- Machine learning introduction
- Getting started with Python
- Data processing with SciPy
- Data inspection
- Machine Learning with scikit-learn
- Azure Machine Learning Services
- Getting started with Deep Learning
Machine learning introduction
Before ML can be applied the key concepts of machine learning need to be discussed.
- Supervised versus unsupervised learning
- Machine learning methodology
- Data preparation
- Classification, regression and clustering
- Model evaluation
- Cognitive services
- Automated ML in Azure ML Services
- Working with the Azure ML Designer
Getting started with Python
This training has no Python prerequisites. So first the basics of Python are covered.
- Introducing the Python programming language
- Python environments
- Interactive development with Azure notebooks
- Variables and objects
- Common data structures: Lists, tuples, sets and dictionaries
- Creating and using classes
- LAB: Coding in Python
Data processing with SciPy
In data science its crucial to deal with tables: Loading, manipulating, data quality checks, â€¦ Dataframes can help out with that, and in this module the two most important Python packages for data manipulation are inspected: Numpy and Pandas.
- Numerical Python: Numpy
- Numpy data structures
- Pandas DataFrames
- Loading data with pandas
- Data manipulations with Pandas
- LAB: Loading and manipulating datasets in Pandas
Some pictures express more than a 1000 words. This holds in data science as well, so visualizing data is a crucial data science skill. Matplotlib is the most popular library for this. But there are additional libraries which build further upon this.
- Plotting with pandas
- Introducing the matplotlib package
- Using the seaborn package
- Creating interactive plots with Plotly
- LAB: Plotting data in Python
Machine Learning with scikit-learn
Many business problems can be tackled by basic machine learning techniques. In this module the most common machine learning approaches such as linear regression and random forests are implemented, as well as model inspection.
- Machine learning specific data preprocessing: normalization, standardization, one-hot encoding
- Classification using decision trees, logistic regression and support vector machines
- Model tuning: working with hyper-parameters
- Building regression models with linear regression, SVM's and Neural networks
- Unsupervised learning: Clustering
- LAB: Classification and Regression with scikit-learn
Azure Machine Learning Services
Machine learning on a local machine and a small dataset is one thing, running this on larger datasets or more CPU-hungry techniques can become a challenge. Another problem is deploying your model: How can we easily call the resulting model from within other applications? Azure Machine Learning Services helps answering these questions.
- Azure ML service overview
- Create a ML service workspace
- Setting up computes and datastores
- Creating and querying experiments
- Deploying and using models
- Creating and registering images
- Deploy images as web services
- LAB: Building ML models in Azure Machine Learning
Getting started with Deep Learning
From all the machine learning techniques there is one that gets popular for more challenging problems: Multiple layers of neural networks, better known as deep learning. For problems such as image recognition, speech understanding etc. this is currently the way to go. But itâ€™s from a mathematical point of view a very challenging technique. In this module the basics of deep learning are introduced.
- From Neural networks to Deep learning
- Overview of deep learning frameworks
- Getting started with the Keras framework
This course focusses on developers and data scientists who are considering the Azure stack for applying machine learning on their data.
Prior knowledge of Python or machine learning is not needed to attend this training, but some basic coding skills are handy.