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In diesem Kurs gibt es 11 Module
Build the analytical skills that turn raw data into decisions leaders can act on. In this course, you will move through a complete decision-intelligence workflow — from exploring and summarizing data to running rigorous statistical tests, building production-ready predictive models, and communicating results to non-technical stakeholders.
You will learn to generate descriptive statistics and visual summaries that reveal data quality issues before they distort your analysis. You will design and execute hypothesis tests, interpret p-values in business terms, and balance Type I and Type II error trade-offs with confidence. In the modeling track, you will build and cross-validate classification models using scikit-learn, handle class imbalance with techniques like SMOTE and class weights, and apply feature-selection methods — including RFE and LASSO — to balance accuracy with interpretability.
The course culminates in an end-to-end customer lifetime value prediction project that integrates every skill into a portfolio-ready deliverable. Whether you are moving into a data analyst, business intelligence, or machine learning role, this course gives you the technical depth and communication skills to stand out.
Apply confidence-interval estimation to compare conversion rates across segments and present the statistical significance.
Das ist alles enthalten
3 Videos1 Lektüre1 Aufgabe1 Unbewertetes Labor
Infos zu Modulinhalt anzeigen
3 Videos•Insgesamt 12 Minuten
Why Statistical Confidence Matters in Business Decisions•2 Minuten
Calculating Confidence Intervals for Conversion Rate Analysis•7 Minuten
Building Confidence Intervals in Python for Segment Comparison•3 Minuten
1 Lektüre•Insgesamt 12 Minuten
Foundations of Confidence Interval Theory and Application•12 Minuten
1 Aufgabe•Insgesamt 6 Minuten
Confidence Interval Analysis Assessment•6 Minuten
1 Unbewertetes Labor•Insgesamt 18 Minuten
Segment Performance Analysis with Statistical Confidence•18 Minuten
Type I/II Error Trade-offs - Core Application
Modul 2•1 Stunde abzuschließen
Moduldetails
Evaluate Type I/II error trade-offs for a proposed test and recommend appropriate alpha and beta thresholds.
Das ist alles enthalten
2 Videos2 Lektüren2 Aufgaben
Infos zu Modulinhalt anzeigen
2 Videos•Insgesamt 11 Minuten
Calculating Optimal Alpha and Beta Thresholds•7 Minuten
Implementing Error Analysis Framework in Python•4 Minuten
2 Lektüren•Insgesamt 18 Minuten
Understanding Type I and Type II Errors in Business Context•12 Minuten
Podcast: Navigating Error Trade-offs in Real-World Business Scenarios•6 Minuten
2 Aufgaben•Insgesamt 26 Minuten
Strategic Error Management for Business Testing•18 Minuten
Error Trade-off Analysis Assessment•8 Minuten
Two-Sample t-Tests & Power Analysis - Integration & Assessment
Modul 3•1 Stunde abzuschließen
Moduldetails
Conduct a two-sample t-test in Python/R, interpret p-values, translate outcomes into plain-language business recommendations, and analyze test power under varying sample sizes.
Das ist alles enthalten
3 Videos1 Lektüre2 Aufgaben1 Unbewertetes Labor
Infos zu Modulinhalt anzeigen
3 Videos•Insgesamt 13 Minuten
Why Statistical Rigor Drives Business Success•2 Minuten
Implementing Two-Sample t-Tests for Business Decisions•7 Minuten
Building Complete Statistical Analysis in Python•3 Minuten
1 Lektüre•Insgesamt 11 Minuten
Foundations of Two-Sample t-Tests for Business Analysis•11 Minuten
2 Aufgaben•Insgesamt 21 Minuten
Two-Sample t-Tests & Power Analysis Knowledge Check•6 Minuten
Course-Level Statistical Testing and Analysis Assessment•15 Minuten
1 Unbewertetes Labor•Insgesamt 17 Minuten
Complete Statistical Analysis with Power Optimization•17 Minuten
Multiple Linear Regression - Foundation
Modul 4•1 Stunde abzuschließen
Moduldetails
Build and diagnose multiple linear regression models with proper statistical validation and remediation techniques.
Das ist alles enthalten
1 Video2 Lektüren1 Aufgabe1 Unbewertetes Labor
Infos zu Modulinhalt anzeigen
1 Video•Insgesamt 4 Minuten
Building Multiple Linear Regression Models with Python•4 Minuten
2 Lektüren•Insgesamt 19 Minuten
Multiple Linear Regression Fundamentals and Diagnostic Framework•12 Minuten
Podcast: Interpreting Regression Diagnostics for Business Decisions•7 Minuten
1 Aufgabe•Insgesamt 6 Minuten
Multiple Linear Regression Diagnostics Assessment•6 Minuten
1 Unbewertetes Labor•Insgesamt 20 Minuten
Complete Regression Analysis Pipeline with Diagnostic Validation•20 Minuten
Classification Methods - Core Application
Modul 5•1 Stunde abzuschließen
Moduldetails
Apply advanced classification methods including gradient boosting and logistic regression while handling class imbalance for optimal performance.
