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5 key AI priorities for CIOs and IT business leaders

5 key AI priorities for CIOs and IT business leaders

The pace of AI innovation today is nothing short of extraordinary. New models, tools and applications emerge at breakneck speed, fundamentally reshaping how businesses operate and compete. For CIOs and IT business leaders, the stakes have never been higher, and customers expect not just implementation but strategic integration that delivers measurable value.
As we look toward 2025, the question is not whether to invest in AI, but how to prioritize investments that align with business objectives and create a sustainable competitive advantage.
About Allata: Your partner in AI and digital transformation
Allata is a global leader in AI consulting and digital transformation, empowering Fortune 1000 companies to achieve excellence in an increasingly complex technological landscape. Founded in 2016, we have built our reputation on helping organizations navigate digital challenges, seize growth opportunities and deliver exceptional customer experiences.
Our team of seasoned consultants brings deep expertise across various industries, with a particular strength in health care and life sciences, aerospace and defense, manufacturing, financial services and commercial real estate. We combine technical knowledge with business acumen to deliver solutions that drive tangible results, not just technological implementation, but meaningful business transformation.
'In a recent point-of-sale project for Urban Air, the requirements, like all big projects, began to expand, and we had about 30% to 40% overage in requirements. I reached out to Allata for help. They utilized AI-assisted development, which reduced the financial impact of the project by 15% to 20% using AI,' said Chris Andrews, former CIO of Unleashed Brands.
We collaborate with your team, understanding your unique challenges and opportunities before crafting customized strategies that align with your business objectives. Our comprehensive service offerings span strategy development, implementation support and ongoing optimization, ensuring you have the guidance you need at every stage of your AI journey.
5 essential AI priorities for forward-thinking leaders
Based on extensive market research and in-depth client conversations spanning multiple industries, our team has pinpointed five mission-critical AI priorities every IT leader should prioritize in their 2025 planning. Turn your AI vision into reality with actionable strategies and these methodologies that drive measurable results.
1. Business case driven AI prioritization, planning and coordination
The era of scattered AI experimentation is behind us. Today's successful organizations take a strategic approach, focusing resources on projects with clear business cases that are directly tied to company priorities.
Strategic action: Establish a unified vision for AI across your organization, identify high-value opportunities with measurable outcomes and create flexible roadmaps that deliver tangible results.
2. Agentic AI and reasoning
The evolution of AI capabilities has accelerated dramatically. What began as tools for drafting emails or generating content has transformed into sophisticated systems capable of complex, multi-step tasks — coordinating between different systems, making autonomous decisions and reasoning through problems.
Models like the recent release of Claude 4, OpenAI o3 and Gemini 2.5 Pro demonstrate the transformative potential of these advanced capabilities. When aligned with business goals and supported by innovative design and change management, agentic AI can revolutionize operations and decision-making processes.
Strategic action: Identify processes that would benefit from autonomous AI agents and develop implementation strategies that integrate these capabilities with existing systems and workflows.
3. AI Skills Acquisition and Development
As AI becomes increasingly central to business operations, the skills gap presents both a challenge and an opportunity. Forward-thinking organizations are conducting comprehensive skills assessments, identifying gaps and developing strategic plans to build capabilities through targeted hiring, effective training and strategic partnerships.
Strategic action: Create a skills development roadmap that balances immediate needs with long-term capability building, leveraging a mix of internal training, strategic hiring and external partnerships.
4. AI operating models
Realizing value from AI investments requires more than technology implementation — it demands a comprehensive operating model that coordinates vision, governance, standards, ethics, regulations and security. Most organizations are still navigating the complexities of building effective AI operating models that strike a balance between innovation and responsible deployment.
Strategic action: Develop a holistic AI operating model that addresses governance, ethics, talent, change management and impact measurement, ensuring your organization can scale AI initiatives effectively.
5. Data readiness and sustainability
In the AI landscape, proprietary data represents a critical competitive advantage. Even as organizations leverage similar foundation models, the quality, organization and governance of your data will determine the effectiveness of AI applications. Simultaneously, as AI drives increased computing demands, sustainability has emerged as both an ethical imperative and a business necessity. With data centers projected to consume up to 20% of global electricity by 2025, energy-efficient AI implementation is essential.
Strategic action: Invest in data governance, quality assurance and sustainable AI practices that minimize environmental impact while maximizing business value.
Download "Top 12 AI Trends for 2025" to access the seven additional AI focus areas that should be on every IT leader's strategic radar. This guide provides an overview of complete implementation roadmaps for all 12 AI priorities, industry-specific case studies that demonstrate real-world success, and proven frameworks designed to accelerate your AI initiatives.
How Allata delivers AI excellence
Our clients consistently report accelerated time-to-value, reduced implementation risks, and stronger alignment between technology investments and business outcomes. By partnering with Allata, you gain access to innovative expertise without the overhead of building specialized teams from scratch. We do not just advise on AI strategy; we help you implement it.
Our comprehensive approach includes:
Strategic assessment. We evaluate your current AI maturity, identify opportunities and develop roadmaps aligned with your business objectives.
Implementation support. Our technical experts collaborate with your team to build, integrate and deploy AI solutions that deliver measurable value.
Change management. We help your organization adapt to new technologies and ways of working, ensuring adoption and maximizing ROI.
Ongoing optimization. AI implementation is not a one-time event. We provide continuous support to refine and enhance your AI capabilities as technologies evolve.
Navigating the path forward
The journey to AI maturity is complex, but organizations that prioritize strategic planning, workforce enablement and responsible innovation will emerge as leaders in this transformative era.
Our deep expertise, proven frameworks and collaborative mindset help organizations identify high-impact AI opportunities, develop the right capabilities, achieve tangible business results, navigate complex digital landscapes and deliver exceptional customer experiences.
Whether you are shaping your AI strategy, accelerating implementation or driving innovation, we are ready to support your journey toward AI excellence.
Ready to transform your AI strategy for 2025? Contact Allata to begin your AI journey with a team of experienced consultants who understand both the technology and business dimensions of successful AI implementation.
David Romeo is a vice president for Allata and is based in Dallas-Fort Worth. He has spent the last 14+ years leading development teams, project delivery, solution and enterprise architecture, and account management, as well as providing thought leadership across a breadth of technology solutions. He has experience in a variety of industries including retail, health care, financial services, manufacturing and logistics. Romeo's passion for technology has him leading multiple service offerings at Allata including Enterprise Solutions and Advanced Integrations. When away from the office, Romeo enjoys spending time with his wife and two children and mixing in the occasional round of golf.
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