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      "text": "Source: J.P. Morgan Asset Management, as of December 31, 2025. 1In pilot with select investors; PM Moneyball initiative underway and in development. IRIS is Integrated Research Insights model. CAS is Consensus Analyst Sentiment model. EFM is Equity Failure Model. JPMAM utilizes Large Language Models (LLMs) internally in an effort to produce a greater level of operational scalability and efficiency across multiple lines on business. The LLMs are not relied on to make investment decision for the portfolio manager. The final investment decision is the responsibility of the portfolio manager. While the intent of LLMs is to provide accurate and comprehensive content to portfolio managers, LLM technology may occasionally generate inaccurate, incorrect, incomplete, misleading, or irrelevant information. As a result, LLM output is treated with the high level of caution and scrutiny by JPMAM.",
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