[Udemy] Practical Introduction to Machine Learning

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What you’ll learn

  • Fundamentals of Artificial Intelligence (AI) and Machine Learning
  • Practical business applications of machine learning
  • Classification, regression, clustering, anomaly detection
  • How machines learn from data
  • Supervised, unsupervised, reinforcement, and transfer learning
  • How to identify problems suitable for machine learning
  • How to collect and prepare data suitable for training and testing machine learning models
  • Different types of machine learning models and how to choose among them
  • Machine learning development and production deployment process
  • How to train models using GPU instances in the cloud


  • Some Python programming is helpful, but not required
  • Math concepts such as linear algebra and calculus are helpful, but not required


Machine learning is the technology behind self driving cars, smart speakers, recommendations, and sophisticated predictions. Recent advances in algorithms, technology, and the availability of vast amounts of data allow machines to solve problems that were once considered out of reach. Machine learning is an exciting and rapidly growing field full of possibilities, but it can be intimidating at first.

If you want to learn how machine learning can be applied in your organization without lots of math or code, then this course is for you. There’s more to a successful ML project that just creating models and writing code. Identifying suitable problems, collecting, preparing and curating data sets, validating results, and maintaining quality over time are just as important as writing code. These challenges require a variety of skills, many of which are not technical.

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Whether you’re a manager, business analyst, software architect, or someone looking to change careers, there’s a place for you in a machine learning project. This course is aimed at giving you the knowledge you need to be productive in a changing economy where machines are climbing the corporate ladder.

Course Content

  • Introduction to Artificial Intelligence and Machine Learning
    • What is it? Why now?
    • Applications of machine learning
    • AI timeline
    • Human learning
    • How machines learn from data
  • Machine Learning Models
    • Classical and Deep Learning Models
    • Feature engineering
    • Neural networks and backpropagation
    • Neural network breakthroughs
    • Ultimate accuracy
    • Expert performance
  • Learning Style
    • Supervised, Unsupervised, Reinforcement, and Transfer Learning
    • Amount of training data required
  • Practical examples
    • Natural language text
    • Sentiment analysis
    • Amazon Comprehend
    • Clustering
    • Image recognition
    • Speech to text and text to speech
    • Language translation
    • Amazon Transcribe, Polly, and Translate
  • Development process
    • Data collection and preparation
    • Choosing a model
    • Bias and variance
    • GPU training with Google Colaboratory
    • CPUs, GPUs, and FPGAs
    • Retraining and feedback loops
  • Next steps
    • For managers
    • For business analysts
    • For software architects and developers
    • Economics of machine learning

Who this course is for:

  • IT managers, business analysts, software architects, and developers interested in a quick start into the exciting and rapidly growing field of machine learning.
  • Business analysts or non-technical people who want to leverage their skills to add value in machine learning development project
  • Anyone wanting to learn where they can be productive in a changing economy where machines are climbing the corporate ladder
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