KIRAN SYNTEX (India) Alpha and Beta Analysis Overview

KIRANSY-B -- India Stock  

INR 3.50  0.00  0.00%

This module allows you to check different measures of market premium for KIRAN SYNTEX LTD as well as systematic risk associated with investing in KIRAN SYNTEX over a specified time horizon. Please see also Stocks Correlation.
Horizon     30 Days    Login   to change
Run Premiums

KIRAN SYNTEX Market Premiums

α0.00   β0.00
30 days against DJI

KIRAN SYNTEX Fundamentals

 Better Than Average     
 Worse Than Average Compare KIRAN SYNTEX to competition

KIRAN SYNTEX Fundamental Vs Peers

FundamentalsKIRAN SYNTEXPeer Average
Current Valuation11.1 M152.14 B
Shares Outstanding4.25 M1.43 B
Price to Book0.45 times14.44 times
Gross Profit1000 K21.75 B
EBITDA(1.09 M)1.41 B
Net Income(391.89 K)517.71 M
Cash and Equivalents587 K3.89 B

KIRAN SYNTEX Opportunities

KIRAN SYNTEX Return and Market Media

The median price of KIRAN SYNTEX for the period between Mon, Oct 22, 2018 and Wed, Nov 21, 2018 is 3.5 with a coefficient of variation of 0.0. The daily time series for the period is distributed with a sample standard deviation of 0.0, arithmetic mean of 3.5, and mean deviation of 0.0. The Stock did not receive any noticable media coverage during the period.
 Price Growth (%)  

Current Sentiment - KIRANSY-B

KIRAN SYNTEX LTD Investor Sentiment

Macroaxis portfolio users are evenly split in their trading attitude regarding investing in KIRAN SYNTEX LTD. What is your trading attitude regarding investing in KIRAN SYNTEX LTD? Are you bullish or bearish?
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