Ekaterina Sirazitdinova
Multimodal Generative AI Demystified
#1about 2 minutes
The shift from specialized AI to multimodal foundation models
Traditional specialized AI models like CNNs are not sustainable for general intelligence, leading to the rise of multimodal foundation models trained on internet-scale data.
#2about 3 minutes
Demonstrating the power of multimodal models like GPT-4
GPT-4 achieves high accuracy on zero-shot tasks and shows substantial performance gains by incorporating vision, even enabling it to reason about humor in images.
#3about 7 minutes
How multimodal generative AI is transforming industries
Generative AI offers practical applications across education, healthcare, engineering, and entertainment, from personalized learning to interactive virtual characters.
#4about 2 minutes
Understanding the core concepts of generative AI
Generative AI creates new content by learning patterns from existing data using a foundation model, which is a large transformer trained to predict the next element in a sequence.
#5about 7 minutes
A technical breakdown of the transformer architecture
The transformer architecture processes text by converting it into numerical embeddings and uses self-attention layers in its encoder-decoder structure to understand context.
#6about 3 minutes
An introduction to diffusion models for image generation
Modern image generation relies on diffusion models, which create high-quality images by learning to progressively remove noise from a random starting point.
#7about 3 minutes
Fine-tuning diffusion models for custom subjects and styles
Diffusion models can be fine-tuned on a small set of images to generate new content featuring a specific person, object, or artistic style.
#8about 5 minutes
The core components of text-to-image generation pipelines
Text-to-image models use a U-Net architecture to predict noise and a variational autoencoder to work efficiently in a compressed latent space.
#9about 3 minutes
Using CLIP to guide image generation with text prompts
Models like CLIP align text and image data into a shared embedding space, allowing text prompts to guide the diffusion process for controlled image generation.
#10about 3 minutes
Exploring advanced use cases and Nvidia's eDiff-I model
Image generation enables applications like synthetic asset creation and super-resolution, with models like Nvidia's eDiff-I focusing on high-quality, bias-free results.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
18:03 MIN
GenAI applications and emerging professional roles
Enter the Brave New World of GenAI with Vector Search
01:42 MIN
Understanding the fundamental shift to generative AI
Your Next AI Needs 10,000 GPUs. Now What?
03:55 MIN
Understanding how generative AI models create content
The shadows that follow the AI generative models
04:23 MIN
An overview of generative AI and its capabilities
Make it simple, using generative AI to accelerate learning
01:00 MIN
Understanding the fundamentals of generative AI for developers
Java Meets AI: Empowering Spring Developers to Build Intelligent Apps
23:35 MIN
Defining key GenAI concepts like GPT and LLMs
Enter the Brave New World of GenAI with Vector Search
13:57 MIN
The recent evolution of generative AI models
Enter the Brave New World of GenAI with Vector Search
02:48 MIN
Tracing the evolution from LLMs to agentic AI
Exploring LLMs across clouds
Featured Partners
Related Videos
AI'll Be Back: Generative AI in Image, Video, and Audio Production
Fabian Pottbäcker, Thomas Endres & Martin Foertsch
AI: Superhero or Supervillain? How and Why with Scott Hanselman
Scott Hanselman
Your imaginations is (no longer) the limit: how Generative AI empowers people to be creative
David Estevez
Building Products in the era of GenAI
Julian Joseph
Make it simple, using generative AI to accelerate learning
Duan Lightfoot
GenAI Unpacked: Beyond Basic
Damir
What do language models really learn
Tanmay Bakshi
The shadows of reasoning – new design paradigms for a gen AI world
Jonas Andrulis
Related Articles
View all articles



From learning to earning
Jobs that call for the skills explored in this talk.



Product Engineer | AI Developer Automation
Neural Concept
Lausanne, Switzerland
DevOps
Continuous Integration



Front End Engineering Manager ( Generative AI experience )
Accenture
GraphQL
React Native
Continuous Integration



User Empowerment Engineer | AI Vertical Solutions
Neural Concept
Lausanne, Switzerland
Machine Learning