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1 Comment
Supercomnet Technologies Bhd is currently in a long term downtrend where the price is trading 18.3% below its 200 day moving average.
From a valuation standpoint, the stock is 52.6% more expensive than other stocks from the Other sector with a price to sales ratio of 9.8.
Based on the above factors, Supercomnet Technologies Bhd gets an overall score of 0/5.
| ISIN | MYQ0001OO006 |
|---|---|
| Exchange | KLSE |
| CurrencyCode | MYR |
| Sector | Industrials |
| Industry | Electrical Equipment & Parts |
| Target Price | 0.675 |
|---|---|
| PE Ratio | 17.0 |
| Market Cap | 432M |
| Dividend Yield | 4.0% |
| Beta | 0.15 |
Supercomnet Technologies Berhad, together with its subsidiaries, manufactures and sells PVC compounds, cables and wires, and data control switches in Malaysia, the Dominican Republic, the United States, Denmark, Singapore, Mexico, Hong Kong, Germany, Taiwan, and internationally. It offers electrical wires and cables, PVC pellets, copper and jumper wires, OEM waterproof connectors, and automotive wires, as well as wire harnesses and fuel tanks. The company also engages in the manufacturing of medical-grade cables and devices; manufacturing and assembly of wires, cables, and automotive-related components; and property-related activities. It exports its products. The company was formerly known as Supercomal Technologies Berhad and changed its name to Supercomnet Technologies Berhad in July 2009. Supercomnet Technologies Berhad was incorporated in 1990 and is headquartered in Sungai Petani, Malaysia.
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