{"id":51879,"date":"2024-05-14T07:27:31","date_gmt":"2024-05-14T11:27:31","guid":{"rendered":"https:\/\/centricconsulting.com\/?p=51879"},"modified":"2024-05-13T15:28:20","modified_gmt":"2024-05-13T19:28:20","slug":"getting-started-with-ai-business-guide","status":"publish","type":"post","link":"https:\/\/centricconsulting.com\/blog\/getting-started-with-ai-business-guide\/","title":{"rendered":"Getting Started with AI: A Guide for Businesses"},"content":{"rendered":"

Explore how to get started with AI in your business. This guide provides actionable insights on AI strategy development and AI readiness assessment, helping you navigate the complexities of AI integration.<\/h2>\n
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Artificial intelligence (AI) is critical for businesses to remain competitive. However, the journey to AI adoption can seem daunting, especially if you\u2019re just beginning to navigate its complexities. This article is your compass that will guide you through the crucial steps of AI strategy development and AI readiness assessment.<\/p>\n

The dawn of AI is not just a technological revolution \u2014 it’s a business revolution<\/a>, too. Companies across industries recognize AI\u2019s transformative potential, from streamlining operations to enhancing customer experiences. Yet, the path to AI integration is not without its challenges. You need a robust AI strategy<\/a>, readiness to adapt, and deep understanding of the technology’s capabilities and limitations.<\/strong><\/p>\n

AI Strategy Development<\/h2>\n

The first step in your AI journey is developing a comprehensive AI strategy. Your strategy should align with your business objectives, defining clear goals and measurable outcomes. It should also consider the resources required, potential risks, and steps to mitigate them.<\/p>\n

AI strategy development<\/a> begins with identifying the areas within your organization where AI can add the most value.<\/strong> Start by considering your business before choosing new technologies or restructuring your data.<\/p>\n

What repetitive tasks would deliver the most value if they were automated? How could you improve your decision-making with predictive analytics? What\u2019s the value of personalizing your customer or employee interactions? Focusing first on one or two high-value areas will allow you to deliver some wins and make the case for future AI investment and more complex applications.<\/p>\n

Once you’ve identified your focus areas, it’s time to gather your team. Your AI team<\/a> should include technical experts and stakeholders from the business areas that will be most affected by the AI implementation.<\/p>\n

But don\u2019t leave out the C-suite or board of directors: Buy-in at the highest levels of your company can lead to critical moral \u2014 and financial \u2014 support. Building such a cross-functional team will ensure that your AI strategy aligns with broader business objectives and that the implementation process is smooth and effective.<\/p>\n

AI Readiness Assessment<\/h2>\n

Once the AI strategy is in place, conduct an AI readiness<\/a> assessment. This crucial step evaluates your organization’s capacity to implement and support AI technologies. It involves assessing your data infrastructure, employees’ technical skills and organizational culture.<\/p>\n

Start with data, the lifeblood of AI<\/a>. Without quality data, even the most sophisticated AI system will fail to deliver results. Therefore, you must evaluate your data infrastructure’s readiness for AI. This includes the quality and quantity of your data, your data management practices, and your ability to protect and secure data.<\/strong><\/p>\n

One helpful acronym to remember is ROT \u2014 redundant, obsolete and trivial data. Duplicate forms stored in multiple places, records on products your company stopped making years ago, plans for the company\u2019s softball tournament: This \u2018ROTten\u2019 data can interfere with AI in the same way it interferes with your employees. Of course, evaluating vast quantities of data at even this basic level will take time, but taking a step-by-step approach<\/a> will help you get there.<\/p>\n

Technical AI Readiness<\/h3>\n

Technical skills are another critical aspect of AI readiness. You likely already have a skilled IT staff, but generative and other advanced AI applications have additional requirements. For example:<\/strong><\/p>\n