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Course Outline

Introduction to Neural Networks

Introduction to Applied Machine Learning

  • Statistical learning versus machine learning
  • Iteration and evaluation
  • The bias-variance trade-off

Machine Learning with Python

  • Selecting appropriate libraries
  • Complementary tools and add-ons

Machine Learning Concepts and Applications

Regression

  • Linear regression
  • Generalisations and non-linearity
  • Practical use cases

Classification

  • Refresher on Bayesian principles
  • Naive Bayes
  • Logistic regression
  • K-nearest neighbours
  • Practical use cases

Cross-validation and Resampling

  • Cross-validation approaches
  • Bootstrap methods
  • Practical use cases

Unsupervised Learning

  • K-means clustering
  • Real-world examples
  • Challenges of unsupervised learning and moving beyond K-means

Short Introduction to NLP Methods

  • Word and sentence tokenisation
  • Text classification
  • Sentiment analysis
  • Spelling correction
  • Information extraction
  • Parsing
  • Meaning extraction
  • Question answering

Artificial Intelligence & Deep Learning

Technical Overview

  • R versus Python
  • Caffe versus TensorFlow
  • Various machine learning libraries

Industry Case Studies

Requirements

  1. Basic knowledge of business operations and a foundational understanding of technical concepts
  2. Familiarity with software and systems at a basic level
  3. A fundamental grasp of statistics (equivalent to Excel-level proficiency)
 21 Hours

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