and therefore to recognize & alert deviations, performance degradations or capacity utilization bottlenecks in real-time and consequently enable effective Root Cause Analysis(RCA) and reduce an important KPI, Mean Time to Identify(MTTI).

Secondly, there is colossal amounts of data in the form of logs, events, metrics pouring in at high velocity from all these monitoring tools, creating alert fatigue. This makes it almost impossible for the IT support team to check each event, correlate with the other events, tag and prioritize them and plan remedial action.

Inherently, machines handle volume with ease and when programmed with ML algorithms learn to sift through all the noise and zero-in on what is relevant. Noise nullification is achieved by the use of Deep Learning algorithms that isolate events that have the potential to become incidents and Reinforcement Learning algorithms that find and eliminate duplicates and false positives. These capabilities help organizations bring dramatic improvements to another critical ITOps metric, Mean Time to Resolution(MTTR).

Other areas of ITOps where AI brings a lot of value are in Advanced Analytics- Predictive & Prescriptive- and Remediation.

Advanced Analytics

Unplanned IT Outages result in huge financial losses for companies and even worse, a sharp dip in customer confidence. One of the biggest value-adds of AI for ITOps then, is in driving proactive operations that deliver superior user experiences with predictable uptime. Advanced Analytics on historical incident data identifies patterns, causes and situations in the entire stack(infrastructure, networks, services and applications) that lead to an outage. Multivariate predictive algorithms drive predictions of incident and service request volumes, spikes and lulls way in advance. AIOps tools forecast usage patterns and capacity requirements to enable planning, just-in-time procurement and staffing to optimize resource utilization. Reactive purchases after the fact, can be very disruptive & expensive.

Remediation

AI-powered remediation automates remedial workflows & service actions, saving a lot of manual effort and reducing errors, incidents and cost of operations. Use of chatbots provides round-the-clock customer support, guiding users to troubleshoot standard problems, and auto-assigns tickets to appropriate IT staff. Dynamic capacity orchestration based on predicted usage patterns and capacity needs induces elasticity and eliminates performance degradation caused by inefficient capacity planning.

Conclusion

The beauty of AIOps is that it gets better with age as the learning matures on exposure to more and more data. While AIOps is definitely a blessing for IT Ops teams, it is only meant to augment the human workforce and not to replace them entirely. And importantly, it is not a one-size-fits-all approach to AIOps. Understanding current pain points and future goals and finding an AIOps vendor with relevant offerings is the cornerstone of a successful implementation.

GAVS’ Zero Incident Framework TM (ZIF) is an AIOps-based TechOps Platform that enables organizations to trend towards a Zero Incident Enterprise TM. ZIF comes with an end-to-end suite of tools for ITOps needs. It is a pure-play AI Platform powered entirely by Unsupervised Pattern-based Machine Learning! You can learn more about ZIF or request a demo here.

READ ALSO OUR NEW UPDATES

Impact of network analytics in IT ops

Role of network analytics

Looking at the pace in which our world is moving towards digitization, one has to admit, that network analytics will play an important part in paving the way how IT would operate in future. Network analytics for an enterprise is complex, the AI and automation technologies in use help achieve intelligent and effective ways towards future IT operations.

Network analytics improves user experience in IT operations by analyzing network data. It compares and correlates data to address a problem or trend. It manages IT operations by channelizing the below mentioned data inputs.

  1. Real network traffic generated by client.
  2. Synthetic network traffic created by virtual clients.
  3. Metrics from infrastructure.
  4. System logs.
  5. Data flow.
  6. Application program interface (API) from application server.

Scope of network analytics

A user can face poor network performance or disruption in service due to either, OS problem, Wi-Fi or LAN issue, DHCP, WAN problem or application failure. To locate the actual cause for interruption is essential for smooth functioning of IT operations. Network analytics operate with the help of big data analytics along with cloud computing and machine learning to examine data and create a holistic perspective. Proactive IT Operations Led by predictive insights enhance 90% data accuracy. It can also interpret data in a visual format to develop an elaborate understanding. Here, network analytics plays an important role in redefining IT operations.

