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The client faced a manual and fragmented invoice processing workflow, leading to slower audit/payment cycles and limited real-time visibility into freight spend. Prior to automation, manual entry of documents resulted in an average processing time of 48 hours per invoice and a 12% error rate in data extraction. To support operational efficiency, the client required a cloud-native, AI-powered system capable of automating document classification and data extraction while ensuring high scalability, security, and observability.
Aivar designed and implemented a serverless, event-driven architecture focused on Intelligent Automation, Infrastructure as Code, and Generative AI workflows.
Aivar successfully delivered a scalable, secure, and operationally resilient foundation for the client’s AI-driven freight operations. By leveraging serverless architecture and advanced Generative AI models, the solution transformed a manual, fragmented workflow into a highly efficient, automated system. This implementation ensures that the resulting Minimum Viable Product provides a future-ready platform for sustained innovation and measurable business value.