From the course: CompTIA SecAI+ (CY0-001) Cert Prep
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Data minimization
From the course: CompTIA SecAI+ (CY0-001) Cert Prep
Data minimization
Data minimization is the principle of collecting, using, and keeping only the minimum amount of data needed for a specific purpose. It is one of the most effective ways to reduce security risks and stay compliant with privacy laws. If an organization never collects unnecessary data, that data cannot be stolen, leaked, or misused later. The principle of data minimization is especially important when collecting training data. During this stage, teams should carefully decide how much detail is truly necessary for the model's purpose. For example, a language model built to check grammar does not need to include full names in its training sentences. It only requires a text. By removing unnecessary identifiers, organizations can protect privacy and reduce the risk of exposure if the data set is compromised. Data minimization also applies to the information included in prompts. When an AI assistant receives a question, it might need additional context, such as user history or location, to…
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Contents
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The AI lifecycle1m 39s
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Business alignment in the AI lifecycle1m 43s
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Data collection2m 20s
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Data preparation3m 15s
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Model development and selection2m 13s
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Model evaluation and validation2m 29s
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Model deployment and integration3m 25s
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Monitoring and maintenance3m 19s
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Manipulating application integrations4m 8s
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AI supply chain attacks2m 4s
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Insecure plug-in design2m 9s
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Insecure output handling1m 23s
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Output integrity attacks2m 8s
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Model denial of service1m 31s
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Excessive agency1m 33s
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Overreliance1m 34s
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AI hallucinations1m 4s
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Monitoring prompts and responses2m 51s
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Log monitoring4m 30s
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Rate and cost monitoring5m 1s
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Auditing for AI hallucinations3m 33s
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Auditing for accuracy3m 29s
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Auditing for bias and fairness4m 35s
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Auditing access and security compliance3m 48s
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Responsible AI5m 29s
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AI risks2m 23s
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Introduction of bias2m 37s
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Accidental data leakage2m 53s
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Reputational loss2m 11s
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Accuracy and performance of the model2m 22s
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Intellectual property risks3m 31s
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Autonomous systems2m 27s
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Shadow IT and shadow AI1m 48s
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Awareness training2m 21s
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