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Stufe „Fortgeschritten“
Ca. 21 Stunden zum Abschließen
Englisch
Untertitel: Englisch

Karriereergebnisse der Lernenden

56%

nahm einen neuen Beruf nach Abschluss dieser Kurse auf

60%

ziehen Sie für Ihren Beruf greifbaren Nutzen aus diesem Kurs

17%

erhalten Sie eine Gehaltserhöhung oder Beförderung
Zertifikat zur Vorlage
Erhalten Sie nach Abschluss ein Zertifikat
100 % online
Beginnen Sie sofort und lernen Sie in Ihrem eigenen Tempo.
Flexible Fristen
Setzen Sie Fristen gemäß Ihrem Zeitplan zurück.
Stufe „Fortgeschritten“
Ca. 21 Stunden zum Abschließen
Englisch
Untertitel: Englisch

von

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IBM

Lehrplan - Was Sie in diesem Kurs lernen werden

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Woche
1

Woche 1

5 Stunden zum Abschließen

Setting the stage

5 Stunden zum Abschließen
10 Videos (Gesamt 59 min), 2 Lektüren, 3 Quiz
10 Videos
Linear algebra5m
High Dimensional Vector Spaces2m
Supervised vs. Unsupervised Machine Learning4m
How ML Pipelines work3m
Introduction to SparkML20m
What is SystemML (1/2) ?3m
What is SystemML (2/2) ?6m
How to use Apache SystemML in IBM Watson Studio4m
Extract - Transform - Load3m
2 Lektüren
Object Store10m
IMPORTANT: How to submit your programming assignments10m
2 praktische Übungen
Machine Learning12m
ML Pipelines6m
Woche
2

Woche 2

6 Stunden zum Abschließen

Supervised Machine Learning

6 Stunden zum Abschließen
26 Videos (Gesamt 131 min), 1 Lektüre, 10 Quiz
26 Videos
LinearRegression with Apache SparkML6m
Linear Regression using Apache SystemML3m
Batch Gradient Descent using Apache SystemML8m
The importance of validation data to prevent overfitting3m
Important evaluation measures2m
Logistic Regression1m
LogisticRegression with Apache SparkML4m
Probabilities refresher6m
Rules of probability and Bayes' theorem10m
The Gaussian distribution4m
Bayesian inference4m
Bayesian inference - example9m
Maximum a posteriori estimation5m
Bayesian inference in Python8m
Why is Naive Bayes "naive"7m
Support Vector Machines3m
Support Vector Machines using Apache SparkML8m
Crossvalidation1m
Hyper-parameter tuning using GridSearch3m
Decision Trees2m
Bootstrap Aggregation (Bagging) and RandomForest1m
Boosting and Gradient Boosted Trees6m
Gradient Boosted Trees with Apache SparkML2m
Hyperparameter-Tuning using GridSeach and CrossValidation in Apache SparkML on Gradient Boosted Trees3m
Regularization3m
1 Lektüre
Classification evaluation measures10m
9 praktische Übungen
Linear Regression6m
Splitting and Overfitting2m
Evaluation Measures2m
Logistic Regression2m
Naive Bayes16m
Support Vector Machines2m
Testing, X-Validation, GridSearch4m
Enselble Learning4m
Regularization4m
Woche
3

Woche 3

5 Stunden zum Abschließen

Unsupervised Machine Learning

5 Stunden zum Abschließen
13 Videos (Gesamt 67 min), 1 Lektüre, 3 Quiz
13 Videos
Introduction to Clustering: k-Means3m
Hierarchical Clustering3m
Density-based clustering (Guest Lecture Saeed Aghabozorgi)4m
Using K-Means in Apache SparkML2m
Curse of Dimensionality9m
Dimensionality Reduction4m
Principal Component Analysis6m
Principal Component Analysis (demo)6m
Covariance matrix and direction of greatest variance8m
Eigenvectors and eigenvalues8m
Projecting the data4m
PCA in SystemML2m
1 Lektüre
Reading on Clustering Evaluation and Assessment10m
2 praktische Übungen
Clustering4m
PCA16m
Woche
4

Woche 4

5 Stunden zum Abschließen

Digital Signal Processing in Machine Learning

5 Stunden zum Abschließen
13 Videos (Gesamt 108 min)
13 Videos
Fourier Transform in action6m
Signal generation and phase shift11m
The maths behind Fourier Transform11m
Discrete Fourier Transform16m
Fourier Transform in SystemML15m
Fast Fourier Transform7m
Nonstationary signals5m
Scaleograms7m
Continous Wavelet Transform3m
Scaling and translation3m
Wavelets and Machine Learning3m
Wavelets transform and SVM demo6m
2 praktische Übungen
Fourier Transform16m
Wavelet Transform16m

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Über den Spezialisierung Advanced Data Science with IBM

As a coursera certified specialization completer you will have a proven deep understanding on massive parallel data processing, data exploration and visualization, and advanced machine learning & deep learning. You'll understand the mathematical foundations behind all machine learning & deep learning algorithms. You can apply knowledge in practical use cases, justify architectural decisions, understand the characteristics of different algorithms, frameworks & technologies & how they impact model performance & scalability. If you choose to take this specialization and earn the Coursera specialization certificate, you will also earn an IBM digital badge. To find out more about IBM digital badges follow the link ibm.biz/badging....
Advanced Data Science with IBM

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