Enterprises looking to increase productivity and optimize business processes are increasingly turning to artificial intelligence (AI). AI can meet these expectations—but only with the right enabling technology. Intelligent automation at scale across the organization can offer a strategic approach to incorporating AI into complex business processes.
Intelligent automation refers to the usage of advanced technologies like AI and machine learning (ML) to automate complex business processes beyond what conventional automation tools like robotic process automation (RPA) or intelligent document processing (IDP) can achieve on their own.
AI brings the “intelligence” to intelligent automation, enabling traditional automation methods to interpret complex data, make decisions, and learn from outcomes.
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Intelligent automation technology enhances traditional process automation techniques to create more streamlined business processes. AI harnesses data to enable systems to learn, adapt, and make decisions, so that automation can do even more to save employees time.
For example, see how these two tasks related to IDP and RPA below change when AI is added into the mix:
What becomes possible when you pair AI and automation via intelligent automation? We suggest three ideas below, but as intelligent process automation platforms adopt more and more AI, this list will grow.
Creating an AI model is simple in a process automation platform like Appian. It’s designed for ease-of-use, eliminating the need for a large team of data scientists or substantial investment in new infrastructure.
Imagine you want to create a model for classifying and extracting data from documents. Upload your sample documents, and the platform handles the model training. You can then review and adjust the outcomes as necessary. This straightforward approach allows you to create an AI model that’s customized on your own data, which not only enhances accuracy but also reduces hours spent working on manual processes.
Low-code AI tools that combine AI and automation make it easier and quicker for developers to create digital solutions. These tools allow you to go from a basic document to a complete application interface with just a few clicks. This means less time spent on writing front-end code, tweaking data for databases, and designing interfaces with CSS. AI handles most of the heavy lifting, so developers can focus on making small, necessary adjustments in a straightforward, low-code environment. This approach speeds up development and simplifies the process, making the creation of digital solutions more efficient and less complex.
To get a real return on your AI investment, you need to be able to put AI into action in your core business processes. AI process platforms that take a low-code approach are purpose-built to operationalize intelligent automation in end-to-end processes. Finding intelligent automation technology that actually breaks down or significantly reduces the barriers of AI adoption and addresses real-world use cases can serve you well.
The easiest way to incorporate intelligent automation into your business processes is to adopt a process automation platform that already enables this. Here are three reasons why:
Get more information on what low-code process automation and AI together can do.
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