Skip To Main Content
Intel logo - Return to the home page
My Tools

Select Your Language

  • Bahasa Indonesia
  • Deutsch
  • English
  • Español
  • Français
  • Português
  • Tiếng Việt
  • ไทย
  • 한국어
  • 日本語
  • 简体中文
  • 繁體中文
Sign In to access restricted content

Using Intel.com Search

You can easily search the entire Intel.com site in several ways.

  • Brand Name: Core i9
  • Document Number: 123456
  • Code Name: Emerald Rapids
  • Special Operators: “Ice Lake”, Ice AND Lake, Ice OR Lake, Ice*

Quick Links

You can also try the quick links below to see results for most popular searches.

  • Product Information
  • Support
  • Drivers & Software

Recent Searches

Sign In to access restricted content

Advanced Search

Only search in

Sign in to access restricted content.

The browser version you are using is not recommended for this site.
Please consider upgrading to the latest version of your browser by clicking one of the following links.

  • Safari
  • Chrome
  • Edge
  • Firefox

Build Visual and Multimodal GenAI Locally on AI PCs

@IntelDevTools

Subscribe Now

Stay in the know on all things CODE. Updates are delivered to your inbox.

Sign Up

Overview

According to Gartner*, 40% of generative AI (GenAI) solutions will be multimodal by 2027.1 This session offers a closer look into running multimodal generative AI on the AI PC, a laptop built with a CPU, GPU, and NPU to handle AI tasks locally and more efficiently.

Specifically, this webinar focuses on using the GPU and NPU in combination with OpenVINO™ toolkit to develop, optimize, and deploy image-based GenAI models—such as Stable Diffusion* and latent consistency models—using multimodal learning.

Topics covered in the webinar include:

  • Understand how AI acceleration technologies are integrated across AI PC hardware
  • Parallels and comparisons between GenAI algorithms and visual, multimodal capabilities on AI PCs across text, audio, and images, and lessons learned during the development and optimization processes
  • Practical knowledge in implementing and deploying state-of-the-art AI models using the OpenVINO toolkit

This webinar demonstrates reproducible source code that showcases the performance and power efficiency of AI applications on the AI PC, including multimodal applications such as Kosmos-2 and LLaVA.

Skill level: Intermediate

Jump to:


You May Also Like
 

   

You May Also Like

Related Articles

Beewant and Intel Discuss Multimodal AI-Powered Data Management

How to Deploy AI Applications on AI PCs

OpenVINO Toolkit for AI PC

Related Videos

Profile and Optimize OpenVINO Toolkit Workloads at the Hardware Level

Prototype and Deploy LLM Applications on Intel NPUs

Product and Performance Information

1Gartner Predicts 40% of GenAI Solutions Will Be Multimodal by 2027
  • Company Overview
  • Contact Intel
  • Newsroom
  • Investors
  • Careers
  • Corporate Responsibility
  • Inclusion
  • Public Policy
  • © Intel Corporation
  • Terms of Use
  • *Trademarks
  • Cookies
  • Privacy
  • Supply Chain Transparency
  • Site Map
  • Recycling
  • Your Privacy Choices California Consumer Privacy Act (CCPA) Opt-Out Icon
  • Notice at Collection

Intel technologies may require enabled hardware, software or service activation. // No product or component can be absolutely secure. // Your costs and results may vary. // Performance varies by use, configuration, and other factors. Learn more at intel.com/performanceindex. // See our complete legal Notices and Disclaimers. // Intel is committed to respecting human rights and avoiding causing or contributing to adverse impacts on human rights. See Intel’s Global Human Rights Principles. Intel’s products and software are intended only to be used in applications that do not cause or contribute to adverse impacts on human rights.

Intel Footer Logo