12 key benefits of AI for business
Tang recommends some of the remote workshops and online courses offered by organizations such as Udacity as easy ways to get started with AI and to increase your knowledge of areas such as ML and predictive analytics within your organization. It’s a whole new muscle to completely reinvent, and that’s where we believe things need to go. Start with a few processes and drive a step change in performance—not 5% or 10%, but 20%, 30%, 40%, 50% improvement in the throughput, the quality, the output, the performance for that process. What we see now is about 10% to 15% of companies are going into version two in 2024. Gen AI has the ability to cut through all the silos in the organization to completely redefine a process. AI technologies are designed to perform specific functions based on patterns and algorithms, often with speed and accuracy that surpass human skills in certain domains.
And since technology evolves so rapidly, the strategy should allow the organization to adapt to new technologies and shifts in the industry. Ethical considerations such as bias, transparency and regulatory concerns should also be addressed to support responsible deployment. Transparency is a challenge because AI solutions, particularly large language models, can provide incorrect answers without an explanation, making it difficult for businesses to audit the decision-making process. From automating repetitive tasks to enhancing decision-making and increasing operational accuracy, AI offers a multitude of opportunities for businesses to improve their processes and outcomes.
Among the potential benefits, 74% of respondents anticipate ChatGPT assisting in generating responses to customers through chatbots. Most business owners think artificial intelligence will benefit their businesses. A substantial number of respondents (64%) anticipate AI will improve customer relationships and increase productivity, while 60% expect AI to drive sales growth. According to the Forbes Advisor survey, AI is used or planned for use in various aspects of business management.
However, the trend for more than two hundred years has been that automation creates new jobs, although ones requiring different skills. That doesn’t take away the fear some people have of a machine exposing their mistakes or doing their job better than they do it. There are some early examples of AI advising actions for executives’ consideration that would be value-creating based on the analysis. From there, you go to delegating certain decision authority to AI, with constraints and supervision. Eventually, there is the point where fully autonomous AI analyzes and decides with no human interaction.
Misguided Data Aggregation
The security aspect of AI has been the primary concern among the business community. The overall process of creating momentum for an AI deployment begins with achieving small victories, Carey reasoned. Incremental wins can build confidence across the organization and inspire more stakeholders to pursue similar AI implementation experiments from a stronger, more established baseline. “Adjust algorithms and business processes for scaled release,” Gandhi suggested. Once use cases are identified and prioritized, business teams need to map out how these applications align with their company’s existing technology and human resources.
- This is where the concept of creating a robust AI ecosystem using the People, Process, and Technology framework comes into play.
- Equipped with an understanding of AI’s potential, a clear roadmap to adoption, and insights from those pioneering this technology, your organization will gain confidence in unlocking AI’s possibilities.
- Data scientists who build machine learning models need infrastructure, training data, model lifecycle management tools and frameworks, libraries, and visualizations.
- It’s important to remember that, as companies find ways to use AI for competitive advantage, they’re also grappling with challenges.
- To adjust for differences in response rates, the data are weighted by the contribution of each respondent’s nation to global GDP.
Recent developments within artificial intelligence (AI) have demonstrated the scale and power of this technology on business and society. However, businesses need to determine how to structure and govern these systems responsibly to avoid bias and errors as the scalability of AI technology can have costly effects to both business and society. As your organization uses different datasets to apply machine learning and automation to workflows, it’s important to have the right guardrails in place to ensure data quality, compliance, and transparency within your AI systems. The automation of tasks that traditionally relied on human intelligence has far-reaching implications, creating new opportunities for innovation and enabling businesses to reinvent their operations.
Gen AI is a new technology, and organizations are still early in the journey of pursuing its opportunities and scaling it across functions. So it’s little surprise that only a small subset of respondents (46 out of 876) report that a meaningful share of their organizations’ EBIT can be attributed to their deployment of gen AI. These, after all, are the early movers, who already attribute more than 10 percent of their organizations’ EBIT to their use of gen AI. The AI-related practices at these organizations can offer guidance to those looking to create value from gen AI adoption at their own organizations. Respondents most often report that their organizations required one to four months from the start of a project to put gen AI into production, though the time it takes varies by business function (Exhibit 10).
