Главная
Study mode:
on
1
– Introduction
2
–Evolution of app deployment
3
– Why use Docker?
4
– Docker Architecture
5
– Key concepts
6
– Working with Docker images
7
– Build images using Dockerfile
8
– Manage containers.
9
– Data persistence with volumes
10
– Manage networks in Docker
11
– Manage image storage with Docker registry
12
– Multi-container deployment with Docker compose
13
– Install Docker Desktop on Mac
14
– Install Docker Desktop on Windows
15
– Demo
Description:
Learn how to achieve reproducible data science workflows using Docker in this 48-minute video tutorial. Explore Docker basics, including creating and running containers, working with images, automating image building with Dockerfile, and managing containers locally and in production. Discover real-world examples of how data scientists use Docker to streamline workflows and address challenges like reproducibility and dependency management. Gain hands-on experience with interactive demonstrations covering Docker architecture, key concepts, image management, container management, data persistence, networking, image storage, and multi-container deployment. Follow along as the instructor guides you through installing Docker Desktop on Mac and Windows, and participate in a practical demo to reinforce your understanding of Docker's capabilities for data science workflows.

Reproducible Data Science Workflows Using Docker

Data Science Dojo
Add to list
0:00 / 0:00