Get in Touch

Course Outline

Introduction to Neural Networks

Introduction to Applied Machine Learning

  • Statistical learning versus Machine learning
  • Iteration and evaluation processes
  • The Bias-Variance trade-off

Machine Learning with Python

  • Selecting appropriate libraries
  • Utilizing add-on tools

Machine Learning Concepts and Applications

Regression

  • Linear regression
  • Generalizations and Nonlinearity
  • Real-world use cases

Classification

  • Bayesian refresher
  • Naive Bayes
  • Logistic regression
  • K-Nearest neighbors
  • Use Cases

Cross-validation and Resampling

  • Cross-validation approaches
  • Bootstrap methods
  • Use Cases

Unsupervised Learning

  • K-means clustering
  • Examples
  • Challenges of unsupervised learning and advanced techniques beyond K-means

Short Introduction to NLP methods

  • Word and sentence tokenization
  • 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. Fundamental knowledge of business operations and technical principles
  2. Basic comprehension of software and system architectures
  3. Foundational understanding of Statistics (at an Excel proficiency level)
 21 Hours

Number of participants


Price per participant

Testimonials (1)

Upcoming Courses

Related Categories