  • Network analytics uses proactive analytical tools such as; Sisense, Azure, R Open, GoodData etc. for a deeper understanding of issues and to locate the source of error which can make IT operation seamless. Sisense helps processing data 10 times faster, Azure’s 100 modules per experiment or 10 GB storage space is cost effective. GoodData allows 360-degree overview for customer insights.
  • Earlier, the task to fix a network issue was relatively simple, now, with the increasing usage of virtual and mobile devices and cloud computing, detecting an issue within a network and fixing the same has become complex. Without network analytics, IT Ops will not be able to sustain the wrath of disruption.
  • There has been huge diversification lately in the field of hardware, operating systems, application and services. Understanding network problems within these landscapes, can be challenging. Network analytics plays an important role here by easing the task through user performance management (UPM).
  • Network analytics also minimizes the issue with access network in IT operations starting from getting Wi-Fi access to authentications, obtaining IP addresses or resolving DHCP requests.
  • Network analytics tool can help reduce network traffic through alteration in facilities. It can use network event correlation to understand the impact on devices and customer’s experience on bandwidth latency.
  • Network analytics assists a great deal in network capacity planning and deployment opportunity for an improved network ROI by up to 15% as per market research.

Difference between monitoring and analytics network solution

To analyze the impact network analytics has on IT Ops, it is essential to understand the difference between monitoring and analytics solution. Monitoring refers to collecting and interpreting data in a passive form and sharing potentially actionable information to the network manager. Hence, it focuses on spotting problems without fixing them.

Analytics is more prescriptive where, recorded historical data is understood, learnt and analyzed paving a pattern to be followed. Data collected from Wi-Fi, devices, applications and WAN create trends that impact IT operations.

Advanced analytics

Along with pinpointing the area of concern, advanced analytics tries to automate new solutions to the detected problem. Advanced network analytics help to understand if the issue is with a client operating system, application, network services or Wi-Fi access. This enhances the scope of IT Ops by improving infrastructure by providing insights to take the overall operations to the next level. The new generation of network analytic tools and solutions can reduce outages, upgrade systems and applications, improve customer experience and simplify the process of operations in IT.

Benefits of network analytics in IT ops

  1. Network analytics can help IT Ops analyze the requirement and create a balance so that, the available resources can be optimally utilized to enhance network performance and lower the cost structure of IT Ops.
  2. Network analytics help with data mining insights for identification of revenue and enabling a data-driven and action-oriented IT operation.
  3. Network analytics can help in capacity planning where both resources and services can be calculated in advance for an apt provisioning.

Impact of network analytics in brief

Network analytics, with its analytics tool, can predict future down time, allowing necessary action to be taken on time. It also increases awareness of the root cause of the problem to remediate faster and eventually prevent and result in reducing MTTR by 95%. This can reduce organizational disruption and operational costs while increasing customer satisfaction.

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AIOps – IT Infrastructure Services for the Digital Age

The IT infrastructure services landscape is undergoing a significant shift, driven by digitalization. As focus shifts from cost efficiency to digital enablement, organizations need to re-imagine the IT infrastructure services model to deliver the necessary back-end agility, flexibility, and fluidity. Automation, analytics, and Artificial Intelligence (AI) – comprising the “codifying elements” for driving AIOps – help drive this desired level of adaptability within IT infrastructure services. Automation, analytics, and AI – which together comprise the “codifying elements” for driving AIOps– help drive the desired level of adaptiveness within IT infrastructure services. Intelligent automation, leveraging analytics and ML, embeds powerful, real-time business and user context and autonomy into IT infrastructure services. Intelligent automation has made inroads in enterprises in the last two to three years, backed by a rapid proliferation and maturation of solutions in the market.

