Legg Mason Partners Fund Quote

QLMGTX Fund  USD 13.82  0.08  0.58%   

Performance

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Legg Mason is trading at 13.82 as of the 2nd of January 2025; that is 0.58% down since the beginning of the trading day. The fund's open price was 13.9. Legg Mason has 50 percent odds of going through some form of financial distress in the next two years and has generated negative returns to investors over the last 90 days. The performance scores are derived for the period starting the 3rd of December 2024 and ending today, the 2nd of January 2025. Click here to learn more.

Legg Fund Highlights

Update Date31st of December 2024
Legg Mason Partners [QLMGTX] is traded in USA and was established 2nd of January 2025. The fund is not categorized under any group at this time.
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Legg Mason Partners Risk Profiles

Legg Mason Partners Technical Analysis

Transformation
The output start index for this execution was zero with a total number of output elements of sixty-one. Legg Mason Partners Inverse Tangent Over Price Movement function is an inverse trigonometric method to describe Legg Mason price patterns.

Legg Mason Against Markets

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Legg Mason financial ratios help investors to determine whether Legg Fund is cheap or expensive when compared to a particular measure, such as profits or enterprise value. In other words, they help investors to determine the cost of investment in Legg with respect to the benefits of owning Legg Mason security.
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