Deep Dive into Data Science with KNIME Analytics Platform
In this course we will cover the major steps in a data science project. From data access, data pre-processing, and data visualization, to machine learning, model optimization, and deployment using KNIME Analytics Platform.
Outline/Structure of the Workshop
- Introduction to the data science cycle (CRISP-DM)
- Introduction to KNIME
- Reading Data
- Data Manipulation
- Data Visualization
- Machine Learning
- Model Optimization
- Exporting & Deployment
Different steps involved in a data science project and how they can be managed using the open source KNIME Analytics Platform.
Data Scientists, Data Engineers, Data Specialists, Machine Learning Engineers, Data Science Enthusiasts
Prerequisites for Attendees
This workshop has several hands-on sessions to practice what you'll learn. Please bring your laptop, ideally with KNIME Analytics Platform!
No previous KNIME experience is required.
schedule Submitted 1 year ago
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