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CurrencyCode | EUR |
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Exchange | LSE |
Beta | nan |
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Market Cap | None |
PE Ratio | None |
Target Price | None |
Dividend Yield | None |
Legal & General UCITS ETF Plc - L&G ROBO Global Robotics and Automation UCITS ETF is an exchange traded fund launched by GO ETF Management Limited. It is managed by GO ETF Solutions LLP. The fund invests in the public equity markets across the globe. It uses derivatives such as swaps to invest in the stocks of companies operating in the robotics-related and/or automation-related sectors, which include industrial automation software and equipment, components, software and subsystem manufacturing, military unmanned aircraft systems (UAS), defense and space, healthcare robotics and automation products, machine vision and image recognition, agriculture, logistics and material handling automation, machine navigation technology, consumer robotics, microcontrollers, actuation technology, technology manufacturing automation, energy and subsea remotely operated vehicles, 3D printing technology, and sensors, motion processing and voice recognition companies. The fund invests in the stocks of companies across all market capitalizations, with a minimum market capitalization of US $200 million. It seeks to replicate the performance of the ROBO-STOX Global Robotics and Automation UCITS Index, by employing synthetic replication methodology. The fund was formerly known as GO UCITS ETF Solutions Plc - ROBO Global Robotics and Automation GO UCITS ETF. Legal & General UCITS ETF Plc - L&G ROBO Global Robotics and Automation UCITS ETF was formed on October 20, 2014 and is domiciled in Ireland.
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