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  • [MUSIC PLAYING]

  • JAKE VANDERPLAS: Hi, and welcome to this video series

  • on Google Colab.

  • I'm Jake VanderPlas, and I'll be your guide today

  • as we look at what Colab is all about.

  • Google Colab is an executable document

  • that lets you write, run, and share code within Google Drive.

  • If you're familiar with the popular Jupyter project,

  • you can think of Colab as a Jupyter notebook

  • stored in Google Drive.

  • A notebook document is composed of cells, each of which

  • can contain code, text, images, and more.

  • Colab connects your notebook to a cloud-based runtime,

  • meaning you can execute Python code without any required

  • setup on your own machine.

  • Additional code cells are executed

  • using that same runtime, resulting

  • in a rich, interactive coding experience in which you

  • can use any of the functionality that Python offers.

  • For example, here we define a variable containing

  • a range of 10 numbers.

  • In the next cell, we loop through this range,

  • printing the square of each number.

  • For convenience, we use the Shift-Enter shortcut

  • rather than the Play button to execute the cell.

  • Cell outputs are not limited to simple text, however.

  • They can contain any number of dynamic, rich outputs.

  • For example, we can search Colab's built-in library

  • of code snippets and insert code to create an interactive data

  • visualization.

  • This particular visualization is created

  • with Altair, one of several third-party visualization

  • libraries that Colab supports.

  • Colab notebooks can be shared like a Google Doc,

  • and for this purpose it's useful to use

  • text cells to provide a narrative around the code

  • you've executed.

  • Text cells are formatted using Markdown, a plain text document

  • format that's rendered on the page.

  • Markdown format is simple and powerful,

  • allowing you to add headings, paragraphs, lists,

  • and even mathematical formulae.

  • If you would like to share your notebooks with others,

  • you can do so via Google Drive sharing

  • or even by exporting your notebook to GitHub.

  • The notebook is stored in the standard Jupyter Notebook

  • format, and so the notebooks you create

  • can be viewed and executed in Jupyter Notebook, JupyterLab,

  • and other compatible frameworks.

  • The convenience of sharing notebooks

  • means that you can find and explore

  • many interesting notebooks around the web.

  • One useful collection is the Seedbank project

  • at research.google.com/seedbank.

  • For example, the Neural Style Transfer seed

  • shows how to use deep learning to transfer styles

  • between images and includes a link

  • to a Colab notebook where you can run and modify the code.

  • To learn more about Colab, visit colab.research.google.com

  • and find the Welcome notebook, where

  • you will find links to tutorials and other info

  • about Jupyter and Colab notebooks.

  • You can also find the remaining videos

  • in this series, which will explore Colab in more depth.

  • In the next video, my colleague Lawrence

  • will explore how to install TensorFlow using Colab

  • and how to use different runtimes

  • to access things like the GPU.

  • See you there.

  • Hi, I'm Jake.

  • I'm a software engineer on the Google Colab project,

  • and we've got lots of great videos for you about Colab.

  • So feel free to hit that Subscribe button.

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B1 中級

開始使用Google Colaboratory(編碼TensorFlow)。 (Get started with Google Colaboratory (Coding TensorFlow))

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    林宜悉 發佈於 2021 年 01 月 14 日
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