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Bloom Energy Corporation is currently in a long term downtrend where the price is trading 9.1% below its 200 day moving average.
From a valuation standpoint, the stock is 69.4% cheaper than other stocks from the Industrials sector with a price to sales ratio of 4.8.
Bloom Energy Corporation's total revenue rose by 112.8% to $249M since the same quarter in the previous year.
Its net income has increased by 78.3% to $-27M since the same quarter in the previous year.
Finally, its free cash flow fell by 1462.3% to $-24M since the same quarter in the previous year.
Based on the above factors, Bloom Energy Corporation gets an overall score of 3/5.
Sector | Industrials |
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Industry | Electrical Equipment & Parts |
ISIN | US0937121079 |
CurrencyCode | EUR |
Exchange | F |
Target Price | 30.73 |
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Dividend Yield | 0.0% |
Beta | 2.89 |
PE Ratio | None |
Market Cap | 4B |
Bloom Energy Corporation designs, manufactures, sells, and installs solid-oxide fuel cell systems for on-site power generation in the United States and internationally. The company offers Bloom Energy Server, a solid oxide technology that converts fuel, such as natural gas, biogas, hydrogen, or a blend of these fuels, into electricity through an electrochemical process without combustion. It serves to data centers, retailers, hospitals, farming, semiconductors, and other manufacturing sectors. The company was formerly known as Ion America Corp. and changed its name to Bloom Energy Corporation in 2006. Bloom Energy Corporation was incorporated in 2001 and is headquartered in San Jose, California.
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