SubTechniquepersistenceai-attack-stagingATLAS

AML.T0018.000Poison AI Model

What it is

Adversaries may manipulate an AI model's weights to change it's behavior or performance, resulting in a poisoned model. Adversaries may poison a model by directly manipulating its weights, training the model on poisoned data, further fine-tuning the model, or otherwise interfering with its training process. The change in behavior of poisoned models may be limited to targeted categories in predictive AI models, or targeted topics, concepts, or facts in generative AI models, or aim for a general performance degradation.

References

  1. https://atlas.mitre.org/techniques/AML.T0018.000

Related by meaning· 6

Nearest entities by semantic similarity across the cs-graph corpus.

ATLAS
Manipulate AI Model
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Poison Training Data
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AI Agent Tool Poisoning
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Publish Poisoned Models
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Publish Poisoned Datasets
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AI Agent Tool Data Poisoning
Sourced from MITRE ATLAS — Adversarial Threat Landscape for AI Systems. Curated by Adam Lundqvist, SQUR.