Understanding Intelligent Automation (IA)

Posted by
Check your BMI

In the area of computer intelligence where we have robotics, machine learning, artificial intelligence, etc. There is a new game-changing concept that is so profound that industries are already finding a use for it and it is paying off. This new concept is called Intelligent Automation (IA).

The content of this article is inspired by the Amazon bestseller book “Intelligent Automation.”

SwissCognitive Guest Blogger: Pascal Bornet, Chief Data Officer, Aera Technology, Author of the bestselling book “Intelligent Automation”


 

toonsbymoonlight
Discussions with heads of global organizations as well as research, and experience of experts show that IA is establishing itself as a future key driver of competitive relevance and enterprise efficiency. This is why IA experts are convinced the concept can provide solutions to several urgent issues in the world right now such as improving our planet, education, and life-saving measures. The impact of IA is becoming more prevalent, and that saw the concept selected by Gartner as the number one tech trend in 2020.

What is IA?

The concept of Intelligent Automation otherwise known as Hyperautomation leverages the new-gen software-based automation, which blends technologies and methodologies to implement business processes on automation for knowledge workers. This is achieved through IA imitating the skills used by knowledge workers to execute their work. All these are done to attain a business outcome via purposeful redesigning of automation carried out with little or no human oversight. The end game is cost reduction, which improves process speed, optimization of decision outcomes, improved process resilience, and improved quality and compliance. In the end, businesses and organizations will see an increase in revenues and enhanced employee and customer satisfaction.

Who are the knowledge workers?

Who are the knowledge workers that IA is purposefully designed for? For starters, knowledge workers’ main currency is the knowledge they possess. We have examples like pharmacists, designers, programmers, architects, lawyers, physicians, engineers, public accountants, scientists. Any worker that has to “think for a living” is considered a knowledge worker. This type of worker is mainly domiciled in the service industries. A knowledge worker is information-based compared to manual labor that is material-based and mainly domiciled in the manufacturing industries.

Where does IA feature here? We already know the importance of industrial automation to the manufacturing process. We can consider IA the “white collar” version of industrial automation. IA can be used to supplement the job of a knowledge worker such as call center agents, financial controllers, etc.

Let us break down what IA does specifically for a knowledge worker. Imagine IA as a digital worker created to imitate the activities of a knowledge worker to deliver the same outcome as a human would. It mimics all the human business processes, which is a succession of tasks by reproducing the human capabilities of reading, speaking, learning, hearing, seeing, acting, and reacting to produce the same business processes as a knowledge worker.

The synergy between IA and humans

IA creates a synergy by merging the software-based workforce with the human workforce. On the task spectrum, IA shoulders a load of executing tedious, low value, and monotonous tasks like processing and digitizing paper invoices, reconciling data, etc. IA equips a worker with what we can call superhuman abilities like the ability to generate insights from millions of analyzed data done in just a few minutes. That is on a human level is virtually impossible to do.

The uniqueness of IA

How is it that a concept so recent that its name was only created in 2017 by IEEE has witnessed a rapid expansion and is expected to have a lasting impact on us? We believe the answer lies in its unique features, which are listed below:

  • The IA pools together new technologies, most of which are recently developed in the last decade.
  • The application of several IA functionalities is universal. They are applicable across several business functions like finance, sales, etc., and industries such as retail, banking, among others.
  • IA programs are scalable. Once developed, scaling can be carried out immediately and infinitely at no added cost.
  • Its availability is unmatched; IA can deliver 24/7.
  • IA is economically viable and reliable. It gives the same results based on settings repeatedly at a reasonable cost. In less than a year, the program will normally generate payback on the initial investment.

AI and IA, two sides of the same coin?

Here comes the inevitable question. Is Intelligent Automation (IA) any different from Artificial Intelligence (AI)? Are they not just two sides of the same coin? Well, in the world of computer intelligence, laying down the differences between robotics, AI, IA, among others is a very complicated process.

The line between is so blurry that they can sometimes overlap due to the continuous evolution, emergence, and convergence of these concepts. However, that is not to say there are no areas where there are clear demarcations.

For the purpose of clarity, a few key anchor points are drawn using the analysis of the survey of the opinions of more than 200 IA experts as well as our experience in IA. These are the main anchor points:

  • AI and IA –Since IA has to do with the automation of knowledge work that is the area where AI and IA interrelate. That means IA comprises all use cases of AI in all industries excluding industries like fundamental research, arts, gaming, or any other that is not information-based.
  • For robotics –physical robotics utilized in the manufacturing industries are not classified as part of IA. It only covers software-based robots.
  • Lastly, under workflow, business process management, and cloud; only programs or platforms that exhibit a form of intelligence fall under the class of IA. Programs that have limited capabilities to process end-to-end tasks and offer little insight into business processes are not included.

The unfolding potential of IA

The adoption rate of this phenomenon is already significant to the extent that a recent survey of world business leaders shows that 86% of them believe they must implement IA in the next five years to stay competitive. According to a survey by Gartner, 42% of CEOs have embarked on the digital transformation process already with 56% reporting gains from the application.
Due to the uniqueness of IA, in the next five years, experts believe that it is very likely to reach a sophistication and adoption level that took more than 200 years for industrial automation to achieve. A Deloitte survey already indicated that the adoption rate for IA is more than 50% and the rate is predicted to jump to over 70% in two years. If it continues at this rate, we could see a near-global adoption level achieved in the next five years. Despite being a new concept, IA is progressing very rapidly in terms of capabilities.


About the author:

Pascal Bornet is a recognized global expert, thought leader, and pioneer in the field of Intelligent Automation (IA). Author of the best-seller book “Intelligent Automation”, and member of the Forbes Technology Council, he received multiple awards in the fields of technology and artificial intelligence.

He is also a senior executive with 20+ years of experience leading digital projects for renowned companies such as Mckinsey and Ernst & Young (EY). He is currently leading Aera Technology, an innovative startup. In addition, he is a Board Member and Senior Advisor for several organizations, startups, and charities.

He published articles in Forbes, Bloomberg, McKinsey Quarterly, Japan Times, Business Times, and several other reference publications. He is an influencer with more than 500,000 followers, lecturer, and keynote speaker, passionate about the capacity of IA to make our world more human.

Der Beitrag Understanding Intelligent Automation (IA) erschien zuerst auf SwissCognitive, World-Leading AI Network.

Source: SwissCognitive