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  "documentTitle": "2025 Air Street Capital The State of AI Report 2025",
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  "notes": "The chart shows a clear upward trend in AI incidents from 2022 to 2025 (YTD), with a breakdown between Language Models and Other GenAI.",
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      "text": "Incidents involving GenAI models follow steeper trends, lining up with the widespread diffusion of the technology.",
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      "text": "Broader misuse likely goes unreported as attribution becomes more difficult, open models continue to proliferate, and many labs maintain lax mitigation and transparency policies.",
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      "text": "While a large # of reported incidents involve deepfakes, LLM misuse continues to rise. Anecdotally, incidents are becoming less innocuous over time (plagiarism and hallucinations -> cyber attacks and weapon creation).",
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      "text": "OpenAI has shared multiple reports detailing the disruption of malicious uses of their systems. Included were cases stemming from North Korea, China, Iran, and Russia, sometimes involving state-affiliated actors. Of the threats mentioned, malicious actors attempted to leverage OpenAI's models during illicit activities like child exploitation, covert influence operations, malicious cyber activity, social engineering, cyber espionage, propaganda generation, and credential harvesting.",
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