Placeholder Image

字幕列表 影片播放

  • [MUSIC PLAYING]

  • EWA MATEJSKA: Hi, everybody.

  • Thank you for joining us.

  • I'm Ewa Matejska, a technical program

  • manager on the TensorFlow team.

  • GAL OSHRI: I'm Gal Oshri, a product

  • manager on the TensorFlow team.

  • EWA MATEJSKA: So tell me, what's TensorBoard?

  • GAL OSHRI: So TensorBoard is TensorFlow's visualization tool

  • kit.

  • It is a popular tool for ML researchers and engineers

  • to understand their ML experiment results,

  • from tracking metrics to visualizing the model,

  • inspecting parameters, embeddings, and a lot more.

  • EWA MATEJSKA: How do I learn more about TensorBoard?

  • GAL OSHRI: So the best place to go is

  • to tensorflow.org/tensorboard, where we have a variety

  • of different tutorials you can easily follow to understand

  • what TensorBoard offers for you.

  • Each of these tutorials runs in the Google Colab,

  • so you can easily click, run Google Colab,

  • and then view that tutorial and run it yourself

  • to see the results and open TensorBoard directly

  • within the Colab.

  • EWA MATEJSKA: So are these available to try right now?

  • GAL OSHRI: Absolutely.

  • So if you go to the tensorflow.org/tensorboard

  • website, you can see all those tutorials, click on them,

  • and run them in Google Colab.

  • EWA MATEJSKA: Fantastic.

  • So what is new this year from last year?

  • GAL OSHRI: Absolutely.

  • So late last year, we launched tensorboard.dev.

  • We noticed a lot of people were taking screenshots

  • of their TensorBoard and sharing it in papers and GitHub repos

  • and blog posts and so on.

  • Now, the problem is that a screenshot

  • is not interactive and doesn't convey all the information.

  • We just saw that TensorBoard has so many capabilities,

  • but a screenshot just captures one part of that.

  • So we wanted to make it easy for people

  • to upload their TensorBoard logs and get a link that they can

  • then share with everyone and give them

  • the full experience of their TensorBoard.

  • EWA MATEJSKA: That sounds awesome.

  • Can you show me how to actually do that?

  • GAL OSHRI: Absolutely.

  • So if you go to TensorBoard.dev, you'll

  • learn a bit more about what TensorBoard.dev offers.

  • And you can click on the example Colab to learn how to get

  • started.

  • So over here, you can see that we

  • have a very simple model that we're

  • training on the MNIST data set.

  • And then later, we have the TensorBoard.dev upload command.

  • This takes the logs that I want to upload, as well

  • as, as of last week, I can include a name

  • and description to the experiment to give a little bit

  • more context.

  • If you open the TensorBoard.dev link,

  • you can immediately see, what was the Colab that

  • created this, or include a link to the GitHub repository

  • or the paper that you want to reference, or just

  • explain what is really interesting

  • about this TensorBoard.

  • So as soon as I start running this,

  • I can get a link to the TensorBoard.

  • And when I follow that link, I can open that TensorBoard

  • immediately, even if the experiment was still

  • in progress, and view those results.

  • I can now click on the top right Share button over here

  • to share it on various social media, or just copy the link

  • and include it wherever I want.

  • EWA MATEJSKA: Very cool.

  • I can't wait to share this with my mother.

  • So tell me, if there's one thing I need to take away

  • from this demo, what is it?

  • GAL OSHRI: So if you're not familiar with TensorBoard,

  • I suggest checking out tensorflow.org/tensorboard

  • to learn more about TensorBoard's capabilities

  • and how to use it.

  • If you are familiar with it and you

  • want to share your experiments, check out TensorBoard.dev

  • and follow the example Colab tutorial.

  • EWA MATEJSKA: Thank you for telling

  • me a bit more about TensorBoard and what's new.

  • And thank you for joining us.

  • GAL OSHRI: Thank you.

  • [MUSIC PLAYING]

[MUSIC PLAYING]

字幕與單字

單字即點即查 點擊單字可以查詢單字解釋

B1 中級

TensorBoard (TF Dev Summit '20) (TensorBoard (TF Dev Summit '20))

  • 4 0
    林宜悉 發佈於 2021 年 01 月 14 日
影片單字