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Exchange | SG |
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CurrencyCode | USD |
ISIN | None |
Sector | Consumer Cyclical |
Industry | Auto Manufacturers |
Market Cap | 9B |
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PE Ratio | None |
Beta | 1.74 |
Target Price | 4.8668 |
Dividend Yield | None |
NIO Inc. designs, develops, manufactures, and sells smart electric vehicles in China, Europe, and internationally. It offers five and six-seater electric SUVs, as well as smart electric sedans. The company also offers power solutions, including Power Home, a home charging solution; Power Swap, a battery-swapping service; Power Charger and Destination Charger; Power Mobile, a mobile charging service through charging vans; Power Map, an application that provides access to a network of public chargers and their real-time information; and One Click for power valet service. In addition, it provides repair, maintenance, and bodywork services through its service centers and authorized third-party service centers; statutory and third-party liability insurance, and vehicle damage insurance through third-party insurers; repair and maintenance; courtesy vehicle; data packages; and auto financing and financial leasing services. Further, the company is involved in the provision of energy and service packages to its users; design and technology development activities; manufacture of electric powertrains, battery packs, and components; and sales and after-sales management activities. The company was formerly known as NextEV Inc. and changed its name to NIO Inc. in July 2017. NIO Inc. was incorporated in 2014 and is based in Shanghai, China.
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