Spaces of rs1
-
Data Science Guide
Last edited
-
Public
Last edited
-
Public Exercises
Last edited
-
Public
Last edited
-
Digital Healthcare
KNIME solutions for classic problems on Digital Health
Last edited
-
Marketing Analytics Webinar 26th April 2022
Last edited
-
Machine Learning and Marketing
This live repository contains example workflows of common data science problems in Marketing Analytics. The original task was explained in: F. Villarroel Ordenes & R. Silipo, “Machine learning for marketing on the KNIME Hub: The development of a live repository for marketing applications”, Journal of Business Research 137(1):393-410, DOI: 10.1016/j.jbusres.2021.08.036. Please cite this article, if you use any of the workflows in the repository.
Last edited
-
Public
Last edited
-
Codeless Deep Learning with KNIME
Please log in to be able to donwlonad all workflows at once.
Last edited
-
Academic Alliance
This space contains materials (example workflows, assignments, etc.) for teaching with KNIME Analytics Platform.
Last edited
-
Intro to DL - Webinar
Last edited
-
Just KNIME It!
Solutions for the "Just KNIME It!" challenges, uploaded weekly to this Hub space.
Last edited
-
Just KNIME It! Datasets
Datasets for the "Just KNIME It!" challenges.
Last edited
-
Beginners Space
The "KNIME Cheat Sheet: Building a KNIME Workflow for Beginners" is a great starting point for Beginners to start learning about KNIME. With this dedicated space, we showcase the usage of nodes mentioned in the Cheat Sheet to build simple workflows. The workflows are segregated into 5 categories: Read, Explore, Transform, Analyze and Deploy which is in line with the node categories defined in the Cheat Sheet. How to use this Space? Go to the "01_Read" folder and drag workflows to your KNIME Analytics Platform to learn reading data from the various file systems into KNIME, likewise go to the other folders and learn how to explore, transform, analyze data and then deploy using KNIME Building a KNIME Workflow for Beginners Cheat Sheet is available for download at knime.com/cheat-sheets.
Last edited