Best practices for secure and scalable LLM model usage in BTP AI apps with SAP AI Core

  • November 5, 2025
  • Online - Live
Register now

Event Overview

Join our live webinar to discover how to make secure and scalable large language model usage in BTP AI applications with SAP BTP AI Core.  In just 60 minutes, we guide you through the best practices related to prompt templating, data masking and content filtering.

What You'll Experience

  • Bring consistency and control to your LLM projects: An overview of how prompt templating enables repeatable, structured, and adaptable prompts that accelerate development while maintaining high quality.
  • Ensure data privacy while working with generative AI: We will highlight how SAP BTP’s masking tools protect sensitive information, enabling secure experimentation and compliant deployments.
  • Build ethical, safe, and compliant AI: Learn how SAP BTP’s content filtering tools prevent harmful or inappropriate outputs, ensuring trustworthy AI results that align with enterprise values. 

Why Attend?

  • Get a deep dive on prompt templating to make your prompt artifacts that can be reused across different tasks and applications
  • Understand data masking as a data protection technique
  • See how content filtering embeds content safety into generative AI workflows 

Event Category

SAP Event

Event Type

Online - Live

Language

English

Industry

Consumer Industries, Discrete Industries, Energy and Natural Resources, Financial Services, Public Services, Service Industries, Agribusiness, Consumer Products, Life Sciences, Retail, Wholesale Distribution, Aerospace and Defense, Automotive, High Tech, Industrial Manufacturing, Chemicals, Mill Products, Mining, Oil, Gas, and Energy, Utilities, Banking, Insurance, Defense and Security, Education and Research, Healthcare, Public Sector, Engineering, Construction, and Operations, Media, Professional Services, Sports and Entertainment, Telecommunications, Travel and Transportation

Location

United States

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