Cognitive automation technology works in the realm of human reasoning, judgement, and natural language to provide intelligent data integration by creating an understanding of the context of data.
In real-world use-cases, cognitive automation is a highly predictable and robust combination of:
But don’t think that it is a black box of bleeding-edge technology! It is simply the bringing-together of fully baked solutions into a single platform.
Cognitive automation is a deep-processing and integration of complex documents and data that requires explicit training by a subject matter expert.
Robotic process automation RPA solutions will always arrive at the need for deeper integration of unstructured data that bots can’t process.
So, for example, RPA can’t:
You immediately see the value of using an automation tool after general processes and workflows have been automated. With RPA adoption at an all-time high (and not even close to hitting a plateau), now is the time business leaders are looking to further automation initiatives.
In a Deloitte Global RPA survey:
As organizations begin to mature their automation strategies, demand for increased tangible value will rise and the addition of intelligent automation tools will be required.
The good news is that you don’t have to build automation solutions from scratch. While there are many data science tools and well-supported machine learning approaches, combining them into a unified (and transparent) platform is very difficult.
Built-in transparency is one of the key drivers of using pre-built cognitive technology. When you train a software to perform the work of a subject matter expert, you must be absolutely certain how and why it is making decisions.
Cognitive automation mimics the way humans work.
Take contracts, for example:
A great example of how it interacts within an RPA deployment is in mortgage / loan processing:
The information contained on important forms, like closing disclosures, isn’t always laid out the same way. As a result, humans are often used to hand-key or manually review information.
But RPA in mortgage processing is a great solution to save all of that manual work. It will automate data integration between multiple software systems and databases that haven’t been engineered to “talk to each other.”
During loan origination there are many opportunities for automation. There’s:
And that’s all before the loan goes into the process of being bought and sold.
Imagine RPA bots transporting hundreds of pieces of information to multiple software systems. It’s easy to see that the scene is quite complex and requires perfectly accurate data. You can also imagine that any errors are disruptive to the entire process and would require a human for exception handling.
One of the most important documents in loan processing – the closing disclosure – has become extremely difficult to extract information from. It contains critical information that is necessary for post-close audits and validating loan information for accuracy.
Cognitive automation should be used after core business processes have been optimized for RPA. Getting an RPA implementation into production is hard enough on its own, so further automation that requires advances in machine learning and data science techniques should be considered after initial automation requirements have been met.
A further argument for delaying the use of automation is that it is typically self-funded by early RPA wins. Trying to do too much at once is a recipe for disaster and analysis paralysis.