Users will love you for itInnerview: Help the world make progress

Trusted by world-class organizations

Glossaries

Intelligent Automation

What is Intelligent Automation in Artificial Intelligence?

Intelligent Automation is the use of artificial intelligence technologies combined with automation tools to perform tasks that typically require human intelligence. It enhances traditional automation by enabling systems to learn, adapt, and make decisions based on data.

Synonyms: AI automation, smart automation, cognitive automation, intelligent process automation

question mark

Why Intelligent Automation is Important

Intelligent Automation helps businesses increase efficiency, reduce errors, and lower operational costs by automating complex processes that involve decision-making and learning. It allows organizations to handle large volumes of work quickly and accurately.

How Intelligent Automation is Used

It is used in various industries such as finance, healthcare, and manufacturing to automate tasks like data entry, customer service, fraud detection, and supply chain management. By integrating AI capabilities like machine learning and natural language processing, it can handle unstructured data and improve over time.

Examples of Intelligent Automation

Examples include chatbots that provide customer support, AI-powered robotic process automation (RPA) that manages repetitive tasks, and intelligent document processing systems that extract and analyze information from documents.

Frequently Asked Questions

  • What is the difference between Intelligent Automation and traditional automation? Intelligent Automation uses AI to handle complex tasks and make decisions, while traditional automation follows fixed rules without learning capabilities.
  • Can Intelligent Automation replace human workers? It can automate many tasks but often works alongside humans to enhance productivity rather than fully replace them.
  • What AI technologies are involved in Intelligent Automation? Common technologies include machine learning, natural language processing, and computer vision.
Try Innerview

Try the user interview platform used by modern product teams everywhere