Das ist alles enthalten
3 Videos1 Lektüre2 Aufgaben
Infos zu Modulinhalt anzeigen
3 Videos•Insgesamt 17 Minuten
Why Classification Mastery Drives Business Success•4 Minuten
Classification Fundamentals: Logistic Regression and Gradient Boosting•9 Minuten
Implementing Classification Models with Python•3 Minuten
1 Lektüre•Insgesamt 10 Minuten
Advanced Model Evaluation Strategies for Business Applications•10 Minuten
2 Aufgaben•Insgesamt 25 Minuten
Customer Churn Model Development and Business Evaluation•18 Minuten
Classification Methods and Model Comparison Assessment•7 Minuten
Model Evaluation & Selection - Integration & Assessment
Modul 6•1 Stunde abzuschließen
Moduldetails
Evaluate and remediate class imbalance using SMOTE while documenting performance impact on F1-score for comprehensive model validation.
Das ist alles enthalten
1 Video1 Lektüre2 Aufgaben1 Unbewertetes Labor
Infos zu Modulinhalt anzeigen
1 Video•Insgesamt 4 Minuten
Implementing SMOTE and Class Weighting for Imbalanced Data•4 Minuten
1 Lektüre•Insgesamt 11 Minuten
Class Imbalance Techniques and Performance Evaluation•11 Minuten
2 Aufgaben•Insgesamt 31 Minuten
Class Imbalance Handling Assessment•6 Minuten
Comprehensive Regression and Classification Mastery Assessment•25 Minuten
1 Unbewertetes Labor•Insgesamt 20 Minuten
Advanced Class Imbalance Analysis and Model Optimization•20 Minuten
Random Forest Model Building - Foundation
Modul 7•1 Stunde abzuschließen
Moduldetails
Build cross-validated random forest models that achieve business-defined accuracy targets
Das ist alles enthalten
2 Videos1 Lektüre1 Aufgabe1 Unbewertetes Labor
Infos zu Modulinhalt anzeigen
2 Videos•Insgesamt 12 Minuten
Random Forest Implementation Strategies for Demand Forecasting•6 Minuten
Building Random Forest Models with Scikit-Learn•6 Minuten
1 Lektüre•Insgesamt 12 Minuten
Random Forest Fundamentals for Business Applications•12 Minuten
1 Aufgabe•Insgesamt 8 Minuten
Random Forest Model Building Assessment•8 Minuten
1 Unbewertetes Labor•Insgesamt 20 Minuten
Building Production-Ready Random Forest Demand Forecasting Models•20 Minuten
Model Drift Evaluation - Core Application
Modul 8•1 Stunde abzuschließen
Moduldetails
Evaluate and monitor model drift using statistical metrics to ensure long-term reliability
Das ist alles enthalten
2 Videos2 Lektüren
Infos zu Modulinhalt anzeigen
2 Videos•Insgesamt 9 Minuten
The Critical Need for Model Drift Monitoring in Business Applications•3 Minuten
Calculating PSI and KS Statistics for Production Model Monitoring•6 Minuten
2 Lektüren•Insgesamt 16 Minuten
Statistical Methods for Model Drift Detection•10 Minuten
Podcast: Implementing Monthly Model Drift Monitoring Workflows•6 Minuten
Cross-Validation Pipelines - Integration
Modul 9•1 Stunde abzuschließen
Moduldetails
Implement standardized cross-validation pipelines for multiple supervised algorithms and compare performance metrics
Das ist alles enthalten
2 Videos1 Lektüre2 Aufgaben
Infos zu Modulinhalt anzeigen
2 Videos•Insgesamt 11 Minuten
Implementing Scikit-Learn Cross-Validation Pipelines for Algorithm Comparison•6 Minuten
Building Comparative Cross-Validation Pipelines in Python•5 Minuten
1 Lektüre•Insgesamt 11 Minuten
Cross-Validation Pipeline Architecture for Algorithm Comparison•11 Minuten
2 Aufgaben•Insgesamt 23 Minuten
Comprehensive Algorithm Comparison Using Cross-Validation Pipelines•17 Minuten
You will build a complete customer lifetime value (CLV) prediction pipeline for an e-commerce company. Starting from raw transaction data, you will conduct exploratory data analysis, execute a hypothesis test comparing customer segments, build and cross-validate a classification model, apply feature selection to balance accuracy and interpretability, and deliver an executive summary memo with actionable marketing recommendations. The project integrates data summarization, statistical inference, classification modeling, and supervised learning into a single end-to-end analytical workflow.
Das ist alles enthalten
4 Lektüren1 Aufgabe
Infos zu Modulinhalt anzeigen
4 Lektüren•Insgesamt 90 Minuten
Why This Project Matters•10 Minuten
Project Requirements•10 Minuten
Assignment: Customer Lifetime Value Prediction Model •60 Minuten
Solution Key•10 Minuten
1 Aufgabe•Insgesamt 15 Minuten
Graded Quiz: Customer Lifetime Value Prediction•15 Minuten
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