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1 Comment
Argus (Shanghai) Textile Chemicals Co.,Ltd is currently in a long term downtrend where the price is trading 5.4% below its 200 day moving average.
From a valuation standpoint, the stock is 35.2% cheaper than other stocks from the Basic Materials sector with a price to sales ratio of 2.6.
Argus (Shanghai) Textile Chemicals Co.,Ltd's total revenue sank by 1.8% to $215M since the same quarter in the previous year.
Its net income has dropped by 37.8% to $16M since the same quarter in the previous year.
Finally, its free cash flow grew by 149.1% to $11M since the same quarter in the previous year.
Based on the above factors, Argus (Shanghai) Textile Chemicals Co.,Ltd gets an overall score of 2/5.
ISIN | CNE100003F84 |
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CurrencyCode | CNY |
Industry | Specialty Chemicals |
Sector | Basic Materials |
Exchange | SHG |
Dividend Yield | 1.0% |
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Target Price | None |
Beta | 0.22 |
PE Ratio | 30.34 |
Market Cap | 2B |
Argus (Shanghai) Textile Chemicals Co.,Ltd. engages in the research and development, manufacture, and marketing of textile chemicals in China. The company offers dyes for cellulose, polyamide, wool, polyester, and silk; and pretreatment, dyeing, finishing, and printing auxiliaries, as well as enzyme, wool textile chemicals, and optical brightening agents. In addition, the company provides technical support and color services. The company also exports its products to Malaysia, the Philippines, Vietnam, Bangladesh, Pakistan, Turkey, etc. Argus (Shanghai) Textile Chemicals Co.,Ltd. was founded in 1999 and is headquartered in Shanghai, China.
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