Get yourself trained on Data Loss Prevention with this Online Training Data Loss Prevention.
Online Training Data Loss Prevention
Data Loss Prevention (DLP) is a computer security term referring to systems that identify, monitor, and protect data in use, data in motion, and data at rest. Experts accomplish this through deep content inspection, contextual security analysis of transaction, and with a centralized management framework. This course will begin with a discussion of topics relating to Data Loss Prevention such as Data Loss, Data Recovery, Data Categories, and the Data Life cycle. Computer Security, Cloud Security, and Cyber Security Standards are other topics that will be included in this course.
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Investing in yourself through Learning
As a society, we spend hundreds of billions of dollars measuring the return on our financial assets. Yet, at the same time, we still haven’t found convincing ways of measuring the return on our investments in developing people.
And I get it: If my bank account pays me 1% a year, I can measure it to the penny. We’ve been collectively trained to expect neat and precise ROI calculations on everything, so when it’s applied to something as seemingly squishy as how effectively people are learning in the workplace, the natural inclination is to throw up our hands and say it can’t be done. But we need to figure this out. In a world where skills beat capital, the winners and losers of the next 30 years will be determined by their ability to attract and develop great talent.
Fortunately, corporate learning & development (L&D), like most business functions, is evolving quickly. We can embrace some level of ambiguity and have rigor when measuring the ROI of learning. It just might look a little different than an M.B.A. would expect to see in an Excel model.