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Heads Up: Why Sensitivity Matters in Many‑Shot Multimodal ICL

Long prompts are easy to understand. They are also expensive, slow, and—in multimodal systems—very quickly ridiculous. That is the practical tension behind many-shot multimodal in-context learning. In principle, giving a vision-language model more examples should help it recognise the task. In practice, every image costs tokens, every additional demonstration adds latency, and open-source large multimodal models do not generally enjoy infinite context windows. The business version of the problem is familiar: you want a model to adapt to a specialised workflow, but you do not want to fine-tune it every week, pay for swollen prompts forever, or discover that the “cheap” approach now requires a larger GPU. ...

November 15, 2025 · 15 min · Zelina