• The next phase of AI is agentic, and it starts with data architec

    From TechnologyDaily@1337:1/100 to All on Saturday, December 13, 2025 09:15:07
    The next phase of AI is agentic, and it starts with data architecture

    Date:
    Sat, 13 Dec 2025 09:00:00 +0000

    Description:
    Agentic AI is coming fast, and without unified data, it breaks before it begins.

    FULL STORY ======================================================================

    If you look at the last decade of AI progress, most of it has been measured
    in a single dimension: bigger models and better benchmarks .

    That approach worked for a while, but were now running into the limits of
    what bigger can buy.

    The next breakthrough isnt about cranking parameters into the billions. Its about the architecture underneath, the part most people dont see but absolutely feel when it isnt working.

    Thats where agentic AI comes in. Not agents as a buzzword, but as a practical shift in how intelligence is distributed.

    Instead of one model waiting for a prompt and producing an answer, you get groups of smaller, purpose-built agents that watch whats happening, reason about it, and act.

    The intelligence is in how they collaborate, not in one giant model doing everything.

    Once you start thinking about it that way, the conversation shifts from What can the model do? to What does the system let the model do? And thats all architecture. From Generative Answers to Ongoing Loops

    Generative AI changed how people interact with software , sure. But the pattern hasnt changed much: question in, answer out, and then everything resets.

    Agentic systems dont operate like that. They stay alert. They respond to signals you didnt explicitly ask about, like changes in customer behavior, shifts in demand, and little anomalies that usually slip past dashboards.

    And the biggest difference is time. These arent one-off tasks. Agents run loops. They observe, decide, try something, and come back when the situation shifts. It looks a lot more like how teams actually work when theyre at their best.

    But none of that coordination works without shared context. If you have one agent basing decisions on unified profiles and another pulling from a stale, duplicated dataset, youre going to get drift. And once agents drift, they
    stop being intelligent and start being unpredictable. Unified Data Isnt Optional Anymore

    Weve all known that fragmented data is annoying. In agentic systems, it becomes dangerous. Agents operate in parallel, and they need the same understanding of customers, products , events everything. Otherwise, you get contradictory decisions that only show up after damage is done.

    A unified, identity-resolved layer becomes the shared memory. Its what keeps agents grounded and lets them collaborate instead of stepping on each other. This isnt a philosophical point. Without that shared memory, agents learn different realities, and your system becomes incoherent fast. Ecosystems, Not Monoliths

    For years, enterprises gravitated toward big, do-everything platforms because they were afraid that stitching systems together would break things. Ironically, agentic AI flips that idea on its head.

    Instead of giant platforms, you get small, specialized agents that talk to each other, almost like microservices, except theyre reasoning, not just processing.

    Heres the catch: its not enough for these agents to simply exchange data.
    They have to interpret the data in the same way. Thats where interoperability becomes a real engineering challenge.

    The APIs matter less than the meaning attached to them. Two agents should receive the same signal and reach the same basic understanding of what it represents.

    Get this wrong and you dont have autonomy you have chaos.

    But when it works, you get an environment where you can add or upgrade agents without every change turning into a rewrite. The system gets smarter over
    time rather than more brittle. Designing for AI from the Beginning

    Many teams today still treat AI as a plug-in, something you add to an
    existing system after everything else is in place.

    That approach just doesnt work with agentic systems. You need data models designed for evolving schemas, governance that can handle autonomous
    behavior, and infrastructure built for feedback loops, not one-time transactions.

    In an AI-first architecture, intelligence isnt a feature. Its part of the plumbing. Data moves in ways that support long-running decisions. Schemas evolve. Agents need context that lasts longer than a single request. Its a different mindset from traditional software design, closer to designing ecosystems than applications. Humans Arent Going Anywhere

    Theres always a worry that agentic AI means people step aside. The reality is sort of the opposite. Agents take on the minute-by-minute decision loops, but humans define the goals, priorities, boundaries, and tradeoffs that make
    those loops meaningful.

    It actually makes oversight easier. Instead of reviewing every action, people look for patterns drift, bias, misalignment and course-correct the system
    as a whole. One person can guide a lot of agents because the job shifts from giving instructions to refining intent.

    Humans bring the judgment. Agents bring the stamina. Where This All Leads

    Agentic AI isnt just the next model trend. Its a shift in how intelligence gets embedded into systems. But autonomy without the right architecture will never produce the outcomes people expect.

    You need unified data so that agents are aligned. You need interoperable systems so agents can communicate. And you need infrastructure designed for a long-lived context and continuous learning.

    If generative AI was about answers, agentic AI is about ongoing intelligence, and that only works if the architecture underneath it is built for the world its operating in.

    Read up on our list of the best data visualization tools .



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    Link to news story: https://www.techradar.com/pro/the-next-phase-of-ai-is-agentic-and-it-starts-wi th-data-architecture


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