Finance and leasing software for banks and industrial companies in DACH
NAVAX Software builds end-to-end digitization platforms for credit, leasing, and factoring operations—a 25+ year-old fintech serving banks and increasingly industrial companies adopting embedded finance. The tech stack reveals an operations-heavy org: container orchestration (Kubernetes, OpenShift, Docker), comprehensive observability (Elasticsearch, Splunk, Prometheus, Grafana), and security-first infrastructure (Wazuh, Sentinel, MITRE ATT&CK). Active projects around SIEM platform development, log correlation, and detection rules show significant investment in detecting threats across heterogeneous systems—a direct response to their stated challenge of managing complex IP networks and integrating disparate log sources.
NAVAX Software delivers IT and consulting solutions for digital transformation of sales financing, purchase financing, and factoring workflows. Core customers are banks, leasing companies, and factoring firms in Germany, Austria, and Switzerland (DACH); increasingly, industrial companies are adopting their platforms to embed financial services into their value chains. The company operates with 150 employees focused on customer delivery and product development, anchored within a larger 310-person NAVAX Group spanning nine locations. Solutions span process digitization, customer onboarding, regulatory compliance (GDPR, financial reporting), and cloud infrastructure—offered alongside ERP, CX, and business intelligence modules from affiliated group companies.
Python, Perl, SQL for development; Kubernetes, OpenShift, Docker for containerization; GitLab + Jenkins for CI/CD; Elasticsearch, Splunk, Prometheus, Grafana for observability; Wazuh and Sentinel for security; Azure and AWS for cloud.
Central log management and SIEM platform development, detection use cases, audit coordination, ITIL process implementation, cloud infrastructure evaluation, HRIS development, and automation of system operations.
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