Using Containers to deploy AI Models across our microscopy platform
How do you guarantee identical AI results from the cloud to a local desktop? Learn how containers solved this critical reproducibility challenge for scientific imaging.
#1about 4 minutes
AI-powered computer vision workflows in modern microscopy
Zeiss uses AI for various microscopy tasks like classification and instance segmentation to analyze biological samples.
#2about 2 minutes
The challenge of analyzing terabyte-scale microscopy data
Automated microscopy workflows can generate terabytes of data from a single experiment, requiring powerful AI for quantitative analysis like cell counting.
#3about 3 minutes
Key requirements for reproducible AI model deployment
Users need robust and reproducible AI models that deliver consistent results across different platforms without requiring IT expertise.
#4about 3 minutes
Moving from model artifacts to containerized deployments
The previous method of deploying only model files created synchronization issues, leading to the adoption of containers to package models with all their dependencies.
#5about 3 minutes
Why containers are the ideal solution for AI deployment
Containers solve key challenges by enabling GPU access on Windows via WSL2, decoupling dependencies for different AI tasks, and simplifying client software maintenance.
#6about 3 minutes
The new workflow for training and deploying models
The new process involves training models in the cloud, which produces a container as the final artifact that is then downloaded and run by the client software.
#7about 2 minutes
Demonstrating the business value of containerization
This container-based approach allows users to access new AI algorithms faster without client updates, convincing stakeholders and enabling independent development cycles.
#8about 4 minutes
Key learnings for adopting container technology
Adopting containers is successful when it solves a real business problem, starts with smaller prototype projects to de-risk, and leverages mature, standardized technology.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
02:25 MIN
Deploying the machine learning model with Docker
Leverage Cloud Computing Benefits with Serverless Multi-Cloud ML
02:42 MIN
Why bootable containers are ideal for AI and ML stacks
Bootable AI Containers with Podman Desktop
01:18 MIN
Containerizing ML applications for consistency
The state of MLOps - machine learning in production at enterprise scale
04:46 MIN
Understanding the scale and diversity of development at Zeiss
Empowering Thousands of Developers: Our Journey to an Internal Developer Platform
08:28 MIN
Reusing containerized tools across platforms and CI/CD pipelines
Reusing apps between teams and environments through Containers
03:26 MIN
Building the Zeiss medical ecosystem in the cloud
ZEISS & Microsoft - Building the Next Generation Medical Ecosystem in the Cloud
00:36 MIN
Using containerized environments for multiple AI agents
10 commandments for vibe coding
00:41 MIN
Enabling GPU acceleration for local AI models
Containers and Kubernetes made easy: Deep dive into Podman Desktop and new AI capabilities
Stephan Gillich - Bringing AI EverywhereIn the ever-evolving world of technology, AI continues to be the frontier for innovation and transformation. Stephan Gillich, from the AI Center of Excellence at Intel, dove into the subject in a recent session titled "Bringing AI Everywhere," sheddi...
Building AI Solutions with Rust and DockerIn recent years, artificial intelligence has surged in popularity in the world of development. While Python remains a popular choice in the realm of AI, Rust - often known as Rust Lang - is quickly emerging as a formidable alternative.Rust programmin...
Daniel Cranney
Panel Discussion: Responsible AI in Practice - Real-World Examples and ChallengesIntroductionIn the ever-evolving landscape of artificial intelligence, the concept of "responsible AI" has emerged as a cornerstone for ethical and practical AI implementation. During the WWC24 Panel discussion, three eminent experts—Mina, Bjorn Brin...
From learning to earning
Jobs that call for the skills explored in this talk.