RISWIS Applied

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Control what data AI trusts through governance
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Update #2 · 5/31/2026

Faster, lighter, less buggy

Spent this cycle on performance and bug fixes instead of new features. RISWIS Applied now loads noticeably faster and a handful of annoying edge cases are gone. Boring work, big difference.

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About

RISWIS Applied is a governance layer for RAG and AI systems that controls which retrieved sources are allowed to influence generation. Key features include: - Trust-aware reranking for RAG pipelines - Detection of stale or low-trust retrieval results - Visible raw rank vs policy-weighted rank comparisons - Audit-friendly retrieval decision tracking - ALLOW / REVIEW / BLOCK governance decisions RISWIS sits between retrieval and generation, helping teams govern what their AI is actually allowed to trust instead of blindly accepting semantic retrieval results. What makes it different is that it separates semantic relevance from trust policy, allowing approved and auditable sources to be prioritized before context reaches the LLM. Expected outcomes include: - More trustworthy AI outputs - Reduced hallucination risk from weak retrieval - Better visibility into why an answer was generated - Easier auditing and debugging of RAG systems - Increased confidence in production AI deployments

Recent reviewsAll 1 →
Manthan Banerjee
Manthan Banerjee★ 35/8/2026
Fine for basic use. Wanted more depth for my workflow.
FOUNDER
Ron Reed
Ron Reed
@ron.reed · RISWIS Applied
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