article thumbnail

Unlock Potential with Easy Flat File Integration Solutions

Nanonets

WebMethods Designer  plays a crucial role in  converting flat file data  into JSON or XML. Converting flat file data  into JSON or XML is a crucial step in the integration process. Converting flat file data  into JSON or XML is possible using webMethods Designer.

XML 52
article thumbnail

What is two-way matching and how does it work?

Nanonets

For this, all details of the purchase as mentioned in the invoice are matched with the corresponding purchase order to ensure that the product/services that were ordered were delivered correctly and at the price agreed upon. This verification process is called 2-way matching.

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

What is an invoice reader and how to use it?

Nanonets

doc), HTML XML Data PDF EDI (EDIFACT) and CSV. The OCR engine splits the document into physical “zones” that could correspond to a particular field. These are free form texts such as contracts, letters, articles, and memos that may double as invoices in some unstructured, small businesses.

article thumbnail

How to Use AI in Bank Statement Processing

Nanonets

For instance, if the bank statement shows a $1,000 deposit on a specific date, it matches the corresponding entry in the accounting records. Reconciliation This step involves matching the extracted data with the company’s internal records. AI and machine learning-enhanced tools can perform these comparisons quickly and accurately.

Process 52
article thumbnail

What is PO Matching? And how to automate it?

Nanonets

MS-Excel files), structured XML documents from Electronic Data Interchange (EDI), PDFs and image files, and sometimes as hard copy documents. Once matched, Payables updates the quantity billed for each matched shipment and its corresponding distribution(s) by the amount entered in the Quantity Invoiced field.

article thumbnail

How to automate data extraction in healthcare: A quick guide

Nanonets

Handling unstructured data Much of healthcare data is unstructured, including physician notes, patient narratives, administrative correspondence, and imaging reports. You can also download the structured outputs (CSV, JSON, XML) for further analysis or use webhooks or Zapier to push the data to other systems in real time.