Close Menu
geekfence.comgeekfence.com
    What's Hot

    The new growth playbook: capturing non-linear revenue growth through value-linked operating models 

    April 10, 2026

    Agents don’t know what good looks like. And that’s exactly the problem. – O’Reilly

    April 10, 2026

    Best agentic AI platforms: Why unified platforms win

    April 10, 2026
    Facebook X (Twitter) Instagram
    • About Us
    • Contact Us
    Facebook Instagram
    geekfence.comgeekfence.com
    • Home
    • UK Tech News
    • AI
    • Big Data
    • Cyber Security
      • Cloud Computing
      • iOS Development
    • IoT
    • Mobile
    • Software
      • Software Development
      • Software Engineering
    • Technology
      • Green Technology
      • Nanotechnology
    • Telecom
    geekfence.comgeekfence.com
    Home»Artificial Intelligence»Spotting and Avoiding ROT in Your Agentic AI – O’Reilly
    Artificial Intelligence

    Spotting and Avoiding ROT in Your Agentic AI – O’Reilly

    AdminBy AdminMarch 26, 2026No Comments5 Mins Read5 Views
    Facebook Twitter Pinterest LinkedIn Telegram Tumblr Email
    Spotting and Avoiding ROT in Your Agentic AI – O’Reilly
    Share
    Facebook Twitter LinkedIn Pinterest Email



    The following article originally appeared on Q McCallum’s blog and is being republished here with the author’s permission.

    Generative AI agents and rogue traders pose similar insider threats to their employers.

    Specifically, we can expect companies to deploy agentic AI with broad reach and insufficient oversight. That creates the conditions for a particular flavor of long-running problem, which in turn creates a novel risk exposure for both the companies in question and for anyone doing business with them. The bot and the rogue trader are able to inflict sizable, sometimes existential, damage to the firms that employ them.

    The key difference is the scope: Rogue traders operate in investment banks, while agentic AI will be deployed to a wider array of companies and industry verticals. Agentic AI may therefore create a greater number of problems than rogue traders and put a greater amount of capital at risk.

    I’m naming this risk exposure ROT—Rogue Operator Threat—and this document is a brief explainer on what it is and how to address it.

    (I almost called it RAT, with the A for “agentic,” but then realized that it would apply to any kind of automated system. So I broadened the scope to “operator.”)

    To set the stage, let’s take a trip to the trading floor:

    Understanding the rogue trader

    Rogue trader scandals follow the same storyline:

    • A trader accrues losses due to bad trades.
    • They hide those losses while placing new trades in an attempt to recover.
    • The new trades also lose money, digging a deeper hole.
    • Repeat.

    This cycle continues until they’re caught, at which point the bank is sitting on a large loss (sometimes into the billions of dollars) and the trader faces legal repercussions.

    The story of Barings Bank offers a concrete example. Trader Nick Leeson had been logging fraudulent trades, over a stretch of three years, in an attempt to cover his mounting losses. This only came to light when the Kobe earthquake shifted markets against his most recent positions and the losses were no longer possible to hide. Leeson’s £800M ($1.3B) hole drove Barings to bankruptcy just three days later.

    This is when you’ll ask: How could a professional trading operation let so many bad trades slip through undetected? How could a trader falsify records? Aren’t trading floors high-tech operations, full of electronic audit trails?

    And the answer is: It’s complicated.

    Trading operations do keep records, yes. But no system is perfect. Each time a rogue trading scandal comes to light, it turns out that there were loopholes in risk controls. A sufficiently motivated trader—especially one desperate to hide their mistakes—found and exploited these loopholes, continuing their losing streak in plain sight until they could bring in real money to backfill the fake records.

    That “until” never happened, though. Which is why their employers then faced financial, reputational, and sometimes legal troubles.

    The AI agent’s ROT threat

    Similar to a trader, an AI agent operates on behalf of its parent business and is given room to operate independently so it can accomplish its tasks.

