Ouça e leia

Entre em um mundo infinito de histórias

  • Ler e ouvir tanto quanto você quiser
  • Com mais de 500.000 títulos
  • Títulos exclusivos + Storytel Originals
  • 7 dias de teste gratuito, depois R$19,90/mês
  • Fácil de cancelar a qualquer momento
Assine agora
br bdp devices
Cover for Manufacturing AI: Building the Data Foundation for the Next Industrial Revolution

Manufacturing AI: Building the Data Foundation for the Next Industrial Revolution

Duração
11H 1min
Aprender idiomas
Inglês
Formato
Categoria

Não-ficção

Turn Manufacturing Data into a Scalable Competitive Advantage

Factories create massive amounts of data from IoT sensors, MES, SCADA, quality systems, supply chain, maintenance, and others. Yet most organizations can’t turn it into decisions fast enough. The result is reactive firefighting and AI pilots that stall.

The Unified Manufacturing Data Architecture (UMDA) is a practical framework built for industry, not adapted from IT. It shows you how to handle real-time streams, integrate legacy systems, enforce security, and scale AI across sites.

What you’ll learn

• Design Common Data Models (CDMs) • that unify complex, multi-system data • Use edge federation • for low-latency, on-site decisions • Build a Unified Data Layer (UDL) • that powers analytics and LLMs • Apply data contracts • for quality, security, and compliance • Deploy Edge Intelligence Hubs • and agentic AI/LLM routing • Connect digital threads/twins • to real-time operations

Potential outcomes when UMDA is implemented well

• Identify failure patterns earlier and plan maintenance proactively • Catch quality drift in real time and reduce scrap/rework • Synchronize planning with live constraints for fewer schedule breaks • Shorten time-to-value by standardizing data and integrations • Share proven improvements across sites with less friction

Stop drowning in data. Build an AI-ready architecture that anticipates, adapts, and continuously improves by turning information into measurable results.

© 2025 UMDA Publishing (Audiobook): 9798999336644

Data de lançamento

Audiobook: 16 de outubro de 2025