“Some employees may be wary of technology that can affect their job, so introducing the solution as a way to augment their daily tasks is important,” Wellington explained. There’s a stark difference between what you want to accomplish and what you have the organizational ability to actually achieve within a given time frame. Tang said a business should know what it’s capable of and what it’s not from a tech and business process perspective before launching into a full-blown AI implementation. In a world abundant with information on AI, understanding its theoretical aspects is just the beginning. The real transformation occurs when we transition from merely grasping AI concepts to actively applying them within our organizations. Everybody’s very focused on their P&L, on their balance sheet, on their customer sat[isfaction], on their sustainability focus.
This concern might be driven in part by the increasing adoption of tools like AI-driven ChatGPT, with 65% of consumers saying they plan to use ChatGPT instead of search engines. Balancing the advantages of AI with potential drawbacks will be crucial for businesses as they continue to navigate the evolving digital landscape. To turn a candidate for AI implementation into an actual project, Gandhi believes a team of AI, data and business process experts is needed to gather data, develop AI algorithms, deploy scientifically controlled releases, and measure influence and risk. “To successfully implement AI, it’s critical to learn what others are doing inside and outside your industry to spark interest and inspire action,” Wand explained. When devising an AI implementation, identify top use cases, and assess their value and feasibility.
The best approach may be to create a digital factory where a different team tests and builds AI applications, with oversight from senior stakeholders. In addition to experiencing the risks of gen AI adoption, high performers have encountered other challenges that can serve as warnings to others (Exhibit 12). High performers are also more likely than others to report experiencing challenges with their operating models, such as implementing agile ways of working and effective sprint performance management. Data scientists who build machine learning models need infrastructure, training data, model lifecycle management tools and frameworks, libraries, and visualizations. Similarly,
an IT administrator who manages the AI-infused applications in production needs tools to ensure that models are accurate, robust, fair, transparent, explainable, continuously and consistently learning, and auditable.
Intelligent Document Processing
AI models are only as good as the data they consume, making continuous data readiness crucial. For instance, a transportation company can leverage AI algorithms to optimize its route planning for delivery drivers. By considering factors such as traffic conditions, customer locations, and delivery time windows, AI can generate optimal routes that minimize fuel consumption, reduce delivery times, and improve overall operational efficiency, resulting in cost savings. AI-driven analytics provide businesses with deeper market research and consumer insights, uncovering patterns, trends, and preferences that can inform decision-making, optimize strategies, and drive business growth.
Our earlier research has shown that employees who enjoy their work are about 50% less likely to look for a new job. People work at work — and it is therefore critical for any effort to improve joy to be grounded in the day-to-day Chat GPT rhythms, routines, and tasks that employees spend their time on. Once you’ve integrated the AI model, you’ll need to regularly monitor its performance to ensure it is working correctly and delivering expected outcomes.
Delays, Implementation Issues, and Unrealized Benefits Challenge Generative AI Initiatives in 2024 – GlobeNewswire
Delays, Implementation Issues, and Unrealized Benefits Challenge Generative AI Initiatives in 2024.
Posted: Tue, 11 Jun 2024 13:36:28 GMT [source]
Their expertise in RPA can help businesses automate processes efficiently, making the most of AI implementations. Michael D Watkins is Professor of Leadership and Organizational Change at IMD, and author of The First 90 Days, Master Your Next Move, Predictable Surprises, and 12 other books on leadership and negotiation. His book, The Six Disciplines of Strategic Thinking, explores how executives can learn to think strategically and lead their organizations into the future. A Thinkers 50-ranked management influencer and recognized expert in his field, his work features in HBR Guides and HBR’s 10 Must Reads on leadership, teams, strategic initiatives, and new managers.
Having a solid strategy and plan for collecting, organizing, analyzing, governing and leveraging
data must be a top priority. With the pace of AI evolution, promoting a culture of continuous learning is essential. Encouraging and supporting skill updates ensures the organization remains at the forefront of AI integration. Prioritize ethical considerations to ensure fairness, transparency, and unbiased AI systems. Thoroughly test and validate your AI models, and provide training for your staff to effectively use AI tools. “The AI understands an unstructured query, and it understands unstructured data,” Mason explained.
AI essentially enables shorter cycles and cuts the time it takes to move from one stage to the next — such as from design to commercialization — and that shortened timeline, in turn, delivers better and more immediate ROI. In addition, you should optimize AI storage for data ingest, workflow, and modeling, he suggested. “Taking the time to review your options can have a huge, positive impact to how the system runs once its online,” Pokorny added. “To prioritize, look at the dimensions of potential and feasibility and put them into a 2×2 matrix,” Tang said.
