YoVDO

Designing Cloud Storage for LLMs and Data-Intensive Workloads

Offered By: Databricks via YouTube

Tags

Cloud Storage Courses Databricks Courses File Storage Courses Block Storage Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore cloud storage optimization for large language models (LLMs) and data-intensive workloads in this 15-minute conference talk sponsored by Google. Discover how to design storage systems that maximize bandwidth for training, serving, and fine-tuning LLMs, keeping GPUs and TPUs operating at peak efficiency. Learn to build scalable AI/ML data pipelines and select the ideal combination of block, file, and object storage solutions for various use cases. Gain insights into optimizing AI/ML workloads, including data preparation, training, tuning, inference, and serving, using Databricks deployed on Google Kubernetes Engine, Vertex workflows, or Compute Engine. Delve into strategies for enhancing analytics workloads with Cloud Storage and Anywhere Cache. Presented by Sridevi Ravuri, Sr. Director of R&D at Google, this talk is essential for AI/ML and data practitioners aiming to improve their storage infrastructure for cutting-edge machine learning applications.

Syllabus

Sponsored by: Google | Designing Cloud Storage for LLMs and Data-Intensive Workloads


Taught by

Databricks

Related Courses

Data Processing with Azure
LearnQuest via Coursera
Mejores prácticas para el procesamiento de datos en Big Data
Coursera Project Network via Coursera
Data Science with Databricks for Data Analysts
Databricks via Coursera
Azure Data Engineer con Databricks y Azure Data Factory
Coursera Project Network via Coursera
Curso Completo de Spark con Databricks (Big Data)
Coursera Project Network via Coursera