Artificial Intelligence Operations (AIOps) . Everest Group 2018 Report . IT Infrastructure

Benefits of codification of IT infrastructure services

Progressive leverage of analytics and AI, to drive an AIOps strategy, enables the introduction of a broader and more complex set of operational use cases into IT infrastructure services automation. As adoption levels scale and processes become orchestrated, the benefits potentially expand beyond cost savings to offer exponential value around user experience enrichment, services agility and availability, and operations resilience. Intelligent automation helps maximize value from IT infrastructure services by:

  1. Improving the end-user experience through contextual and personalized support
  2. Driving faster resolution of known/identified incidents leveraging existing knowledge, intelligent diagnosis, and reusable, automated workflows
  3. Avoiding potential incidents and improving business systems performance through contextual learning (i.e., based on relationships among systems), proactive health monitoring and anomaly detection, and preemptive healing

Although the benefits of intelligent automation are manifold, enterprises are yet to realize commensurate advantage from investments in infrastructure services codification. Siloed adoption, lack of well-defined change management processes, and poor governance are some of the key barriers to achieving the expected value.  The design should involve an optimal level of human effort/intervention targeted primarily at training, governing, and enhancing the system, rather than executing routine, voluminous tasks.  A phased adoption of automation, analytics, and AI within IT infrastructure services has the potential to offer exponential business value. However, to realize the full potential of codification, enterprises need to embrace a lean operating model, underpinned by a technology-agnostic platform. The platform should embed the codifying elements within a tightly integrated infrastructure services ecosystem with end-to-end workflow orchestration and resolution.

The market today has a wide choice of AIOps solutions, but the onus is on enterprises to select the right set of tools / technologies that align with their overall codification strategy.

Click here to read the complete whitepaper by Everest Group

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Can automation manage system alerts?

System alerts and critical alerts

One of the most important and critical roles of an IT professional is to handle incoming alerts efficiently and effectively. This will ensure a threat-free environment and reduce the chances of system outages. Now, not all incoming alerts are critical; an alert can pop up on a window screen for a user to act on, blocking the underlying webpage. One can configure the setting to automatic alert resolution where an alert will be closed automatically after a number of days.

Can automation manage system alerts?

Gradually, many companies are incorporating automation in the field of managing system alerts. The age-old technology of monitoring system for both, internal and external alerts is not effective in streamlining the actual process of managing these incoming alerts. Here, IT process automation (ITPA) can take incident management to a whole new level. Automation in collaboration with monitoring tools can identify, analyze and finally prioritize incoming alerts while sending notification to fix the issue. Such notifications can be customized depending on the selected mode of preference. Also, it is worth mentioning here that automated workflows can be created to open, update and close tickets in the service desk, minimizing human intervention while electronically resolving issues.

Integration of a monitoring system with automation

Automation of system alerts happen with the following workflow. It highly improved the incident management system, reducing human intervention and refining the quality of monitoring.

  1. The monitoring system detects an incident within the IT infrastructure and triggers an alert.
  2. The alert is addressed by automation software and a trouble ticket is generated thereafter in service desk.
  3. Then the affected lot is notified via preferred method of communication.
  4. Network admin is then notified by ITPA to address the issue and recover.
  5. The service ticket is accordingly updated through implementation of automation.

Benefits of automation to manage system alerts

Relying on a process that is manually performed especially, while dealing with critical information in a workflow can be difficult. In such a scenario, automation of monitoring critical data in business systems like accounting, CRM, ERP or warehousing can improve on consistency. It can also recognize significant or critical data changes immediately triggering notification for the same. With this 360-degree visibility of critical information, decision making can happen a lot faster which in the long run can forestall serious crisis. It also improves the overall performance of the company and customer service and reduces financial risk due to anomalies and security threats. Hence, it can be aptly mentioned that automation of system alerts can effectively reduce response and resolution time. It can also lessen system downtime and improve MTTR.

BPA platform’s role to manage system alerts

The business process automation (BPA) platform enables multi-recipient capabilities so that notification can be sent to employees across different verticals. This will increase their visibility on real-time information that is relevant to their organizational role. This platform also provides escalation capabilities where notification will be sent to higher management if an alert is not addressed on time.

Conclusion

For large-scale organizations, the number of alerts spotted by detection tools are growing in number with time. This inspired IT enterprises to automate security control configurations and implement responsive security analysis tasks. Through automation of security control and processes, a new firewall rule can be automatically created or deleted based on alerts. Once a threat is detected, automated response is created. We can conclude that automation can manage system alerts efficiently and effectively. And a pre-built workflow often helps to jump-start an automation process of addressing a system alert.