While ensuring data quality and accessibility, you must also implement effective data management protocols. This is particularly crucial in healthcare, where sensitive patient data is handled. These protocols provide data usage, quality control, privacy, and security guidelines. The healthcare sector also presents unique challenges related to data acquisition, demanding strategies to gather relevant health data without infringing on patient privacy rights.
Integrating enterprise-grade AI can help free human workforces from repetitive manual tasks, improve data analysis, business strategy and decision-making, and optimize processes organization-wide. To do so, enterprises must have an infrastructure that properly manages data and supports AI technology. Having a strong data governance framework helps keep data available to all relevant stakeholders and secure from data breaches. Part of this framework involves a digital transformation and the integration of hybrid cloud and multicloud environments to help manage large volumes of data. Once these systems are in place, an organization can begin mining data for insights and building training models to instruct AI technologies.
By identifying these bottlenecks, the company can optimize the workflow, adjust resource allocation, and streamline the production process, resulting in reduced operational costs and improved productivity. For example, a retail company can implement AI-powered chatbots to handle customer inquiries and provide support, reducing the need for additional customer service agents. The company can achieve cost savings by reducing the staffing requirements for its support team while maintaining a high level of customer service.
Enterprises can employ AI for everything from mining social data to driving engagement in customer relationship management (CRM) to optimizing logistics and efficiency when it comes to tracking and managing assets. Having explored the framework of People, Process, and Technology that forms the backbone of a robust AI ecosystem, we can now shift our focus to the key considerations of AI implementation. These considerations guide decision-making, ensure alignment with business goals, and prepare the organization for a smooth and impactful AI journey. The backbone of successful AI implementation is robust data management processes.
Victoria Ossadnik, E.ON’s chief operating officer for digital, told Business Insider that the company hoped to use AI “to accelerate the transformation of the energy sector.” Wayfair told Business Insider that the service was growing steadily without advertising and that engagement was high with increasingly long session lengths. The retailer affirmed that since Decorify’s launch last July shoppers have used the service to create over 150,000 designs.
Katherine Haan is a small business owner with nearly two decades of experience helping other business owners increase their incomes. Learn how to choose the right AI model for your enterprise with our comprehensive guide. Explore model types, sourcing options, frameworks, and best practices for deployment and monitoring to drive innovation and success. 5 min read – Software as a service (SaaS) applications have become a boon for enterprises looking to maximize network agility while minimizing costs. If the AI initiatives are not closely tied to the organization’s goals, priorities, and vision, it may result in wasted efforts, lack of support from leadership and an inability to demonstrate meaningful value. AI’s impact is also felt in the realm of facial recognition technology, which is utilised by various sectors such as airports, law enforcement, and social media platforms for identity verification and other purposes.
Start by researching different AI technologies and platforms, and evaluate each one based on factors like scalability, flexibility, and ease of integration. Assess each vendor’s reputation and support offerings, and find out if the solution is compatible with your existing infrastructure. As the world continues to embrace the transformative power of artificial intelligence, businesses of all sizes must find ways to effectively integrate this technology into their daily operations. Gen AI high performers are also much more likely to say their organizations follow a set of risk-related best practices (Exhibit 11). The latest survey also shows how different industries are budgeting for gen AI. Responses suggest that, in many industries, organizations are about equally as likely to be investing more than 5 percent of their digital budgets in gen AI as they are in nongenerative, analytical-AI solutions (Exhibit 5).
It could be improving customer service, product recommendations, process optimization, fraud detection or any other relevant aspect. Integrating artificial intelligence in business can be a daunting task, especially if you’re not familiar with the technology. By employing advanced machine learning algorithms, AI can learn the normal patterns and behaviors of a system or network. You’ve probably heard this a hundred times in the last month – or hour if you’re on LinkedIn – so at the risk of sounding repetitive, here are the main benefits of AI implementation in your business.
