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⇱ AI Workflow: Machine Learning, Visual Recognition and NLP | Coursera


AI Workflow: Machine Learning, Visual Recognition and NLP

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AI Workflow: Machine Learning, Visual Recognition and NLP

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Gain insight into a topic and learn the fundamentals.
4.5

96 reviews

Advanced level
Designed for those already in the industry
1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

Gain insight into a topic and learn the fundamentals.
4.5

96 reviews

Advanced level
Designed for those already in the industry
1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

Build your subject-matter expertise

This course is part of the IBM AI Enterprise Workflow Specialization
When you enroll in this course, you'll also be enrolled in this Specialization.
  • Learn new concepts from industry experts
  • Gain a foundational understanding of a subject or tool
  • Develop job-relevant skills with hands-on projects
  • Earn a shareable career certificate

There are 2 modules in this course

This is the fourth course in the IBM AI Enterprise Workflow Certification specialization.    You are STRONGLY encouraged to complete these courses in order as they are not individual independent courses, but part of a workflow where each course builds on the previous ones. 

Course 4 covers the next stage of the workflow, setting up models and their associated data pipelines for a hypothetical streaming media company.  The first topic covers the complex topic of evaluation metrics, where you will learn best practices for a number of different metrics including regression metrics, classification metrics, and multi-class metrics, which you will use to select the best model for your business challenge.  The next topics cover best practices for different types of models including linear models, tree-based models, and neural networks.  Out-of-the-box Watson models for natural language understanding and visual recognition will be used.  There will be case studies focusing on natural language processing and on image analysis to provide realistic context for the model pipelines.   By the end of this course you will be able to: Discuss common regression, classification, and multilabel classification metrics Explain the use of linear and logistic regression in supervised learning applications Describe common strategies for grid searching and cross-validation Employ evaluation metrics to select models for production use Explain the use of tree-based algorithms in supervised learning applications Explain the use of Neural Networks in supervised learning applications Discuss the major variants of neural networks and recent advances Create a neural net model in Tensorflow Create and test an instance of Watson Visual Recognition Create and test an instance of Watson NLU Who should take this course? This course targets existing data science practitioners that have expertise building machine learning models, who want to deepen their skills on building and deploying AI in large enterprises. If you are an aspiring Data Scientist, this course is NOT for you as you need real world expertise to benefit from the content of these courses.   What skills should you have? It is assumed that you have completed Courses 1 through 3 of the IBM AI Enterprise Workflow specialization and you have a solid understanding of the following topics prior to starting this course: Fundamental understanding of Linear Algebra; Understand sampling, probability theory, and probability distributions; Knowledge of descriptive and inferential statistical concepts; General understanding of machine learning techniques and best practices; Practiced understanding of Python and the packages commonly used in data science: NumPy, Pandas, matplotlib, scikit-learn; Familiarity with IBM Watson Studio; Familiarity with the design thinking process.

This week covers model selection, evaluation and performance metrics. The focus is on evaluating models iteratively for improvements. You will survey the landscape of evaluation metrics and linear models in order to ensure you are comfortable using implementing baseline models. The materials build up to the case study where you will use natural language processing in a classification setting. When you are done iterating on your model you will connect its model performance to business metrics as an approach to better understand model utility.

What's included

6 videos19 readings6 assignments1 ungraded lab

6 videosβ€’Total 18 minutes
  • Course Objectivesβ€’3 minutes
  • Evaluation Metricsβ€’3 minutes
  • Introduction to Predictive Linear and Logistic Regressionβ€’3 minutes
  • Linear Modelsβ€’4 minutes
  • Watson Natural Language Understanding Service Overviewβ€’3 minutes
  • Case Study Introductionβ€’1 minute
19 readingsβ€’Total 203 minutes
  • Evaluation Metrics: Through the Eyes of our Working Exampleβ€’3 minutes
  • Evaluation Metricsβ€’3 minutes
  • Regression Metricsβ€’5 minutes
  • Classification Metricsβ€’10 minutes
  • Multi-class and Multi-label Metricsβ€’3 minutes
  • Model Performance: Through the Eyes of our Working Exampleβ€’3 minutes
  • Generalizing Well to Unseen Dataβ€’3 minutes
  • Model Plots, Bias, Varianceβ€’4 minutes
  • Relating the Evaluation Metric to a Business Metricβ€’4 minutes
  • Linear Models: Through the Eyes of our Working Exampleβ€’3 minutes
  • Generalized Linear Modelsβ€’5 minutes
  • Linear and Logistic Regressionβ€’5 minutes
  • Regularized Regressionβ€’3 minutes
  • Stochastic Gradient Descent Classifierβ€’3 minutes
  • Watson Natural Language Understanding: Through the eyes of our Working Exampleβ€’3 minutes
  • Watson Developer Cloud Python SDKβ€’10 minutes
  • Performance and Business Metrics: Through the Eyes of our Working Exampleβ€’3 minutes
  • Getting Started with Performance and Business Metrics Case Study (Hands-on)β€’120 minutes
  • Summary/Reviewβ€’10 minutes
6 assignmentsβ€’Total 160 minutes
  • End of Module Quizβ€’10 minutes
  • Check for Understandingβ€’30 minutes
  • Check for Understandingβ€’30 minutes
  • Check for Understandingβ€’30 minutes
  • Check for Understandingβ€’30 minutes
  • Check for Understandingβ€’30 minutes
1 ungraded labβ€’Total 60 minutes
  • Case Study Answer Key Notebookβ€’60 minutes

