JuanOnOne / v3

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

W251 - Deep Learning in the Cloud and at the Edge

This hands-on course introduces data scientists to technologies related to building and operating live, high throughput deep learning applications running on powerful servers in the cloud as well on smaller and lower power devices at the edge of the network. The material of the class is a set of practical approaches, code recipes, and lessons learned. It is based on the latest developments in the industry and industry use cases as opposed to pure theory.

See hw01 for edge device requirements.

The syllabus and homeworks are as follows,

Week Content
01 Introduction and Overview
02 Clouds, Infrastructure, and Machine Learning Cloud Services
03 Introduction to Containers
04 Deep Learning 101
05 Deep Learning Frameworks
06 Optimizing Models for the Edge and GStreamer
07 Deep Learning 201
08 Datasets and Dataset Processing
09 HPC, MPI, and Multinode/MultiGPU (MNMG) Training
10 Generative Adversarial Networks (GANs)
11 Deep Reinforcement Learning
12 Speech, Natural Language Processing, and Conversational Design
13 AI and DL: Applying AI to Real World Applications

About


Languages

Language:Jupyter Notebook 99.8%Language:Dockerfile 0.1%Language:Shell 0.1%Language:Python 0.0%