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When AI Agents Forget What They Saw: The Goal Drift Problem in Video Research
Artificial Intelligence   Latest   Machine Learning

When AI Agents Forget What They Saw: The Goal Drift Problem in Video Research

Last Updated on January 20, 2026 by Editorial Team

Author(s): Kaushik Rajan

Originally published on Towards AI.

Why more autonomy doesn’t always mean better performance, and what the first video deep research benchmark reveals about the limits of agentic AI

You’re watching a museum tour video. Someone asks: “What’s the registration number of the closest ‘don’t miss’ exhibit to the main entrance?” You’d need to identify which museum it is from visual cues, find that museum’s official visitor guide online, cross-reference the floor map with the recommended exhibits list, and extract the specific catalog number. No single source contains the answer.

When AI Agents Forget What They Saw: The Goal Drift Problem in Video Research

Credit: Generative AI (Google Nano Banana Pro). Prompted by the author.

The article discusses the limitations of Multimodal Large Language Models (MLLMs) in video research, revealing the first benchmark designed to evaluate how these models handle complex questions that require both visual and web-based reasoning. Researchers from multiple institutions found that increasing autonomy in these models does not consistently lead to better outcomes due to challenges in maintaining visual cues during multi-round reasoning and search processes. Their findings suggest the need for more sophisticated AI design to tackle real-world tasks effectively.

Read the full blog for free on Medium.

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