
Morgan Stanley Remains a Buy on Prestige Estates Projects Limited (PRESTIGE)
Morgan Stanley analyst Praveen Choudhary maintained a Buy rating on Prestige Estates Projects Limited (PRESTIGE – Research Report) on May 30 and set a price target of INR1,700.00. The company's shares closed last Friday at INR1,484.00.
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According to TipRanks, Choudhary is a 3-star analyst with an average return of 1.8% and a 49.15% success rate. Choudhary covers the Consumer Cyclical sector, focusing on stocks such as Melco Resorts & Entertainment, Galaxy Entertainment Group, and Wynn Macau.
Currently, the analyst consensus on Prestige Estates Projects Limited is a Moderate Buy with an average price target of INR1,825.00, implying a 22.98% upside from current levels. In a report released on May 31, Jefferies also maintained a Buy rating on the stock with a INR1,700.00 price target.
Based on Prestige Estates Projects Limited's latest earnings release for the quarter ending June 30, the company reported a quarterly revenue of INR20.25 billion and a net profit of INR2.33 billion. In comparison, last year the company earned a revenue of INR16.81 billion and had a net profit of INR2.67 billion
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