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ArtificialIntelligence (AI), and particularly LargeLanguageModels (LLMs), have significantly transformed the search engine as we’ve known it. With Generative AI and LLMs, new avenues for improving operationalefficiency and user satisfaction are emerging every day.
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Yet, theyre blissfully unaware of OAuth abuse, an apps inappropriate data read-write policies, or potentially onerous renewal or cancellation terms. Some might aim to compromise sensitive corporate data or even introduce security vulnerabilities. Data silos and no backups Another operational risk is related to corporate data.
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