June 05, 2023
June 05, 2023
Contributor: John Hillery and Nathan Lewis
These five points are essential for making important leadership decisions.
Even before ChatGPT, one-third of CIOs say their organization had already deployed artificial intelligence (AI) technologies, and 15% more believe they will deploy AI within the next year, according to the 2023 Gartner CIO and Technology Executive Survey. But deciding how best to proceed means factoring AI into business value, risk, talent and investment priorities.
Business leaders have high expectations about AI that CIOs will need to manage. CIOs need to be fluent in the technical language of AI as well as the risks and opportunities for their business.
Here are five things every CIO should know about the AI landscape to become a successful business leader in the rollout of AI.
Most organizations typically deploy AI in a business unit or area for the following use cases:
Smart process automation and robotics systems
Automating and personalizing at scale
Increase workforce productivity and AI-enabled decisions accuracy
CIOs often expect AI to add value to the business but must be clear on what’s feasible. Most AI business value is generated from one-off, point-to-point solutions. Getting more value from solutions at scale may require deep business process changes, and new ways of working between AI teams and software engineering, because AI is difficult to integrate into existing systems.
The following use cases are both highly feasible and highly likely to drive business value, so investment here will be easy to justify:
Price optimization
Lead scoring
Demand generation
These are examples of highly feasible AI use cases for which the business value is likely medium, so investment will be more opportunistic:
Cross-selling and upselling
Territory organization
Sales content personalization
Knowledge management
Account intelligence
Generative AI can augment and accelerate multiple business capabilities, but CIOs need to be aware of emerging government regulations and frameworks around AI, especially as increased usage triggers more questions about ethics and responsibility. The following risks are associated with AI and generative AI.
AI risks:
Regulatory. AI poses legal risks by potentially opening up organizations to lawsuits over copyrighted or protected content, information and data.
Reputational. AI can amplify biases and create a “black box” — an AI system with no user visibility into inputs and operations.
Competency. AI requires a unique set of skills that need to be intentionally sourced through upskilling existing talent or from academia or startups.
False output. Generative AI, and ChatGPT specifically, can be unstable, be erroneous in reasoning, can fail to comprehend the entire context, has limited explainability and trackability, and is biased.
Security. Your sensitive data and intellectual property can be used to generate responses to users outside the organization — such as service provider employees and hackers.
There are many ways of acquiring AI outside of internal development, such as enterprise applications you are already using, packaged applications you can buy and AI add-ons (chatbots, virtual assistants, etc.). Organizations can:
Buy APIs (e.g., Amazon Web Services, Google, IBM, Microsoft) and packaged applications (e.g., IBM, Microsoft, Oracle, SAP, SAS)
Build open source (e.g., Python, Apache Spark, TensorFlor), data science/machine learning platforms, citizen data science tools
Outsource to global and/or local consultants, specialists and/or systems integrators
CIOs indicate that AI talent is not a major resource concern, and they combine both internal and external hiring to source talent needed for successful AI deployment. Four roles are key, though: data scientists, data engineers, AI engineers and business experts.
AI is growing at a rapid pace with trends and technologies continuously emerging. CIOs need to be prepared for what lies ahead.
Create a succinct AI strategy document that synthesizes your vision and potential benefits, audits and mitigates risks, captures KPIs, and outlines best practices for value creation.
Identify sponsors for AI projects and ensure their KPIs are being measured accurately and communicated widely.
Invest in data literacy programs to instill a data-driven culture.
Instill responsible AI practices and make them foundational to your AI strategy, not an afterthought.
John Hillery is Managing Vice President in Peer and Practitioner Research for the Gartner CIO Research Group. His current research focus is IT strategy, governance, operating models, performance measurement, and talent and evolution of the CIO role.
Nathan Lewis is a specialist in the Gartner CIO & Industries Group. His current focus is on peer and practitioner research.
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Recommended resources for Gartner clients*:
What CIOs Need to Know About AI
CIO Technology and Innovation Leadership Primer for 2023
*Note that some documents may not be available to all Gartner clients.