AI Workflow: Machine Learning, Visual Recognition and NLP

  • 4.5
Approx. 14 hours to complete

Course Summary

Learn how to create an end-to-end AI workflow using machine learning, VR, and NLP technologies with this comprehensive course from IBM.

Key Learning Points

  • Understand the AI workflow and its applications in various industries
  • Learn how to use machine learning algorithms for data analysis and decision making
  • Explore VR and NLP technologies and their potential in creating immersive experiences and enhancing communication

Related Topics for further study


Learning Outcomes

  • Create an end-to-end AI workflow using machine learning, VR, and NLP technologies
  • Understand the applications of AI in various industries
  • Develop skills in data analysis and decision making using machine learning algorithms

Prerequisites or good to have knowledge before taking this course

  • Basic knowledge of programming
  • Familiarity with statistics and linear algebra

Course Difficulty Level

Intermediate

Course Format

  • Online self-paced course
  • Video lectures
  • Assignments and quizzes

Similar Courses

  • Applied Data Science with Python Specialization
  • Deep Learning Specialization

Related Education Paths


Notable People in This Field

  • Andrew Ng
  • Fei-Fei Li

Related Books

Description

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. 

Outline

  • Model Evaluation and Performance Metrics
  • Course Objectives
  • Evaluation Metrics
  • Introduction to Predictive Linear and Logistic Regression
  • Linear Models
  • Watson Natural Language Understanding Service Overview
  • Case Study Introduction
  • Evaluation Metrics: Through the Eyes of our Working Example
  • Evaluation Metrics
  • Regression Metrics
  • Classification Metrics
  • Multi-class and Multi-label Metrics
  • Model Performance: Through the Eyes of our Working Example
  • Generalizing Well to Unseen Data
  • Model Plots, Bias, Variance
  • Relating the Evaluation Metric to a Business Metric
  • Linear Models: Through the Eyes of our Working Example
  • Generalized Linear Models
  • Linear and Logistic Regression
  • Regularized Regression
  • Stochastic Gradient Descent Classifier
  • Watson Natural Language Understanding: Through the eyes of our Working Example
  • Watson Developer Cloud Python SDK
  • Performance and Business Metrics: Through the Eyes of our Working Example
  • Getting Started with Performance and Business Metrics Case Study (Hands-on)
  • Summary/Review
  • Check for Understanding
  • Check for Understanding
  • Check for Understanding
  • Check for Understanding
  • Check for Understanding
  • End of Module Quiz
  • Building Machine Learning and Deep Learning Models
  • Tree Based Methods
  • Introduction to Tree Based Methods
  • Neural Networks
  • Introduction to neural networks
  • IBM Watson Visual Recognition Overview
  • Tree-based Methods: Through the Eyes of our Working Example
  • Decision Trees
  • Bagging and Random Forests
  • Boosting
  • Ensemble Learning
  • Neural networks: Through the eyes of our Working Example
  • Multilayer perceptron (MLP)
  • Neural network architectures
  • On interpretability
  • Watson Visual Recognition: Through the Eyes of our Working Example
  • Watson Developer Cloud Python SDK
  • TensorFlow: Through the Eyes of our Working Example
  • Getting Started with Convolutional Neural Networks and TensorFlow (Hands-on)
  • Summary/Review
  • Check for Understanding
  • Check for Understanding
  • Check for Understanding
  • Check for Understanding
  • End of Module Quiz

Summary of User Reviews

This course on AI workflow, machine learning, VR, and NLP by IBM has received positive reviews from users. Many users have praised the course for its comprehensive coverage on AI workflow and machine learning.

Key Aspect Users Liked About This Course

Comprehensive coverage on AI workflow and machine learning

Pros from User Reviews

  • Excellent course material and videos
  • Great instructors with industry experience
  • Real-world examples and hands-on projects
  • Good introduction to natural language processing
  • Useful resources and references provided

Cons from User Reviews

  • Some sections may be too technical for beginners
  • Not enough focus on virtual reality (VR)
  • Lack of interaction and engagement with instructors
  • Some exercises and quizzes are confusing
  • Course may be too long for some learners
English
Available now
Approx. 14 hours to complete
Mark J Grover, Ray Lopez, Ph.D.
IBM
Coursera

Instructor

Mark J Grover

  • 4.5 Raiting
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