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There are 4 modules in this course
This course will introduce the learner to applied machine learning, focusing more on the techniques and methods than on the statistics behind these methods. The course will start with a discussion of how machine learning is different than descriptive statistics, and introduce the scikit learn toolkit through a tutorial. The issue of dimensionality of data will be discussed, and the task of clustering data, as well as evaluating those clusters, will be tackled. Supervised approaches for creating predictive models will be described, and learners will be able to apply the scikit learn predictive modelling methods while understanding process issues related to data generalizability (e.g. cross validation, overfitting). The course will end with a look at more advanced techniques, such as building ensembles, and practical limitations of predictive models. By the end of this course, students will be able to identify the difference between a supervised (classification) and unsupervised (clustering) technique, identify which technique they need to apply for a particular dataset and need, engineer features to meet that need, and write python code to carry out an analysis.
This course should be taken after Introduction to Data Science in Python and Applied Plotting, Charting & Data Representation in Python and before Applied Text Mining in Python and Applied Social Analysis in Python.
This module introduces basic machine learning concepts, tasks, and workflow using an example classification problem based on the K-nearest neighbors method, and implemented using the scikit-learn library.
Notice for Auditing Learners: Assignment Submission•10 minutes
Zachary Lipton: The Foundations of Algorithmic Bias (optional)•30 minutes
1 assignment•Total 20 minutes
Module 1 Quiz•20 minutes
1 programming assignment•Total 180 minutes
Assignment 1•180 minutes
1 ungraded lab•Total 60 minutes
Module 1 Notebook•60 minutes
Module 2: Supervised Machine Learning - Part 1
Module 2•9 hours to complete
Module details
This module delves into a wider variety of supervised learning methods for both classification and regression, learning about the connection between model complexity and generalization performance, the importance of proper feature scaling, and how to control model complexity by applying techniques like regularization to avoid overfitting. In addition to k-nearest neighbors, this week covers linear regression (least-squares, ridge, lasso, and polynomial regression), logistic regression, support vector machines, the use of cross-validation for model evaluation, and decision trees.
Introduction to Supervised Machine Learning•17 minutes
Overfitting and Underfitting•12 minutes
Supervised Learning: Datasets•5 minutes
K-Nearest Neighbors: Classification and Regression•13 minutes
Linear Regression: Least-Squares•18 minutes
Linear Regression: Ridge, Lasso, and Polynomial Regression•27 minutes
Logistic Regression•13 minutes
Linear Classifiers: Support Vector Machines•14 minutes
Multi-Class Classification•7 minutes
Kernelized Support Vector Machines•19 minutes
Cross-Validation•12 minutes
Decision Trees•20 minutes
One-Hot Encoding (Optional)•14 minutes
2 readings•Total 20 minutes
A Few Useful Things to Know about Machine Learning•10 minutes
Ed Yong: Genetic Test for Autism Refuted (optional)•10 minutes
2 assignments•Total 40 minutes
Assignment 2 - Follow-up •10 minutes
Module 2 Quiz•30 minutes
1 programming assignment•Total 180 minutes
Assignment 2•180 minutes
2 ungraded labs•Total 120 minutes
Module 2 Notebook•60 minutes
Classifier Visualization Playspace•60 minutes
Module 3: Evaluation
Module 3•7 hours to complete
Module details
This module covers evaluation and model selection methods that you can use to help understand and optimize the performance of your machine learning models.
Model Selection: Optimizing Classifiers for Different Evaluation Metrics•13 minutes
Model Calibration (Optional)•31 minutes
2 readings•Total 20 minutes
Practical Guide to Controlled Experiments on the Web (optional)•10 minutes
Note on Assignment 3•10 minutes
1 assignment•Total 28 minutes
Module 3 Quiz•28 minutes
1 programming assignment•Total 180 minutes
Assignment 3•180 minutes
1 ungraded lab•Total 60 minutes
Module 3 Notebook•60 minutes
Module 4: Supervised Machine Learning - Part 2
Module 4•9 hours to complete
Module details
This module covers more advanced supervised learning methods that include ensembles of trees (random forests, gradient boosted trees), and neural networks (with an optional summary on deep learning). You will also learn about the critical problem of data leakage in machine learning and how to detect and avoid it.
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J
JL
5·
Reviewed on Aug 19, 2018
Concise and clear presentation of the material with the majority of time focused around using TDD to learn and practice concepts through developing solutions to open ended coding challenges.
R
RS
5·
Reviewed on Jun 9, 2020
The course was really interesting to go through. All the related assignments whether be Quizzes or the Hands-On really test the knowledge. Kudos to the mentor for teaching us in in such a lucid way.
A
AS
5·
Reviewed on Nov 26, 2020
great experience and learning lots of technique to apply on real world data, and get important and insightful information from raw data. motivated to proceed further in this domain and course as well.
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What will I get if I subscribe to this Specialization?
When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
Is financial aid available?
Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.