Before we try to explain how automation and artificial intelligence can integrate productively, it might help to define their differences. Many people no doubt confuse the two, and that isn’t helped by the way the media often conflates the two.
Copyright by www.bdtechtalks.com
First off, “automation” involves the application of technologies for carrying out processes with minimal human intervention. Robotics and software are forms of automation, but they don’t necessarily include AI.
Artificial intelligence is the simulation of human intelligence by machines. Some see “artificial intelligence” as a monolith, but it’s really a catch-all term for several different capabilities.
Artificial Narrow Intelligence (ANI), for instance, is highly specialized, like a chess program that can beat a human being but will never be able to operate a light switch. There are good examples of ANI now available for commercial usage in natural language processing and machine learning. Artificial General Intelligence (AGI) is “strong” AI, like IBM’s Blue Brain project that simulated—but still in a limited way—human problem-solving and learning processes. Artificial Superintelligence (ASI) is the Ultron or HAL 9000-level stuff of movie nightmares, which doesn’t yet exist, and no one yet knows if it will.
The benefits of teaming the two
When automation and artificial intelligence come together in present-day usage, there are serious benefits to be had. So let’s examine some of the ways they complement each other.
1. Like we said: AI is a form of automation, but some types of automation are entirely devoid of AI. Workflow automation, for instance, can fill in documents and make recommendations without AI. But when AI is added to a workflow solution, a human contributor or gatekeeper can be subtracted from the equation, so that AI-empowered step or steps can be completed in zero time.
2. Non-AI software can automate tasks where it’s highly certain what a human would do or should have done, like forwarding a document for a required review. It does this via conditional logic: the structured data captured in a certain field will dictate what the software does next. By adding AI, though, automation can address more complex situations where unstructured data—which makes up 80-90 percent of the data in most organizations—is involved. An AI risk management platform, for instance, will be able to analyze unstructured data to recognize risks and then recommend a mitigation action. Non-AI software would not have been able to do this, or would have needed an enormous number of fields to be filled out by human users.
3. AI can be self-training, thanks to machine learning. By analyzing unstructured data and through repetition of processes, it can hone its ability and efficiency, which in turn optimizes the automated processes it’s powering.
4. Natural language processing (NLP) is another facet of AI that can benefit automated systems. An example would be sentiment analysis of NPS responses, where an AI tool would read those responses and identify where there are potential issues, or extract insights you can leverage for your purposes. A platform like Qandai, for instance, automates the process of reviewing sales calls in order to call out insights from those calls. […]
Source: SwissCognitive