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| Exchange | NASDAQ |
|---|---|
| Sector | Consumer Cyclical |
| CurrencyCode | USD |
| Industry | Auto Parts |
| ISIN | IL0011745804 |
| PE Ratio | None |
|---|---|
| Target Price | 2.275 |
| Market Cap | 127M |
| Beta | 1.43 |
| Dividend Yield | None |
Innoviz Technologies Ltd. manufactures and sells automotive grade LiDAR sensors and perception software to enable safe autonomous driving at a mass scale. The company offers InnovizOne, a solid-state LiDAR sensor designed for automakers and robotaxis, shuttles, trucks, and delivery companies requiring an automotive-grade and mass-producible solution to achieve autonomy. It also provides InnovizTwo Long-Range, a automotive-grade LiDAR sensor solution for various levels of autonomous driving; InnovizTwo Short- to Mid-Range, a automotive-grade LiDAR sensor designed to cover the short- and medium-range vehicles; InnovizThree, third-generation LiDAR platform, designed to deliver range detection with cost efficiency and installation flexibility for behind-the-windshield, rooftop or front grille integration; and perception application, a software application that turns raw point cloud data into perception ready outputs designed to serve as functionally safe software into a vehicle's driving platform stack. The company operates in Europe, the Asia Pacific, the Middle East, Africa, Israel, and North America. It markets and sells its products through a direct sales organization, as well as distribution channels. Innoviz Technologies Ltd. is headquartered in Rosh HaAyin, Israel.
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