Genflow Ad Studio: A Compound AI Architecture for Brand-Aligned, Self-Correcting Video Generation
Debanshu Das, Lavi Nigam, Sunil Kumar Jang Bahadur, Gopala Dhar

TL;DR
Genflow is a novel AI architecture that ensures brand consistency in video generation through retrieval-based brand extraction and iterative self-correction, significantly improving brand compliance rates.
Contribution
The paper introduces Genflow, a multi-stage AI system combining brand retrieval and multi-agent quality control for enterprise-grade, brand-aligned video generation.
Findings
Brand compliance improved from 42% to 89%.
Introduced a retrieval-based 'Brand DNA' extraction module.
Implemented an adversarial multi-agent quality control loop.
Abstract
Recent advancements in generative video models demonstrate high visual fidelity, yet their integration into enterprise environments is restricted by temporal inconsistencies and severe brand misalignment. Current monolithic architectures struggle to enforce rigid brand constraints, frequently hallucinating unapproved visual assets. We introduce Genflow, a Compound AI System designed to enforce brand consistency in generative media production. Our architecture integrates a retrieval-based 'Brand DNA' extraction module to parameterize generation according to established corporate identity guidelines. Furthermore, we implement an Adversarial Multi-Agent Quality Control (QC) loop. Instead of a single-pass generation, this pipeline employs evaluator agents to iteratively critique generated frames against the extracted parameters, prompting generator models to refine outputs until a…
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