Тёмный

How Machine Learning is turning the Automotive Industry upside down | Jan Zawadzki 

DATA festival
Подписаться 494
Просмотров 23 тыс.
50% 1

The automotive industry has mobilized the global economy for decades. German automobile manufacturers (OEMs) alone employ more than 1 million people worldwide and generate sales of more than USD 500 billion. Since a Google + Stanford team won the Darpa Self-Driving Vehicles Challenge 2006 with the help of machine learning, the industry has been undergoing rapid change. Machine learning opens up brand-new business models, from autonomous driving to smart production to personal assistance in the car. However, the use of machine learning requires a different infrastructure than that found in traditional OEMs. Technology-first companies like Waymo or Tesla threaten to overtake established OEMs with billion-dollar market capitalization. Autonomous vehicles produce terabytes of data every day. This data can be immensely valuable in developing machine learning-driven functions. However, substantial challenges remain in the way of using this data. Visit this talk to hear about these challenges to help turn the automotive industry from a mechanical engineering to a software industry.
Jan Zawadzki, Project Lead Data Science, Carmeq GmbH

Опубликовано:

 

1 авг 2024

Поделиться:

Ссылка:

Скачать:

Готовим ссылку...

Добавить в:

Мой плейлист
Посмотреть позже
Комментарии : 4   
@tobiaszelger891
@tobiaszelger891 5 лет назад
This one was the best talk at the Data Festival 2019.
@user-sv9hb1cy2g
@user-sv9hb1cy2g 4 года назад
Hey brother I want to start data science course so please suggest me what the best course for me because I am mechanical engineer
@mohammaddanish9713
@mohammaddanish9713 3 года назад
Either go for Applied AI or iNeuron
@bmitrek6589
@bmitrek6589 4 года назад
Huge markets, highly profitable, big-data, AI companies (such as Alphabet and Amazon), unicorns (Tesla) - profitability is driving a cycle of R&D and increased profitability - accelerating change. Silicon Valley talent and R&D predominantly goes into civilian applications, though military applications and specialized R&D can't be ignored. WWI used masses of HORSES. Innovate and learn to always innovate faster.
Далее
Software in the Automotive Industry
12:16
Просмотров 12 тыс.
6. Monte Carlo Simulation
50:05
Просмотров 2 млн
This is why Deep Learning is really weird.
2:06:38
Просмотров 377 тыс.
Terence Tao, "Machine Assisted Proof"
54:56
Просмотров 174 тыс.
Andrew Ng: Opportunities in AI - 2023
36:55
Просмотров 1,8 млн
Will A.I Replace Car Designers?
9:19
Просмотров 34 тыс.
Big Data and the automotive industry
6:50
Просмотров 10 тыс.