Hub
  • Software
  • Blog
  • Forum
  • Events
  • Documentation
  • About KNIME
  • KNIME Hub
  • knime
  • Spaces
  • Examples
  • 40_Partners
  • 02_Amazon
  • 03_Amazon_Personalize_Movie_Recommendation_Example
WorkflowWorkflow

Amazon Personalize Movie Recommendation Example

Amazon Personalize Recommendation Personalization AWS Movie

Last edited: 

Drag & drop
Like
Download workflow
Copy short link
Workflow preview
This example workflow builds a recommendation model using the Amazon Personalize web services. It uses the movielens dataset which contains information about users, movies (items) and interactions of users with movies, i.e., which user has watched which movie at which time and how did he or she rate that movie. The first step is to upload the data to Amazon. We filter all the interactions out that have a rating less than 4 (out of 5) because we want the model later on to recommend only movies that the user will like. With this data, a user personalization model (solution version) is built and afterwards deployed as campaign. We can then use this campaign to make personalized movie recommendations. This workflow will run about one or two hours. It follows the example of the blog article, Amazon Personalize Real-Time Personalization and Recommendation for Everyone. See the link below to the specific article. Note: You need to have AWS credentials and authenticate with the Amazon Authentication node in order to use the Amazon Personalize nodes.

External resources

  • KNIME and AWS Machine Learning Services Integration
  • Amazon Personalize Real-Time Personalization and Recommendation for Everyone
  • Amazon Personalize

Used extensions & nodes

Created with KNIME Analytics Platform version 4.1.0
  • Go to item
    KNIME Amazon Cloud Connectors Trusted extension

    KNIME AG, Zurich, Switzerland

    Version 4.1.0

  • Go to item
    KNIME Amazon Machine Learning Integration Trusted extension

    KNIME AG, Zurich, Switzerland

    Version 4.1.0

  • Go to item
    KNIME Core Trusted extension

    KNIME AG, Zurich, Switzerland

    Version 4.1.0

  1. Go to item
  2. Go to item
  3. Go to item
  4. Go to item
  5. Go to item
  6. Go to item

Legal

By using or downloading the workflow, you agree to our terms and conditions.

Discussion
Discussions are currently not available, please try again later.

KNIME
Open for Innovation

KNIME AG
Hardturmstrasse 66
8005 Zurich, Switzerland
  • Software
  • Getting started
  • Documentation
  • E-Learning course
  • Solutions
  • KNIME Hub
  • KNIME Forum
  • Blog
  • Events
  • Partner
  • Developers
  • KNIME Home
  • KNIME Open Source Story
  • Careers
  • Contact us
Download KNIME Analytics Platform Read more on KNIME Server
© 2022 KNIME AG. All rights reserved.
  • Trademarks
  • Imprint
  • Privacy
  • Terms & Conditions
  • Credits