Jan Zawadzki
What non-automotive Machine Learning projects can learn from automotive Machine Learning projects
#1about 5 minutes
The business case for investing in AI and machine learning
Market projections, corporate investment trends, and performance data from high-performing companies demonstrate the growing value and profitability of AI.
#2about 5 minutes
Navigating the upcoming EU AI Act for high-risk systems
The European Union's AI Act classifies applications based on risk, requiring robust development practices for systems that can cause physical or mental harm.
#3about 4 minutes
How CARIAD is tackling major automotive industry shifts
CARIAD, a VW Group subsidiary, focuses on software and connectivity to address key industry challenges like electrification, digital user experience, and autonomous driving.
#4about 4 minutes
Decoupling hardware and software with a unified platform
The traditional complex vehicle architecture with over 100 ECUs is being replaced by a unified platform (SSP) and operating system (VW.OS) to enable agility and over-the-air updates.
#5about 6 minutes
Building an AI-ready architecture for autonomous driving
The goal is to transform vehicles into AI platforms by creating a virtuous cycle of data collection and model improvement, supported by powerful hardware and a connected backend.
#6about 5 minutes
Adapting the traditional V-model for ML development
The rigid automotive V-model is adapted for machine learning by splitting the software phase into distinct data, model training, and porting stages to incorporate necessary iteration.
#7about 5 minutes
Treating data as a product using the three V-model
The three V-model approach treats the dataset as a distinct product with its own requirements and KPIs, enabling better traceability and versioning across data, models, and code.
#8about 4 minutes
Advanced methods for robust computer vision models
Techniques like AugMix for data augmentation, out-of-distribution sampling for unknowns, and Delta Learning for model adaptation are used to build more robust and reliable computer vision systems.
#9about 2 minutes
Tooling principles for safety-critical ML development
The development process relies on a toolchain where everything is treated as code—including requirements, data, and models—to ensure versioning, reusability, and compliance with certified tools.
#10about 7 minutes
Q&A on data privacy, e-mobility, and managing AI hype
The Q&A covers key topics including data anonymization for privacy, the company's commitment to net-zero emissions beyond e-mobility, and the strategy for building trust by not over-promising on AI capabilities.
Related jobs
Jobs that call for the skills explored in this talk.
Picnic Technologies B.V.
Amsterdam, Netherlands
Intermediate
Senior
Python
Structured Query Language (SQL)
+1
WALTER GROUP
Wiener Neudorf, Austria
Intermediate
Senior
Python
Data Vizualization
+1
Matching moments
04:57 MIN
Increasing the value of talk recordings post-event
Cat Herding with Lions and Tigers - Christian Heilmann
03:28 MIN
Why corporate AI adoption lags behind the hype
What 2025 Taught Us: A Year-End Special with Hung Lee
03:48 MIN
Automating formal processes risks losing informal human value
What 2025 Taught Us: A Year-End Special with Hung Lee
05:18 MIN
Incentivizing automation with a 'keep what you kill' policy
What 2025 Taught Us: A Year-End Special with Hung Lee
03:15 MIN
The future of recruiting beyond talent acquisition
What 2025 Taught Us: A Year-End Special with Hung Lee
03:38 MIN
Balancing the trade-off between efficiency and resilience
What 2025 Taught Us: A Year-End Special with Hung Lee
04:27 MIN
Moving beyond headcount to solve business problems
What 2025 Taught Us: A Year-End Special with Hung Lee
05:55 MIN
The security risks of AI-generated code and slopsquatting
Slopquatting, API Keys, Fun with Fonts, Recruiters vs AI and more - The Best of LIVE 2025 - Part 2
Featured Partners
Related Videos
How Machine Learning is turning the Automotive Industry upside down
Jan Zawadzki
Developing an AI.SDK
Daniel Graff & Andreas Wittmann
Finding the unknown unknowns: intelligent data collection for autonomous driving development
Liang Yu
Staying Safe in the AI Future
Cassie Kozyrkov
Machine Learning: Promising, but Perilous
Nura Kawa
How AI Models Get Smarter
Ankit Patel
Automated Driving - Why is it so hard to introduce
Sayed Bouzouraa
A hundred ways to wreck your AI - the (in)security of machine learning systems
Balázs Kiss
Related Articles
View all articles



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

RIB Deutschland GmbH
Stuttgart, Germany
Python
Machine Learning

Imec
Azure
Python
PyTorch
TensorFlow
Computer Vision
+1

European Tech Recruit
Retortillo de Soria, Spain
Junior
Python
Docker
PyTorch
Computer Vision
Machine Learning
+1

AUTO1 Group GmbH
Berlin, Germany
Remote
Senior
Azure
Python
Docker
PyTorch
+8

European Tech Recruit
Municipality of Valencia, Spain
Junior
Python
Docker
PyTorch
Computer Vision
Machine Learning
+1

ASFOTEC
Canton de Lille-6, France
Senior
GIT
Bash
DevOps
Python
Gitlab
+6

European Tech Recruit
Municipality of Vitoria-Gasteiz, Spain
Junior
Python
Docker
PyTorch
Computer Vision
Machine Learning
+1

Snke OS
München, Germany
Remote
Senior
Data analysis
Machine Learning

Everllence SE
Augsburg, Germany
C++
Python
Matlab
Machine Learning