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QANTM Intellectual Property Limited is currently in a long term uptrend where the price is trading 7.9% above its 200 day moving average.
From a valuation standpoint, the stock is 99.1% cheaper than other stocks from the Industrials sector with a price to sales ratio of 1.2.
QANTM Intellectual Property Limited's total revenue rose by 1.7% to $59M since the same quarter in the previous year.
Its net income has increased by 35.8% to $6M since the same quarter in the previous year.
Finally, its free cash flow grew by 72.0% to $4M since the same quarter in the previous year.
Based on the above factors, QANTM Intellectual Property Limited gets an overall score of 5/5.
CurrencyCode | AUD |
---|---|
Industry | Consulting Services |
Sector | Industrials |
ISIN | AU000000QIP0 |
Exchange | AU |
Beta | 0.61 |
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Market Cap | 113M |
Dividend Yield | 6.9% |
Target Price | 1.72 |
PE Ratio | 15.41 |
QANTM Intellectual Property Limited provides intellectual property services for start-up technology businesses, multinationals, public research institutions, and universities in Australia, New Zealand, Singapore, Malaysia, and Hongkong. The company offers services related to patents, designs, and trademarks. It also provides legal and litigation services, platform-based services, as well as software-based attorney tools. The company offers its services under the Davies Collison Cave, FPA Patent Attorneys, Cotters Patent and Trade Mark Attorneys, Advanz Fidelis IP, and Sortify.tm Ltd brands. QANTM Intellectual Property Limited was founded in 1877 and is based in Melbourne, Australia.
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