
Tap Into The Power Of Agentic AI
Act Now or Risk Being Left Behind
Artificial intelligence continues to reshape the business landscape—but a new chapter is unfolding. The emergence of AI agents marks a significant evolution, moving beyond basic automation or conversational interfaces. While it may be tempting to view agentic AI as simply the next step in chatbot development, the reality is far more sophisticated. These agents are dynamic, interactive systems capable of executing complex tasks, making decisions, and collaborating with users in entirely new ways.
Unlike traditional chatbots, which rely on predefined scripts and limited decision trees, AI agents can operate with a high degree of autonomy. This leap in capability is fueling rapid adoption: according to a recent global survey of 1,484 enterprise IT leaders conducted by Cloudera—the only true hybrid platform for data, analytics, and AI—an overwhelming 96% plan to increase their use of AI agents in the coming year.
The company's Chief Strategy Officer, Abhas Ricky, emphasized how critical it is to take action on agentic AI. 'As Enterprise AI goes mainstream, existing workflows will be reimagined,' said Ricky, 'AI Agents are the next frontier that will complete complex multi step decisions to power the next wave of productivity and innovation.'
Starting with High-impact, Low-complexity Projects
Driving successful adoption of AI agents begins with strategic prioritization—specifically, targeting high-impact, low-complexity use cases early in the journey. As organizations transition from experimentation to enterprise-scale deployment, certain applications are emerging as clear front-runners. According to the Cloudera survey, the most widely adopted use cases include performance optimization bots (66%), security monitoring agents (63%), and development assistants (62%). Notably, 81% of IT leaders also reported using AI agents to enhance the effectiveness of their existing generative AI models.
'AI technology similar to AI agents have been created over the last decade, but the natural language processing capabilities of new GenAI models are facilitating systems of agents to plan, collaborate, and improve,' noted Ricky. 'From manufacturing, to finance and telecommunications, innovation around short and long-term memory structures are helping autonomous agents across industries.'
In sectors where human outcomes are paramount, such as healthcare, AI agents are already making a measurable difference. From supporting medical professionals with diagnostic insights to recommending evidence-based treatments, these agents are not just streamlining operations, they are helping to save lives. For instance, a diagnostic agent trained on extensive imaging data can flag subtle anomalies in X-rays that might otherwise go unnoticed, enabling earlier intervention.
The financial services sector is seeing similarly transformative impacts. AI agents are proving particularly valuable in fraud detection (56%), risk assessment (44%), and investment advisory (38%) scenarios. Fraud detection stands out as a mission-critical application, where early identification of suspicious activity is essential, and increasingly achievable with the precision and speed of agentic AI.
'AI agents are not just an invisible tool operating on the backend of an organization,' said Ricky. 'They are real, impactful, and transformative assistants that have the potential to touch our day-to-day lives on a deeply human level.'
Investing in Infrastructure to Power AI Agents
Despite the surge in AI investment, organizations continue to face significant challenges in adopting agentic AI. According to Cloudera's survey, the top concerns among IT leaders include data privacy (53%), integration with existing systems (40%), and high implementation costs (39%).
'These are common hurdles—especially around privacy, security, and implementation,' said Ricky. 'But time and again, the hardest thing for an enterprise is to expose high fidelity data to AI agents. The solution here lies in the strength and flexibility of a company's data infrastructure.'
Cloudera's platform is built to help ensure that infrastructure is ready for AI. But the company's expertise runs even deeper. Cloudera's AI Ecosystem is vast and consists of a broad set of technology partners ready to help organizations get the most out of their AI initiatives.
'We are always building our capabilities with an eye toward the future. The acceleration of all things AI presents a unique challenge for businesses looking to maximize the value of their data' said Ricky. 'Our Enterprise AI solutions, coupled with our one-of-a-kind ecosystem of partners, has what enterprises need to fully unlock the promise of agentic AI.'
At the heart of Cloudera's Enterprise AI platform are tools designed to democratize AI adoption. Low-code and no-code capabilities within AI Inference services and AI studios give teams the power to deploy and scale AI agents with ease. The customizable AI Studio interface streamlines interaction, while dynamic scalability ensures performance matches demand, helping organizations move faster, and with confidence.
2025 is the Year to Move from Experimentation to Execution
Agentic AI is already being embedded into the workflows of nearly every data-driven organization in some form. With investment accelerating across industries, the imperative is clear: integrate AI agents into core workflows now, or risk falling behind. This isn't just speculation—83% of organizations believe it's important to invest in agents to maintain a competitive edge within their industry.
To stay ahead, enterprises must align their AI strategy with a unified, future-ready data platform. By bringing data and AI together in a single, scalable environment, organizations can move beyond experimentation and unlock real, enterprise-wide impact through agentic AI.
To learn more about Cloudera and to download the full report, click here.

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