sexta-feira, maio 9, 2025
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Fueling Autonomous AI Agents with the Data to Think and Act


The global autonomous artificial intelligence (AI) and autonomous agents market is projected to reach $70.53 billion by 2030 at an annual growth rate of 42%. This rapid expansion highlights the increasing reliance on AI agents across industries and departments.

Unlike LLMs, AI agents don’t just provide insights, but they actually make decisions and execute actions. This shift from analysis to proactive execution raises the stakes. Low-quality data yields untrustworthy results in any analysis situation, especially when AI is involved, but when you trust agentic AI to take action based on its analyses, using low-quality data has the potential to do some serious damage to your business.

To function effectively, AI agents require data that is timely, contextually rich, trustworthy, and transparent.

Timely Data for Timely Action

AI agents are most useful when they operate in real-time or near-real-time environments. From fraud detection to inventory optimization and other use cases, these systems are deployed to make decisions as events unfold, not hours or days after the fact. Delays in data freshness can lead to faulty assumptions, missed signals, or actions taken on outdated conditions.

“AI frameworks are the new runtime for intelligent agents, defining how they think, act, and scale. Powering these frameworks with real-time web access and reliable data infrastructure enables developers to build smarter, faster, production-ready AI systems,” says Ariel Shulman, CPO of Bright Data.

This applies equally to data from internal systems, like ERP logs or CRM activity, as well as external sources, such as market sentiment, weather feeds, or competitor updates. For example, a supply chain agent recalibrating distribution routes based on outdated traffic or weather data may cause delays that ripple across a network.

Agents that act on stale data don’t just make poor decisions. They make them automatically, without pause or correction, reinforcing the urgency of real-time infrastructure.

Agents Need Contextual, Granular, Connected Data

Autonomous action requires more than speed. It requires understanding. AI agents need to grasp not only what is happening, but why it matters. This means linking diverse datasets, whether structured or unstructured, or whether internal or external, in order to construct a coherent context.

“AI agents can access a wide range of tools-like web search, calculator, or a software API (like Slack/Gmail/CRM)-to retrieve data, going beyond fetching information from just one knowledge source,” explains Shubham Sharma, a technology commentator. So “depending on the user query, the reasoning and memory-enabled AI agent can decide whether it should fetch information, which is the most appropriate tool to fetch the required information and whether the retrieved context is relevant (and if it should re-retrieve) before pushing the fetched data to the generator component.”

This mirrors what human workers do every day: reconciling multiple systems to find meaning. An AI agent monitoring product performance, for instance, may pull structured pricing data, customer reviews, supply chain timelines, and market alerts-all within seconds.

Without this connected view, agents risk tunnel vision, which might involve optimizing one metric while missing its broader impact. Granularity and integration are what make AI agents capable of reasoning, not just reacting. Contextual and interconnected data enable AI agents to make informed decisions.

Agents Trust What You Feed Them

AI agents do not hesitate or second-guess their inputs. If the data is flawed, biased, or incomplete, the agent proceeds anyway, making decisions and triggering actions that amplify those weaknesses. Unlike human decision-makers who might question an outlier or double-check a source, autonomous systems assume the data is correct unless explicitly trained otherwise.

“AI, from a security perspective, is founded on data trust,” says David Brauchler of NCC Group. “The quality, quantity, and nature of data are all paramount. For training purposes, data quality and quantity have a direct impact on the resultant model.”

For enterprise deployments, this means building in safeguards, including observability layers that flag anomalies, lineage tools that trace where data came from, and real-time validation checks.

It’s not enough to assume high-quality data. Systems and humans in the loop must verify it continuously.

Transparency and Governance for Accountability in Automation

As agents take on greater autonomy and scale, the systems feeding them must uphold standards of transparency and explainability. This is not just a question of regulatory compliance-it’s about confidence in autonomous decision-making.

“In fact, much like human assistants, AI agents may be at their most valuable when they are able to assist with tasks that involve highly sensitive data (e.g., managing a person’s email, calendar, or financial portfolio, or assisting with healthcare decision-making),” notes Daniel Berrick, Senior Policy Counsel for AI at the Future of Privacy Forum. “As a result, many of the same risks relating to consequential decision-making and LLMs (or to machine learning generally) are likely to be present in the context of agents with greater autonomy and access to data.”

Transparency means knowing what data was used, how it was sourced, and what assumptions were embedded in the model. It means having explainable logs when an agent flags a customer, denies a claim, or shifts a budget allocation. Without that traceability, even the most accurate decisions can be difficult to justify, whether internally or externally.

Organizations need to build their own internal frameworks for data transparency-not as an afterthought, but as part of designing trustworthy autonomy. It’s not just ticking checkboxes, but designing systems that can be examined and trusted.

Conclusion

Feeding autonomous AI agents the right data is no longer just a backend engineering challenge, but rather a frontline business priority. These systems are now embedded in decision-making and operational execution, making real-world moves that can benefit or harm organizations depending entirely on the data they consume.

In a landscape where AI decisions increasingly do, and not just think, it’s the quality and clarity of your data access strategy that will define your success.

The post Fueling Autonomous AI Agents with the Data to Think and Act appeared first on Datafloq.

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