KNIME for Data Science and Data Cleaning

Data Science with KNIME , How to do data cleaning with KNIME, AI Machine learning with KNIME, ETL with KNIME, data prep
4.52 (47 reviews)
Udemy
platform
English
language
IT Certification
category
instructor
KNIME for Data Science and Data Cleaning
361
students
3 hours
content
Mar 2025
last update
$29.99
regular price

Why take this course?

🚀 Master Data Science with KNIME: From Cleaning to AI 📊


Course Headline:

Data Science with KNIME®: Elevate Your Skills in Data Cleaning, ETL & AI Machine Learning


Introduction:

Hello and welcome back, data enthusiasts! 🌟

We all know that the heart of every data science project is its data preparation phase. This critical step often involves meticulous cleaning, transforming, and preparing datasets for analysis or machine learning. It can be a labyrinth of tedious tasks that slow down the entire process. But what if there was a way to streamline this workflow and save precious time?

Enter KNIME®: your powerful ally in the world of data science. 🛠️✨


Why KNIME® for Data Preparation?

  • Visual Interface: Embrace the simplicity of a drag-and-drop workflow without complex coding. 👩‍💻🧪
  • Versatility: Use advanced scripting in R, Python, or Java when you want to, or skip the code entirely for a no-coding solution. 📝➡️🛫
  • Cost-Effective: With KNIME® Desktop, you get a robust toolset completely free of charge! 💰🎉

Course Overview:

This course is your next step if you've already taken the introductory KNIME® classes:

  1. "KNIME - A Crash Course for Beginners"
  2. "Data Science and Data Preparation with KNIME®"

Building on these foundations, this course will elevate your skills further. 📈🚀


What You'll Learn:

  • Advanced KNIME Nodes: Explore a range of additional nodes that will expand your data processing capabilities. 🔍
  • Data Cleaning Challenges: Tackle real-world data cleaning scenarios and master the art of preparing messy datasets for analysis. 🧽➡️✨
  • Pretrained TensorFlow Models in KNIME®: Integrate pre-trained models to leverage AI capabilities within your KNIME® workflow (includes Python coding). 🤖💻
  • Natural Language Processing (NLP) with KNIME®: Perform fundamental NLP tasks using only KNIME nodes, no extra coding required. 🗣️📚

Prerequisites:

While this course focuses on building upon previous KNIME® knowledge, a section covers Python integration. If you're new to Python or need a refresher on the basics within KNIME®, we recommend starting with the "KNIME - A Crash Course for Beginners" before diving in. 🏗️✨


Join Us on this Data Adventure!

Are you ready to take your data preparation skills from good to great with KNIME®? Let's embark on this exciting journey together and unleash the full potential of your data science capabilities. 🌐🤗

Enroll now and transform the way you handle data! 🎓✨


Conclusion:

With KNIME®, you're not just learning a tool; you're unlocking a new level of efficiency and innovation in your data science projects. Whether you're an aspiring data scientist or a seasoned professional looking to optimize your workflow, this course will provide you with the skills to handle data like a pro.

Dive into the world of KNIME® today and let your data tell a story like never before! 📊🎉


Note: This course assumes that learners have a basic understanding of KNIME's interface, data import, and filter nodes from previous courses. If you're starting fresh, make sure to complete the "KNIME - A Crash Course for Beginners" first! 🚦🎓

Course Gallery

KNIME for Data Science and Data Cleaning – Screenshot 1
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KNIME for Data Science and Data Cleaning – Screenshot 4
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Related Topics

3475454
udemy ID
04/09/2020
course created date
16/09/2020
course indexed date
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