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A person using a smart device to review stock replenishment with the manufacturing floor in the distance

What is intelligent automation?

Intelligent automation combines traditional process automation with AI to streamline workflows.

Intelligent automation overview

Intelligent automation is the use of artificial intelligence to optimize business processes that previously could not be automated by traditional process automation alone. The combination of both intelligent and traditional technology enables enterprises to automate more complex processes. As a result, organizational efficiency can increase as AI learns from its experiences.

Optical character recognition (OCR), used to “read” paper or digital-based documents (like PDFs), is one example. Traditionally, OCR depended on pattern recognition software to identify letters and numbers. However, because fonts and especially handwriting can vary wildly, it had limits to how accurately it could do this.

The advent of machine learning in OCR negated this limitation. A machine learning neural network can “read” characters by identifying unique patterns in each one and learning new patterns to account for variation. Over time, this enables it to better consistently distinguish between Os and 0s or 5s and Ss—recognizing that a narrower circle matches the pattern of a zero more than a letter O. Some other applications of intelligent automation are:

This shows how AI can automate previously manual processes to dramatically increase accuracy and speed. In this article, we’ll also explore how it leads to better decision-making, streamlined maintenance workflows, and more operational efficiency for an enterprise and its human workforce.

Components of intelligent automation

Intelligent automation consists of three main components. Together, they provide a strategic framework for how enterprises can increase operational efficiency:

  1. Artificial intelligence (AI): Technology that enables computers to learn and solve problems like humans do. Fields of AI include machine learning, natural language processing, computer vision, and generative AI.
  1. Business process management: This component encompasses the design, operation, and optimization of digitized business processes with formal rules.
  1. Robotic process automation (RPA): Software robots that execute repetitive manual, low-level tasks like data extraction.

How does intelligent automation work?

To understand how intelligent automation works, it’s helpful to understand two more basic forms of automation first:

Traditional process automation is the use of software and technologies following programmed rules to automate repeated business processes. Integrating multiple automated processes creates an end-to-end process—this is known as workflow orchestration.

Robotic process automation is a primary component of BPA. It refers to bots programmed to emulate and copy human actions to complete repetitive tasks. By integrating them into business systems, RPA bots can automate a wide range of rule-based tasks.

Intelligent process automation is the next evolution. It integrates advanced AI techniques, including machine learning (ML) and natural language processing (NLP) capabilities, with robotic process automation to perform advanced tasks for which it isn’t necessarily preprogrammed. It can also infer the business context behind data and learn from its experiences, making it much more flexible and adaptable than older forms of automation. Examples:

Why is intelligent automation important?

Intelligent automation is important because it merges the efficiency of automated, rule-based processes with advanced artificial intelligence capabilities that can analyze complex data and learn from experience. This enables enterprises to automate tasks that were previously beyond automation, leading to more consistency, better decision-making, and lower operational costs.

The benefits of intelligent automation

Intelligent automation enables enterprises to streamline processes and make better decisions, leading to these benefits:

Challenges of intelligent automation

The benefits are clear. However, enterprises that choose to adopt intelligent process automation should prepare for the effect it may have on their human workforce.

While some employees may feel liberated from menial tasks, others may feel threatened by it. Management can alleviate this anxiety by implementing policies that encourage employees to upskill and retrain. Ideally, an enterprise can emerge with more strategic and creative thinkers focused on innovation—their decision-making reinforced with insights provided by AI.

Enterprises contemplating AI adoption should also examine issues concerning bias in AI, transparency in how it draws conclusions, and accountability. These are all topics that an organization’s AI ethics committee can help define.

Another consideration is the technical debt that arises during the migration to AI technology while also maintaining older legacy apps. Factors like poor data quality, inadequate infrastructure, and skill gaps can all hinder the effectiveness of intelligent automation in an enterprise. AI can help organizations reduce years of technical debt by automating operational tasks, such as refactoring code, that developers must often handle.

Intelligent automation technologies

Intelligent automation emerges when enterprises apply AI technologies to traditional process automation. These technologies include:

Intelligent automation use cases

Enterprises are already putting intelligent process automation to use. Here are a few examples:

The future of intelligent automation

To adopt intelligent process automation is to remain competitive. Enterprises that find a strategy to orchestrate it with traditional process automation and agentic AI systems can expect to increase productivity, improve accuracy, and save on costs on their end-to-end processes.

AI agents can specialize in more complex tasks, enabling them to collaborate across different departments and organizations. Imagine one managing the inventory and delivery components of a supply chain and working with another to track the associated invoices and ledgers.

This shifts the burden of these repetitive workflows away from human teams, who are now free to focus on other, higher-level roles in R&D, corporate social responsibility, or technical support. These jobs require skills AI struggles with, like empathy, ideation, and nuance.

By investing in adopting intelligent automation and upskilling human talent, an enterprise can emerge with a workforce enhanced by AI—rather than one replaced by it. The collaboration between both can bring levels of efficiency previously thought impossible.