Specifically, Dell’s study found 51 percent of firms have already implemented or are expanding their implementation of Artificial Intelligence. An additional 20 percent plan to implement AI in the next 12 months. However, to ensure its success and mitigate the risks that come with it, CIOs must take the lead and ultimately drive the enterprise AI agenda themselves.
CIOs are optimally positioned for this task as the data, applications, server, accelerator, fabric, and storage infrastructures that they manage are critical for driving business value with AI. They can’t do it alone however—their IT teams will also need to transform and become familiar with the new software applications, infrastructure, and platforms necessary for AI, and modernize existing systems to better support the increasing number of AI initiatives. Simultaneously, CIOs must also track the business outcomes AI is driving to sustain and grow further investments in AI.
So where does a CIO start? After a survey of over 350 global enterprises, Forrester Consulting put together a CIO's checklist to guide your transformation efforts, and we agree with the approach. Dig into the checklist below.
Fifteen to twenty percent of the time, lines of business (LOB) completely bypass IT departments when it comes to their AI initiatives. Start rolling ongoing AI projects into IT processes, assess the capabilities that have been developed, and engage business units on their AI goals, challenges, and unmet needs.
Embrace the LOB's momentum and learn from their progress. Share that information within the organization and challenge yourself to learn the newest applications of AI and how they can impact your enterprise.
Use that knowledge to be the go-between for stakeholders and coordinate the investment, energy, and development of AI. Use that authority to proactively drive AI conversations and become the trusted partner on AI initiatives.
Identify, study, and track the key performance indicators (KPIs) that matter most to your enterprise. Use these metrics to assess and justify AI initiatives.
According to Dell’s report, 64 percent of enterprises reported that outdated and antiquated software was a significant challenge in driving their AI initiatives. Avoid this by moving away from costly legacy technologies that can’t be upgraded and replacing them with software capable of growing and scaling with your enterprise.
Another half to three-quarters of enterprises reported their AI initiatives were hampered by a lack of automation. With an estimated 73 percent of IT spending going towards day to day operations, investing in automation and self-service now will free up resources for new AI initiatives later.
CIOs also need to ensure that their enterprise data integration, database, and data warehouses are ready and capable of handling and powering your AI initiatives.
CIOs need to deploy platforms that can enable multiple lines of business to build AI solutions and leverage components from each other’s solutions. For example:
Invest in the infrastructure hardware required for successful AI transformation. Machine learning, and especially deep learning, requires a new level of computational horsepower, as well as high-bandwidth, low-latency networking and storage.
Sixty-one percent of firms surveyed reported being challenged by a lack of servers with purpose-built processors like GPUs and FGPAs. Over eighty percent pointed to a need for new servers that can handle high-performance computing, as well as accelerators to cut down model training times from days and weeks to minutes and hours. That demand will only continue to grow, so CIOs should invest now in highly scalable, high-performance computing servers with accelerators to support the AI demands of the business.
As you become an invaluable partner on AI initiatives, take responsibility for driving the master AI strategy for the enterprise. Ultimately the successes or failures of the enterprises AI ventures will fall on the CIO’s shoulders, whether or not the project was started by them.
Assess AI projects that you can support effectively. Begin with technologies that have well-defined use cases, a proven ROI, and relatively mature commercial solutions. Use the KPIs you identified at the onset to track and broadcast AI efforts across the company to keep senior leadership and other stakeholders appraised. Build capability in IT with data science, data engineering, DevOps, and developer skills necessary to build these solutions.
Identify, study, and track the business performance metrics that matter most to your company on an ongoing basis. Proving the positive impact of AI to the business will drive increased investment. With meticulous tracking and reporting, the business case for AI investments will be impossible to ignore.
CIOs should also regularly scan for new business opportunities and find new investments—before the lines of business even know about them. Dell’s study found that mature organizations who invest more in AI get more in return. For instance, approximately half of enterprises with an annual spend of $36M in AI expect an ROI between two and five times their initial investment.
Be ready to invest significant portions of the IT budget into new endeavors; it won’t be cheap, but the CIO must drive these new investments and put the priorities of the business as a whole above those of the IT department.
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