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Cost effective solutions on AIOps platforms

Digital transformation in IT operations

The global market value of AIOps is predicted to increase from $2.24 billion in 2017 to $9.90 billion by 2023, as per industry reports. IT organizations, globally, are focusing on digital transformation aggressively. Technologies like AI, Big Data, ML are compelling IT operations’ platforms to modify and adapt to multi-cloud infrastructure. With a vision to explore new arena of opportunities, AIOps can monitor, analyze, correlate and automate, easing IT operations. The focus areas where AIOps plays a key role in enabling digital transformation includes:

  1. Open data access, where data can be recorded from various authentic sources and can be freed from organizational silos for repetitive analysis
  2. Big data was initially thought to increase efficiency and decision-making capabilities of enterprises. However, with the expansion of data, things became complex. Here the intervention of AIOps improved the ability to handle huge data thus, expanding the scope of data analysis
  3. ML can access data from various sources and can modify or create new algorithms without human intervention. AIOps enhances ML’s ability to handle enormous data and at the same time stay aligned to organizational goals
  4. Data analytics can solve major data related problems in IT domain and on top of that, AIOps could leverage competitive advantage by promising richer business context, short response time and ability to predict potential risk

Scope of AI in IT Ops – are they cost effective?

  • With an intent to study time and labor management, any organization will end up spending massively on both, time and money. For that matter, an application programming interface (API), can help a company complete, its reports in no time. This can ramp up the pace of report creation, thus opening a scope for real-time analysis of compliance. Now, that is definitely cost-effective.
  • A global recruitment firm increased its hiring ratio by about 8%, through implementation of AI. It helped the firm to identify and match the right skill set along with the prediction for attrition per resource. This proved cost effective since attrition costed the organization up to $25,000 per resource.
  • From the operational perspective, in a 24/7 environment, if there is an outage, it will result in a series of logged complaints, which then will become difficult for an individual to manually transcribe. This is where AI plays an important part in identifying the main issues through log analytics.
  • Technology like cognitive insight, creates a data pool of wide range of solutions on critical issues. AI bridges the gap between big data and humans through operational intelligence, accuracy and speed, thus making it cost-effective to a great extent.
  • Enterprises like Dyn and British Airways suffered Distributed Denial of Service (DDoS) attacks post which they implemented cognitive insight which secured their operations.

Cost effective solution of AIOps

Analyzing and managing cost is essential. Doing a cost analysis of cloud with components like IOPs, VMs, storage capacity, bandwidth, API can be tricky and complex. AI implementation can help here to segregate the cost of securing a more accurate IT budget.

  • AI and root-cause analysis
    AI is very effective in the area of root-cause analysis. It is efficient in locating an issue and creating a remediation for the same, thus solving complex problems in a short span. AIOps helped a US Bank to automate root cause correlation to gather data on customer dissatisfaction and thus, enhancing customer experience.
  • Threat detection is now a cakewalk
    Through machine learning algorithms, AIOps can learn to detect anomalies and critical issues. GAVS’ security division designed a remedial platform combining ML algorithms and AI’s self-learning capabilities to reduce risk and predict future anomalies on an IT platform, ensuring a secured environment for GAVS’ customers.
  • AIOps and its outage forecasting competences
    AIOps can forecast outages through data prediction and also increase resource utilization through identifying areas of cross training. The market of forecasting outages through AIOps, is expected to grow from $493.7 million in 2016 to $1.14 billion by 2021, as per industry reports.
  • Combining tools for an innovative future
    Automation and collaboration of tools can enhance productivity and accuracy. AIOps powered with big data and ML helps in process automation and is used more as a strategic than operational tool. With this merger, data could be analyzed, optimized, and transformed efficiently. In GAVS, the focus is on a “Zero Incident” platform where GAVS can help enterprises to reach Zero Incident state through the above-mentioned collaboration of tools. This will definitely prove cost-effective and enhance the end-user experience.

Solutions built with innovation and cost-efficiency is the key

In their zeal to enter the digitized innovation area, organizations are aggressively trying to locate cost-effective and reliable solutions. Although many companies still rely on age old machines and processes which require constant monitoring and human intervention, however, automation of IT operations is a boon, ensuring cost-efficiency across levels.