    The risk is that, in the rush to deploy agentic AI, these companies will likely grant the bots more leeway than is necessary. We’ve already seen cases in which bots have been able to delete emails and wipe a production database. And there are no doubt other stories that haven’t made it into the news.

    Those issues were at least caught in real time. Companies facing ROT are exposed to additional longer-running problems in which the bot is able to accrue losses or inflict greater damage over an extended period. In those cases the problems will only be uncovered by accident and/or when it’s too late.

    Consider, for example, an agent that creates false data records to reflect (nonexistent) sales orders. It’s possible for this to run until some external event, such as investor due diligence or a budget review, forces someone to double-check those records against reality.

    Avoiding ROT: Mitigating the threat

    How can you narrow your downside risk exposure to ROT? Preventative measures are key. Strong risk controls, narrow scope of authority, and monitoring can catch rogue operator problems long before they’ve metastasized into an existential threat.

    In light of rogue trader scandals, trading shops have been known to tighten risk controls and also separate duties to create a system of checks and balances. (This inhibits traders from logging their own fake trades.) Companies also require traders to take time off, as fraudulent activity may surface when the perpetrator isn’t around every day to keep the system running.

    Adapting these ideas to agentic AI, a company could monitor and limit the scope of the bot’s activity (say, requiring human approval to place more than 10 orders an hour). It could also periodically purge the agent’s memory so it doesn’t accumulate too many evolved behaviors, or swap in completely new bots to pick up where the previous one had left off. And per my usual refrain of “never let the bots run unattended,” this company could employ people to cross-check everything the bot does. Trust, but verify.

    This will not prevent the AI agent from making mistakes. But guardrails and sufficiently frequent checks should limit the scope of the bot’s damage. As with the rogue trader, the ROT problem isn’t about a single error; it’s about letting the errors grow out of control, undetected.



    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email

    Related Posts

    Best agentic AI platforms: Why unified platforms win

    April 10, 2026

    Is it too late to start learning AI and machine learning in my 30s or 40s?

    April 9, 2026

    Posit AI Blog: Deep Learning and Scientific Computing with R torch: the book

    April 8, 2026

    Enabling agent-first process redesign | MIT Technology Review

    April 7, 2026

    Engineering Storefronts for Agentic Commerce – O’Reilly

    April 6, 2026

    Evaluating alignment of behavioral dispositions in LLMs

    April 5, 2026
    Top Posts

    Understanding U-Net Architecture in Deep Learning

    November 25, 202527 Views

    Hard-braking events as indicators of road segment crash risk

    January 14, 202624 Views

    Redefining AI efficiency with extreme compression

    March 25, 202622 Views
    Don't Miss

    The new growth playbook: capturing non-linear revenue growth through value-linked operating models 

    April 10, 2026

    For years, the software and services industries operated within a clear division of roles: software defined what could…

    Agents don’t know what good looks like. And that’s exactly the problem. – O’Reilly

    April 10, 2026

    Best agentic AI platforms: Why unified platforms win

    April 10, 2026

    Launching S3 Files, making S3 buckets accessible as file systems

    April 10, 2026
    Stay In Touch
    • Facebook
    • Instagram
    About Us

    At GeekFence, we are a team of tech-enthusiasts, industry watchers and content creators who believe that technology isn’t just about gadgets—it’s about how innovation transforms our lives, work and society. We’ve come together to build a place where readers, thinkers and industry insiders can converge to explore what’s next in tech.

    Our Picks

    The new growth playbook: capturing non-linear revenue growth through value-linked operating models 

    April 10, 2026

    Agents don’t know what good looks like. And that’s exactly the problem. – O’Reilly

    April 10, 2026

    Subscribe to Updates

    Please enable JavaScript in your browser to complete this form.
    Loading
    • About Us
    • Contact Us
    • Disclaimer
    • Privacy Policy
    • Terms and Conditions
    © 2026 Geekfence.All Rigt Reserved.

    Type above and press Enter to search. Press Esc to cancel.