Тёмный

Google Cloud Network Infrastructure for AI/ML 

Tech Field Day
Подписаться 55 тыс.
Просмотров 4,6 тыс.
50% 1

Victor Moreno, a product manager at Google Cloud, presented on the network infrastructure Google Cloud has developed to support AI and machine learning (AI/ML) workloads. The exponential growth of AI/ML models necessitates moving vast amounts of data across networks, making it impossible to rely on a single TPU or host. Instead, thousands of nodes must communicate efficiently, which Google Cloud achieves through a robust software-defined network (SDN) that includes hardware acceleration. This infrastructure ensures that GPUs and TPUs can communicate at line rates, dealing with challenges like load balancing and data center topology restructuring to match traffic patterns.
Google Cloud's AI/ML network infrastructure involves two main networks: one for GPU-to-GPU communication and another for connecting to external storage and data sources. The GPU network is designed to handle high bandwidth and low latency, essential for training large models distributed across many nodes. This network uses a combination of electrical and optical switching to create flexible topologies that can be reconfigured without physical changes. The second network connects the GPU clusters to storage, ensuring periodic snapshots of the training process are stored efficiently. This dual-network approach allows for high-performance data processing and storage communication within the same data center region.
In addition to the physical network infrastructure, Google Cloud leverages advanced load balancing techniques to optimize AI/ML workloads. By using custom metrics like queue depth, Google Cloud can significantly improve response times for AI models. This optimization is facilitated by tools such as the Open Request Cost Aggregation (ORCA) framework, which allows for more intelligent distribution of requests across model instances. These capabilities are integrated into Google Cloud's Vertex AI service, providing users with scalable, efficient AI/ML infrastructure that can automatically adjust to workload demands, ensuring high performance and reliability.
Presented by Victor Moreno, Product Manager. Recorded live on the Google Cloud campus in Sunnyvale, California on June 13, 2024. Watch the entire presentation at techfieldday.com/appearance/g... or visit TechFieldDay.com/event/cfd20/ or g.co/cloud/fieldday2024 for more information.

Наука

Опубликовано:

 

16 июн 2024

Поделиться:

Ссылка:

Скачать:

Готовим ссылку...

Добавить в:

Мой плейлист
Посмотреть позже
Комментарии    
Далее
WekaIO Introduction with Barbara Murphy
42:33
Просмотров 3,8 тыс.
ХЕРЕЙД БОИТСЯ МОЕЙ СОБАКИ!
37:08
Who Can Break Most Walls? Ep.2 | Brawl Stars
00:26
Просмотров 831 тыс.
Best father #shorts by Secret Vlog
00:18
Просмотров 6 млн
De-Google Your Life - Part 1: Start With Chrome
19:31
Inside a Google data center
5:28
Просмотров 21 млн
AI Deception: How Tech Companies Are Fooling Us
18:59
The AI Datacenter
23:25
Просмотров 10 тыс.
The Future of AI with GOOGLE CEO (Sundar Pichai)
8:39
Просмотров 276 тыс.
Google Data Center Security: 6 Layers Deep
6:10
Просмотров 8 млн