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1 Comment
Zhejiang Narada Power Source Co., Ltd is currently in a long term downtrend where the price is trading 4.2% below its 200 day moving average.
From a valuation standpoint, the stock is 80.2% cheaper than other stocks from the Industrials sector with a price to sales ratio of 1.0.
Zhejiang Narada Power Source Co., Ltd's total revenue rose by 31.6% to $3B since the same quarter in the previous year.
Its net income has increased by 311.6% to $163M since the same quarter in the previous year.
Finally, its free cash flow fell by 168.3% to $-155M since the same quarter in the previous year.
Based on the above factors, Zhejiang Narada Power Source Co., Ltd gets an overall score of 3/5.
Sector | Industrials |
---|---|
Industry | Electrical Equipment & Parts |
ISIN | CNE100000NC4 |
CurrencyCode | CNY |
Exchange | SHE |
Market Cap | 18B |
---|---|
PE Ratio | None |
Target Price | 30 |
Dividend Yield | 0.0% |
Beta | 0.36 |
ZHEJIANG NARADA POWER SOURCE Co. , Ltd. engages in the research, development, manufacture, sale, and service of lithium-ion batteries and systems, lead storage batteries and systems, fuel cells, and lead and lithium resource renewable products. It offers lithium-ion batteries and modules and battery packs; iron phosphate lithium batteries, modules, and battery packs; electric boxes, battery cabinets, software management systems, etc.; and communication backup, new energy storage facilities, power frequency regulation and peak shaving, and valley filling energy storage solutions. The company was founded in 1994 and is headquartered in Hangzhou, China.
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