SBI Magnum (India) Financial Diagnostics

F00000PDDG -- India Fund  

INR 12.88  0.07  0.01%

The current investor indifference towards the small price fluctuations of SBI Magnum could raise concerns from investors as the entity closed today at a share price of 12.81 on 1.000 in volume. The fund managers did not add any value to SBI Magnum MIP investors in December. However, most investors can still diversify their portfolios with SBI Magnum to hedge your portfolio against high-volatility market scenarios. The fund standard deviation of daily returns for 30 days (very short) investing horizon is currently 0.0. The very small Fund volatility is a good signal to investors with longer term investment horizons. This diagnostics interface makes it easy to digest most current publicly released information about SBI Magnum as well as get updates on important government artifacts including earning estimates, SEC corporate filings and announcements. This module also helps to analysis SBI Magnum price relationship with some important fundamental indicators such as market cap and management efficiency. Additionally see Investing Opportunities.

SBI Magnum Note

The fund retains about 78.52% of assets under management (AUM) in cash. SBI Magnum MIP last dividend was 0.04 per share.

SBI Magnum MIP Alerts

SBI Magnum MIP is not yet fully synchronised with the market data
The fund retains about 78.52% of its assets under management (AUM) in cash

Top Fund Constituents

SBI Magnum Technical and Predictive Indicators

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Additionally see Investing Opportunities. Please also try Watchlist Optimization module to optimize watchlists to build efficient portfolio or rebalance existing positions based on mean-variance optimization algorithm.