Create machine learning models
Offered By: Microsoft via Microsoft Learn
Course Description
Overview
- Module 1: Data exploration and analysis is at the core of data science. Data scientists require skills in languages like Python to explore, visualize, and manipulate data.
- Common data exploration and analysis tasks.
- How to use Python packages like NumPy, Pandas, and Matplotlib to analyze data.
- Module 2: Regression is a commonly used kind of machine learning for predicting numeric values.
- When to use regression models.
- How to train and evaluate regression models using the Scikit-Learn framework.
- Module 3: Train and evaluate classification models
- When to use classification
- How to train and evaluate a classification model using the Scikit-Learn framework
- Module 4: Clustering is a kind of machine learning that is used to group similar items into clusters.
- When to use clustering
- How to train and evaluate a clustering model using the scikit-learn framework
- Module 5: Train and evaluate deep learning models
- Basic principles of deep learning
- How to train a deep neural network (DNN) using PyTorch or Tensorflow
- How to train a convolutional neural network (CNN) using PyTorch or Tensorflow
- How to use transfer learning to train a convolutional neural network (CNN) with PyTorch or Tensorflow
In this module, you will learn:
In this module, you'll learn:
In this module, you'll learn:
In this module, you'll learn:
In this module, you will learn:
Syllabus
- Module 1: Explore and analyze data with Python
- Introduction
- Explore data with NumPy and Pandas
- Exercise - Explore data with NumPy and Pandas
- Visualize data
- Exercise - Visualize data with Matplotlib
- Examine real world data
- Exercise - Examine real world data
- Knowledge check
- Summary
- Module 2: Train and evaluate regression models
- Introduction
- What is regression?
- Exercise - Train and evaluate a regression model
- Discover new regression models
- Exercise - Experiment with more powerful regression models
- Improve models with hyperparameters
- Exercise - Optimize and save models
- Knowledge check
- Summary
- Module 3: Train and evaluate classification models
- Introduction
- What is classification?
- Exercise - Train and evaluate a classification model
- Evaluate classification models
- Exercise - Perform classification with alternative metrics
- Create multiclass classification models
- Exercise - Train and evaluate multiclass classification models
- Knowledge check
- Summary
- Module 4: Train and evaluate clustering models
- Introduction
- What is clustering?
- Exercise - Train and evaluate a clustering model
- Evaluate different types of clustering
- Exercise - Train and evaluate advanced clustering models
- Knowledge check
- Summary
- Module 5: Train and evaluate deep learning models
- Introduction
- Deep neural network concepts
- Exercise - Train a deep neural network
- Convolutional neural networks
- Exercise - Train a convolutional neural network
- Transfer learning
- Exercise - Use transfer learning
- Knowledge check
- Summary
Tags
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