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NRB Bearings Limited is currently in a long term uptrend where the price is trading 42.0% above its 200 day moving average.
From a valuation standpoint, the stock is 99.7% cheaper than other stocks from the Consumer Cyclical sector with a price to sales ratio of 1.5.
NRB Bearings Limited's total revenue rose by 33.7% to $2B since the same quarter in the previous year.
Its net income has increased by 117.1% to $225M since the same quarter in the previous year.
Finally, its free cash flow grew by 20.9% to $632M since the same quarter in the previous year.
Based on the above factors, NRB Bearings Limited gets an overall score of 5/5.
CurrencyCode | INR |
---|---|
ISIN | INE349A01021 |
Industry | Auto Parts |
Sector | Consumer Cyclical |
Exchange | NSE |
Dividend Yield | 1.4% |
---|---|
PE Ratio | 23.05 |
Beta | 0.63 |
Target Price | 201 |
Market Cap | 14B |
NRB Bearings Limited manufactures and sells ball and roller bearings for original equipment manufacturers in India and internationally. The company offers a range of friction solutions comprises drawn cup needle bearings, cylindrical roller bearings, polyamide and steel needle bearing cages, drawn cup cylindrical roller bearings, full-complement needle bearings, special ball bearings, formed strip cages for heavy gearboxes, tapered and spherical roller bearings, and planetary shafts. It also provides crankpins, thrust bearings, rocker arm bearings, other special pins. It serves the automotive industry, as well as mobility applications. NRB Bearings Limited was incorporated in 1965 and is based in Mumbai, India.
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