Be prepared to work with data scientists and AI experts to develop and fine-tune your model so it can deliver accurate and reliable results that align with your business objectives. Conversely, respondents are less likely than they were last year to say their organizations consider workforce and labor displacement to be relevant risks and are not increasing efforts to mitigate them. Those are just some of the more obvious applications of artificial intelligence in business. It could also be used for optimizing work rotations, deciding which clients to prioritize, and even handling things like expenses. Pilot testing a customized AI use case allows the organization to gauge the effectiveness of the AI implementation and make necessary adjustments before a full-scale roll-out. Establishing an AI policy during this phase is crucial for defining permissible AI tools and governance.
Artificial intelligence tools can be used to improve network security, anomaly detection, fraud detection, and help prevent data breaches. The increased use of technology in the workplace creates greater opportunities for security breaches; to thwart threats and protect organizational and customer data, organizations must be proactive in detecting anomalies. For example, deep learning models can be used to examine large sets of network traffic data and identify behavior that might signal an attempted attack on the network.
Encouraging a Culture of Data-Driven Decisions
CompTIA’s AI Advisory Council brings together thought leaders and innovators to identify business opportunities and develop innovative content to accelerate adoption of artificial intelligence and machine learning technologies. A company’s data architecture must be scalable and able to support the influx of data that AI initiatives bring with it. If data is required to be collected or purchased from external sources, proper data management function is needed to ensure data is procured legally and that compliance standards are met in data storage, including GDPR-type of compliance management. A mature error analysis process should enable data scientists to systemically analyze a large number of “unseen” errors and develop an in-depth understanding of the types of errors, distribution of errors, and sources of errors in the model.
This foundational phase is critical as it sets the stage for the successful integration of AI tools by aligning them with business goals and compliance requirements. The first 30 days focus on building AI awareness, defining policies, and assessing AI capabilities within the organization. During this phase, your business identifies key stakeholders and roles, ensuring everyone involved understands their responsibilities and the strategic goals of AI adoption. Your organization needs to employ a strategy that encompasses understanding AI capabilities.
3 things businesses gain from embracing AI (and 3 that hold them back) – Fast Company
3 things businesses gain from embracing AI (and 3 that hold them back).
Posted: Thu, 06 Jun 2024 12:45:42 GMT [source]
Eighty-seven percent of organizations believe AI and machine learning will help them grow revenue, boost operational efficiency and improve customer experiences, according to research firm Frost & Sullivan’s “Global State of AI, 2022” report. This article has highlighted the essential principles crucial for initiating your AI implementation journey. By approaching AI as a comprehensive project and methodically tackling the elements, the undertaking becomes far more approachable and structured. Remember, the journey to AI implementation is not just about adopting new technology; it’s harnessing the full potential of your data, leading to enhanced insights, improved operational efficiency, and smarter decision-making across your organization. As a last point, you should consider how you will continue to collect and update data to improve your AI models over time.
Intelligent document processing (IDP) is the automation of document-based workflows using AI technologies. We see a lot of our clients use these tools for things like invoice processing, data entry and contract management, which allows them to save time and resources. What is interesting about AI is that all these models ai implementation in business are scripts or pieces of code humans have been training for years. With this new era of AI, there is much more that businesses can do to benefit their internal operations and final customers. As the CMO of a business automation platform, I’ve witnessed the evolution of intelligent automation and AI firsthand.
AI strategy requires significant investments in data, cloud platforms, and AI platform for model life cycle management. Each initiative could vary greatly in cost depending on the scope, desired outcome, and complexity. AI continues to represent an intimidating, jargon-laden concept for many non-technical stakeholders and decision makers. Gaining buy-in from all relevant parties may require ensuring a degree of trustworthiness and explainability embedded into the models. User experience plays a critical role in simplifying the management of AI model life cycles.
Saatchi & Saatchi continues to leverage generative AI across its agency in multiple ways, such as creative conceptualizing, minimizing repetitive tasks, and analyzing data, Knight said. To help train the artificial-intelligence model to produce the desired results, the agency hosted trainings on how to use Lucy and encouraged everyone to use it and provide feedback. Transparency is how we protect the integrity of our work and keep empowering investors to achieve their goals and dreams. And we have unwavering standards for how we keep that integrity intact, from our research and data to our policies on content and your personal data.
