Introduction to Artificial Intelligence
Offered By: LinkedIn Learning
Course Description
Overview
Get a simplified overview of the top tools in artificial intelligence.
Syllabus
Introduction
- Why you need to know about artificial intelligence
- Define general intelligence
- The general problem-solver
- Strong vs. weak AI
- Machine learning
- Artificial neural networks
- Searching for patterns in data
- Robotics
- Natural language processing
- The Internet of Things
- Labeled and unlabeled data
- Massive datasets
- Classify data
- Cluster data
- Reinforcement learning
- Common algorithms
- K-nearest neighbor
- K-means clustering
- Regression
- Naive Bayes
- Select the best algorithm
- Follow the data
- Overfitting and underfitting
- Build a neural network
- Weighing the connections
- The activation bias
- Learning from mistakes
- Step through the network
- Using AI systems
- Applying AI to solve problems
Taught by
Doug Rose
Related Courses
Graph Partitioning and ExpandersStanford University via NovoEd The Analytics Edge
Massachusetts Institute of Technology via edX More Data Mining with Weka
University of Waikato via Independent Mining Massive Datasets
Stanford University via edX The Caltech-JPL Summer School on Big Data Analytics
California Institute of Technology via Coursera