Retrieval-Augmented Generation (RAG) systems typically route all queries to a single retrieval modality, limiting utility for heterogeneous query types that require simultaneous structured lookup, entity-relationship traversal, and text similarity search. We present TriFuseRAG, a prototype multi-modal RAG system integrating three retrieval backends—a relational SQL engine, an in-memory knowledge graph, and a TFIDF vector store—under a dual-stage adaptive router and weighted fusion layer. A two-tier safety gate filters adversarial inputs before retrieval. On a 1,126-query closed-world benchmark, the dual-stage router achieves 98.84% route accuracy. In strict no-leakage evaluation, TriFuseRAG achieves 91.3% overall answer accuracy (98.1% on supported queries), and 93.9% on composite Hybrid queries where all single-source baselines score 0%. Overall, TriFuseRAG outperforms the best singlesource baseline by 34.7 points (91.3% vs. 26.6%), with p95 query latency under 10ms on CPU hardware. We report full error analysis, latency profiles, and discussion of synthetic evaluation scope.
Buddha Mokshitha Sree, Jammula Vijay Krishna, Gamidi Sneha Sivani, Boddapu Chandra Shekhar, Padathala Visweswara Rao (Thu,) studied this question.