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Beginnt 5 June 2026 04:00
Endet 5 June 2026
00
Tage
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Stunden
00
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Sekunden
7 hours 23 minutes
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Übersicht
Machine Learning, python, statistics, data science, machine learning python, python data science, machine learning a-z, data scientist, r, python for data science |
Lehrplan
- Introduction to Machine Learning and Heart Disease
- Python for Data Science
- Data Preprocessing
- Exploratory Data Analysis (EDA)
- Introduction to Statistics for Machine Learning
- Supervised Learning: Classification
- Model Evaluation and Validation
- Advanced Machine Learning Techniques
- Implementation with R and Python
- Project: Heart Attack Prediction Analysis
- Conclusion and Future Directions
- Capstone Presentation
Overview of machine learning in healthcare
Understanding the dataset
Python setup and essential libraries (Pandas, NumPy, Matplotlib, Seaborn)
Loading and exploring data
Handling missing values
Feature scaling and normalization
Categorical data encoding
Statistical summary and visualization
Feature correlation and importance
Basic statistical concepts
Probability and distributions
Hypothesis testing
Overview of classification algorithms
Logistic regression
Decision trees and random forests
Train-test split and cross-validation
Evaluation metrics: accuracy, precision, recall, F1-score, ROC-AUC
Hyperparameter tuning
Ensemble methods (Bagging, Boosting)
Comparative analysis using R and Python
Code examples and best practices
Project overview and objectives
Step-by-step implementation
Model deployment strategies
Summary of key concepts
Exploring advanced topics: deep learning, model interpretability
Resources for continued learning
Preparing a project report
Presentation skills and peer feedback
Unterrichtet von
Oak Academy and OAK Academy Team
Fachgebiete
Data Science