To achieve operational efficiency, organizations must improve their processes and workflows. Many of these processes include lots of documents. You may need to extract, interpret, or process data in a variety of formats—text documents, PDFs, images, handwritten scans, and more. How can you easily do this by using software robots versus human labor? The answer is document understanding, which is key to meeting operational efficiency goals.
In this post, we’ll define document processing, explore how to implement it, and highlight some of the ways it drives operational efficiency.
Document understanding describes the effort by computer software robots to intake, process, and extract information from unstructured files such as PDFs, images, and more. True understanding occurs when the robot can open a file, identify the type of file, and then successfully extract the key fields. The bots then enter those values into downstream applications or databases.
The technology behind document understanding marries robotic process automation (RPA) and artificial intelligence (AI). When combined, the process becomes intelligent automation, extricating data from different document types and interpreting it as needed.
Document understanding can apply to structured and unstructured data. Structured data is much easier because it contains tags that identify text fields and document attributes. Examples include HTML or XML formats.
Unstructured data is more complex and often requires manual labor. Unstructured data describes anything in a format not suitable for computers, as content is in a free format. Examples include contracts, letters, articles, and memos. An estimate from IDC says that about 80 percent of data will be in this format by 2025.
There is also a third category: semi-structured data, which is a mix of the other two. Examples of semi-structured documents include invoices, purchase orders, bills of lading, and explanations of benefits.
Unstructured and semi-structured data present challenges for companies because of the manual work necessary to use the data. Conquering this problematic aspect of data processing is a big part of how document understanding supports operational efficiency.
The process teaches automated software bots how to read and understand documents. Once trained, they’ll tackle all the heavy lifting, eliminating the need for human intervention.
Using this type of automation tool doesn’t have to be complicated. The first step is training your robots on many samples so they learn quickly and thoroughly. Investing in this training up front will save so much time in the future.
You can implement document understanding with just a few steps:
There are several specific ways to leverage document understanding:
The functionality document understanding enables covers many types of tasks. It can help with accounting, for example, with invoices, reconciliation, purchase order validation, and financial statements.
Other use cases involve industries that are document-heavy. Document understanding can support account setup, such as underwriting for mortgages. It could also be useful for insurance companies to gather information from multiple sources for claim adjudication.
Document understanding is an operational efficiency enabler across the enterprise. These are some of the benefits you can realize from deploying it:
All these benefits align to operational efficiencies. No matter your industry or department, document understanding applies to any process in which data needs to be extracted, validated, and reformatted. With software bots doing this labor-intensive work, you can quickly make strides in accelerating efficiency.
To learn more about automation and operational efficiency, read our new e-book, Leveraging Intelligent Automation to Increase Operational Efficiency.