Manual Data Extraction
Energy supplier invoices were received in both electronic and paper formats, requiring manual extraction and entry into internal systems.
Inenco is a leading UK-based consultancy specializing in energy and utility management. With more than 50 years of industry expertise, the organization supports businesses across sectors such as manufacturing, hospitality, retail, and logistics by helping them optimize energy procurement, manage utility billing, maintain regulatory compliance, and improve operational efficiency. A critical component of their services involves validating energy supplier invoices for accuracy before approving them for payment.
Inenco aimed to modernize and automate its invoice validation operations to reduce manual effort and improve processing speed. The objective was to build an intelligent document processing solution capable of extracting invoice data accurately from large volumes of electronic and scanned documents. By leveraging AI and machine learning, the organization sought to minimize human error, accelerate processing times, and enable internal teams to focus on higher-value analytical tasks while maintaining high accuracy and operational efficiency.
Energy and Utilities
Azure
AI Document Processing
Energy supplier invoices were received in both electronic and paper formats, requiring manual extraction and entry into internal systems.
Manual processing introduced inconsistencies and errors, which could lead to delays in validation and customer billing reconciliation.
The client needed a scalable solution capable of processing spikes in invoice volume without compromising speed or accuracy.
Looking to automate invoice processing and eliminate manual data entry with AI? NeosAlpha helps enterprises implement Azure-based OCR and intelligent document processing solutions for faster, more accurate operations.
Explore Our Azure Cloud ServicesNeosAlpha designed an AI-powered document parsing solution using Azure Computer Vision to automatically extract structured data from invoices. The platform leveraged OCR and machine learning models to interpret text and visual information within scanned documents and PDFs.
Invoices were uploaded or scanned directly into Azure Storage, which served as the centralized repository for document processing workflows.
Azure Computer Vision processed the documents, extracting key invoice attributes and categorizing the relevant data fields required for validation and downstream processing.
Once validated, the extracted data was transmitted through Azure Service Bus, enabling concurrent processing by multiple robotic workflows. This architecture ensured reliable message delivery and improved scalability.
The solution was designed to handle fluctuating workloads, enabling rapid scaling during periods of high invoice volumes without impacting processing performance.
Manual extraction and entry of invoice data were eliminated, significantly improving operational efficiency.
AI-powered OCR reduced human errors and ensured consistent data extraction across documents.
Automated workflows dramatically reduced invoice validation time, enabling quicker turnaround for clients.
The automated solution lowered operational costs while improving service delivery and customer satisfaction.
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