How can OCR and ML support your Invoice Management (VIM).
Vendor invoice management
Before jumping into Machine Learning options, let’s look at one of the major challenges organisations face in vendor invoice management (VIM) which is accurately extracting data from invoices. The reason this is important is that it increases the amount of information available to feed into ML algorithms. Optical Character Recognition
Artificial Intelligence needs access to VIM data
Machine Learning algorithms use pattern recognition to review the information fed into their algorithms. They can be trained to identify inconsistencies and discrepancies within invoices. By comparing invoice details against historical data and using existing business rules. It can flag invoices that don’t adhere to established rules, reducing the risk of things slipping through the cracks. Complimenting your AP process with this frees smart people up to make smart decisions. Reduces the load on people and gives you room to improve.
Machine learning could also assist in optimizing the approval workflows
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There is a use case for ML pointing out optimal options for paying early and maximising contractual discounts
Machine Learning over time
Machine Learning algorithms are able to continuously learn and improve over time. As vendor invoice management systems process more data, they can grow with the company. This means they become a long term benefit that gets continuously more accurate and reliable. That is what people need, as the change management required when bringing in AI is amplified by people being concerned about it.
ML is just a fraction of the AI world, but it has been around for a very long time. It is not new, but given its nature, is growing in relevance all the time. Coupled with OCR you are increasing the amount of data available to you and as such you need to maximise how you benefit from that.