Course Outline

Introduction

Getting Started with Knime

  • What is KNIME?
  • KNIME Analytics
  • KNIME Server

Machine Learning

  • Computational learning theory
  • Computer algorithms for computational experience

Preparing the Development Environment

  • Installing and configuring KNIME

KNIME Nodes

  • Adding nodes
  • Accessing and reading data
  • Merging, splitting, and filtering data
  • Grouping and pivoting data
  • Cleaning data

Modeling

  • Creating workflows
  • Importing data
  • Preparing data
  • Visualizing data
  • Creating a decision tree model
  • Working with regression models
  • Predicting data
  • Comparing and matching data

Learning Techniques

  • Working with random forest techniques
  • Using polynomial regression
  • Assigning classes
  • Evaluating models

Summary and Conclusion

Requirements

  • Experience with Python
  • R experience

Audience

  • Data Scientists
 14 Hours

Number of participants



Price per participant

Testimonials (5)

Related Courses

Introduction to Data Visualization with Tidyverse and R

7 Hours

Data Analysis with Python, Pandas and Numpy

14 Hours

Accelerating Python Pandas Workflows with Modin

14 Hours

Machine Learning with Python and Pandas

14 Hours

Scaling Data Analysis with Python and Dask

14 Hours

FARM (FastAPI, React, and MongoDB) Full Stack Development

14 Hours

Developing APIs with Python and FastAPI

14 Hours

Scientific Computing with Python SciPy

7 Hours

Game Development with PyGame

7 Hours

Web application development with Flask

14 Hours

Advanced Flask

14 Hours

Build REST APIs with Python and Flask

14 Hours

GUI Programming with Python and Tkinter

14 Hours

Kivy: Building Android Apps with Python

7 Hours

GUI Programming with Python and PyQt

21 Hours

Related Categories

1