Data Science and Data Analytics with KNIME

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Data Science and Data Analytics with KNIME

GFU Cyrus AG
Logo GFU Cyrus AG
Provider rating: starstarstarstarstar_border 7.9 GFU Cyrus AG has an average rating of 7.9 (out of 13 reviews)

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Starting dates and places
placeKöln
27 Apr 2026 until 29 Apr 2026
check_circle Starting date guaranteed
computer Online: Zoom
27 Apr 2026 until 29 Apr 2026
check_circle Starting date guaranteed
placeKöln
27 Jul 2026 until 29 Jul 2026
computer Online: Zoom
27 Jul 2026 until 29 Jul 2026
placeKöln
12 Oct 2026 until 14 Oct 2026
computer Online: Zoom
12 Oct 2026 until 14 Oct 2026
Description

Schulungen der Extraklasse ✔ Durchführungsgarantie ✔ Trainer aus der Praxis ✔ Kostenfreies Storno ✔ 3=2 Kostenfreie Teilnahme für den Dritten ✔ Persönliche Lernumgebung ✔ Kleine Lerngruppen

Seminarziel

The goal of the 3-day training course in Data Science and Data Analytics  with KNIME is to equip participants with the knowledge and skills  needed to effectively use KNIME for data preparation, visualization,  modeling, and reporting. By the end of the course, participants should  be able to design and implement data workflows using KNIME, apply  machine learning techniques to solve analytical problems, and automate  and deploy workflows using KNIME Server. The course aims to provide a  comprehensive understanding of the concepts, techniques, and tools used  in Data Science and Data Analytics using KNIME.

Inhalt

 Introduction to Data Analytics with KNIME
  • Introduction and Contex…

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Frequently asked questions

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Didn't find what you were looking for? See also: Science, Software / System Engineering, English (FCE / CAE / CPE), Teaching Skills, and Biology.

Schulungen der Extraklasse ✔ Durchführungsgarantie ✔ Trainer aus der Praxis ✔ Kostenfreies Storno ✔ 3=2 Kostenfreie Teilnahme für den Dritten ✔ Persönliche Lernumgebung ✔ Kleine Lerngruppen

Seminarziel

The goal of the 3-day training course in Data Science and Data Analytics  with KNIME is to equip participants with the knowledge and skills  needed to effectively use KNIME for data preparation, visualization,  modeling, and reporting. By the end of the course, participants should  be able to design and implement data workflows using KNIME, apply  machine learning techniques to solve analytical problems, and automate  and deploy workflows using KNIME Server. The course aims to provide a  comprehensive understanding of the concepts, techniques, and tools used  in Data Science and Data Analytics using KNIME.

Inhalt

 Introduction to Data Analytics with KNIME
  • Introduction and Context
    • Overview of Data Science, Data Analytics, and related fields
    • Chances and Risks of Data Science
    • Tools for interactive reporting
    • Communikation and reporting
    • Tools for data analysis
  • Extract, Transform, Load (ETL) with KNIME
    • Introduction to KNIME
    • Data import from simple formats
    • Data verification
    • Merging data
    • Data cleaning
    • Data formats
    • Work documentation
    • Workflow organization
    • Data visualization
    • Data export

Data Analytics with KNIME
  • KNIME Machine Learning
    • Introduction to machine learning
    • Supervised and unsupervised learning
    • Building and evaluating classification models
    • Building and evaluating regression models
    • Tuning model parameters
  • Advanced Analytics with KNIME
    • Text mining and natural language processing
    • Time series analysis
    • Advanced visualization with KNIME
    • Workflow documentation
    • Results communication and reporting with KNIME

Advanced Data Analytics with KNIME
  • Data Science - Overview
    • Introduction to Data Science and its origins
    • The stages of analysis according to Gartner
    • Basic concepts of statistics
    • Descriptive statistics and data properties
  • Machine Learning Techniques
    • Regression, overfitting, Tree methods, Bagging, and Boosting
    • Classification methods and techniques
    • Unsupervised learning techniques
  • Advanced KNIME
    • Data streaming
    • Time and date formats
    • Looping in KNIME
    • Data import from databases locally and remotely
    • Data export to local and remote databases
    • Basic math and logical operations
  • KNIME Workflow Automation and Deployment
    • Automating KNIME workflows
    • Batch processing
    • Email notifications
    • Workflow documentation
    • Workflow maintenance
    • Workflow version control
    • Deploying workflows to servers
    • Deploying workflows as web services
    • Integrating KNIME with other data tools and systems
    • Automating data workflows with KNIME Server
    • Integrating KNIME with other analytics tools (e.g. R, Python)
    • Deploying KNIME workflows to cloud platforms (e.g. AWS, Azure)

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There are no frequently asked questions yet. If you have any more questions or need help, contact our customer service.