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1 Comment
Tae Won Mulsan Co., Ltd is currently in a long term uptrend where the price is trading 41.7% above its 200 day moving average.
From a valuation standpoint, the stock is 35.7% more expensive than other stocks from the Consumer Cyclical sector with a price to sales ratio of 2.0.
Tae Won Mulsan Co., Ltd's total revenue sank by 23.5% to $4B since the same quarter in the previous year.
Its net income has dropped by 70.9% to $107M since the same quarter in the previous year.
Finally, its free cash flow fell by 230.0% to $-661M since the same quarter in the previous year.
Based on the above factors, Tae Won Mulsan Co., Ltd gets an overall score of 1/5.
ISIN | KR7001420009 |
---|---|
Sector | Consumer Cyclical |
Industry | Auto Parts |
Exchange | KO |
CurrencyCode | KRW |
Beta | 0.44 |
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Market Cap | 27B |
PE Ratio | None |
Target Price | None |
Dividend Yield | 5.4% |
Tae Won Mulsan Co., Ltd. engages in the manufacture and sale of engine water pumps and engine surrounding parts for automobiles. The company provides water pumps for farm machines and automobiles; rod and cable type gear shift cover assemblies; shift blocks and front bearing covers for trucks; brackets for transmission mounts; shackles for alternators; EGR adapters; and ECU housing products. It also offers refined phosphate gypsum, gypsum plaster, calcined gypsum, and gypsum resin mortar for use in construction materials. The company was formerly known as Samyang Trading and changed its name to Tae Won Mulsan Co., Ltd. in February 1968. The company was founded in 1955 and is headquartered in Seoul, South Korea.
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