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1 Comment
Zhejiang Jinlihua Electric Co., Ltd is currently in a long term uptrend where the price is trading 34.8% above its 200 day moving average.
From a valuation standpoint, the stock is 2.0% more expensive than other stocks from the Technology sector with a price to sales ratio of 8.2.
Zhejiang Jinlihua Electric Co., Ltd's total revenue sank by 28.0% to $34M since the same quarter in the previous year.
Its net income has dropped by 389.8% to $-4M since the same quarter in the previous year.
Finally, its free cash flow fell by 142.3% to $-6M since the same quarter in the previous year.
Based on the above factors, Zhejiang Jinlihua Electric Co., Ltd gets an overall score of 1/5.
Exchange | SHE |
---|---|
CurrencyCode | CNY |
ISIN | CNE100000NB6 |
Sector | Technology |
Industry | Electronic Components |
PE Ratio | 58.1 |
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Target Price | 16.02 |
Market Cap | 2B |
Beta | 0.51 |
Dividend Yield | None |
Jinlihua Electric Co., Ltd. engages in the research, development, manufacture, and supply of functional glass and insulation products for use in HV, UHV, and EHV transmission lines in China and internationally. It offers standard suspension, fog type suspension, open air profile type, and cap and pin type products. In addition, the company engages in the production of radio and television programs; production and performance of dramas; and other film and television dramas. The company was formerly known as Zhejiang Jinlihua Electric Co., Ltd. and changed its name to Jinlihua Electric Co., Ltd. Jinlihua Electric Co., Ltd. was founded in 2003 and is based in Jinhua, China.
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