Oklahoma Christian University, Edmond, Oklahoma.
International Journal of Science and Research Archive, 2026, 19(01), 246-257
Article DOI: 10.30574/ijsra.2026.19.1.0526
Received on 05 February 2026; revised on 02 April 2026; accepted on 04 April 2026
Multi-vendor software ecosystems are essential components of critical digital infrastructure across finance, healthcare, manufacturing, cloud computing, and smart services. The rise of architectural modularity and integration using APIs, and third-party dependency chains has increased systemic vulnerability, where minor failures in single components may trigger broader service failures. Digital twin technology, which was initially developed based on cyber-physical systems, has become an exciting paradigm concerning the modeling of dynamic system behavior and its use in making a predictive decision [37], [38]. This paper presents an ecosystem-wide failure prediction framework, the Ecosystem Digital Twin of Failure Propagation (EDT-FP), which models distributed software ecosystems as time-dependent dependency graphs, augmented by telemetry-guided causal inferences as well as policy-conscious simulations. Experimental results indicated superior accommodation to propagation prediction, lower blast-radius estimation error, and improved mitigation ranking (as compared to topology-only or causal-only). The results suggest that an integrated digital twin architecture combining graph topology, multimodal telemetry, vulnerability modelling, and governance constraints can provide a scalable approach to achieve proactive resilience engineering in mixed and multi-vendor systems.
Digital Twin; Failure Propagation; Multi-Vendor Software Ecosystems; Cascading Failures; Microservices; Causal Inference
Preview Article PDF
Rahul Ravindran. Digital twin models for predicting failure propagation in multi-vendor software ecosystems. International Journal of Science and Research Archive, 2026, 19(01), 246-257. Article DOI: https://doi.org/10.30574/ijsra.2026.19.1.0526.