This week is primarily focused on building supervised learning models. We will survey available methods in two popular and effective areas of machine learning: Tree based algorithms and deep learning algorithms. We will cover the use of tree based methods like random forests and boosting along with other ensemble approaches. Many of these approaches serve as an important middle layer between interpretable linear models and difficult to interpret deep-learning models. For deep learning we will use a pre-built visual recognition model and use TensorFlow to demonstrate how to build, tune, and iterate on neural networks. We will also make sure that you understand popular neural network architectures. In the case study you will implement a convolutional neural network and ready it for deployment.

What's included

5 videos14 readings5 assignments1 ungraded lab

5 videosβ€’Total 15 minutes
  • Tree Based Methodsβ€’2 minutes
  • Introduction to Tree Based Methodsβ€’3 minutes
  • Neural Networksβ€’3 minutes
  • Introduction to neural networksβ€’5 minutes
  • IBM Watson Visual Recognition Overviewβ€’2 minutes
14 readingsβ€’Total 176 minutes
  • Tree-based Methods: Through the Eyes of our Working Exampleβ€’3 minutes
  • Decision Treesβ€’4 minutes
  • Bagging and Random Forestsβ€’4 minutes
  • Boostingβ€’2 minutes
  • Ensemble Learningβ€’4 minutes
  • Neural networks: Through the eyes of our Working Exampleβ€’3 minutes
  • Multilayer perceptron (MLP)β€’4 minutes
  • Neural network architecturesβ€’4 minutes
  • On interpretabilityβ€’2 minutes
  • Watson Visual Recognition: Through the Eyes of our Working Exampleβ€’3 minutes
  • Watson Developer Cloud Python SDKβ€’10 minutes
  • TensorFlow: Through the Eyes of our Working Exampleβ€’3 minutes
  • Getting Started with Convolutional Neural Networks and TensorFlow (Hands-on)β€’120 minutes
  • Summary/Reviewβ€’10 minutes
5 assignmentsβ€’Total 130 minutes
  • End of Module Quizβ€’10 minutes
  • Check for Understandingβ€’30 minutes
  • Check for Understandingβ€’30 minutes
  • Check for Understandingβ€’30 minutes
  • Check for Understandingβ€’30 minutes
1 ungraded labβ€’Total 60 minutes
  • Case Study Answer Key Notebookβ€’60 minutes

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Instructor ratings
4.2 (15 ratings)
13 Coursesβ€’168,824 learners

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Showing 3 of 96

PL
Β·

Reviewed on May 2, 2020

The teaching materials are well presented and clear.Just that the level of this course is a bit not advanced enough.

BG
Β·

Reviewed on Sep 21, 2020

Its pretty difficult to follow up with this course. We must have a good knowledge on Neural n/ws prior starting this course.

NM
Β·

Reviewed on Jul 6, 2020

Dear Team ,Namaste Everyone !! Excellent Course structure - ML, VR and NLP.Great Learning Module Design by All Faculty. Thanks to everyone!!!

Frequently asked questions

To access the course materials, assignments and to earn a Certificate, you will need to purchase the Certificate experience when you enroll in a course. You can try a Free Trial instead, or apply for Financial Aid. The course may offer 'Full Course, No Certificate' instead. This option lets you see all course materials, submit required assessments, and get a final grade. This also means that you will not be able to purchase a Certificate experience.

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.

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