Solution Architecture and Ethical AI Design

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Solution Architecture and Ethical AI Design

Coursera · Intermediate ·📐 ML Fundamentals ·1mo ago
Multimodal AI systems — ones that process text, images, and audio together — are redefining what's possible in enterprise technology. This course gives you the skills to design and evaluate these powerful systems from end to end. You'll build end-to-end solution architectures that integrate image encoders, speech-to-text services, and text-generation models into cohesive, production-ready pipelines. You'll define how data flows across modalities, how models interact, and how systems scale under real-world traffic. You'll also develop the technical and ethical judgment to evaluate what you build. Using industry-standard metrics like FID, CLIP scores, recall@k, and VQA accuracy, you'll assess how well multimodal models perform. Then you'll apply bias-auditing techniques — including demographic parity, equalized odds, LIME, and SHAP — to ensure your systems are fair, interpretable, and ready for responsible deployment. This course is built for AI and machine learning professionals who want to move beyond building individual models and into designing complete, ethical, production-grade AI solutions.
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