You are viewing a plain text version of this content. The canonical link for it is here.
Posted to commits@beam.apache.org by da...@apache.org on 2023/02/03 16:27:00 UTC

[beam] branch users/damccorm/embedVideo created (now 9d8c73566b5)

This is an automated email from the ASF dual-hosted git repository.

damccorm pushed a change to branch users/damccorm/embedVideo
in repository https://gitbox.apache.org/repos/asf/beam.git


      at 9d8c73566b5 Embed ML video to docs

This branch includes the following new commits:

     new 9d8c73566b5 Embed ML video to docs

The 1 revisions listed above as "new" are entirely new to this
repository and will be described in separate emails.  The revisions
listed as "add" were already present in the repository and have only
been added to this reference.



[beam] 01/01: Embed ML video to docs

Posted by da...@apache.org.
This is an automated email from the ASF dual-hosted git repository.

damccorm pushed a commit to branch users/damccorm/embedVideo
in repository https://gitbox.apache.org/repos/asf/beam.git

commit 9d8c73566b5cd1bfab75082cc692a7024f6a338b
Author: Danny McCormick <da...@google.com>
AuthorDate: Fri Feb 3 11:26:53 2023 -0500

    Embed ML video to docs
---
 website/www/site/content/en/documentation/ml/overview.md | 6 +++++-
 1 file changed, 5 insertions(+), 1 deletion(-)

diff --git a/website/www/site/content/en/documentation/ml/overview.md b/website/www/site/content/en/documentation/ml/overview.md
index 37038e7e108..3b6b6eac020 100644
--- a/website/www/site/content/en/documentation/ml/overview.md
+++ b/website/www/site/content/en/documentation/ml/overview.md
@@ -24,6 +24,10 @@ Beam <3 machine learning. Being productive and successful as a machine learning
   upscaling your data pipelines as part of your MLOps ecosystem in a production environment.
 * It enables you to run your model in production on a varying data load, both in batch and streaming.
 
+<br><br>
+<iframe class="video video--medium-size" width="560" height="315" src="[https://www.youtube.com/embed/H4s7rAlk68w](https://www.youtube.com/watch?v=ga2TNdrFRoU)" frameborder="0" allowfullscreen></iframe>
+<br><br>
+
 ## AI/ML workloads
 
 Let’s take a look at the different building blocks that we need to create an end-to-end AI/ML use case and where Apache Beam can help.
@@ -91,4 +95,4 @@ You can find examples of end-to-end AI/ML pipelines for several use cases:
 * [Online Clustering in Beam](/documentation/ml/online-clustering): Demonstrates how to set up a real-time clustering pipeline that can read text from Pub/Sub, convert the text into an embedding using a transformer-based language model with the RunInference API, and cluster the text using BIRCH with stateful processing.
 * [Anomaly Detection in Beam](/documentation/ml/anomaly-detection): Demonstrates how to set up an anomaly detection pipeline that reads text from Pub/Sub in real time and then detects anomalies using a trained HDBSCAN clustering model with the RunInference API.
 * [Large Language Model Inference in Beam](/documentation/ml/large-language-modeling): Demonstrates a pipeline that uses RunInference to perform translation with the T5 language model which contains 11 billion parameters.
-* [Per Entity Training in Beam](/documentation/ml/per-entity-training): Demonstrates a pipeline that trains a Decision Tree Classifier per education level for predicting if the salary of a person is >= 50k.
\ No newline at end of file
+* [Per Entity Training in Beam](/documentation/ml/per-entity-training): Demonstrates a pipeline that trains a Decision Tree Classifier per education level for predicting if the salary of a person is >= 50k.