Machine learning, a common type of business AI, is utilised to swiftly process large volumes of data, improving over time as it receives more data. Whether you aim to streamline processes, boost efficiency, or edge out competition, understanding how to navigate AI implementation is crucial. Our guide covers key trends, benefits, top platforms, and a step-by-step approach to selecting the right solution for your organization’s https://chat.openai.com/ needs. Explore key considerations, compare popular AI tools, and discover best practices to make an informed decision and drive innovation with AI. Carefully orchestrating proof of concepts into pilots, and pilots into production systems allows accumulating experience. However the real breakthrough comes from ultimately fostering a culture hungry to incorporate predictive intelligence into daily decisions and workflows.
There are new roles and titles such as data steward that help organizations understand the governance
and discipline required to enable a data-driven culture. Data often resides in multiple silos within an organization in multiple structured (i.e., sales, CRM, ERP, HRM, marketing, finance, etc.) or unstructured (i.e., email, text messages, voice messages, videos, etc.) platforms. Depending on the size and scope
of your project, you may need to access multiple data sources simultaneously within the organization while taking data governance and data privacy into consideration. Additionally, you may need to tap into new, external data sources (such as data
in the public domain).
Plan for scalability and ongoing monitoring while staying compliant with data privacy regulations. Continuously measure ROI and the impact of AI on your business objectives, making necessary adjustments along the way. As fast as business moves in this digital age, AI helps it move even faster, said Seth Earley, author of The AI-Powered Enterprise and CEO of Earley Information Science.
Digital voice assistants, such as Alexa and Siri, are increasingly being used for a variety of tasks, including controlling smart devices and providing information services. Without sufficient and high-quality data, AI systems may struggle to perform effectively. Be selective in the data used for AI by focusing on specific problems and relevant questions, and integrate various datasets to ensure high-quality, consistent data. Ensuring data security and privacy is also a key aspect to consider, given the regulatory and ethical implications. Understanding the specific business problem that AI is meant to solve is essential to ensure alignment with the company’s overarching policy and consider any ethical and legal implications. However, technical feasibility alone does not guarantee effective adoption or positive ROI.
And they never stop incrementally expanding the footprint of experimentation with intelligent systems. With the strategy and roadmap defined, deciding the right AI implementation process and methodology is the next key step. These are human traits, and they are required to navigate complex legal, financial or strategic landscapes. The partnership was also not welcomed by Elon Musk, the owner of Tesla and Twitter/X, who has threatened to ban iPhones from his companies due to “data security”. For each client and campaign, Saatchi & Saatchi creates a collection of assets, including images, videos, final presentations, strategic insights, and briefs. These items accumulate over the years as the agency continues working with clients, Jeremiah Knight, its chief operating officer, told Business Insider.
Gill told people watching his stream that he holds a $160.4 million position in the store, and investing in the brick-and-mortar video game reseller is a bet on its management’s ability to transition it to something more attuned to modern markets. Of course, Forbes senior contributor Simon Moore writes, the rate cut decision isn’t the most important thing coming out of this week’s Fed committee meeting. The committee will provide a forecast for economic policy for the rest of the year, and Fed Chair Jerome Powell will host a press conference to talk more about what is to come. After all, May’s inflation data is slated to come from the Bureau of Labor Statistics on Wednesday morning, as the Fed committee’s two-day meeting wraps up.
You can foun additiona information about ai customer service and artificial intelligence and NLP. Success requires grounding in clear business objectives, organizational readiness for emerging technologies, and high-quality data. Strategy must align diverse stakeholders to balance short-term returns with long-term investments into infrastructure, while still moving aggressively. Enable teams closest to your customers to specify enhancement opportunities or new applications of AI.
AI-infused applications should be consumable in the cloud (public or private) or within your existing datacenter or in a hybrid landscape. All this can be overwhelming for companies trying to deploy AI-infused applications. Companies are actively exploring, experimenting and deploying AI-infused solutions in their business processes. Implementing AI is a complex process that requires careful planning and consideration. Organizations must ensure that their data is of high quality, define the problem they want to solve, select the right AI model, integrate the system with existing systems, and consider ethical implications.
However, if a solution to the problem needs AI, then it makes sense to bring AI to deliver intelligent process automation. AI involves multiple tools and techniques to leverage underlying data and make predictions. Many AI models are statistical in nature and may not be 100% accurate in their predictions. Business stakeholders must be prepared to accept a range of outcomes
(say 60%-99% accuracy) while the models learn and improve. It is critical to set expectations early on about what is achievable and the journey to improvements to avoid surprises and disappointments. To do this, you must establish a coherent and powerful AI vision that meshes with your organization’s culture, mission, and business objectives.
