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Article: Understanding ML Model Poisoning: How It Happens and How to Detect It

Igor Maljkovic 2026年06月22日 19:00 2 次阅读 来源:InfoQ

In this article, the author explores data poisoning as a threat to machine learning systems, covering techniques such as label flipping, backdoors, clean-label poisoning, and gradient manipulation. The article reviews real-world incidents, discusses the challenges of detecting poisoned data, and presents practical defenses, tools, and operational practices for securing ML training pipelines. By Igor Maljkovic

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