Was Sie vorher wissen sollten
bevor Sie beginnen
Beginnt 4 June 2026 16:25
Endet 4 June 2026
00
Tage
00
Stunden
00
Minuten
00
Sekunden
9 hours 13 minutes
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Paid Course
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Übersicht
The course starts with a top down approach to data science projects. The first step is covering data science project management techniques and we follow CRISP-DM methodology with 6 steps below:
Lehrplan
- **Introduction to Data Science Projects**
- **Business Understanding**
- **Data Understanding**
- **Data Preparation**
- **Modeling**
- **Evaluation**
- **Deployment**
- **Case Study Application**
- **Conclusion and Course Wrap-up**
Overview of Data Science
Importance of Project Management in Data Science
Introduction to the CRISP-DM Methodology
Defining Project Objectives
Assessing Project Feasibility
Identifying Key Stakeholders
Translating Business Goals into Data Science Goals
Data Collection Techniques
Data Exploration and Profiling in Knime
Identifying Data Quality Issues
Initial Data Visualization
Data Cleaning and Preprocessing in Knime
Feature Engineering
Data Transformation Techniques
Handling Missing Data and Outliers
Choosing the Right Modeling Techniques
Building and Testing Models in Knime
Hyperparameter Tuning
Cross-validation Strategies
Model Performance Metrics
Validation and Evaluation of Model Results
Aligning with Business Objectives
Interpreting Results for Stakeholders
Model Deployment Strategies in Knime
Model Monitoring and Maintenance
Creating a Deployment Workflow in Knime
Applying CRISP-DM to a Real-world Scenario
Team-based Project Work in Knime
Presentation of Findings and Recommendations
Lessons Learned from Practicum
Tips for Continuous Learning in Data Science
Resources for Further Study in Knime and Data Science
Unterrichtet von
Prof. Dr. Şadi Evren Şeker
Fachgebiete
Data Science