When you think of AI (artificial intelligence), the first thought you may have is in regards to games, recreation, and futuristic robots. After all, AI is the next big thing in virtual video games, taking "reality" to a whole new level. However, AI is so much more than that. There has been a lot of hype about AI in the last couple of years. Again, most of it in the form of promises of faster answers, better outcomes, and improved productivity. From advanced machine learning and intelligent apps to digital twins and conversational systems, AI is just breaking out of an emerging state with substantial disruptive potential across all industries, says Gartner. Please don't misunderstand, there have been many examples of advancements in various industries with AI algorithms from predictive analytics in healthcare to cognitive science.
However, a lot of AI development is being spent in the cyber security space, as well it should with the advent of ransomware, sophisticated malware and the like. All the top technology companies are spending millions each year on AI and cyber security -- from Microsoft to Google, from Cisco to Symantec, including the big name anti-virus companies. However, in the last few years, there has been an increase in startups around security tools that tout machine learning and AI (Darktrace, Cylance, AlienVault, etc.). You can look at this trend by checking out Gartner's Top 10 Strategic Technology Trends for 2017, 2016, and 2015.
Robust security strategies are critical
While there is no "silver bullet" when it comes to protecting your company's network (at least not yet), it is important to have a robust, multi-layered security strategy. Unfortunately, those who are becoming most advanced when it comes to AI in terms of security are the ones on the offensive: cyber criminals, says Banking Technology. The way to combat these criminals is to escalate AI defenses. However, nothing is fool proof. There's not enough manpower in the world to make sure networks are 100% secure 100% of the time, especially with the prevalence of a cloud-based infrastructure.
Solid products, knowledgeable technical staff, and end-user training go hand-in-hand. This should include social engineering training and the use of AI/machine learning in your environment. As an example, on top of your traditional firewall and IPS (Intrusion Prevention System), add an industry-proven endpoint monitoring system, preferably one that uses machine learning to identify and prevent bad code from executing. Then, add a tool that gives you a holistic view of your entire network in real time that identifies advanced threats, including those stealthy, unconventional, silent attackers. Be sure that your end-user security training is inclusive, given regularly, and updated often as trends change around social engineering and phishing.
Additional risks in the healthcare realm
The risks with cyber security aren't just financial, although that aspect can certainly be devastating. We've all heard the stories of major retailers and credit card companies getting hacked for stolen account numbers and sensitive private information. However, the threat goes beyond that into the very realm of life and death. We're talking specifically about the healthcare industry. Whereas cyber attackers in years past have struck quickly and loudly as part of a virtual sneak attack, today's cyber criminals are taking it much more slowly and methodically. The focus now is not just on stealing the data, but altering that data without detection, according to CNBC.