“This should help you prioritize based on near-term visibility and know what the financial value is for the company. For this step, you usually need ownership and recognition from managers and top-level executives.” Next, you need to assess the potential business and financial value of the various possible AI implementations you’ve identified. It’s easy to get lost in “pie in the sky” AI discussions, but Tang stressed the importance of tying your initiatives directly to business value. Ascend.io is the leader in Data Automation, empowering data teams to deliver production-ready data pipelines 10x faster by deploying automation and AI. At Ascend, we believe it’s time to rethink data engineering from the ground up.
A study of the consulting firm’s administrative employees demonstrates how they can use AI to reduce time spent on toil and increase time on joy-creating tasks. The research also explores the key factors that drive successful gen AI adoption; the main finding is that having a manager who is immersed in using AI will drive employee engagement with the technology. Establish key performance indicators (KPIs) that align with your business objectives, so you can measure the impact of AI on your organization. Regularly analyze the results, identifying challenges and areas for potential improvement.
This guide provides a focused framework to set up a robust AI ecosystem and outlines the key considerations for an effective AI implementation strategy. Finally, to get the most out of your AI tools, it’s important to foster a culture of AI adoption within your business. This means educating and training employees on the benefits and limitations of AI, encouraging experimentation and innovation, and creating a supportive and collaborative environment. Before implementing artificial intelligence technology, it’s important to identify your goals. Just remember that implementing AI is an iterative process, and it’s essential to start with smaller, manageable projects to gain experience and build confidence before scaling up. For example, a manufacturing company can use AI to analyze production data and identify areas where production bottlenecks occur.
Some organizations might need to contract with a third-party IT service partner to provide supplementary, needed
IT skills to model data or implement the software. Artificial intelligence (AI) has been widely adopted across industries to improve efficiency, accuracy, and decision-making capabilities. As the AI market continues to evolve, organizations are becoming more skilled in implementing AI strategies in businesses and day-to-day operations. This has led to an increase in full-scale deployment of various AI technologies, with high-performing organizations reporting remarkable outcomes. These outcomes go beyond cost reduction and include significant revenue generation, new market entries, and product innovation. However, implementing AI is not an easy task, and organizations must have a well-defined strategy to ensure success.
Interest in generative AI has also brightened the spotlight on a broader set of AI capabilities. For the past six years, AI adoption by respondents’ organizations has hovered at about 50 percent. This year, the survey finds that adoption has jumped to 72 percent (Exhibit 1). AI integration is not a set-and-forget solution; it requires ongoing adjustments and optimizations based on evolving business needs and technological advancements. The process involves regular performance reviews and feedback loops with stakeholders to ensure AI tools remain effective and aligned with strategic objectives. The iterative development of AI capabilities to incorporate new features and improvements ensures that the organization remains at the forefront of technological innovation.
Once your business is ready from an organizational and tech standpoint, then it’s time to start building and integrating. Tang said the most important factors here are to start small, have project goals in mind, and, most importantly, be aware of what you know and what you don’t know about AI. This is where bringing in outside experts or AI consultants can be invaluable. A unified approach, transcending these boundaries, is key to harnessing AI effectively. This role is pivotal in steering the AI initiatives of an organization in a direction that aligns with its broader business strategies. Choose an expert, either from within or outside the organization, who understands both AI and your business’s unique needs.
Biased training data has the potential to create unexpected drawbacks and lead to perverse results, completely countering the goal of the business application. Begin by researching use cases and white papers available in the public domain. These documents often mention the types of tools and platforms that have been used to deliver the end results.
Is powered by LLaMA 3, the company’s newest and most powerful large language model, an A.I. Users of Instagram, Facebook, WhatsApp and Messenger will be able to turn to the new technology, powered by Meta’s latest artificial intelligence model, to obtain information and complete tasks. The agency realized that automation could help improve asset organization, Knight said, so he worked with the company’s CEO and chief financial officer on a solution. Security remains a top concern for business leaders, but cost worries have surged 14x in the past year. Additionally, concerns around response accuracy have risen 5x, likely due to issues with hallucinations.
This meant they also sprayed crops and barren soil, wasting valuable resources and time. The company is also testing an AI solution to predict when parts of its energy infrastructure, such as a cable, might need repairs. Executives hope that by detecting failures before they occur, they can prevent disruption.